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Electron backscatter diffraction

Electron backscatter diffraction (EBSD) is a scanning electron microscopy (SEM) technique used to study the crystallographic structure of materials. EBSD is carried out in a scanning electron microscope equipped with an EBSD detector comprising at least a phosphorescent screen, a compact lens and a low-light camera. In the microscope an incident beam of electrons hits a tilted sample. As backscattered electrons leave the sample, they interact with the atoms and are both elastically diffracted and lose energy, leaving the sample at various scattering angles before reaching the phosphor screen forming Kikuchi patterns (EBSPs). The EBSD spatial resolution depends on many factors, including the nature of the material under study and the sample preparation. They can be indexed to provide information about the material's grain structure, grain orientation, and phase at the micro-scale. EBSD is used for impurities and defect studies, plastic deformation, and statistical analysis for average misorientation, grain size, and crystallographic texture. EBSD can also be combined with energy-dispersive X-ray spectroscopy (EDS), cathodoluminescence (CL), and wavelength-dispersive X-ray spectroscopy (WDS) for advanced phase identification and materials discovery.

An electron backscatter diffraction pattern of monocrystalline silicon, taken at 20 kV with a field-emission electron source

The change and sharpness of the electron backscatter patterns (EBSPs) provide information about lattice distortion in the diffracting volume. Pattern sharpness can be used to assess the level of plasticity. Changes in the EBSP zone axis position can be used to measure the residual stress and small lattice rotations. EBSD can also provide information about the density of geometrically necessary dislocations (GNDs). However, the lattice distortion is measured relative to a reference pattern (EBSP0). The choice of reference pattern affects the measurement precision; e.g., a reference pattern deformed in tension will directly reduce the tensile strain magnitude derived from a high-resolution map while indirectly influencing the magnitude of other components and the spatial distribution of strain. Furthermore, the choice of EBSP0 slightly affects the GND density distribution and magnitude.[1]

Pattern formation and collection edit

Setup geometry and pattern formation edit

 
EBSD typical hardware configuration inside a field emission gun scanning electron microscope[2]

For electron backscattering diffraction microscopy, a flat polished crystalline specimen is usually placed inside the microscope chamber. The sample is tilted at ~70° from Scanning electron microscope (SEM) flat specimen positioning and 110° to the electron backscatter diffraction (EBSD) detector.[3] Tilting the sample elongates the interaction volume perpendicular to the tilt axis, allowing more electrons to leave the sample providing better signal.[4][5] A high-energy electron beam (typically 20 kV) is focused on a small volume and scatters with a spatial resolution of ~20 nm at the specimen surface.[6] The spatial resolution varies with the beam energy,[6] angular width,[7] interaction volume,[8] nature of the material under study,[6] and, in transmission Kikuchi diffraction (TKD), with the specimen thickness;[9] thus, increasing the beam energy increases the interaction volume and decreases the spatial resolution.[10]

The EBSD detector is located within the specimen chamber of the SEM at an angle of approximately 90° to the pole piece. The EBSD detector is typically a phosphor screen that is excited by the backscattered electrons.[11] The screen is coupled to lens which focuses the image from the phosphor screen onto a charge-coupled device (CCD) or complementary metal–oxide–semiconductor (CMOS) camera.[12]

In this configuration, as the backscattered electrons leave the sample, they interact with the Coulomb potential and also lose energy due to inelastic scattering leading to a range of scattering angles (θhkl).[11][13] The backscattered electrons form Kikuchi lines – having different intensities – on an electron-sensitive flat film/screen (commonly phosphor), gathered to form a Kikuchi band. These Kikuchi lines are the trace of a hyperbola formed by the intersection of Kossel cones with the plane of the phosphor screen. The width of a Kikuchi band is related to the scattering angles and, thus, to the distance dhkl between lattice planes with Miller indexes h, k, and l.[14][15] These Kikuchi lines and patterns were named after Seishi Kikuchi, who, together with Shoji Nishikawa [ja], was the first to notice this diffraction pattern in 1928 using transmission electron microscopy (TEM)[16] which is similar in geometry to X-ray Kossel pattern.[17][18]

The systematically arranged Kikuchi bands, which have a range of intensity along their width, intersect around the centre of the regions of interest (ROI), describing the probed volume crystallography.[19] These bands and their intersections form what is known as Kikuchi patterns or electron backscatter patterns (EBSPs). To improve contrast, the patterns’ background is corrected by removing anisotropic/inelastic scattering using static background correction or dynamic background correction.[20]

 
Single-crystal 4H-SiC, gnomically projected EBSP collected using (left) conventional, (centre) dynamic, and (right) combined background correction

EBSD detectors edit

EBSD is conducted using an SEM equipped with an EBSD detector containing at least a phosphor screen, compact lens and low-light Charge-coupled device (CCD) or Complementary metal–oxide–semiconductor (CMOS) camera. As of September 2023, commercially available EBSD systems typically come with one of two different CCD cameras: for fast measurements, the CCD chip has a native resolution of 640×480 pixels; for slower, and more sensitive measurements, the CCD chip resolution can go up to 1600×1200 pixels.[13][6]

The biggest advantage of the high-resolution detectors is their higher sensitivity, and therefore the information within each diffraction pattern can be analysed in more detail. For texture and orientation measurements, the diffraction patterns are binned to reduce their size and computational times. Modern CCD-based EBSD systems can index patterns at a speed of up to 1800 patterns/second. This enables rapid and rich microstructural maps to be generated.[14][21]

Sample preparation edit

 
Pattern degradation due to carbon deposition in a highly magnified location after 3-hour EBSPs acquisition around a deformation twin in the ferrite phase of duplex stainless steel[22]

The sample should be vacuum stable. It is typically mounted using a conductive compound (e.g. an epoxy thermoset filled with Cu), which minimises image drift and sample charging under electron beam irradiation. EBSP quality is sensitive to surface preparation. Typically the sample is ground using SiC papers from 240 down to 4000 grit, and polished using diamond paste (from 9 to 1 μm) then in 50 nm colloidal silica. Afterwards, it is cleaned in ethanol, rinsed with deionised water, and dried with a hot air blower. This may be followed by ion beam polishing, for final surface preparation.[23][24][25]

Inside the SEM, the size of the measurement area determines local resolution and measurement time.[26] Usual settings for high-quality EBSPs are 15 nA current, 20 kV beam energy, 18 mm working distance, long exposure time, and minimal CCD pixel binning.[27][28][29][30] The EBSD phosphor screen is set at an 18 mm working distance and a map's step size of less than 0.5 μm for strain and dislocations density analysis.[31][22]

Decomposition of gaseous hydrocarbons and also hydrocarbons on the surface of samples by the electron beam inside the microscope results in carbon deposition,[32] which degrades the quality of EBSPs inside the probed area compared to the EBSPs outside the acquisition window. The gradient of pattern degradation increases moving inside the probed zone with an apparent accumulation of deposited carbon. The black spots from the beam instant-induced carbon deposition also highlight the immediate deposition even if agglomeration did not happen.[33][34]

Depth resolution edit

 
Electron-matter interaction volume and various types of signal generated

There is no agreement about the definition of depth resolution. For example, it can be defined as the depth where ~92% of the signal is generated,[35][36] or defined by pattern quality,[37] or can be as ambiguous as "where useful information is obtained".[38] Even for a given definition, depth resolution increases with electron energy and decreases with the average atomic mass of the elements making up the studied material: for example, it was estimated as 40 nm for Si and 10 nm for Ni at 20 kV energy.[39] Unusually small values were reported for materials whose structure and composition vary along the thickness. For example, coating monocrystalline silicon with a few nm of amorphous chromium reduces the depth resolution to a few nm at 15 kV energy.[37] In contrast, Isabell and David[40] concluded that depth resolution in homogeneous crystals could also extend up to 1 μm due to inelastic scattering (including tangential smearing and channelling effect).[24]

A recent comparison between reports on EBSD depth resolution, Koko et al[24] indicated that most publications do not present a rationale for the definition of depth resolution, while not including information on the beam size, tilt angle, beam-to-sample and sample-to-detector distances.[24] These are critical parameters for determining or simulating the depth resolution.[40] The beam current is generally not considered to affect the depth resolution in experiments or simulations. However, it affects the beam spot size and signal-to-noise ratio, and hence, indirectly, the details of the pattern and its depth information.[41][42][43]

Monte Carlo simulations provide an alternative approach to quantifying the depth resolution for EBSPs formation, which can be estimated using the Bloch wave theory, where backscattered primary electrons – after interacting with the crystal lattice – exit the surface, carrying information about the crystallinity of the volume interacting with the electrons.[44] The backscattered electrons (BSE) energy distribution depends on the material's characteristics and the beam conditions.[45] This BSE wave field is also affected by the thermal diffuse scattering process that causes incoherent and inelastic (energy loss) scattering – after the elastic diffraction events – which does not, yet, have a complete physical description that can be related to mechanisms that constitute EBSP depth resolution.[46][47]

Both the EBSD experiment and simulations typically make two assumptions: that the surface is pristine and has a homogeneous depth resolution; however, neither of them is valid for a deformed sample.[37]

Orientation and phase mapping edit

Pattern indexing edit

 
Formation of Kossel cone which intersect with CCD screen to form EBSP which can be Bravais-Miller indexed

If the setup geometry is well described, it is possible to relate the bands present in the diffraction pattern to the underlying crystal and crystallographic orientation of the material within the electron interaction volume. Each band can be indexed individually by the Miller indices of the diffracting plane which formed it. In most materials, only three bands/planes intersect and are required to describe a unique solution to the crystal orientation (based on their interplanar angles). Most commercial systems use look-up tables with international crystal databases to index. This crystal orientation relates the orientation of each sampled point to a reference crystal orientation.[3][48]

Indexing is often the first step in the EBSD process after pattern collection. This allows for the identification of the crystal orientation at the single volume of the sample from where the pattern was collected.[49][50] With EBSD software, pattern bands are typically detected via a mathematical routine using a modified Hough transform, in which every pixel in Hough space denotes a unique line/band in the EBSP. The Hough transform enables band detection, which is difficult to locate by computer in the original EBSP. Once the band locations have been detected, it is possible to relate these locations to the underlying crystal orientation, as angles between bands represent angles between lattice planes. Thus, an orientation solution can be determined when the position/angles between three bands are known. In highly symmetric materials, more than three bands are typically used to obtain and verify the orientation measurement.[50]

The diffraction pattern is pre-processed to remove noise, correct for detector distortions, and normalise the intensity. Then, the pre-processed diffraction pattern is compared to a library of reference patterns for the material being studied. The reference patterns are generated based on the material's known crystal structure and the crystal lattice's orientation. The orientation of the crystal lattice that would generate the best match to the measured pattern is determined using a variety of algorithms. There are three leading methods of indexing that are performed by most commercial EBSD software: triplet voting;[51][52] minimising the 'fit' between the experimental pattern and a computationally determined orientation,[53][54] and or/and neighbour pattern averaging and re-indexing, NPAR[55]). Indexing then give a unique solution to the single crystal orientation that is related to the other crystal orientations within the field-of-view.[56][57]

Triplet voting involves identifying multiple 'triplets' associated with different solutions to the crystal orientation; each crystal orientation determined from each triplet receives one vote. Should four bands identify the same crystal orientation, then four (four choose three, i.e.  ) votes will be cast for that particular solution. Thus the candidate orientation with the highest number of votes will be the most likely solution to the underlying crystal orientation present. The number of votes for the solution chosen compared to the total number of votes describes the confidence in the underlying solution. Care must be taken in interpreting this 'confidence index' as some pseudo-symmetric orientations may result in low confidence for one candidate solution vs another.[58][59][60] Minimising the fit involves starting with all possible orientations for a triplet. More bands are included, which reduces the number of candidate orientations. As the number of bands increases, the number of possible orientations converges ultimately to one solution. The 'fit' between the measured orientation and the captured pattern can be determined.[57]

Overall, indexing diffraction patterns in EBSD involves a complex set of algorithms and calculations, but is essential for determining the crystallographic structure and orientation of materials at a high spatial resolution. The indexing process is continually evolving, with new algorithms and techniques being developed to improve the accuracy and speed of the process. Afterwards, a confidence index is calculated to determine the quality of the indexing result. The confidence index is based on the match quality between the measured and reference patterns. In addition, it considers factors such as noise level, detector resolution, and sample quality.[50]

While this geometric description related to the kinematic solution using the Bragg condition is very powerful and useful for orientation and texture analysis, it only describes the geometry of the crystalline lattice. It ignores many physical processes involved within the diffracting material. To adequately describe finer features within the electron beam scattering pattern (EBSP), one must use a many-beam dynamical model (e.g. the variation in band intensities in an experimental pattern does not fit the kinematic solution related to the structure factor).[61][47]

Pattern centre edit

To relate the orientation of a crystal, much like in X-ray diffraction (XRD), the geometry of the system must be known. In particular, the pattern centre describes the distance of the interaction volume to the detector and the location of the nearest point between the phosphor and the sample, on the phosphor screen. Early work used a single crystal of known orientation being inserted into the SEM chamber, and a particular feature of the EBSP was known to correspond to the pattern centre. Later developments involved exploiting various geometric relationships between the generation of an EBSP and the chamber geometry (shadow casting and phosphor movement).[62][57]

Unfortunately, each of these methods is cumbersome and can be prone to some systematic errors for a general operator. Typically they cannot be easily used in modern SEMs with multiple designated uses. Thus, most commercial EBSD systems use the indexing algorithm combined with an iterative movement of crystal orientation and suggested pattern centre location. Minimising the fit between bands located within experimental patterns and those in look-up tables tends to converge on the pattern centre location to an accuracy of ~0.5–1% of the pattern width.[21][6]

The recent development of AstroEBSD[63] and PCGlobal,[64] open-source MATLAB codes, increased the precision of determining the pattern centre (PC) and – consequently – elastic strains[65] by using a pattern matching approach[66] which simulates the pattern using EMSoft.[67]

EBSD mapping edit

 
A map of indexed EBSD orientations for a ferrous martensite with high-angle (>10°) boundaries

The indexing results are used to generate a map of the crystallographic orientation at each point on the surface being studied. Thus, scanning the electron beam in a prescribed fashion (typically in a square or hexagonal grid, correcting for the image foreshortening due to the sample tilt) results in many rich microstructural maps.[68][69] These maps can spatially describe the crystal orientation of the material being interrogated and can be used to examine microtexture and sample morphology. Some maps describe grain orientation, boundary, and diffraction pattern (image) quality. Various statistical tools can measure the average misorientation, grain size, and crystallographic texture. From this dataset, numerous maps, charts and plots can be generated.[70][71][72] The orientation data can be visualised using a variety of techniques, including colour-coding, contour lines, and pole figures.[73]

Microscope misalignment, image shift, scan distortion that increases with decreasing magnification, roughness and contamination of the specimen surface, boundary indexing failure and detector quality can lead to uncertainties in determining the crystal orientation.[74] The EBSD signal-to-noise ratio depends on the material and decreases at excessive acquisition speed and beam current, thereby affecting the angular resolution of the measurement.[74]

Strain measurement edit

Full-field displacement, elastic strain, and the GND density provide quantifiable information about the material's elastic and plastic behaviour at the microscale. Measuring strain at the microscale requires careful consideration of other key details besides the change in length/shape (e.g., local texture, individual grain orientations). These micro-scale features can be measured using different techniques, e.g., hole drilling, monochromatic or polychromatic energy-dispersive X-ray diffraction or neutron diffraction (ND). EBSD has a high spatial resolution and is relatively sensitive and easy to use compared to other techniques.[72][75][76] Strain measurements using EBSD can be performed at a high spatial resolution, allowing researchers to study the local variation in strain within a material.[14] This information can be used to study the deformation and mechanical behaviour of materials,[77] to develop models of material behaviour under different loading conditions, and to optimise the processing and performance of materials. Overall, strain measurement using EBSD is a powerful tool for studying the deformation and mechanical behaviour of materials, and is widely used in materials science and engineering research and development.[76][14]

Earlier trials edit

The change and degradation in electron backscatter patterns (EBSPs) provide information about the diffracting volume. Pattern degradation (i.e., diffuse quality) can be used to assess the level of plasticity through the pattern/image quality (IQ),[78] where IQ is calculated from the sum of the peaks detected when using the conventional Hough transform. Wilkinson[79] first used the changes in high-order Kikuchi line positions to determine the elastic strains, albeit with low precision[note 1] (0.3% to 1%); however, this approach cannot be used for characterising residual elastic strain in metals as the elastic strain at the yield point is usually around 0.2%. Measuring strain by tracking the change in the higher-order Kikuchi lines is practical when the strain is small, as the band position is sensitive to changes in lattice parameters.[43] In the early 1990s, Troost et al.[80] and Wilkinson et al.[81][82] used pattern degradation and change in the zone axis position to measure the residual elastic strains and small lattice rotations with a 0.02% precision.[1]

High-resolution electron backscatter diffraction (HR-EBSD) edit

 
Schematic shifting between a reference and deformed crystals in the EBSP pattern projected on the phosphor screen[22]

Cross-correlation-based, high angular resolution electron backscatter diffraction (HR-EBSD) – introduced by Wilkinson et al.[83][84] – is an SEM-based technique to map relative elastic strains and rotations, and estimate the geometrically necessary dislocation (GND) density in crystalline materials. HR-EBSD method uses image cross-correlation to measure pattern shifts between regions of interest (ROI) in different electron backscatter diffraction patterns (EBSPs) with sub-pixel precision. As a result, the relative lattice distortion between two points in a crystal can be calculated using pattern shifts from at least four non-collinear ROI. In practice, pattern shifts are measured in more than 20 ROI per EBSP to find a best-fit solution to the deformation gradient tensor, representing the relative lattice distortion.[note 2][86][84]

The displacement gradient tensor ( ) (or local lattice distortion) relates the measured geometrical shifts in the pattern between the collected point ( ) and associate (non-coplanar) vector ( ), and reference point ( ) pattern and associate vector ( ). Thus, the (pattern shift) vector ( ) can be written as in the equations below, where   and   are the direction and displacement in  th direction, respectively.[87]

 

 

The shifts are measured in the phosphor (detector) plane ( ), and the relationship is simplified; thus, eight out of the nine displacement gradient tensor components can be calculated by measuring the shift at four distinct, widely spaced regions on the EBSP.[84][87] This shift is then corrected to the sample frame (flipped around Y-axis) because EBSP is recorded on the phosphor screen and is inverted as in a mirror. They are then corrected around the X-axis by 24° (i.e., 20° sample tilt plus ≈4° camera tilt and assuming no angular effect from the beam movement[21]). Using infinitesimal strain theory, the deformation gradient is then split into elastic strain (symmetric part, where  ),  and lattice rotations (asymmetric part, where  ),  .[84]

 

These measurements do not provide information about the volumetric/hydrostatic strain tensors. By imposing a boundary condition that the stress normal to the surface ( ) is zero (i.e., traction-free surface[88]), and using Hooke's law with anisotropic elastic stiffness constants, the missing ninth degree of freedom can be estimated in this constrained minimisation problem by using a nonlinear solver.[84]

 

Where   is the crystal anisotropic stiffness tensor. These two equations are solved to re-calculate the refined elastic deviatoric strain ( ), including the missing ninth (spherical) strain tensor. An alternative approach that considers the full   can be found in.[88]

 

 

Finally, the stress and strain tensors are linked using the crystal anisotropic stiffness tensor ( ), and by using the Einstein summation convention with symmetry of stress tensors ( ).[86]

 

The quality of the produced data can be assessed by taking the geometric mean of all the ROI's correlation intensity/peaks. A value lower than 0.25 should indicate problems with the EBSPs' quality.[87] Furthermore, the geometrically necessary dislocation (GND) density can be estimated from the HR-EBSD measured lattice rotations by relating the rotation axis and angle between neighbour map points to the dislocation types and densities in a material using Nye's tensor.[31][89][90]

Precision and development edit

The HR-EBSD method can achieve a precision of ±10−4 in components of the displacement gradient tensors (i.e., variations in lattice strain and lattice rotation in radians) by measuring the shifts of zone axes within the pattern image with a resolution of ±0.05 pixels.[84][91] It was limited to small strains and rotations (>1.5°) until Britton and Wilkinson[86] and Maurice et al.[92] raised the rotation limit to ~11° by using a re-mapping technique that recalculated the strain after transforming the patterns with a rotation matrix ( ) calculated from the first cross-correlation iteration.[1]

 

 
(a) Secondary electron (SE) image for the indentation on the (001) mono crystal. (b) HR-EBSD stress and rotation components, and geometrical necessary dislocations density ( ). The location of EBSP0 is highlighted with a star in  . The step size is 250 nm [93]

However, further lattice rotation, typically caused by severe plastic deformations, produced errors in the elastic strain calculations. To address this problem, Ruggles et al.[94] improved the HR-EBSD precision, even at 12° of lattice rotation, using the inverse compositional Gauss–Newton-based (ICGN) method instead of cross-correlation. For simulated patterns, Vermeij and Hoefnagels[95] also established a method that achieves a precision of ±10−5 in the displacement gradient components using a full-field integrated digital image correlation (IDIC) framework instead of dividing the EBSPs into small ROIs. Patterns in IDIC are distortion-corrected to negate the need for re-mapping up to ~14°.[96][97]

Conventional Hough transform EBSD and HR-EBSD[84][98]
Conventional EBSD HR-EBSD
Absolute orientation N/A
Misorientation 0.1° to 0.5° 0.006° (1×10−4 rad)
GND @ 1 μm step

In lines/m2 (b = 0.3 nm)

> 3×1013 > 3×1011
Relative residual strain N/A Deviatoric elastic strain 1×10−4
Example tasks Texture, microstructure, etc. Deformation

These measurements do not provide information about the hydrostatic or volumetric strains,[86][84] because there is no change in the orientations of lattice planes (crystallographic directions), but only changes in the position and width of the Kikuchi bands.[99][100]

The reference pattern problem edit

In HR-EBSD analysis, the lattice distortion field is calculated relative to a reference pattern or point (EBSP0) per grain in the map, and is dependent on the lattice distortion at the point. The lattice distortion field in each grain is measured with respect to this point; therefore, the absolute lattice distortion at the reference point (relative to the unstrained crystal) is excluded from the HR-EBSD elastic strain and rotation maps.[98][101] This ‘reference pattern problem’ is similar to the ‘d0 problem’ in X-ray diffraction,[14][102] and affects the nominal magnitude of HR-EBSD stress fields. However, selecting the reference pattern (EBSP0) plays a key role, as severely deformed EBSP0 adds phantom lattice distortions to the map values, thus, decreasing the measurement precision.[98]

 
Linear correlation coefficients between the local conditions at the EBSP0 point and the averaged conditions at the grain for the ferrite (Fe-α) and austenite (Fe-γ) phase of age-hardened DSS, and Silicon (Si). The analysis considers the average deformation gradient tensor determinant ( ), maximum in-plane principal strain ( ), rotation magnitude ( ), correlation peak height (PH), mean angular error (MAE) and GND density.[1]

The local lattice distortion at the EBSP0 influences the resultant HR-EBSD map, e.g., a reference pattern deformed in tension will directly reduce the HR-EBSD map tensile strain magnitude while indirectly influencing the other component magnitude and the strain's spatial distribution. Furthermore, the choice of EBSP0 slightly affects the GND density distribution and magnitude, and choosing a reference pattern with a higher GND density reduces the cross-correlation quality, changes the spatial distribution and induces more errors than choosing a reference pattern with high lattice distortion. Additionally, there is no apparent connection between EBSP0’s IQ and EBSP0's local lattice distortion.[1]

The use of simulated reference patterns for absolute strain measurement is still an active area of research[61][103][104][105][106][107][108][109] and scrutiny[98][109][110][111][112][113] as difficulties arise from the variation of inelastic electron scattering with depth which limits the accuracy of dynamical diffraction simulation models, and imprecise determination of the pattern centre which leads to phantom strain components which cancel out when using experimentally acquired reference patterns. Other methods assumed that absolute strain at EBSP0 can be determined using crystal plasticity finite-element (CPFE) simulations, which then can be then combined with the HR-EBSD data (e.g., using linear ‘top-up’ method[114][115] or displacement integration[93]) to calculate the absolute lattice distortions.

In addition, GND density estimation is nominally insensitive to (or negligibly dependent upon[116][117]) EBSP0 choice, as only neighbour point-to-point differences in the lattice rotation maps are used for GND density calculation.[118][119] However, this assumes that the absolute lattice distortion of EBSP0 only changes the relative lattice rotation map components by a constant value which vanishes during derivative operations, i.e., lattice distortion distribution is insensitive to EBSP0 choice.[101][1]

Selecting a reference pattern edit

Criteria for EBSP0 selection can be one or a mixture of:

  • Selecting from points with low GND density or low Kernel average misorientation (KAM) based on the Hough measured local grain misorientations;[120]
  • Selecting from points with high image quality (IQ), which may have a low defect density within its electron interaction volume, is therefore assumed to be a low-strained region of a polycrystalline material.[99][121] However, IQ does not carry a clear physical meaning,[122] and the magnitudes of the measured relative lattice distortion are insensitive to the IQ of EBSP0;[101][1]
  • EBSP0 can also be manually selected to be far from potential stress concentrations such as grain boundaries, inclusions, or cracks using subjective criteria;[101]
  • Selecting an EBSP0 after examining the empirical relationship between the cross-correlation parameter and angular error, used in an iterative algorithm to identify the optimal reference pattern that maximises the precision of HR-EBSD.[1]

These criteria assume these parameters can indicate the strain conditions at the reference point, which can produce an accurate measurements of up to 3.2×10−4 elastic strain.[91] However, experimental measurements point to the inaccuracy of HR-EBSD in determining the out-of-plane shear strain components distribution and magnitude.[123][124]

Applications edit

EBSD is used in a wide range of applications, including materials science and engineering,[14] geology,[125] and biological research.[126][127] In materials science and engineering, EBSD is used to study the microstructure of metals, ceramics, and polymers, and to develop models of material behaviour.[128] In geology, EBSD is used to study the crystallographic structure of minerals and rocks. In biological research, EBSD is used to study the microstructure of biological tissues and to investigate the structure of biological materials such as bone and teeth.[129]

Scattered electron imaging edit

 
The EBSD detector has forward scattered electron diodes (FSDs) at the bottom, in the middle (MSD) and at the top of the detector.
 
Far-field image of 475 °C embrittled duplex stainless steel with the virtual forward-scatter detector (VFSD) positioned at 38 mm from the sample

EBSD detectors can have forward scattered electron diodes (FSD) at the bottom, in the middle (MSD) and at the top of the detector. Forward-scattered electron (FSE) imaging involves collecting electrons scattered at small angles from the surface of a sample, which provides information about the surface topography and composition.[130][131] The FSE signal is also sensitive to the crystallographic orientation of the sample. By analysing the intensity and contrast of the FSE signal, researchers can determine the crystallographic orientation of each pixel in the image.[132]

The FSE signal is typically collected simultaneously with the BSE signal in EBSD analysis. The BSE signal is sensitive to the average atomic number of the sample, and is used to generate an image of the surface topography and composition. The FSE signal is superimposed on the BSE image to provide information about the crystallographic orientation.[132][130]

Image generation has a lot of freedom when using the EBSD detector as an imaging device. An image created using a combination of diodes is called virtual or VFSD. It is possible to acquire images at a rate akin to slow scan imaging in the SEM by excessive binning of the EBSD CCD camera. It is possible to suppress or isolate the contrast of interest by creating composite images from simultaneously captured images, which offers a wide range of combinations for assessing various microstructure characteristics. Nevertheless, VFSD images do not include the quantitative information inherent to traditional EBSD maps; they simply offer representations of the microstructure.[130][131]

Integrated EBSD/EDS mapping edit

When simultaneous EDS/EBSD collection can be achieved, the capabilities of both techniques can be enhanced.[133] There are applications where sample chemistry or phase cannot be differentiated via EDS alone because of similar composition, and structure cannot be solved with EBSD alone because of ambiguous structure solutions.[134][135] To accomplish integrated mapping, the analysis area is scanned, and at each point, Hough peaks and EDS region-of-interest counts are stored. Positions of phases are determined in X-ray maps, and each element's measured EDS intensities are given in charts. The chemical intensity ranges are set for each phase to select the grains.[136] All patterns are then re-indexed off-line. The recorded chemistry determines which phase/crystal-structure file is used to index each point. Each pattern is indexed by only one phase, and maps displaying distinguished phases are generated. The interaction volumes for EDS and EBSD are significantly different (on the order of micrometres compared to tens of nanometres), and the shape of these volumes using a highly tilted sample may have implications on algorithms for phase discrimination.[48][137]

EBSD, when used together with other in-SEM techniques such as cathodoluminescence (CL),[138] wavelength dispersive X-ray spectroscopy (WDS)[139] and/or EDS can provide a deeper insight into the specimen's properties and enhance phase identification.[140][141] For example, the minerals calcite (limestone) and aragonite (shell) have the same chemical composition – calcium carbonate (CaCO3) therefore EDS/WDS cannot tell them apart, but they have different microcrystalline structures so EBSD can differentiate between them.[142][143]

Integrated EBSD/DIC mapping edit

EBSD and digital image correlation (DIC) can be used together to analyse the microstructure and deformation behaviour of materials. DIC is a method that uses digital image processing techniques to measure deformation and strain fields in materials.[144] By combining EBSD and DIC, researchers can obtain both crystallographic and mechanical information about a material simultaneously.[145] This allows for a more comprehensive understanding of the relationship between microstructure and mechanical behaviour, which is particularly useful in fields such as materials science and engineering.[146]

DIC can identify regions of strain localisation in a material, while EBSD can provide information about the microstructure in these regions. By combining these techniques, researchers can gain insights into the mechanisms responsible for the observed strain localisation.[147] For example, EBSD can be used to determine the grain orientations and boundary misorientations before and after deformation. In contrast, DIC can be used to measure the strain fields in the material during deformation.[148][149] Or EBSD can be used to identify the activation of different slip systems during deformation, while DIC can be used to measure the associated strain fields.[150] By correlating these data, researchers can better understand the role of different deformation mechanisms in the material's mechanical behaviour.[151]

Overall, the combination of EBSD and DIC provides a powerful tool for investigating materials' microstructure and deformation behaviour. This approach can be applied to a wide range of materials and deformation conditions and has the potential to yield insights into the fundamental mechanisms underlying mechanical behaviour.[149][152]

3D EBSD edit

 
3D EBSD map for WC-6%Co with 62 slices of 10×10×3 mm size and 50 nm resolution in x, y and z directions[153]

3D EBSD combines EBSD with serial sectioning methods to create a three-dimensional map of a material's crystallographic structure.[154] The technique involves serially sectioning a sample into thin slices, and then using EBSD to map the crystallographic orientation of each slice.[155] The resulting orientation maps are then combined to generate a 3D map of the crystallographic structure of the material. The serial sectioning can be performed using a variety of methods, including mechanical polishing,[156] focused ion beam (FIB) milling,[157] or ultramicrotomy.[158] The choice of sectioning method depends on the size and shape of the sample, on its chemical composition, reactivity and mechanical properties, as well as the desired resolution and accuracy of the 3D map.[159]

3D EBSD has several advantages over traditional 2D EBSD. First, it provides a complete picture of a material's crystallographic structure, allowing for a more accurate and detailed analysis of the microstructure.[160] Second, it can be used to study complex microstructures, such as those found in composite materials or multi-phase alloys. Third, it can be used to study the evolution of microstructure over time, such as during deformation[161] or heat treatment.[162]

However, 3D EBSD also has some limitations. It requires extensive data acquisition and processing, proper alignment between slices, and can be time-consuming and computationally intensive.[163] In addition, the quality of the 3D map depends on the quality of the individual EBSD maps, which can be affected by factors such as sample preparation, data acquisition parameters, and analysis methods.[154][164] Overall, 3D EBSD is a powerful technique for studying the crystallographic structure of materials in three dimensions, and is widely used in materials science and engineering research and development.[165][149]

Notes edit

  1. ^ Throughout this page, the terms ‘error’, and ‘precision’ are used as defined in the International Bureau of Weights and Measures (BIPM) guide to measurement uncertainty. In practice, ‘error’, ‘accuracy’ and ‘uncertainty’, as well as ‘true value’ and ‘best guess’, are synonymous. Precision is the variance (or standard deviation) between all estimated quantities. Bias is the difference between the average of measured values and an independently measured ‘best guess’. Accuracy is then the combination of bias and precision.[1]
  2. ^ Strain, distortion, and deformation can refer to several quantities in different fields. Here they are used as follows. A mechanically loaded object changes shape in response to applied load; when measured in a mechanical test frame, it is called (total) engineering strain. Plastic strain is the shape change that persists after removing the macroscopic load. On the microscale, plastic deformation in most crystalline materials is accommodated by dislocation glide and deformation twinning. However, dislocations are also generated in a material as plastic deformation progresses, and dislocations with similar crystallographic character and sign that end up near each other in a material (e.g., lined up at a slip band) can be characterised as GNDs. Increasing plastic strain in a polycrystal also elastically distorts the crystal lattice to accommodate crystal defects (e.g., dislocation cores), groups of defects (e.g., dislocation cell walls), and maintains compatibility at polycrystal grain boundaries. This lattice distortion can be expressed as a deformation gradient tensor, which can be decomposed into elastic strain (symmetric) and lattice rotation (antisymmetric) components.[85] In this article 'lattice distortion' refers to elastic distortion components derived from the deformation gradient, elastic strain, and lattice rotation tensors.

References edit

  1. ^ a b c d e f g h i Koko, Abdalrhaman; Tong, Vivian; Wilkinson, Angus J.; Marrow, T. James (2023). "An iterative method for reference pattern selection in high-resolution electron backscatter diffraction (HR-EBSD)". Ultramicroscopy. 248: 113705. arXiv:2206.10242. doi:10.1016/j.ultramic.2023.113705. PMID 36871367. S2CID 249889699.  This article incorporates text from this source, which is available under the CC BY 4.0 license.
  2. ^ Vespucci, S.; Winkelmann, A.; Naresh-Kumar, G.; Mingard, K. P.; Maneuski, D.; Edwards, P. R.; Day, A. P.; O'Shea, V.; Trager-Cowan, C. (2015). "Digital direct electron imaging of energy-filtered electron backscatter diffraction patterns". Physical Review B. 92 (20): 205301. Bibcode:2015PhRvB..92t5301V. doi:10.1103/PhysRevB.92.205301.
  3. ^ a b Randle, Valerie (September 2009). "Electron backscatter diffraction: Strategies for reliable data acquisition and processing". Materials Characterization. 60 (9): 913–922. doi:10.1016/j.matchar.2009.05.011.
  4. ^ Goldstein, Joseph I.; Newbury, Dale E.; Michael, Joseph R.; Ritchie, Nicholas W. M.; Scott, John Henry J.; Joy, David C. (2018), "Backscattered Electrons", Scanning Electron Microscopy and X-Ray Microanalysis, New York, New York: Springer New York, pp. 15–28, doi:10.1007/978-1-4939-6676-9_2, ISBN 978-1-4939-6674-5
  5. ^ Winkelmann, Aimo; Nolze, Gert (2010). "Analysis of Kikuchi band contrast reversal in electron backscatter diffraction patterns of silicon". Ultramicroscopy. 110 (3): 190–194. doi:10.1016/j.ultramic.2009.11.008. PMID 20005045.
  6. ^ a b c d e Schwarzer, Robert A.; Field, David P.; Adams, Brent L.; Kumar, Mukul; Schwartz, Adam J. (2009), Schwartz, Adam J.; Kumar, Mukul; Adams, Brent L.; Field, David P. (eds.), "Present State of Electron Backscatter Diffraction and Prospective Developments", Electron Backscatter Diffraction in Materials Science, Boston, MA: Springer US, pp. 1–20, doi:10.1007/978-0-387-88136-2_1, ISBN 978-0-387-88136-2, OSTI 964094
  7. ^ Venables, J. A.; Harland, C. J. (1973). "Electron back-scattering patterns—A new technique for obtaining crystallographic information in the scanning electron microscope". The Philosophical Magazine. 27 (5): 1193–1200. Bibcode:1973PMag...27.1193V. doi:10.1080/14786437308225827.
  8. ^ Chen, Delphic; Kuo, Jui-Chao; Wu, Wen-Tuan (2011). "Effect of microscopic parameters on EBSD spatial resolution". Ultramicroscopy. 111 (9): 1488–1494. doi:10.1016/j.ultramic.2011.06.007. PMID 21930021.
  9. ^ Field, D. P. (2005). "Improving the Spatial Resolution of EBSD". Microscopy and Microanalysis. 11. doi:10.1017/s1431927605506445. S2CID 138097039.
  10. ^ Deal, Andrew; Tao, Xiaodong; Eades, Alwyn (2005). "EBSD geometry in the SEM: simulation and representation". Surface and Interface Analysis. 37 (11): 1017–1020. doi:10.1002/sia.2115. S2CID 122757345.
  11. ^ a b Randle, Valerie (2000), Schwartz, Adam J.; Kumar, Mukul; Adams, Brent L. (eds.), "Theoretical Framework for Electron Backscatter Diffraction", Electron Backscatter Diffraction in Materials Science, Boston, MA: Springer US, pp. 19–30, doi:10.1007/978-1-4757-3205-4_2, ISBN 978-1-4757-3205-4
  12. ^ Goulden, J.; Trimby, P.; Bewick, A. (1 August 2018). "The Benefits and Applications of a CMOS-based EBSD Detector". Microscopy and Microanalysis. 24 (S1): 1128–1129. Bibcode:2018MiMic..24S1128G. doi:10.1017/s1431927618006128. S2CID 139967518.
  13. ^ a b Eades, Alwyn; Deal, Andrew; Bhattacharyya, Abhishek; Hooghan, Tejpal (2009), Schwartz, Adam J.; Kumar, Mukul; Adams, Brent L.; Field, David P. (eds.), "Energy Filtering in EBSD", Electron Backscatter Diffraction in Materials Science, Boston, MA, pp. 53–63, doi:10.1007/978-0-387-88136-2_4, ISBN 978-0-387-88136-2
  14. ^ a b c d e f Wilkinson, Angus J.; Britton, T. Ben. (2012). "Strains, planes, and EBSD in materials science". Materials Today. 15 (9): 366–376. doi:10.1016/S1369-7021(12)70163-3.
  15. ^ Sawatzki, Simon; Woodcock, Thomas G.; Güth, Konrad; Müller, Karl-Hartmut; Gutfleisch, Oliver (2015). "Calculation of remanence and degree of texture from EBSD orientation histograms and XRD rocking curves in Nd–Fe–B sintered magnets". Journal of Magnetism and Magnetic Materials. 382: 219–224. Bibcode:2015JMMM..382..219S. doi:10.1016/j.jmmm.2015.01.046.
  16. ^ Nishikawa, S.; Kikuchi, S. (June 1928). "Diffraction of Cathode Rays by Mica". Nature. 121 (3061): 1019–1020. Bibcode:1928Natur.121.1019N. doi:10.1038/1211019a0. ISSN 0028-0836.
  17. ^ Tixier, R.; Waché, C. (1970). "Kossel patterns". Journal of Applied Crystallography. 3 (6): 466–485. Bibcode:1970JApCr...3..466T. doi:10.1107/S0021889870006726.
  18. ^ Maitland, Tim; Sitzman, Scott (2007), Zhou, Weilie; Wang, Zhong Lin (eds.), "Backscattering Detector and EBSD in Nanomaterials Characterization", Scanning Microscopy for Nanotechnology: Techniques and Applications, New York, New York: Springer, pp. 41–75, doi:10.1007/978-0-387-39620-0_2, ISBN 978-0-387-39620-0
  19. ^ Alam, M. N.; Blackman, M.; Pashley, D. W. (1954). "High-angle Kikuchi patterns". Proceedings of the Royal Society of London. Series A. Mathematical and Physical Sciences. 221 (1145): 224–242. Bibcode:1954RSPSA.221..224A. doi:10.1098/rspa.1954.0017. S2CID 97131764.
  20. ^ Dingley, D J; Wright, S I; Nowell, M M (August 2005). "Dynamic Background Correction of Electron Backscatter Diffraction Patterns". Microscopy and Microanalysis. 11 (S02). doi:10.1017/S1431927605506676. S2CID 137658758.
  21. ^ a b c Britton, T. B.; Jiang, J.; Guo, Y.; Vilalta-Clemente, A.; Wallis, D.; Hansen, L. N.; Winkelmann, A.; Wilkinson, A. J. (2016). "Tutorial: Crystal orientations and EBSD — Or which way is up?". Materials Characterization. 117: 113–126. doi:10.1016/j.matchar.2016.04.008. hdl:10044/1/31250. S2CID 138070296.
  22. ^ a b c Koko, A. Mohamed (2022). In situ full-field characterisation of strain concentrations (deformation twins, slip bands and cracks) (PhD thesis). University of Oxford. from the original on 1 February 2023.  This article incorporates text from this source, which is available under the CC BY 4.0 license.
  23. ^ Nowell, Matthew M; Witt, Ronald A; True, Brian W (2005). "EBSD Sample Preparation: Techniques, Tips, and Tricks". Microscopy Today. 13 (4): 44–49. doi:10.1017/s1551929500053669. S2CID 139585885.
  24. ^ a b c d Koko, Abdalrhaman; Elmukashfi, Elsiddig; Becker, Thorsten H.; Karamched, Phani S.; Wilkinson, Angus J.; Marrow, T. James (2022). "In situ characterisation of the strain fields of intragranular slip bands in ferrite by high-resolution electron backscatter diffraction". Acta Materialia. 239: 118284. Bibcode:2022AcMat.23918284K. doi:10.1016/j.actamat.2022.118284. S2CID 251783802.  This article incorporates text from this source, which is available under the CC BY 4.0 license.
  25. ^ "Sample Preparation Techniques for EBSD Analysis (Electron Backscatter Diffraction)". AZoNano.com. 15 November 2013. from the original on 2 March 2023.
  26. ^ Williams, B. David (2009). Transmission electron microscopy: a textbook for materials science. Plenum Press. p. 11. ISBN 978-0-387-76501-3. OCLC 633626308.
  27. ^ Britton, T.B.; Jiang, J.; Clough, R.; Tarleton, E.; Kirkland, A.I.; Wilkinson, A.J. (2013). "Assessing the precision of strain measurements using electron backscatter diffraction – Part 2: Experimental demonstration". Ultramicroscopy. 135: 136–141. doi:10.1016/j.ultramic.2013.08.006. PMID 24034981.
  28. ^ Jiang, J.; Britton, T.B.; Wilkinson, A.J. (2013). "Evolution of dislocation density distributions in copper during tensile deformation". Acta Materialia. 61 (19): 7227–7239. Bibcode:2013AcMat..61.7227J. doi:10.1016/j.actamat.2013.08.027.
  29. ^ Abdolvand, Hamidreza; Wilkinson, Angus J. (2016). "On the effects of reorientation and shear transfer during twin formation: Comparison between high-resolution electron backscatter diffraction experiments and a crystal plasticity finite element model". International Journal of Plasticity. 84: 160–182. doi:10.1016/j.ijplas.2016.05.006. S2CID 139049848.
  30. ^ Koko, Abdalrhaman; Becker, Thorsten H.; Elmukashfi, Elsiddig; Pugno, Nicola M.; Wilkinson, Angus J.; Marrow, T. James (2023). "HR-EBSD analysis of in situ stable crack growth at the micron scale". Journal of the Mechanics and Physics of Solids. 172: 105173. arXiv:2206.10243. Bibcode:2023JMPSo.17205173K. doi:10.1016/j.jmps.2022.105173. S2CID 249889649.
  31. ^ a b Wilkinson, Angus J.; Randman, David (2010). "Determination of elastic strain fields and geometrically necessary dislocation distributions near nanoindents using electron back scatter diffraction" (PDF). Philosophical Magazine. 90 (9): 1159–1177. Bibcode:2010PMag...90.1159W. doi:10.1080/14786430903304145. S2CID 121903030. (PDF) from the original on 3 March 2023. Retrieved 20 March 2023.
  32. ^ Griffiths, A J V; Walther, T (2010). "Quantification of carbon contamination under electron beam irradiation in a scanning transmission electron microscope and its suppression by plasma cleaning". Journal of Physics: Conference Series. 241 (1): 012017. Bibcode:2010JPhCS.241a2017G. doi:10.1088/1742-6596/241/1/012017. S2CID 250689401.
  33. ^ Koko, Abdalrhaman; Elmukashfi, Elsiddig; Dragnevski, Kalin; Wilkinson, Angus J.; Marrow, Thomas James (2021). "J-integral analysis of the elastic strain fields of ferrite deformation twins using electron backscatter diffraction". Acta Materialia. 218: 117203. Bibcode:2021AcMat.21817203K. doi:10.1016/j.actamat.2021.117203. from the original on 5 July 2022. Retrieved 20 March 2023.
  34. ^ Bachmann, F.; Hielscher, Ralf; Schaeben, Helmut (2010). "Texture Analysis with MTEX – Free and Open Source Software Toolbox". Solid State Phenomena. 160: 63–68. doi:10.4028/www.scientific.net/SSP.160.63. S2CID 136017346.
  35. ^ Powell, C. J.; Jablonski, A. (2011). "Surface Sensitivity of Auger-Electron Spectroscopy and X-ray Photoelectron Spectroscopy". Journal of Surface Analysis. 17 (3): 170–176. doi:10.1384/jsa.17.170.
  36. ^ Piňos, J.; Mikmeková, Š.; Frank, L. (2017). "About the information depth of backscattered electron imaging". Journal of Microscopy. 266 (3): 335–342. doi:10.1111/jmi.12542. PMID 28248420. S2CID 35266526.
  37. ^ a b c Zaefferer, S. (2007). "On the formation mechanisms, spatial resolution and intensity of backscatter Kikuchi patterns". Ultramicroscopy. 107 (2): 254–266. doi:10.1016/j.ultramic.2006.08.007. PMID 17055170.
  38. ^ Seah, M. P. (2001). "Summary of ISO/TC 201 Standard: VIII, ISO 18115:2001—Surface chemical analysis—Vocabulary". Surface and Interface Analysis. 31 (11): 1048–1049. doi:10.1002/sia.1139. S2CID 97982609.
  39. ^ Dingley, D. (2004). "Progressive steps in the development of electron backscatter diffraction and orientation imaging microscopy: EBSD AND OIM". Journal of Microscopy. 213 (3): 214–224. doi:10.1111/j.0022-2720.2004.01321.x. PMID 15009688. S2CID 41385346.
  40. ^ a b Isabell, Thomas C.; Dravid, Vinayak P. (1 June 1997). "Resolution and sensitivity of electron backscattered diffraction in a cold field emission gun SEM". Ultramicroscopy. Frontiers in Electron Microscopy in Materials Science. 67 (1): 59–68. doi:10.1016/S0304-3991(97)00003-X.
  41. ^ Humphreys, F. J (2004). "Characterisation of fine-scale microstructures by electron backscatter diffraction (EBSD)". Scripta Materialia. Viewpoint set no. 35. Metals and alloys with a structural scale from the micrometer to the atomic dimensions. 51 (8): 771–776. doi:10.1016/j.scriptamat.2004.05.016.
  42. ^ Goldstein, Joseph I.; Newbury, Dale E.; Michael, Joseph R.; Ritchie, Nicholas W. M.; Scott, John Henry J.; Joy, David C. (2018), Goldstein, Joseph I.; Newbury, Dale E.; Michael, Joseph R.; Ritchie, Nicholas W.M. (eds.), "The Visibility of Features in SEM Images", Scanning Electron Microscopy and X-Ray Microanalysis, New York, New York: Springer, pp. 123–131, doi:10.1007/978-1-4939-6676-9_8, ISBN 978-1-4939-6676-9
  43. ^ a b Zhu, Chaoyi; De Graef, Marc (2020). "EBSD pattern simulations for an interaction volume containing lattice defects". Ultramicroscopy. 218: 113088. doi:10.1016/j.ultramic.2020.113088. PMID 32784084. S2CID 221123906.
  44. ^ Ren, S. X.; Kenik, E. A.; Alexander, K. B. (1997). "Monte Carlo Simulation of Spatial Resolution for Electron Backscattered Diffraction (EBSD) with Application to Two-Phase Materials". Microscopy and Microanalysis. 3 (S2): 575–576. Bibcode:1997MiMic...3S.575R. doi:10.1017/S1431927600009764. S2CID 137029133. from the original on 25 March 2023. Retrieved 20 March 2023.
  45. ^ Brodusch, Nicolas; Demers, Hendrix; Gauvin, Raynald (2018). "Imaging with a Commercial Electron Backscatter Diffraction (EBSD) Camera in a Scanning Electron Microscope: A Review". Journal of Imaging. 4 (7): 88. doi:10.3390/jimaging4070088.
  46. ^ Michiyoshi, Tanaka (1988). Convergent beam electron diffraction (PDF). Jeol. OCLC 312738225. (PDF) from the original on 20 March 2023. Retrieved 20 March 2023.
  47. ^ a b Winkelmann, Aimo (2009), Schwartz, Adam J.; Kumar, Mukul; Adams, Brent L.; Field, David P. (eds.), "Dynamical Simulation of Electron Backscatter Diffraction Patterns", Electron Backscatter Diffraction in Materials Science, Boston, MA: Springer US, pp. 21–33, doi:10.1007/978-0-387-88136-2_2, ISBN 978-0-387-88136-2, S2CID 122806598
  48. ^ a b El-Dasher, Bassem; Deal, Andrew (2009), Schwartz, Adam J.; Kumar, Mukul; Adams, Brent L.; Field, David P. (eds.), "Application of Electron Backscatter Diffraction to Phase Identification", Electron Backscatter Diffraction in Materials Science, Boston, MA: Springer US, pp. 81–95, doi:10.1007/978-0-387-88136-2_6, ISBN 978-0-387-88136-2, from the original on 25 March 2023, retrieved 20 March 2023
  49. ^ "New technique provides detailed views of metals' crystal structure". MIT News | Massachusetts Institute of Technology. 6 July 2016. from the original on 2 March 2023.
  50. ^ a b c Electron backscatter diffraction in materials science (2nd ed.). Springer Science+Business Media. 2009. p. 1. ISBN 978-0-387-88135-5.
  51. ^ Wright, Stuart I.; Zhao, Jun-Wu; Adams, Brent L. (1991). "Automated Determination of Lattice Orientation From Electron Backscattered Kikuchi Diffraction Patterns". Texture, Stress, and Microstructure. 13 (2–3): 123–131. doi:10.1155/TSM.13.123.
  52. ^ Wright, Stuart I.; Adams, Brent L.; Kunze, Karsten (1993). "Application of a new automatic lattice orientation measurement technique to polycrystalline aluminum". Materials Science and Engineering: A. 160 (2): 229–240. doi:10.1016/0921-5093(93)90452-K.
  53. ^ Lassen, Niels Chr. Krieger (1992). "Automatic crystal orientation determination from EBSPs". Micron and Microscopica Acta. 23 (1): 191–192. doi:10.1016/0739-6260(92)90133-X.
  54. ^ Krieger Lassen, N.C.; Juul Jensen, Dorte; Condradsen, K. (1994). "Automatic Recognition of Deformed and Recrystallized Regions in Partly Recrystallized Samples Using Electron Back Scattering Patterns". Materials Science Forum. 157–162: 149–158. doi:10.4028/www.scientific.net/msf.157-162.149. S2CID 137129038.
  55. ^ Wright, Stuart I.; Nowell, Matthew M.; Lindeman, Scott P.; Camus, Patrick P.; De Graef, Marc; Jackson, Michael A. (2015). "Introduction and comparison of new EBSD post-processing methodologies". Ultramicroscopy. 159: 81–94. doi:10.1016/j.ultramic.2015.08.001. PMID 26342553.
  56. ^ Randle, Valerie (2009). "Electron backscatter diffraction: Strategies for reliable data acquisition and processing". Materials Characterization. 60 (9): 913–922. doi:10.1016/j.matchar.2009.05.011.
  57. ^ a b c Lassen, Niels Christian Krieger (1994). Automated Determination of Crystal Orientations from Electron Backscattering Patterns (PDF) (PhD thesis). The Technical University of Denmark. (PDF) from the original on 8 March 2022.
  58. ^ Sitzman, Scott; Schmidt, Niels-Henrik; Palomares-Garcia, Alberto; Munoz-Moreno, Rocio; Goulden, Jenny (2015). "Addressing Pseudo-Symmetric Misindexing in EBSD Analysis of γ-TiAl with High Accuracy Band Detection". Microscopy and Microanalysis. 21 (S3): 2037–2038. Bibcode:2015MiMic..21S2037S. doi:10.1017/s143192761501096x. S2CID 51964340.
  59. ^ Lenthe, W.; Singh, S.; De Graef, M. (2019). "Prediction of potential pseudo-symmetry issues in the indexing of electron backscatter diffraction patterns". Journal of Applied Crystallography. 52 (5): 1157–1168. Bibcode:2019JApCr..52.1157L. doi:10.1107/S1600576719011233. OSTI 1575873. S2CID 204108200.
  60. ^ Dingley, David J.; Wright, S.I. (2009), Schwartz, Adam J.; Kumar, Mukul; Adams, Brent L.; Field, David P. (eds.), "Phase Identification Through Symmetry Determination in EBSD Patterns", Electron Backscatter Diffraction in Materials Science, Boston, MA: Springer US, pp. 97–107, doi:10.1007/978-0-387-88136-2_7, ISBN 978-0-387-88136-2
  61. ^ a b Winkelmann, Aimo; Trager-Cowan, Carol; Sweeney, Francis; Day, Austin P.; Parbrook, Peter (2007). "Many-beam dynamical simulation of electron backscatter diffraction patterns". Ultramicroscopy. 107 (4): 414–421. doi:10.1016/j.ultramic.2006.10.006. PMID 17126489.
  62. ^ Britton, T. B.; Tong, V. S.; Hickey, J.; Foden, A.; Wilkinson, A. J. (2018). "AstroEBSD: exploring new space in pattern indexing with methods launched from an astronomical approach". Journal of Applied Crystallography. 51 (6): 1525–1534. arXiv:1804.02602. Bibcode:2018JApCr..51.1525B. doi:10.1107/S1600576718010373. S2CID 51687153.
  63. ^ Britton, Thomas Benjamin; Tong, Vivian S.; Hickey, Jim; Foden, Alex; Wilkinson, Angus J. (2018). "AstroEBSD : exploring new space in pattern indexing with methods launched from an astronomical approach". Journal of Applied Crystallography. 51 (6): 1525–1534. arXiv:1804.02602. Bibcode:2018JApCr..51.1525B. doi:10.1107/S1600576718010373. S2CID 51687153.
  64. ^ Pang, Edward L.; Larsen, Peter M.; Schuh, Christopher A. (2020). "Global optimization for accurate determination of EBSD pattern centers". Ultramicroscopy. 209: 112876. arXiv:1908.10692. doi:10.1016/j.ultramic.2019.112876. PMID 31707232. S2CID 201651309.
  65. ^ Tanaka, Tomohito; Wilkinson, Angus J. (1 July 2019). "Pattern matching analysis of electron backscatter diffraction patterns for pattern centre, crystal orientation and absolute elastic strain determination – accuracy and precision assessment". Ultramicroscopy. 202: 87–99. arXiv:1904.06891. doi:10.1016/j.ultramic.2019.04.006. PMID 31005023. S2CID 119294636.
  66. ^ Foden, A.; Collins, D.M.; Wilkinson, A.J.; Britton, T.B. (2019). "Indexing electron backscatter diffraction patterns with a refined template matching approach". Ultramicroscopy. 207: 112845. arXiv:1807.11313. doi:10.1016/j.ultramic.2019.112845. PMID 31586829. S2CID 203307560.
  67. ^ Jackson, M. A.; Pascal, E.; De Graef, M. (2019). "Dictionary Indexing of Electron Back-Scatter Diffraction Patterns: a Hands-On Tutorial". Integrating Materials and Manufacturing Innovation. 8 (2): 226–246. doi:10.1007/s40192-019-00137-4. S2CID 182073071.
  68. ^ Dingley, D. J.; Randle, V. (1992). "Microtexture determination by electron back-scatter diffraction". Journal of Materials Science. 27 (17): 4545–4566. Bibcode:1992JMatS..27.4545D. doi:10.1007/BF01165988. S2CID 137281137.
  69. ^ Adams, Brent L. (1997). "Orientation imaging microscopy: Emerging and future applications". Ultramicroscopy. Frontiers in Electron Microscopy in Materials Science. 67 (1): 11–17. doi:10.1016/S0304-3991(96)00103-9.
  70. ^ Hielscher, Ralf; Bartel, Felix; Britton, Thomas Benjamin (2019). "Gazing at crystal balls: Electron backscatter diffraction pattern analysis and cross-correlation on the sphere". Ultramicroscopy. 207: 112836. arXiv:1810.03211. doi:10.1016/j.ultramic.2019.112836. PMID 31539865. S2CID 202711517.
  71. ^ Hielscher, R.; Silbermann, C. B.; Schmidl, E.; Ihlemann, Joern (2019). "Denoising of crystal orientation maps". Journal of Applied Crystallography. 52 (5): 984–996. Bibcode:2019JApCr..52..984H. doi:10.1107/s1600576719009075. S2CID 202068671.
  72. ^ a b Adams, Brent L.; Wright, Stuart I.; Kunze, Karsten (1993). "Orientation imaging: The emergence of a new microscopy". Metallurgical Transactions A. 24 (4): 819–831. Bibcode:1993MTA....24..819A. doi:10.1007/BF02656503. S2CID 137379846.
  73. ^ Randle, Valerie; Engler, Olaf (2000). Introduction to texture analysis: macrotexture, microtexture and orientation mapping (Digital printing 2003 ed.). Boca Raton: CRC Press. ISBN 978-9056992248.
  74. ^ a b Prior (1999). "Problems in determining the misorientation axes, for small angular misorientations, using electron backscatter diffraction in the SEM". Journal of Microscopy. 195 (3): 217–225. doi:10.1046/j.1365-2818.1999.00572.x. PMID 10460687. S2CID 10144078.
  75. ^ Humphreys, F. J. (2001). "Review Grain and subgrain characterisation by electron backscatter diffraction". Journal of Materials Science. 36 (16): 3833–3854. doi:10.1023/A:1017973432592. S2CID 135659350.
  76. ^ a b Wilkinson, Angus J.; Hirsch, Peter B. (1997). "Electron diffraction based techniques in scanning electron microscopy of bulk materials". Micron. 28 (4): 279–308. arXiv:1904.05550. doi:10.1016/S0968-4328(97)00032-2. S2CID 118944816.
  77. ^ Shi, Qiwei; Roux, Stéphane; Latourte, Félix; Hild, François (2019). "Estimation of elastic strain by integrated image correlation on electron diffraction patterns". Ultramicroscopy. 199: 16–33. doi:10.1016/j.ultramic.2019.02.001. PMID 30738984. S2CID 73418370.
  78. ^ Lassen, N. C. Krieger; Jensen, Dorte Juul; Condradsen, K. (1994). "Automatic Recognition of Deformed and Recrystallized Regions in Partly Recrystallized Samples Using Electron Back Scattering Patterns". Materials Science Forum. 157–162: 149–158. doi:10.4028/www.scientific.net/MSF.157-162.149. S2CID 137129038. from the original on 2 March 2023. Retrieved 2 March 2023.
  79. ^ Wilkinson, A. J. (1 January 1997). "Methods for determining elastic strains from electron backscatter diffraction and electron channelling patterns". Materials Science and Technology. 13 (1): 79–84. Bibcode:1997MatST..13...79W. doi:10.1179/mst.1997.13.1.79.
  80. ^ Troost, K. Z.; van der Sluis, P.; Gravesteijn, D. J. (1993). "Microscale elastic-strain determination by backscatter Kikuchi diffraction in the scanning electron microscope". Applied Physics Letters. 62 (10): 1110–1112. Bibcode:1993ApPhL..62.1110T. doi:10.1063/1.108758.
  81. ^ Wilkinson, A. J.; Dingley, D. J. (1991). "Quantitative deformation studies using electron back scatter patterns". Acta Metallurgica et Materialia. 39 (12): 3047–3055. doi:10.1016/0956-7151(91)90037-2.
  82. ^ Wilkinson, Angus J. (1996). "Measurement of elastic strains and small lattice rotations using electron back scatter diffraction". Ultramicroscopy. 62 (4): 237–247. doi:10.1016/0304-3991(95)00152-2. PMID 22666906.
  83. ^ Wilkinson, A. J.; Meaden, G.; Dingley, D. J. (1 November 2006). "High resolution mapping of strains and rotations using electron backscatter diffraction". Materials Science and Technology. 22 (11): 1271–1278. Bibcode:2006MatST..22.1271W. doi:10.1179/174328406X130966. S2CID 135875163. from the original on 25 March 2023. Retrieved 20 March 2023.
  84. ^ a b c d e f g h Wilkinson, Angus J.; Meaden, Graham; Dingley, David J. (2006). "High-resolution elastic strain measurement from electron backscatter diffraction patterns: New levels of sensitivity". Ultramicroscopy. 106 (4): 307–313. doi:10.1016/j.ultramic.2005.10.001. PMID 16324788.
  85. ^ Barabash, Rozaliya; Ice, Gene (2013). Strain and Dislocation Gradients from Diffraction. doi:10.1142/p897. ISBN 978-1-908979-62-9.
  86. ^ a b c d Britton, T. B.; Wilkinson, A. J. (2012). "High resolution electron backscatter diffraction measurements of elastic strain variations in the presence of larger lattice rotations". Ultramicroscopy. 114: 82–95. doi:10.1016/j.ultramic.2012.01.004. PMID 22366635.
  87. ^ a b c Wilkinson, Angus J.; Dingley, David J.; Meaden, Graham (2009), Schwartz, Adam J.; Kumar, Mukul; Adams, Brent L.; Field, David P. (eds.), "Strain Mapping Using Electron Backscatter Diffraction", Electron Backscatter Diffraction in Materials Science, Boston, MA: Springer US, pp. 231–249, doi:10.1007/978-0-387-88136-2_17, ISBN 978-0-387-88136-2
  88. ^ a b Hardin, T.J.; Ruggles, T.J.; Koch, D.P.; Niezgoda, S.R.; Fullwood, D.T.; Homer, E.R. (2015). "Analysis of traction-free assumption in high-resolution EBSD measurements: HR-EBSD TRACTION-FREE ASSUMPTION". Journal of Microscopy. 260 (1): 73–85. doi:10.1111/jmi.12268. PMID 26138919. S2CID 25692536.
  89. ^ Pantleon, W. (1 June 2008). "Resolving the geometrically necessary dislocation content by conventional electron backscattering diffraction". Scripta Materialia. 58 (11): 994–997. doi:10.1016/j.scriptamat.2008.01.050.
  90. ^ Brewer, Luke N.; Field, David P.; Merriman, Colin C. (2009), Schwartz, Adam J.; Kumar, Mukul; Adams, Brent L.; Field, David P. (eds.), "Mapping and Assessing Plastic Deformation Using EBSD", Electron Backscatter Diffraction in Materials Science, Boston, MA: Springer US, pp. 251–262, doi:10.1007/978-0-387-88136-2_18, ISBN 978-0-387-88136-2
  91. ^ a b Plancher, E.; Petit, J.; Maurice, C.; Favier, V.; Saintoyant, L.; Loisnard, D.; Rupin, N.; Marijon, J.-B.; Ulrich, O.; Bornert, M.; Micha, J.-S.; Robach, O.; Castelnau, O. (1 March 2016). "On the Accuracy of Elastic Strain Field Measurements by Laue Microdiffraction and High-Resolution EBSD: a Cross-Validation Experiment" (PDF). Experimental Mechanics. 56 (3): 483–492. doi:10.1007/s11340-015-0114-1. S2CID 255157494. (PDF) from the original on 13 March 2020. Retrieved 20 March 2023.
  92. ^ Maurice, Claire; Driver, Julian H.; Fortunier, Roland (2012). "On solving the orientation gradient dependency of high angular resolution EBSD". Ultramicroscopy. 113: 171–181. doi:10.1016/j.ultramic.2011.10.013.
  93. ^ a b Koko, Abdalrhaman; Marrow, James; Elmukashfi, Elsiddig (12 June 2022). "A Computational Method for the Determination of the Elastic Displacement Field using Measured Elastic Deformation Field". arXiv:2107.10330 [cond-mat.mtrl-sci].  This article incorporates text from this source, which is available under the CC BY 4.0 license.
  94. ^ Ruggles, T. J.; Bomarito, G. F.; Qiu, R. L.; Hochhalter, J. D. (1 December 2018). "New levels of high angular resolution EBSD performance via inverse compositional Gauss–Newton based digital image correlation". Ultramicroscopy. 195: 85–92. doi:10.1016/j.ultramic.2018.08.020. PMC 7780544. PMID 30216795.
  95. ^ Vermeij, T.; Hoefnagels, J. P. M. (2018). "A consistent full-field integrated DIC framework for HR-EBSD" (PDF). Ultramicroscopy. 191: 44–50. doi:10.1016/j.ultramic.2018.05.001. PMID 29772417. S2CID 21685690. (PDF) from the original on 16 July 2021. Retrieved 20 March 2023.
  96. ^ Ernould, Clément; Beausir, Benoît; Fundenberger, Jean-Jacques; Taupin, Vincent; Bouzy, Emmanuel (2021). "Integrated correction of optical distortions for global HR-EBSD techniques". Ultramicroscopy. 221: 113158. doi:10.1016/j.ultramic.2020.113158. PMID 33338818. S2CID 228997006.
  97. ^ Shi, Qiwei; Loisnard, Dominique; Dan, Chengyi; Zhang, Fengguo; Zhong, Hongru; Li, Han; Li, Yuda; Chen, Zhe; Wang, Haowei; Roux, Stéphane (2021). "Calibration of crystal orientation and pattern center of EBSD using integrated digital image correlation" (PDF). Materials Characterization. 178: 111206. doi:10.1016/j.matchar.2021.111206. S2CID 236241507. (PDF) from the original on 25 March 2023. Retrieved 20 March 2023.
  98. ^ a b c d Maurice, Claire; Fortunier, Roland; Driver, Julian; Day, Austin; Mingard, Ken; Meaden, Graham (2010). "Comments on the paper "Bragg's law diffraction simulations for electron backscatter diffraction analysis" by Josh Kacher, Colin Landon, Brent L. Adams & David Fullwood". Ultramicroscopy. 110 (7): 758–759. doi:10.1016/j.ultramic.2010.02.003. PMID 20223590.
  99. ^ a b Wright, Stuart I.; Nowell, Matthew M. (2006). "EBSD Image Quality Mapping". Microscopy and Microanalysis. 12 (1): 72–84. Bibcode:2006MiMic..12...72W. doi:10.1017/s1431927606060090. PMID 17481343. S2CID 35055001.
  100. ^ Jiang, Jun; Zhang, Tiantian; Dunne, Fionn P. E.; Britton, T. Ben (2016). "Deformation compatibility in a single crystalline Ni superalloy". Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences. 472 (2185): 20150690. Bibcode:2016RSPSA.47250690J. doi:10.1098/rspa.2015.0690. PMC 4786046. PMID 26997901.
  101. ^ a b c d Mikami, Yoshiki; Oda, Kazuo; Kamaya, Masayuki; Mochizuki, Masahito (2015). "Effect of reference point selection on microscopic stress measurement using EBSD". Materials Science and Engineering: A. 647: 256–264. doi:10.1016/j.msea.2015.09.004.
  102. ^ Koko, A.; Earp, P.; Wigger, T.; Tong, J.; Marrow, T. J. (2020). "J-integral analysis: An EDXD and DIC comparative study for a fatigue crack". International Journal of Fatigue. 134: 105474. doi:10.1016/j.ijfatigue.2020.105474. S2CID 214391445. from the original on 27 January 2021. Retrieved 20 March 2023.
  103. ^ Kacher, Josh; Landon, Colin; Adams, Brent L.; Fullwood, David (1 August 2009). "Bragg's Law diffraction simulations for electron backscatter diffraction analysis". Ultramicroscopy. 109 (9): 1148–1156. doi:10.1016/j.ultramic.2009.04.007. PMID 19520512.
  104. ^ Winkelmann, A; Nolze, G; Vos, M; Salvat-Pujol, F; Werner, W S M (2016). "Physics-based simulation models for EBSD: advances and challenges". IOP Conference Series: Materials Science and Engineering. 109 (1): 012018. arXiv:1505.07982. Bibcode:2016MS&E..109a2018W. doi:10.1088/1757-899x/109/1/012018. S2CID 38586851.
  105. ^ Alkorta, Jon; Marteleur, Matthieu; Jacques, Pascal J. (2017). "Improved simulation based HR-EBSD procedure using image gradient based DIC techniques". Ultramicroscopy. 182: 17–27. doi:10.1016/j.ultramic.2017.06.015. PMID 28644960.
  106. ^ Winkelmann, Aimo; Nolze, Gert; Cios, Grzegorz; Tokarski, Tomasz; Bała, Piotr; Hourahine, Ben; Trager-Cowan, Carol (November 2021). "Kikuchi pattern simulations of backscattered and transmitted electrons" (PDF). Journal of Microscopy. 284 (2): 157–184. doi:10.1111/jmi.13051. PMID 34275156. S2CID 236091618. (PDF) from the original on 25 March 2023. Retrieved 20 March 2023.
  107. ^ Winkelmann, A. (2010). "Principles of depth-resolved Kikuchi pattern simulation for electron backscatter diffraction: KIKUCHI PATTERN SIMULATION FOR EBSD". Journal of Microscopy. 239 (1): 32–45. doi:10.1111/j.1365-2818.2009.03353.x. PMID 20579267. S2CID 23590722.
  108. ^ Vermeij, Tijmen; De Graef, Marc; Hoefnagels, Johan (15 March 2019). "Demonstrating the potential of accurate absolute cross-grain stress and orientation correlation using electron backscatter diffraction". Scripta Materialia. 162: 266–271. arXiv:1807.03908. doi:10.1016/j.scriptamat.2018.11.030. S2CID 54575778.
  109. ^ a b Tanaka, Tomohito; Wilkinson, Angus J. (1 July 2019). "Pattern matching analysis of electron backscatter diffraction patterns for pattern centre, crystal orientation and absolute elastic strain determination – accuracy and precision assessment". Ultramicroscopy. 202: 87–99. arXiv:1904.06891. doi:10.1016/j.ultramic.2019.04.006. PMID 31005023. S2CID 119294636.
  110. ^ Kacher, Josh; Basinger, Jay; Adams, Brent L.; Fullwood, David T. (1 June 2010). "Reply to comment by Maurice et al. in response to "Bragg's Law Diffraction Simulations for Electron Backscatter Diffraction Analysis"". Ultramicroscopy. 110 (7): 760–762. doi:10.1016/j.ultramic.2010.02.004. PMID 20189305.
  111. ^ Britton, T. B.; Maurice, C.; Fortunier, R.; Driver, J. H.; Day, A. P.; Meaden, G.; Dingley, D. J.; Mingard, K.; Wilkinson, A. J. (2010). "Factors affecting the accuracy of high resolution electron backscatter diffraction when using simulated patterns". Ultramicroscopy. 110 (12): 1443–1453. doi:10.1016/j.ultramic.2010.08.001. PMID 20888125.
  112. ^ Alkorta, Jon (1 August 2013). "Limits of simulation based high resolution EBSD". Ultramicroscopy. 131: 33–38. doi:10.1016/j.ultramic.2013.03.020. PMID 23676453.
  113. ^ Jackson, Brian E.; Christensen, Jordan J.; Singh, Saransh; De Graef, Marc; Fullwood, David T.; Homer, Eric R.; Wagoner, Robert H. (August 2016). "Performance of Dynamically Simulated Reference Patterns for Cross-Correlation Electron Backscatter Diffraction". Microscopy and Microanalysis. 22 (4): 789–802. Bibcode:2016MiMic..22..789J. doi:10.1017/S143192761601148X. PMID 27509538. S2CID 24482631.
  114. ^ Zhang, Tiantian; Collins, David M.; Dunne, Fionn P. E.; Shollock, Barbara A. (2014). "Crystal plasticity and high-resolution electron backscatter diffraction analysis of full-field polycrystal Ni superalloy strains and rotations under thermal loading". Acta Materialia. 80: 25–38. doi:10.1016/j.actamat.2014.07.036. hdl:10044/1/25979.
  115. ^ Guo, Yi; Zong, Cui; Britton, T. B. (2021). "Development of local plasticity around voids during tensile deformation". Materials Science and Engineering: A. 814: 141227. arXiv:2007.11890. doi:10.1016/j.msea.2021.141227. S2CID 234850241.
  116. ^ Jiang, J.; Britton, T. B.; Wilkinson, A. J. (1 November 2013). "Evolution of dislocation density distributions in copper during tensile deformation". Acta Materialia. 61 (19): 7227–7239. Bibcode:2013AcMat..61.7227J. doi:10.1016/j.actamat.2013.08.027.
  117. ^ Britton, T B; Hickey, J L R (2018). "Understanding deformation with high angular resolution electron backscatter diffraction (HR-EBSD)". IOP Conference Series: Materials Science and Engineering. 304 (1): 012003. arXiv:1710.00728. Bibcode:2018MS&E..304a2003B. doi:10.1088/1757-899x/304/1/012003. S2CID 54529072.
  118. ^ Kalácska, Szilvia; Dankházi, Zoltán; Zilahi, Gyula; Maeder, Xavier; Michler, Johann; Ispánovity, Péter Dusán; Groma, István (2020). "Investigation of geometrically necessary dislocation structures in compressed Cu micropillars by 3-dimensional HR-EBSD". Materials Science and Engineering: A. 770: 138499. arXiv:1906.06980. doi:10.1016/j.msea.2019.138499. S2CID 189928469. from the original on 17 July 2020. Retrieved 20 March 2023.
  119. ^ Wallis, David; Hansen, Lars N.; Britton, T. Ben; Wilkinson, Angus J. (2017). "Dislocation Interactions in Olivine Revealed by HR-EBSD: Dislocation Interactions in Olivine". Journal of Geophysical Research: Solid Earth. 122 (10): 7659–7678. doi:10.1002/2017JB014513. hdl:10044/1/50615. S2CID 134570945.
  120. ^ Moussa, C; Bernacki, M; Besnard, R; Bozzolo, N (2015). "About quantitative EBSD analysis of deformation and recovery substructures in pure Tantalum". IOP Conference Series: Materials Science and Engineering. 89 (1): 012038. Bibcode:2015MS&E...89a2038M. doi:10.1088/1757-899x/89/1/012038. S2CID 53137730.
  121. ^ Wright, Stuart I.; Matthew, M. Nowell; David, P. Field. (2011). "A review of strain analysis using electron backscatter diffraction". Microscopy and Microanalysis. 17. 17 (3): 316–329. Bibcode:2011MiMic..17..316W. doi:10.1017/S1431927611000055. PMID 21418731. S2CID 26116915.
  122. ^ Tao, Xiaodong; Eades, Alwyn (2002). "Alternatives to Image Quality (IQ) Mapping in EBSD". Microscopy and Microanalysis. 8 (S02): 692–693. Bibcode:2002MiMic...8S.692T. doi:10.1017/s1431927602106465. S2CID 138999871.
  123. ^ McLean, Mark J.; Osborn, William A. (2018). "In-situ elastic strain mapping during micromechanical testing using EBSD". Ultramicroscopy. 185: 21–26. doi:10.1016/j.ultramic.2017.11.007. PMID 29161620.
  124. ^ Yu, Hongbing; Liu, Junliang; Karamched, Phani; Wilkinson, Angus J.; Hofmann, Felix (2019). "Mapping the full lattice strain tensor of a single dislocation by high angular resolution transmission Kikuchi diffraction (HR-TKD)". Scripta Materialia. 164: 36–41. arXiv:1808.10055. doi:10.1016/j.scriptamat.2018.12.039. S2CID 119075799.
  125. ^ Prior, David J.; Mariani, Elisabetta; Wheeler, John (2009), "EBSD in the Earth Sciences: Applications, Common Practice, and Challenges", Electron Backscatter Diffraction in Materials Science, Boston, MA: Springer US, pp. 345–360, doi:10.1007/978-0-387-88136-2_26, ISBN 978-0-387-88135-5
  126. ^ Choi, Seung; Han, Seokyoung; Lee, Yuong-Nam (2019). Rahman, Imran (ed.). "Electron backscatter diffraction (EBSD) analysis of maniraptoran eggshells with important implications for microstructural and taphonomic interpretations". Palaeontology. 62 (5): 777–803. Bibcode:2019Palgy..62..777C. doi:10.1111/pala.12427. S2CID 182770470.
  127. ^ Wolfe, Kennedy; Smith, Abigail M.; Trimby, Patrick; Byrne, Maria (1 August 2013). "Microstructure of the paper nautilus (Argonauta nodosa) shell and the novel application of electron backscatter diffraction (EBSD) to address effects of ocean acidification". Marine Biology. 160 (8): 2271–2278. Bibcode:2013MarBi.160.2271W. doi:10.1007/s00227-012-2032-4. S2CID 253745873.
  128. ^ Piazolo, S.; Jessell, M. W.; Prior, D. J.; Bons, P. D. (2004). "The integration of experimental in-situ EBSD observations and numerical simulations: a novel technique of microstructural process analysis". Journal of Microscopy. 213 (3): 273–284. doi:10.1111/j.0022-2720.2004.01304.x. PMID 15009695. S2CID 24037204.
  129. ^ Koblischka-Veneva, Anjela; Koblischka, Michael R.; Schmauch, Jörg; Hannig, Matthias (2018). "Human dental enamel: A natural nanotechnology masterpiece investigated by TEM and t-EBSD". Nano Research. 11 (7): 3911–3921. doi:10.1007/s12274-018-1968-1. S2CID 139757769.
  130. ^ a b c Wright, Stuart I.; Nowell, Matthew M.; de Kloe, René; Camus, Patrick; Rampton, Travis (2015). "Electron imaging with an EBSD detector". Ultramicroscopy. 148: 132–145. doi:10.1016/j.ultramic.2014.10.002. PMID 25461590.
  131. ^ a b Schwarzer, Robert A; Hjelen, Jarle (9 January 2015). "Backscattered Electron Imaging with an EBSD Detector". Microscopy Today. 23 (1): 12–17. doi:10.1017/S1551929514001333. S2CID 138740715.
  132. ^ a b Tong, Vivian S.; Knowles, Alexander J.; Dye, David; Britton, T. Ben (1 January 2019). "Rapid electron backscatter diffraction mapping: Painting by numbers". Materials Characterization. 147: 271–279. arXiv:1809.07283. doi:10.1016/j.matchar.2018.11.014. S2CID 119328762.
  133. ^ "Discriminating Phases with Similar Crystal Structures Using Electron Backscatter Diffraction (EBSD) and Energy Dispersive X-Ray Spectrometry (EDS)". AZoNano.com. 2015. from the original on 2 March 2023.
  134. ^ Nolze, G.; Geist, V.; Neumann, R. Saliwan; Buchheim, M. (2005). "Investigation of orientation relationships by EBSD and EDS on the example of the Watson iron meteorite". Crystal Research and Technology. 40 (8): 791–804. Bibcode:2005CryRT..40..791N. doi:10.1002/crat.200410434. S2CID 96785527.
  135. ^ "Uncovering the tiny defects that make materials fail". Physics World. 29 November 2022. from the original on 3 March 2023.
  136. ^ Kell, J.; Tyrer, J. R.; Higginson, R. L.; Thomson, R. C. (2005). "Microstructural characterization of autogenous laser welds on 316L stainless steel using EBSD and EDS". Journal of Microscopy. 217 (2): 167–173. doi:10.1111/j.1365-2818.2005.01447.x. PMID 15683414. S2CID 12285114.
  137. ^ West, G.D.; Thomson, R.C. (2009). "Combined EBSD/EDS tomography in a dual-beam FIB/FEG-SEM". Journal of Microscopy. 233 (3): 442–450. doi:10.1111/j.1365-2818.2009.03138.x. PMID 19250465. S2CID 42955621.
  138. ^ Moser, D. E.; Cupelli, C. L.; Barker, I. R.; Flowers, R. M.; Bowman, J. R.; Wooden, J.; Hart, J.R. (2011). Davis, William J. (ed.). "New zircon shock phenomena and their use for dating and reconstruction of large impact structures revealed by electron nanobeam (EBSD, CL, EDS) and isotopic U–Pb and (U–Th)/He analysis of the Vredefort domeThis article is one of a series of papers published in this Special Issue on the theme of Geochronology in honour of Tom Krogh". Canadian Journal of Earth Sciences. 48 (2): 117–139. Bibcode:2011CaJES..48..117D. doi:10.1139/E11-011.
  139. ^ Laigo, J.; Christien, F.; Le Gall, R.; Tancret, F.; Furtado, J. (2008). "SEM, EDS, EPMA-WDS and EBSD characterization of carbides in HP type heat resistant alloys". Materials Characterization. 59 (11): 1580–1586. doi:10.1016/j.matchar.2008.02.001.
  140. ^ "Microscale Analysis of Lithium-Containing Compounds and Alloys". AZoM.com. 18 January 2023. from the original on 17 February 2023.
  141. ^ Wisniewski, Wolfgang; Švančárek, Peter; Prnová, Anna; Parchovianský, Milan; Galusek, Dušan (2020). "Y2O3–Al2O3 microsphere crystallization analyzed by electron backscatter diffraction (EBSD)". Scientific Reports. 10 (1): 11122. Bibcode:2020NatSR..1011122W. doi:10.1038/s41598-020-67816-7. PMC 7338460. PMID 32632218.
  142. ^ Ohfuji, Hiroaki; Yamamoto, Masashi (2015). "EDS quantification of light elements using osmium surface coating". Journal of Mineralogical and Petrological Sciences. 110 (4): 189–195. Bibcode:2015JMPeS.110..189O. doi:10.2465/jmps.141126. S2CID 93672390.
  143. ^ Frahm, Ellery (2014), "Scanning Electron Microscopy (SEM): Applications in Archaeology", Encyclopedia of Global Archaeology, New York, New York: Springer New York, pp. 6487–6495, doi:10.1007/978-1-4419-0465-2_341, ISBN 978-1-4419-0426-3
  144. ^ Stinville, J. C.; Callahan, P. G.; Charpagne, M. A.; Echlin, M. P.; Valle, V.; Pollock, T. M. (2020). "Direct measurements of slip irreversibility in a nickel-based superalloy using high-resolution digital image correlation". Acta Materialia. 186: 172–189. Bibcode:2020AcMat.186..172S. doi:10.1016/j.actamat.2019.12.009. OSTI 1803462. S2CID 213631580.
  145. ^ Charpagne, Marie-Agathe; Strub, Florian; Pollock, Tresa M. (2019). "Accurate reconstruction of EBSD datasets by a multimodal data approach using an evolutionary algorithm". Materials Characterization. 150: 184–198. arXiv:1903.02988. doi:10.1016/j.matchar.2019.01.033. S2CID 71144677.
  146. ^ Zhao, Chong; Stewart, David; Jiang, Jun; Dunne, Fionn P. E. (2018). "A comparative assessment of iron and cobalt-based hard-facing alloy deformation using HR-EBSD and HR-DIC". Acta Materialia. 159: 173–186. Bibcode:2018AcMat.159..173Z. doi:10.1016/j.actamat.2018.08.021. hdl:10044/1/68967. S2CID 139436094.
  147. ^ Orozco-Caballero, Alberto; Jackson, Thomas; da Fonseca, João Quinta (2021). "High-resolution digital image correlation study of the strain localization during loading of a shot-peened RR1000 nickel-based superalloy" (PDF). Acta Materialia. 220: 117306. Bibcode:2021AcMat.22017306O. doi:10.1016/j.actamat.2021.117306. S2CID 240539022. (PDF) from the original on 25 March 2023. Retrieved 20 March 2023.
  148. ^ Ye, Zhenhua; Li, Chuanwei; Zheng, Mengyao; Zhang, Xinyu; Yang, Xudong; Gu, Jianfeng (2022). "In situ EBSD/DIC-based investigation of deformation and fracture mechanism in FCC- and L12-structured FeCoNiV high-entropy alloys". International Journal of Plasticity. 152: 103247. doi:10.1016/j.ijplas.2022.103247. S2CID 246553822.
  149. ^ a b c Hestroffer, Jonathan M.; Stinville, Jean-Charles; Charpagne, Marie-Agathe; Miller, Matthew P.; Pollock, Tresa M.; Beyerlein, Irene J. (2023). "Slip localization behavior at triple junctions in nickel-base superalloys". Acta Materialia. 249: 118801. Bibcode:2023AcMat.24918801H. doi:10.1016/j.actamat.2023.118801. S2CID 257216017.
  150. ^ Sperry, Ryan; Han, Songyang; Chen, Zhe; Daly, Samantha H.; Crimp, Martin A.; Fullwood, David T. (2021). "Comparison of EBSD, DIC, AFM, and ECCI for active slip system identification in deformed Ti-7Al". Materials Characterization. 173: 110941. doi:10.1016/j.matchar.2021.110941. S2CID 233839426.
  151. ^ Gao, Wenjie; Lu, Junxia; Zhou, Jianli; Liu, Ling'en; Wang, Jin; Zhang, Yuefei; Zhang, Ze (2022). "Effect of grain size on deformation and fracture of Inconel718: An in-situ SEM-EBSD-DIC investigation". Materials Science and Engineering: A. 861: 144361. doi:10.1016/j.msea.2022.144361. S2CID 253797056.
  152. ^ Di Gioacchino, Fabio; Quinta da Fonseca, João (2015). "An experimental study of the polycrystalline plasticity of austenitic stainless steel". International Journal of Plasticity. 74: 92–109. doi:10.1016/j.ijplas.2015.05.012.
  153. ^ Mingard, K. P.; Roebuck, B.; Jones, H. G.; Stewart, M.; Cox, D.; Gee, M. G. (2018). "Visualisation and measurement of hardmetal microstructures in 3D". International Journal of Refractory Metals and Hard Materials. 71: 285–291. doi:10.1016/j.ijrmhm.2017.11.023.
  154. ^ a b Lin, F. X.; Godfrey, A.; Jensen, D. Juul; Winther, G. (2010). "3D EBSD characterization of deformation structures in commercial purity aluminum". Materials Characterization. 61 (11): 1203–1210. doi:10.1016/j.matchar.2010.07.013.
  155. ^ Khorashadizadeh, A.; Raabe, D.; Zaefferer, S.; Rohrer, G. S.; Rollett, A. D.; Winning, M. (2011). "Five-Parameter Grain Boundary Analysis by 3D EBSD of an Ultra Fine Grained CuZr Alloy Processed by Equal Channel Angular Pressing". Advanced Engineering Materials. 13 (4): 237–244. doi:10.1002/adem.201000259. S2CID 18389821.
  156. ^ Tsai, Shao-Pu; Konijnenberg, Peter J.; Gonzalez, Ivan; Hartke, Samuel; Griffiths, Thomas A.; Herbig, Michael; Kawano-Miyata, Kaori; Taniyama, Akira; Sano, Naoyuki; Zaefferer, Stefan (2022). "Development of a new, fully automated system for electron backscatter diffraction (EBSD)-based large volume three-dimensional microstructure mapping using serial sectioning by mechanical polishing, and its application to the analysis of special boundaries in 316L stainless steel". Review of Scientific Instruments. 93 (9): 093707. Bibcode:2022RScI...93i3707T. doi:10.1063/5.0087945. PMID 36182491. S2CID 252628156.
  157. ^ Zaafarani, N.; Raabe, D.; Singh, R. N.; Roters, F.; Zaefferer, S. (2006). "Three-dimensional investigation of the texture and microstructure below a nanoindent in a Cu single crystal using 3D EBSD and crystal plasticity finite element simulations". Acta Materialia. 54 (7): 1863–1876. Bibcode:2006AcMat..54.1863Z. doi:10.1016/j.actamat.2005.12.014. hdl:11858/00-001M-0000-0019-5A14-4.
  158. ^ Hashimoto, Teruo; Thompson, George E.; Zhou, Xiaorong; Withers, Philip J. (2016). "3D imaging by serial block face scanning electron microscopy for materials science using ultramicrotomy". Ultramicroscopy. 163: 6–18. doi:10.1016/j.ultramic.2016.01.005. PMID 26855205.
  159. ^ DeMott, Ryan; Haghdadi, Nima; Kong, Charlie; Gandomkar, Ziba; Kenney, Matthew; Collins, Peter; Primig, Sophie (2021). "3D electron backscatter diffraction characterization of fine α titanium microstructures: collection, reconstruction, and analysis methods". Ultramicroscopy. 230: 113394. doi:10.1016/j.ultramic.2021.113394. PMID 34614440. S2CID 238422160.
  160. ^ Konrad, J.; Zaefferer, S.; Raabe, D. (2006). "Investigation of orientation gradients around a hard Laves particle in a warm-rolled Fe3Al-based alloy using a 3D EBSD-FIB technique". Acta Materialia. 54 (5): 1369–1380. Bibcode:2006AcMat..54.1369K. doi:10.1016/j.actamat.2005.11.015.
  161. ^ Calcagnotto, Marion; Ponge, Dirk; Demir, Eralp; Raabe, Dierk (2010). "Orientation gradients and geometrically necessary dislocations in ultrafine-grained dual-phase steels studied by 2D and 3D EBSD". Materials Science and Engineering: A. 527 (10): 2738–2746. doi:10.1016/j.msea.2010.01.004.
  162. ^ Gholinia, A.; Brough, I.; Humphreys, J.; McDonald, D.; Bate, P. (2010). "An investigation of dynamic recrystallisation on Cu–Sn bronze using 3D EBSD". Materials Science and Technology. 26 (6): 685–690. Bibcode:2010MatST..26..685G. doi:10.1179/026708309X12547309760966. S2CID 137530768.
  163. ^ Pirgazi, Hadi (2019). "On the alignment of 3D EBSD data collected by serial sectioning technique". Materials Characterization. 152: 223–229. doi:10.1016/j.matchar.2019.04.026. S2CID 149835216.
  164. ^ Winiarski, B.; Gholinia, A.; Mingard, K.; Gee, M.; Thompson, G.; Withers, P. J. (2021). "Correction of artefacts associated with large area EBSD". Ultramicroscopy. 226: 113315. doi:10.1016/j.ultramic.2021.113315. PMID 34049196. S2CID 235241941.
  165. ^ Konijnenberg, P. J.; Zaefferer, S.; Raabe, D. (2015). "Assessment of geometrically necessary dislocation levels derived by 3D EBSD". Acta Materialia. 99: 402–414. Bibcode:2015AcMat..99..402K. doi:10.1016/j.actamat.2015.06.051.

Further reading edit

  • "Electron Backscatter Diffraction (EBSD)". DoITPoMS.
  • Britton, T. Ben; Jiang, Jun; Guo, Y.; Vilalta-Clemente, A.; Wallis, D.; Hansen, L.N.; Winkelmann, A.; Wilkinson, A.J. (July 2016). "Tutorial: Crystal orientations and EBSD — Or which way is up?". Materials Characterization. 117: 113–126. doi:10.1016/j.matchar.2016.04.008. hdl:10044/1/31250. S2CID 138070296.
  • Charpagne, Marie-Agathe; Strub, Florian; Pollock, Tresa M. (April 2019). "Accurate reconstruction of EBSD datasets by a multimodal data approach using an evolutionary algorithm". Materials Characterization. 150: 184–198. arXiv:1903.02988. doi:10.1016/j.matchar.2019.01.033. S2CID 71144677.
  • Jackson, M. A.; Pascal, E.; De Graef, M. (2019). "Dictionary Indexing of Electron Back-Scatter Diffraction Patterns: a Hands-On Tutorial". Integrating Materials and Manufacturing Innovation. 8 (2): 226–246. doi:10.1007/s40192-019-00137-4. S2CID 182073071.
  • Randle, Valerie (September 2009). "Electron backscatter diffraction: Strategies for reliable data acquisition and processing". Materials Characterization. 60 (90): 913–922. doi:10.1016/j.matchar.2009.05.011.
  • Schwartz, Adam J.; Kumar, Mukul; Adams, Brent L.; Field, David P., eds. (2009). Electron Backscatter Diffraction in Materials Science (2nd ed.). New York, New York: Springer New York, New York (published 12 August 2009). doi:10.1007/978-0-387-88136-2. ISBN 978-0-387-88135-5.
  • Zaefferer, S.; Raabe, D.; A., Khorashadizadeh. "Tomographic orientation microscopy (3D EBSD) on steels using a joint FIB SEM technique". Max Planck Institute for Iron Research.

External links edit

Codes edit

  • De Graef, M. (July 2017). "EMsoft (simulate EBSP)". GitHub.
  • Anes, Hakon (2020). "kikuchipy (process, simulate, analyze EBSD patterns with python)". kikuchipy.
  • Hielscher, Schaeben (2008). "MTEX (EBSD analysis)". MTEX.
  • Ruggles, T. J.; Bomarito, G. F.; Qiu, R. L.; Hochhalter, J. D. (1 December 2018). "OpenXY (HR-EBSD)". GitHub.
  • Tong, Vivian; Britton, Ben (July 2017). "TrueEBSD: correcting spatial distortions in electron backscatter diffraction maps". Ultramicroscopy. 221: 113130. arXiv:1909.00347. doi:10.1016/j.ultramic.2020.113130. PMID 33290982. S2CID 202538027.

Videos edit

  • Britton, Ben (11 January 2021). Introduction to EBSD: Section 1 - What can EBSD tell you?. YouTube.
  • Nowell, Matt (22 February 2022). Learn How I Prepare Samples for EBSD Analysis. EDAX (YouTube).
  • Wright, Stuart (31 January 2022). EBSD Analysis of Deformed Microstructures. EDAX (YouTube).
  • Electron Backscatter Diffraction Explained: QUANTAX EBSD. Bruker Nano Analytics (YouTube). 1 September 2020.

electron, backscatter, diffraction, ebsd, scanning, electron, microscopy, technique, used, study, crystallographic, structure, materials, ebsd, carried, scanning, electron, microscope, equipped, with, ebsd, detector, comprising, least, phosphorescent, screen, . Electron backscatter diffraction EBSD is a scanning electron microscopy SEM technique used to study the crystallographic structure of materials EBSD is carried out in a scanning electron microscope equipped with an EBSD detector comprising at least a phosphorescent screen a compact lens and a low light camera In the microscope an incident beam of electrons hits a tilted sample As backscattered electrons leave the sample they interact with the atoms and are both elastically diffracted and lose energy leaving the sample at various scattering angles before reaching the phosphor screen forming Kikuchi patterns EBSPs The EBSD spatial resolution depends on many factors including the nature of the material under study and the sample preparation They can be indexed to provide information about the material s grain structure grain orientation and phase at the micro scale EBSD is used for impurities and defect studies plastic deformation and statistical analysis for average misorientation grain size and crystallographic texture EBSD can also be combined with energy dispersive X ray spectroscopy EDS cathodoluminescence CL and wavelength dispersive X ray spectroscopy WDS for advanced phase identification and materials discovery An electron backscatter diffraction pattern of monocrystalline silicon taken at 20 kV with a field emission electron source The change and sharpness of the electron backscatter patterns EBSPs provide information about lattice distortion in the diffracting volume Pattern sharpness can be used to assess the level of plasticity Changes in the EBSP zone axis position can be used to measure the residual stress and small lattice rotations EBSD can also provide information about the density of geometrically necessary dislocations GNDs However the lattice distortion is measured relative to a reference pattern EBSP0 The choice of reference pattern affects the measurement precision e g a reference pattern deformed in tension will directly reduce the tensile strain magnitude derived from a high resolution map while indirectly influencing the magnitude of other components and the spatial distribution of strain Furthermore the choice of EBSP0 slightly affects the GND density distribution and magnitude 1 Contents 1 Pattern formation and collection 1 1 Setup geometry and pattern formation 1 2 EBSD detectors 1 3 Sample preparation 1 4 Depth resolution 2 Orientation and phase mapping 2 1 Pattern indexing 2 2 Pattern centre 2 3 EBSD mapping 3 Strain measurement 3 1 Earlier trials 3 2 High resolution electron backscatter diffraction HR EBSD 3 3 Precision and development 3 4 The reference pattern problem 3 5 Selecting a reference pattern 4 Applications 4 1 Scattered electron imaging 4 2 Integrated EBSD EDS mapping 4 3 Integrated EBSD DIC mapping 4 4 3D EBSD 5 Notes 6 References 7 Further reading 8 External links 8 1 Codes 8 2 VideosPattern formation and collection editSetup geometry and pattern formation edit Further information Electron diffraction and Kikuchi lines physics nbsp EBSD typical hardware configuration inside a field emission gun scanning electron microscope 2 For electron backscattering diffraction microscopy a flat polished crystalline specimen is usually placed inside the microscope chamber The sample is tilted at 70 from Scanning electron microscope SEM flat specimen positioning and 110 to the electron backscatter diffraction EBSD detector 3 Tilting the sample elongates the interaction volume perpendicular to the tilt axis allowing more electrons to leave the sample providing better signal 4 5 A high energy electron beam typically 20 kV is focused on a small volume and scatters with a spatial resolution of 20 nm at the specimen surface 6 The spatial resolution varies with the beam energy 6 angular width 7 interaction volume 8 nature of the material under study 6 and in transmission Kikuchi diffraction TKD with the specimen thickness 9 thus increasing the beam energy increases the interaction volume and decreases the spatial resolution 10 The EBSD detector is located within the specimen chamber of the SEM at an angle of approximately 90 to the pole piece The EBSD detector is typically a phosphor screen that is excited by the backscattered electrons 11 The screen is coupled to lens which focuses the image from the phosphor screen onto a charge coupled device CCD or complementary metal oxide semiconductor CMOS camera 12 In this configuration as the backscattered electrons leave the sample they interact with the Coulomb potential and also lose energy due to inelastic scattering leading to a range of scattering angles 8hkl 11 13 The backscattered electrons form Kikuchi lines having different intensities on an electron sensitive flat film screen commonly phosphor gathered to form a Kikuchi band These Kikuchi lines are the trace of a hyperbola formed by the intersection of Kossel cones with the plane of the phosphor screen The width of a Kikuchi band is related to the scattering angles and thus to the distance dhkl between lattice planes with Miller indexes h k and l 14 15 These Kikuchi lines and patterns were named after Seishi Kikuchi who together with Shoji Nishikawa ja was the first to notice this diffraction pattern in 1928 using transmission electron microscopy TEM 16 which is similar in geometry to X ray Kossel pattern 17 18 The systematically arranged Kikuchi bands which have a range of intensity along their width intersect around the centre of the regions of interest ROI describing the probed volume crystallography 19 These bands and their intersections form what is known as Kikuchi patterns or electron backscatter patterns EBSPs To improve contrast the patterns background is corrected by removing anisotropic inelastic scattering using static background correction or dynamic background correction 20 nbsp Single crystal 4H SiC gnomically projected EBSP collected using left conventional centre dynamic and right combined background correction EBSD detectors edit EBSD is conducted using an SEM equipped with an EBSD detector containing at least a phosphor screen compact lens and low light Charge coupled device CCD or Complementary metal oxide semiconductor CMOS camera As of September 2023 update commercially available EBSD systems typically come with one of two different CCD cameras for fast measurements the CCD chip has a native resolution of 640 480 pixels for slower and more sensitive measurements the CCD chip resolution can go up to 1600 1200 pixels 13 6 The biggest advantage of the high resolution detectors is their higher sensitivity and therefore the information within each diffraction pattern can be analysed in more detail For texture and orientation measurements the diffraction patterns are binned to reduce their size and computational times Modern CCD based EBSD systems can index patterns at a speed of up to 1800 patterns second This enables rapid and rich microstructural maps to be generated 14 21 Sample preparation edit nbsp Pattern degradation due to carbon deposition in a highly magnified location after 3 hour EBSPs acquisition around a deformation twin in the ferrite phase of duplex stainless steel 22 The sample should be vacuum stable It is typically mounted using a conductive compound e g an epoxy thermoset filled with Cu which minimises image drift and sample charging under electron beam irradiation EBSP quality is sensitive to surface preparation Typically the sample is ground using SiC papers from 240 down to 4000 grit and polished using diamond paste from 9 to 1 mm then in 50 nm colloidal silica Afterwards it is cleaned in ethanol rinsed with deionised water and dried with a hot air blower This may be followed by ion beam polishing for final surface preparation 23 24 25 Inside the SEM the size of the measurement area determines local resolution and measurement time 26 Usual settings for high quality EBSPs are 15 nA current 20 kV beam energy 18 mm working distance long exposure time and minimal CCD pixel binning 27 28 29 30 The EBSD phosphor screen is set at an 18 mm working distance and a map s step size of less than 0 5 mm for strain and dislocations density analysis 31 22 Decomposition of gaseous hydrocarbons and also hydrocarbons on the surface of samples by the electron beam inside the microscope results in carbon deposition 32 which degrades the quality of EBSPs inside the probed area compared to the EBSPs outside the acquisition window The gradient of pattern degradation increases moving inside the probed zone with an apparent accumulation of deposited carbon The black spots from the beam instant induced carbon deposition also highlight the immediate deposition even if agglomeration did not happen 33 34 Depth resolution edit Further information Electron scattering nbsp Electron matter interaction volume and various types of signal generated There is no agreement about the definition of depth resolution For example it can be defined as the depth where 92 of the signal is generated 35 36 or defined by pattern quality 37 or can be as ambiguous as where useful information is obtained 38 Even for a given definition depth resolution increases with electron energy and decreases with the average atomic mass of the elements making up the studied material for example it was estimated as 40 nm for Si and 10 nm for Ni at 20 kV energy 39 Unusually small values were reported for materials whose structure and composition vary along the thickness For example coating monocrystalline silicon with a few nm of amorphous chromium reduces the depth resolution to a few nm at 15 kV energy 37 In contrast Isabell and David 40 concluded that depth resolution in homogeneous crystals could also extend up to 1 mm due to inelastic scattering including tangential smearing and channelling effect 24 A recent comparison between reports on EBSD depth resolution Koko et al 24 indicated that most publications do not present a rationale for the definition of depth resolution while not including information on the beam size tilt angle beam to sample and sample to detector distances 24 These are critical parameters for determining or simulating the depth resolution 40 The beam current is generally not considered to affect the depth resolution in experiments or simulations However it affects the beam spot size and signal to noise ratio and hence indirectly the details of the pattern and its depth information 41 42 43 Monte Carlo simulations provide an alternative approach to quantifying the depth resolution for EBSPs formation which can be estimated using the Bloch wave theory where backscattered primary electrons after interacting with the crystal lattice exit the surface carrying information about the crystallinity of the volume interacting with the electrons 44 The backscattered electrons BSE energy distribution depends on the material s characteristics and the beam conditions 45 This BSE wave field is also affected by the thermal diffuse scattering process that causes incoherent and inelastic energy loss scattering after the elastic diffraction events which does not yet have a complete physical description that can be related to mechanisms that constitute EBSP depth resolution 46 47 Both the EBSD experiment and simulations typically make two assumptions that the surface is pristine and has a homogeneous depth resolution however neither of them is valid for a deformed sample 37 Orientation and phase mapping editPattern indexing edit nbsp Formation of Kossel cone which intersect with CCD screen to form EBSP which can be Bravais Miller indexed If the setup geometry is well described it is possible to relate the bands present in the diffraction pattern to the underlying crystal and crystallographic orientation of the material within the electron interaction volume Each band can be indexed individually by the Miller indices of the diffracting plane which formed it In most materials only three bands planes intersect and are required to describe a unique solution to the crystal orientation based on their interplanar angles Most commercial systems use look up tables with international crystal databases to index This crystal orientation relates the orientation of each sampled point to a reference crystal orientation 3 48 Indexing is often the first step in the EBSD process after pattern collection This allows for the identification of the crystal orientation at the single volume of the sample from where the pattern was collected 49 50 With EBSD software pattern bands are typically detected via a mathematical routine using a modified Hough transform in which every pixel in Hough space denotes a unique line band in the EBSP The Hough transform enables band detection which is difficult to locate by computer in the original EBSP Once the band locations have been detected it is possible to relate these locations to the underlying crystal orientation as angles between bands represent angles between lattice planes Thus an orientation solution can be determined when the position angles between three bands are known In highly symmetric materials more than three bands are typically used to obtain and verify the orientation measurement 50 The diffraction pattern is pre processed to remove noise correct for detector distortions and normalise the intensity Then the pre processed diffraction pattern is compared to a library of reference patterns for the material being studied The reference patterns are generated based on the material s known crystal structure and the crystal lattice s orientation The orientation of the crystal lattice that would generate the best match to the measured pattern is determined using a variety of algorithms There are three leading methods of indexing that are performed by most commercial EBSD software triplet voting 51 52 minimising the fit between the experimental pattern and a computationally determined orientation 53 54 and or and neighbour pattern averaging and re indexing NPAR 55 Indexing then give a unique solution to the single crystal orientation that is related to the other crystal orientations within the field of view 56 57 Triplet voting involves identifying multiple triplets associated with different solutions to the crystal orientation each crystal orientation determined from each triplet receives one vote Should four bands identify the same crystal orientation then four four choose three i e C 4 3 displaystyle C 4 3 nbsp votes will be cast for that particular solution Thus the candidate orientation with the highest number of votes will be the most likely solution to the underlying crystal orientation present The number of votes for the solution chosen compared to the total number of votes describes the confidence in the underlying solution Care must be taken in interpreting this confidence index as some pseudo symmetric orientations may result in low confidence for one candidate solution vs another 58 59 60 Minimising the fit involves starting with all possible orientations for a triplet More bands are included which reduces the number of candidate orientations As the number of bands increases the number of possible orientations converges ultimately to one solution The fit between the measured orientation and the captured pattern can be determined 57 Overall indexing diffraction patterns in EBSD involves a complex set of algorithms and calculations but is essential for determining the crystallographic structure and orientation of materials at a high spatial resolution The indexing process is continually evolving with new algorithms and techniques being developed to improve the accuracy and speed of the process Afterwards a confidence index is calculated to determine the quality of the indexing result The confidence index is based on the match quality between the measured and reference patterns In addition it considers factors such as noise level detector resolution and sample quality 50 While this geometric description related to the kinematic solution using the Bragg condition is very powerful and useful for orientation and texture analysis it only describes the geometry of the crystalline lattice It ignores many physical processes involved within the diffracting material To adequately describe finer features within the electron beam scattering pattern EBSP one must use a many beam dynamical model e g the variation in band intensities in an experimental pattern does not fit the kinematic solution related to the structure factor 61 47 Pattern centre edit To relate the orientation of a crystal much like in X ray diffraction XRD the geometry of the system must be known In particular the pattern centre describes the distance of the interaction volume to the detector and the location of the nearest point between the phosphor and the sample on the phosphor screen Early work used a single crystal of known orientation being inserted into the SEM chamber and a particular feature of the EBSP was known to correspond to the pattern centre Later developments involved exploiting various geometric relationships between the generation of an EBSP and the chamber geometry shadow casting and phosphor movement 62 57 Unfortunately each of these methods is cumbersome and can be prone to some systematic errors for a general operator Typically they cannot be easily used in modern SEMs with multiple designated uses Thus most commercial EBSD systems use the indexing algorithm combined with an iterative movement of crystal orientation and suggested pattern centre location Minimising the fit between bands located within experimental patterns and those in look up tables tends to converge on the pattern centre location to an accuracy of 0 5 1 of the pattern width 21 6 The recent development of AstroEBSD 63 and PCGlobal 64 open source MATLAB codes increased the precision of determining the pattern centre PC and consequently elastic strains 65 by using a pattern matching approach 66 which simulates the pattern using EMSoft 67 EBSD mapping edit nbsp A map of indexed EBSD orientations for a ferrous martensite with high angle gt 10 boundaries The indexing results are used to generate a map of the crystallographic orientation at each point on the surface being studied Thus scanning the electron beam in a prescribed fashion typically in a square or hexagonal grid correcting for the image foreshortening due to the sample tilt results in many rich microstructural maps 68 69 These maps can spatially describe the crystal orientation of the material being interrogated and can be used to examine microtexture and sample morphology Some maps describe grain orientation boundary and diffraction pattern image quality Various statistical tools can measure the average misorientation grain size and crystallographic texture From this dataset numerous maps charts and plots can be generated 70 71 72 The orientation data can be visualised using a variety of techniques including colour coding contour lines and pole figures 73 Microscope misalignment image shift scan distortion that increases with decreasing magnification roughness and contamination of the specimen surface boundary indexing failure and detector quality can lead to uncertainties in determining the crystal orientation 74 The EBSD signal to noise ratio depends on the material and decreases at excessive acquisition speed and beam current thereby affecting the angular resolution of the measurement 74 Strain measurement editFull field displacement elastic strain and the GND density provide quantifiable information about the material s elastic and plastic behaviour at the microscale Measuring strain at the microscale requires careful consideration of other key details besides the change in length shape e g local texture individual grain orientations These micro scale features can be measured using different techniques e g hole drilling monochromatic or polychromatic energy dispersive X ray diffraction or neutron diffraction ND EBSD has a high spatial resolution and is relatively sensitive and easy to use compared to other techniques 72 75 76 Strain measurements using EBSD can be performed at a high spatial resolution allowing researchers to study the local variation in strain within a material 14 This information can be used to study the deformation and mechanical behaviour of materials 77 to develop models of material behaviour under different loading conditions and to optimise the processing and performance of materials Overall strain measurement using EBSD is a powerful tool for studying the deformation and mechanical behaviour of materials and is widely used in materials science and engineering research and development 76 14 Earlier trials edit The change and degradation in electron backscatter patterns EBSPs provide information about the diffracting volume Pattern degradation i e diffuse quality can be used to assess the level of plasticity through the pattern image quality IQ 78 where IQ is calculated from the sum of the peaks detected when using the conventional Hough transform Wilkinson 79 first used the changes in high order Kikuchi line positions to determine the elastic strains albeit with low precision note 1 0 3 to 1 however this approach cannot be used for characterising residual elastic strain in metals as the elastic strain at the yield point is usually around 0 2 Measuring strain by tracking the change in the higher order Kikuchi lines is practical when the strain is small as the band position is sensitive to changes in lattice parameters 43 In the early 1990s Troost et al 80 and Wilkinson et al 81 82 used pattern degradation and change in the zone axis position to measure the residual elastic strains and small lattice rotations with a 0 02 precision 1 High resolution electron backscatter diffraction HR EBSD edit nbsp Schematic shifting between a reference and deformed crystals in the EBSP pattern projected on the phosphor screen 22 Cross correlation based high angular resolution electron backscatter diffraction HR EBSD introduced by Wilkinson et al 83 84 is an SEM based technique to map relative elastic strains and rotations and estimate the geometrically necessary dislocation GND density in crystalline materials HR EBSD method uses image cross correlation to measure pattern shifts between regions of interest ROI in different electron backscatter diffraction patterns EBSPs with sub pixel precision As a result the relative lattice distortion between two points in a crystal can be calculated using pattern shifts from at least four non collinear ROI In practice pattern shifts are measured in more than 20 ROI per EBSP to find a best fit solution to the deformation gradient tensor representing the relative lattice distortion note 2 86 84 The displacement gradient tensor b displaystyle beta nbsp or local lattice distortion relates the measured geometrical shifts in the pattern between the collected point p displaystyle widehat p nbsp and associate non coplanar vector r displaystyle widehat r nbsp and reference point p displaystyle p nbsp pattern and associate vector r displaystyle r nbsp Thus the pattern shift vector q displaystyle q nbsp can be written as in the equations below where x i displaystyle x i nbsp and u i displaystyle u i nbsp are the direction and displacement in i displaystyle i nbsp th direction respectively 87 q b r b r r r displaystyle q beta r beta r widehat r widehat r nbsp b u 1 x 1 u 1 x 2 u 1 x 3 u 2 x 1 u 2 x 2 u 2 x 3 u 3 x 1 u 3 x 2 u 3 x 3 r r 1 r 2 r 3 displaystyle beta begin pmatrix partial u 1 over x 1 amp partial u 1 over x 2 amp partial u 1 over x 3 partial u 2 over x 1 amp partial u 2 over x 2 amp partial u 2 over x 3 partial u 3 over x 1 amp partial u 3 over x 2 amp partial u 3 over x 3 end pmatrix qquad r begin pmatrix r 1 r 2 r 3 end pmatrix nbsp The shifts are measured in the phosphor detector plane b 3 r 3 0 displaystyle beta 3 r 3 0 nbsp and the relationship is simplified thus eight out of the nine displacement gradient tensor components can be calculated by measuring the shift at four distinct widely spaced regions on the EBSP 84 87 This shift is then corrected to the sample frame flipped around Y axis because EBSP is recorded on the phosphor screen and is inverted as in a mirror They are then corrected around the X axis by 24 i e 20 sample tilt plus 4 camera tilt and assuming no angular effect from the beam movement 21 Using infinitesimal strain theory the deformation gradient is then split into elastic strain symmetric part where i j j i displaystyle ij ji nbsp e i j displaystyle e ij nbsp and lattice rotations asymmetric part where i i j j 0 displaystyle ii jj 0 nbsp w i j displaystyle omega ij nbsp 84 e i j 1 2 b i j b i j r w i j 1 2 b i j b i j r displaystyle e ij 1 over 2 beta ij beta ij r qquad omega ij 1 over 2 beta ij beta ij r nbsp These measurements do not provide information about the volumetric hydrostatic strain tensors By imposing a boundary condition that the stress normal to the surface s 33 displaystyle sigma 33 nbsp is zero i e traction free surface 88 and using Hooke s law with anisotropic elastic stiffness constants the missing ninth degree of freedom can be estimated in this constrained minimisation problem by using a nonlinear solver 84 s 33 C 33 k l e k l 0 displaystyle sigma 33 C 33kl e kl 0 nbsp Where C displaystyle C nbsp is the crystal anisotropic stiffness tensor These two equations are solved to re calculate the refined elastic deviatoric strain e k l displaystyle varepsilon kl nbsp including the missing ninth spherical strain tensor An alternative approach that considers the full b displaystyle beta nbsp can be found in 88 e i j e 11 e 22 e 33 e 12 e 21 e 13 e 31 e 23 e 32 k 1 k 2 k 3 e 11 e 33 e 22 e 33 e 12 C 3312 e 13 C 3313 e 23 C 3323 displaystyle e ij begin pmatrix e 11 e 22 e 33 e 12 e 21 e 13 e 31 e 23 e 32 end pmatrix qquad begin pmatrix k 1 k 2 k 3 end pmatrix begin pmatrix e 11 e 33 e 22 e 33 e 12 C 3312 e 13 C 3313 e 23 C 3323 end pmatrix nbsp e 33 k 1 C 1133 k 2 C 2233 k 3 C 1133 C 2233 C 3333 e k l k 1 e 33 k 2 e 33 e 33 2 e 12 2 e 13 2 e 23 displaystyle varepsilon 33 k 1 C 1133 k 2 C 2233 k 3 over C 1133 C 2233 C 3333 qquad therefore varepsilon kl begin pmatrix k 1 varepsilon 33 k 2 varepsilon 33 varepsilon 33 2e 12 2e 13 2e 23 end pmatrix nbsp Finally the stress and strain tensors are linked using the crystal anisotropic stiffness tensor C k l i j displaystyle C klij nbsp and by using the Einstein summation convention with symmetry of stress tensors s i j s j i displaystyle sigma ij sigma ji nbsp 86 s i j C i j k l e k l displaystyle sigma ij C ijkl varepsilon kl nbsp The quality of the produced data can be assessed by taking the geometric mean of all the ROI s correlation intensity peaks A value lower than 0 25 should indicate problems with the EBSPs quality 87 Furthermore the geometrically necessary dislocation GND density can be estimated from the HR EBSD measured lattice rotations by relating the rotation axis and angle between neighbour map points to the dislocation types and densities in a material using Nye s tensor 31 89 90 Precision and development edit The HR EBSD method can achieve a precision of 10 4 in components of the displacement gradient tensors i e variations in lattice strain and lattice rotation in radians by measuring the shifts of zone axes within the pattern image with a resolution of 0 05 pixels 84 91 It was limited to small strains and rotations gt 1 5 until Britton and Wilkinson 86 and Maurice et al 92 raised the rotation limit to 11 by using a re mapping technique that recalculated the strain after transforming the patterns with a rotation matrix R displaystyle R nbsp calculated from the first cross correlation iteration 1 R cos w 12 sin w 12 0 sin w 12 cos w 12 0 0 0 1 1 0 0 0 cos w 23 sin w 23 0 sin w 23 cos w 23 cos w 31 0 sin w 31 0 1 0 sin w 31 0 cos w 31 displaystyle R begin pmatrix cos omega 12 amp sin omega 12 amp 0 sin omega 12 amp cos omega 12 amp 0 0 amp 0 amp 1 end pmatrix begin pmatrix 1 amp 0 amp 0 0 amp cos omega 23 amp sin omega 23 0 amp sin omega 23 amp cos omega 23 end pmatrix begin pmatrix cos omega 31 amp 0 amp sin omega 31 0 amp 1 amp 0 sin omega 31 amp 0 amp cos omega 31 end pmatrix nbsp nbsp a Secondary electron SE image for the indentation on the 001 mono crystal b HR EBSD stress and rotation components and geometrical necessary dislocations density r G N D displaystyle rho GND nbsp The location of EBSP0 is highlighted with a star in s y z displaystyle sigma yz nbsp The step size is 250 nm 93 However further lattice rotation typically caused by severe plastic deformations produced errors in the elastic strain calculations To address this problem Ruggles et al 94 improved the HR EBSD precision even at 12 of lattice rotation using the inverse compositional Gauss Newton based ICGN method instead of cross correlation For simulated patterns Vermeij and Hoefnagels 95 also established a method that achieves a precision of 10 5 in the displacement gradient components using a full field integrated digital image correlation IDIC framework instead of dividing the EBSPs into small ROIs Patterns in IDIC are distortion corrected to negate the need for re mapping up to 14 96 97 Conventional Hough transform EBSD and HR EBSD 84 98 Conventional EBSD HR EBSD Absolute orientation 2 N A Misorientation 0 1 to 0 5 0 006 1 10 4 rad GND 1 mm step In lines m2 b 0 3 nm gt 3 1013 gt 3 1011 Relative residual strain N A Deviatoric elastic strain 1 10 4 Example tasks Texture microstructure etc Deformation These measurements do not provide information about the hydrostatic or volumetric strains 86 84 because there is no change in the orientations of lattice planes crystallographic directions but only changes in the position and width of the Kikuchi bands 99 100 The reference pattern problem editIn HR EBSD analysis the lattice distortion field is calculated relative to a reference pattern or point EBSP0 per grain in the map and is dependent on the lattice distortion at the point The lattice distortion field in each grain is measured with respect to this point therefore the absolute lattice distortion at the reference point relative to the unstrained crystal is excluded from the HR EBSD elastic strain and rotation maps 98 101 This reference pattern problem is similar to the d0 problem in X ray diffraction 14 102 and affects the nominal magnitude of HR EBSD stress fields However selecting the reference pattern EBSP0 plays a key role as severely deformed EBSP0 adds phantom lattice distortions to the map values thus decreasing the measurement precision 98 nbsp Linear correlation coefficients between the local conditions at the EBSP0 point and the averaged conditions at the grain for the ferrite Fe a and austenite Fe g phase of age hardened DSS and Silicon Si The analysis considers the average deformation gradient tensor determinant A 0 displaystyle A 0 nbsp maximum in plane principal strain ϵ M A X displaystyle epsilon MAX nbsp rotation magnitude w T w 32 2 w 13 2 w 21 2 displaystyle omega T sqrt omega 32 2 omega 13 2 omega 21 2 nbsp correlation peak height PH mean angular error MAE and GND density 1 The local lattice distortion at the EBSP0 influences the resultant HR EBSD map e g a reference pattern deformed in tension will directly reduce the HR EBSD map tensile strain magnitude while indirectly influencing the other component magnitude and the strain s spatial distribution Furthermore the choice of EBSP0 slightly affects the GND density distribution and magnitude and choosing a reference pattern with a higher GND density reduces the cross correlation quality changes the spatial distribution and induces more errors than choosing a reference pattern with high lattice distortion Additionally there is no apparent connection between EBSP0 s IQ and EBSP0 s local lattice distortion 1 The use of simulated reference patterns for absolute strain measurement is still an active area of research 61 103 104 105 106 107 108 109 and scrutiny 98 109 110 111 112 113 as difficulties arise from the variation of inelastic electron scattering with depth which limits the accuracy of dynamical diffraction simulation models and imprecise determination of the pattern centre which leads to phantom strain components which cancel out when using experimentally acquired reference patterns Other methods assumed that absolute strain at EBSP0 can be determined using crystal plasticity finite element CPFE simulations which then can be then combined with the HR EBSD data e g using linear top up method 114 115 or displacement integration 93 to calculate the absolute lattice distortions In addition GND density estimation is nominally insensitive to or negligibly dependent upon 116 117 EBSP0 choice as only neighbour point to point differences in the lattice rotation maps are used for GND density calculation 118 119 However this assumes that the absolute lattice distortion of EBSP0 only changes the relative lattice rotation map components by a constant value which vanishes during derivative operations i e lattice distortion distribution is insensitive to EBSP0 choice 101 1 Selecting a reference pattern edit Criteria for EBSP0 selection can be one or a mixture of Selecting from points with low GND density or low Kernel average misorientation KAM based on the Hough measured local grain misorientations 120 Selecting from points with high image quality IQ which may have a low defect density within its electron interaction volume is therefore assumed to be a low strained region of a polycrystalline material 99 121 However IQ does not carry a clear physical meaning 122 and the magnitudes of the measured relative lattice distortion are insensitive to the IQ of EBSP0 101 1 EBSP0 can also be manually selected to be far from potential stress concentrations such as grain boundaries inclusions or cracks using subjective criteria 101 Selecting an EBSP0 after examining the empirical relationship between the cross correlation parameter and angular error used in an iterative algorithm to identify the optimal reference pattern that maximises the precision of HR EBSD 1 These criteria assume these parameters can indicate the strain conditions at the reference point which can produce an accurate measurements of up to 3 2 10 4 elastic strain 91 However experimental measurements point to the inaccuracy of HR EBSD in determining the out of plane shear strain components distribution and magnitude 123 124 Applications editEBSD is used in a wide range of applications including materials science and engineering 14 geology 125 and biological research 126 127 In materials science and engineering EBSD is used to study the microstructure of metals ceramics and polymers and to develop models of material behaviour 128 In geology EBSD is used to study the crystallographic structure of minerals and rocks In biological research EBSD is used to study the microstructure of biological tissues and to investigate the structure of biological materials such as bone and teeth 129 Scattered electron imaging edit nbsp The EBSD detector has forward scattered electron diodes FSDs at the bottom in the middle MSD and at the top of the detector nbsp Far field image of 475 C embrittled duplex stainless steel with the virtual forward scatter detector VFSD positioned at 38 mm from the sample EBSD detectors can have forward scattered electron diodes FSD at the bottom in the middle MSD and at the top of the detector Forward scattered electron FSE imaging involves collecting electrons scattered at small angles from the surface of a sample which provides information about the surface topography and composition 130 131 The FSE signal is also sensitive to the crystallographic orientation of the sample By analysing the intensity and contrast of the FSE signal researchers can determine the crystallographic orientation of each pixel in the image 132 The FSE signal is typically collected simultaneously with the BSE signal in EBSD analysis The BSE signal is sensitive to the average atomic number of the sample and is used to generate an image of the surface topography and composition The FSE signal is superimposed on the BSE image to provide information about the crystallographic orientation 132 130 Image generation has a lot of freedom when using the EBSD detector as an imaging device An image created using a combination of diodes is called virtual or VFSD It is possible to acquire images at a rate akin to slow scan imaging in the SEM by excessive binning of the EBSD CCD camera It is possible to suppress or isolate the contrast of interest by creating composite images from simultaneously captured images which offers a wide range of combinations for assessing various microstructure characteristics Nevertheless VFSD images do not include the quantitative information inherent to traditional EBSD maps they simply offer representations of the microstructure 130 131 Integrated EBSD EDS mapping edit When simultaneous EDS EBSD collection can be achieved the capabilities of both techniques can be enhanced 133 There are applications where sample chemistry or phase cannot be differentiated via EDS alone because of similar composition and structure cannot be solved with EBSD alone because of ambiguous structure solutions 134 135 To accomplish integrated mapping the analysis area is scanned and at each point Hough peaks and EDS region of interest counts are stored Positions of phases are determined in X ray maps and each element s measured EDS intensities are given in charts The chemical intensity ranges are set for each phase to select the grains 136 All patterns are then re indexed off line The recorded chemistry determines which phase crystal structure file is used to index each point Each pattern is indexed by only one phase and maps displaying distinguished phases are generated The interaction volumes for EDS and EBSD are significantly different on the order of micrometres compared to tens of nanometres and the shape of these volumes using a highly tilted sample may have implications on algorithms for phase discrimination 48 137 EBSD when used together with other in SEM techniques such as cathodoluminescence CL 138 wavelength dispersive X ray spectroscopy WDS 139 and or EDS can provide a deeper insight into the specimen s properties and enhance phase identification 140 141 For example the minerals calcite limestone and aragonite shell have the same chemical composition calcium carbonate CaCO3 therefore EDS WDS cannot tell them apart but they have different microcrystalline structures so EBSD can differentiate between them 142 143 Integrated EBSD DIC mapping edit EBSD and digital image correlation DIC can be used together to analyse the microstructure and deformation behaviour of materials DIC is a method that uses digital image processing techniques to measure deformation and strain fields in materials 144 By combining EBSD and DIC researchers can obtain both crystallographic and mechanical information about a material simultaneously 145 This allows for a more comprehensive understanding of the relationship between microstructure and mechanical behaviour which is particularly useful in fields such as materials science and engineering 146 DIC can identify regions of strain localisation in a material while EBSD can provide information about the microstructure in these regions By combining these techniques researchers can gain insights into the mechanisms responsible for the observed strain localisation 147 For example EBSD can be used to determine the grain orientations and boundary misorientations before and after deformation In contrast DIC can be used to measure the strain fields in the material during deformation 148 149 Or EBSD can be used to identify the activation of different slip systems during deformation while DIC can be used to measure the associated strain fields 150 By correlating these data researchers can better understand the role of different deformation mechanisms in the material s mechanical behaviour 151 Overall the combination of EBSD and DIC provides a powerful tool for investigating materials microstructure and deformation behaviour This approach can be applied to a wide range of materials and deformation conditions and has the potential to yield insights into the fundamental mechanisms underlying mechanical behaviour 149 152 3D EBSD edit nbsp 3D EBSD map for WC 6 Co with 62 slices of 10 10 3 mm size and 50 nm resolution in x y and z directions 153 3D EBSD combines EBSD with serial sectioning methods to create a three dimensional map of a material s crystallographic structure 154 The technique involves serially sectioning a sample into thin slices and then using EBSD to map the crystallographic orientation of each slice 155 The resulting orientation maps are then combined to generate a 3D map of the crystallographic structure of the material The serial sectioning can be performed using a variety of methods including mechanical polishing 156 focused ion beam FIB milling 157 or ultramicrotomy 158 The choice of sectioning method depends on the size and shape of the sample on its chemical composition reactivity and mechanical properties as well as the desired resolution and accuracy of the 3D map 159 3D EBSD has several advantages over traditional 2D EBSD First it provides a complete picture of a material s crystallographic structure allowing for a more accurate and detailed analysis of the microstructure 160 Second it can be used to study complex microstructures such as those found in composite materials or multi phase alloys Third it can be used to study the evolution of microstructure over time such as during deformation 161 or heat treatment 162 However 3D EBSD also has some limitations It requires extensive data acquisition and processing proper alignment between slices and can be time consuming and computationally intensive 163 In addition the quality of the 3D map depends on the quality of the individual EBSD maps which can be affected by factors such as sample preparation data acquisition parameters and analysis methods 154 164 Overall 3D EBSD is a powerful technique for studying the crystallographic structure of materials in three dimensions and is widely used in materials science and engineering research and development 165 149 Notes edit Throughout this page the terms error and precision are used as defined in the International Bureau of Weights and Measures BIPM guide to measurement uncertainty In practice error accuracy and uncertainty as well as true value and best guess are synonymous Precision is the variance or standard deviation between all estimated quantities Bias is the difference between the average of measured values and an independently measured best guess Accuracy is then the combination of bias and precision 1 Strain distortion and deformation can refer to several quantities in different fields Here they are used as follows A mechanically loaded object changes shape in response to applied load when measured in a mechanical test frame it is called total engineering strain Plastic strain is the shape change that persists after removing the macroscopic load On the microscale plastic deformation in most crystalline materials is accommodated by dislocation glide and deformation twinning However dislocations are also generated in a material as plastic deformation progresses and dislocations with similar crystallographic character and sign that end up near each other in a material e g lined up at a slip band can be characterised as GNDs Increasing plastic strain in a polycrystal also elastically distorts the crystal lattice to accommodate crystal defects e g dislocation cores groups of defects e g dislocation cell walls and maintains compatibility at polycrystal grain boundaries This lattice distortion can be expressed as a deformation gradient tensor which can be decomposed into elastic strain symmetric and lattice rotation antisymmetric components 85 In this article lattice distortion refers to elastic distortion components derived from the deformation gradient elastic strain and lattice rotation tensors References edit a b c d e f g h i Koko Abdalrhaman Tong Vivian Wilkinson Angus J Marrow T James 2023 An iterative method for reference pattern selection in high resolution electron backscatter diffraction HR EBSD Ultramicroscopy 248 113705 arXiv 2206 10242 doi 10 1016 j ultramic 2023 113705 PMID 36871367 S2CID 249889699 nbsp This article incorporates text from this source which is available under the CC BY 4 0 license Vespucci S Winkelmann A Naresh Kumar G Mingard K P Maneuski D Edwards P R Day A P O Shea V Trager Cowan C 2015 Digital direct electron imaging of energy filtered electron backscatter diffraction patterns Physical Review B 92 20 205301 Bibcode 2015PhRvB 92t5301V doi 10 1103 PhysRevB 92 205301 a b Randle Valerie September 2009 Electron backscatter diffraction Strategies for reliable data acquisition and processing Materials Characterization 60 9 913 922 doi 10 1016 j matchar 2009 05 011 Goldstein Joseph I Newbury Dale E Michael Joseph R Ritchie Nicholas W M Scott John Henry J Joy David C 2018 Backscattered Electrons Scanning Electron Microscopy and X Ray Microanalysis New York New York Springer New York pp 15 28 doi 10 1007 978 1 4939 6676 9 2 ISBN 978 1 4939 6674 5 Winkelmann Aimo Nolze Gert 2010 Analysis of Kikuchi band contrast reversal in electron backscatter diffraction patterns of silicon Ultramicroscopy 110 3 190 194 doi 10 1016 j ultramic 2009 11 008 PMID 20005045 a b c d e Schwarzer Robert A Field David P Adams Brent L Kumar Mukul Schwartz Adam J 2009 Schwartz Adam J Kumar Mukul Adams Brent L Field David P eds Present State of Electron Backscatter Diffraction and Prospective Developments Electron Backscatter Diffraction in Materials Science Boston MA Springer US pp 1 20 doi 10 1007 978 0 387 88136 2 1 ISBN 978 0 387 88136 2 OSTI 964094 Venables J A Harland C J 1973 Electron back scattering patterns A new technique for obtaining crystallographic information in the scanning electron microscope The Philosophical Magazine 27 5 1193 1200 Bibcode 1973PMag 27 1193V doi 10 1080 14786437308225827 Chen Delphic Kuo Jui Chao Wu Wen Tuan 2011 Effect of microscopic parameters on EBSD spatial resolution Ultramicroscopy 111 9 1488 1494 doi 10 1016 j ultramic 2011 06 007 PMID 21930021 Field D P 2005 Improving the Spatial Resolution of EBSD Microscopy and Microanalysis 11 doi 10 1017 s1431927605506445 S2CID 138097039 Deal Andrew Tao Xiaodong Eades Alwyn 2005 EBSD geometry in the SEM simulation and representation Surface and Interface Analysis 37 11 1017 1020 doi 10 1002 sia 2115 S2CID 122757345 a b Randle Valerie 2000 Schwartz Adam J Kumar Mukul Adams Brent L eds Theoretical Framework for Electron Backscatter Diffraction Electron Backscatter Diffraction in Materials Science Boston MA Springer US pp 19 30 doi 10 1007 978 1 4757 3205 4 2 ISBN 978 1 4757 3205 4 Goulden J Trimby P Bewick A 1 August 2018 The Benefits and Applications of a CMOS based EBSD Detector Microscopy and Microanalysis 24 S1 1128 1129 Bibcode 2018MiMic 24S1128G doi 10 1017 s1431927618006128 S2CID 139967518 a b Eades Alwyn Deal Andrew Bhattacharyya Abhishek Hooghan Tejpal 2009 Schwartz Adam J Kumar Mukul Adams Brent L Field David P eds Energy Filtering in EBSD Electron Backscatter Diffraction in Materials Science Boston MA pp 53 63 doi 10 1007 978 0 387 88136 2 4 ISBN 978 0 387 88136 2 a b c d e f Wilkinson Angus J Britton T Ben 2012 Strains planes and EBSD in materials science Materials Today 15 9 366 376 doi 10 1016 S1369 7021 12 70163 3 Sawatzki Simon Woodcock Thomas G Guth Konrad Muller Karl Hartmut Gutfleisch Oliver 2015 Calculation of remanence and degree of texture from EBSD orientation histograms and XRD rocking curves in Nd Fe B sintered magnets Journal of Magnetism and Magnetic Materials 382 219 224 Bibcode 2015JMMM 382 219S doi 10 1016 j jmmm 2015 01 046 Nishikawa S Kikuchi S June 1928 Diffraction of Cathode Rays by Mica Nature 121 3061 1019 1020 Bibcode 1928Natur 121 1019N doi 10 1038 1211019a0 ISSN 0028 0836 Tixier R Wache C 1970 Kossel patterns Journal of Applied Crystallography 3 6 466 485 Bibcode 1970JApCr 3 466T doi 10 1107 S0021889870006726 Maitland Tim Sitzman Scott 2007 Zhou Weilie Wang Zhong Lin eds Backscattering Detector and EBSD in Nanomaterials Characterization Scanning Microscopy for Nanotechnology Techniques and Applications New York New York Springer pp 41 75 doi 10 1007 978 0 387 39620 0 2 ISBN 978 0 387 39620 0 Alam M N Blackman M Pashley D W 1954 High angle Kikuchi patterns Proceedings of the Royal Society of London Series A Mathematical and Physical Sciences 221 1145 224 242 Bibcode 1954RSPSA 221 224A doi 10 1098 rspa 1954 0017 S2CID 97131764 Dingley D J Wright S I Nowell M M August 2005 Dynamic Background Correction of Electron Backscatter Diffraction Patterns Microscopy and Microanalysis 11 S02 doi 10 1017 S1431927605506676 S2CID 137658758 a b c Britton T B Jiang J Guo Y Vilalta Clemente A Wallis D Hansen L N Winkelmann A Wilkinson A J 2016 Tutorial Crystal orientations and EBSD Or which way is up Materials Characterization 117 113 126 doi 10 1016 j matchar 2016 04 008 hdl 10044 1 31250 S2CID 138070296 a b c Koko A Mohamed 2022 In situ full field characterisation of strain concentrations deformation twins slip bands and cracks PhD thesis University of Oxford Archived from the original on 1 February 2023 nbsp This article incorporates text from this source which is available under the CC BY 4 0 license Nowell Matthew M Witt Ronald A True Brian W 2005 EBSD Sample Preparation Techniques Tips and Tricks Microscopy Today 13 4 44 49 doi 10 1017 s1551929500053669 S2CID 139585885 a b c d Koko Abdalrhaman Elmukashfi Elsiddig Becker Thorsten H Karamched Phani S Wilkinson Angus J Marrow T James 2022 In situ characterisation of the strain fields of intragranular slip bands in ferrite by high resolution electron backscatter diffraction Acta Materialia 239 118284 Bibcode 2022AcMat 23918284K doi 10 1016 j actamat 2022 118284 S2CID 251783802 nbsp This article incorporates text from this source which is available under the CC BY 4 0 license Sample Preparation Techniques for EBSD Analysis Electron Backscatter Diffraction AZoNano com 15 November 2013 Archived from the original on 2 March 2023 Williams B David 2009 Transmission electron microscopy a textbook for materials science Plenum Press p 11 ISBN 978 0 387 76501 3 OCLC 633626308 Britton T B Jiang J Clough R Tarleton E Kirkland A I Wilkinson A J 2013 Assessing the precision of strain measurements using electron backscatter diffraction Part 2 Experimental demonstration Ultramicroscopy 135 136 141 doi 10 1016 j ultramic 2013 08 006 PMID 24034981 Jiang J Britton T B Wilkinson A J 2013 Evolution of dislocation density distributions in copper during tensile deformation Acta Materialia 61 19 7227 7239 Bibcode 2013AcMat 61 7227J doi 10 1016 j actamat 2013 08 027 Abdolvand Hamidreza Wilkinson Angus J 2016 On the effects of reorientation and shear transfer during twin formation Comparison between high resolution electron backscatter diffraction experiments and a crystal plasticity finite element model International Journal of Plasticity 84 160 182 doi 10 1016 j ijplas 2016 05 006 S2CID 139049848 Koko Abdalrhaman Becker Thorsten H Elmukashfi Elsiddig Pugno Nicola M Wilkinson Angus J Marrow T James 2023 HR EBSD analysis of in situ stable crack growth at the micron scale Journal of the Mechanics and Physics of Solids 172 105173 arXiv 2206 10243 Bibcode 2023JMPSo 17205173K doi 10 1016 j jmps 2022 105173 S2CID 249889649 a b Wilkinson Angus J Randman David 2010 Determination of elastic strain fields and geometrically necessary dislocation distributions near nanoindents using electron back scatter diffraction PDF Philosophical Magazine 90 9 1159 1177 Bibcode 2010PMag 90 1159W doi 10 1080 14786430903304145 S2CID 121903030 Archived PDF from the original on 3 March 2023 Retrieved 20 March 2023 Griffiths A J V Walther T 2010 Quantification of carbon contamination under electron beam irradiation in a scanning transmission electron microscope and its suppression by plasma cleaning Journal of Physics Conference Series 241 1 012017 Bibcode 2010JPhCS 241a2017G doi 10 1088 1742 6596 241 1 012017 S2CID 250689401 Koko Abdalrhaman Elmukashfi Elsiddig Dragnevski Kalin Wilkinson Angus J Marrow Thomas James 2021 J integral analysis of the elastic strain fields of ferrite deformation twins using electron backscatter diffraction Acta Materialia 218 117203 Bibcode 2021AcMat 21817203K doi 10 1016 j actamat 2021 117203 Archived from the original on 5 July 2022 Retrieved 20 March 2023 Bachmann F Hielscher Ralf Schaeben Helmut 2010 Texture Analysis with MTEX Free and Open Source Software Toolbox Solid State Phenomena 160 63 68 doi 10 4028 www scientific net SSP 160 63 S2CID 136017346 Powell C J Jablonski A 2011 Surface Sensitivity of Auger Electron Spectroscopy and X ray Photoelectron Spectroscopy Journal of Surface Analysis 17 3 170 176 doi 10 1384 jsa 17 170 Pinos J Mikmekova S Frank L 2017 About the information depth of backscattered electron imaging Journal of Microscopy 266 3 335 342 doi 10 1111 jmi 12542 PMID 28248420 S2CID 35266526 a b c Zaefferer S 2007 On the formation mechanisms spatial resolution and intensity of backscatter Kikuchi patterns Ultramicroscopy 107 2 254 266 doi 10 1016 j ultramic 2006 08 007 PMID 17055170 Seah M P 2001 Summary of ISO TC 201 Standard VIII ISO 18115 2001 Surface chemical analysis Vocabulary Surface and Interface Analysis 31 11 1048 1049 doi 10 1002 sia 1139 S2CID 97982609 Dingley D 2004 Progressive steps in the development of electron backscatter diffraction and orientation imaging microscopy EBSD AND OIM Journal of Microscopy 213 3 214 224 doi 10 1111 j 0022 2720 2004 01321 x PMID 15009688 S2CID 41385346 a b Isabell Thomas C Dravid Vinayak P 1 June 1997 Resolution and sensitivity of electron backscattered diffraction in a cold field emission gun SEM Ultramicroscopy Frontiers in Electron Microscopy in Materials Science 67 1 59 68 doi 10 1016 S0304 3991 97 00003 X Humphreys F J 2004 Characterisation of fine scale microstructures by electron backscatter diffraction EBSD Scripta Materialia Viewpoint set no 35 Metals and alloys with a structural scale from the micrometer to the atomic dimensions 51 8 771 776 doi 10 1016 j scriptamat 2004 05 016 Goldstein Joseph I Newbury Dale E Michael Joseph R Ritchie Nicholas W M Scott John Henry J Joy David C 2018 Goldstein Joseph I Newbury Dale E Michael Joseph R Ritchie Nicholas W M eds The Visibility of Features in SEM Images Scanning Electron Microscopy and X Ray Microanalysis New York New York Springer pp 123 131 doi 10 1007 978 1 4939 6676 9 8 ISBN 978 1 4939 6676 9 a b Zhu Chaoyi De Graef Marc 2020 EBSD pattern simulations for an interaction volume containing lattice defects Ultramicroscopy 218 113088 doi 10 1016 j ultramic 2020 113088 PMID 32784084 S2CID 221123906 Ren S X Kenik E A Alexander K B 1997 Monte Carlo Simulation of Spatial Resolution for Electron Backscattered Diffraction EBSD with Application to Two Phase Materials Microscopy and Microanalysis 3 S2 575 576 Bibcode 1997MiMic 3S 575R doi 10 1017 S1431927600009764 S2CID 137029133 Archived from the original on 25 March 2023 Retrieved 20 March 2023 Brodusch Nicolas Demers Hendrix Gauvin Raynald 2018 Imaging with a Commercial Electron Backscatter Diffraction EBSD Camera in a Scanning Electron Microscope A Review Journal of Imaging 4 7 88 doi 10 3390 jimaging4070088 Michiyoshi Tanaka 1988 Convergent beam electron diffraction PDF Jeol OCLC 312738225 Archived PDF from the original on 20 March 2023 Retrieved 20 March 2023 a b Winkelmann Aimo 2009 Schwartz Adam J Kumar Mukul Adams Brent L Field David P eds Dynamical Simulation of Electron Backscatter Diffraction Patterns Electron Backscatter Diffraction in Materials Science Boston MA Springer US pp 21 33 doi 10 1007 978 0 387 88136 2 2 ISBN 978 0 387 88136 2 S2CID 122806598 a b El Dasher Bassem Deal Andrew 2009 Schwartz Adam J Kumar Mukul Adams Brent L Field David P eds Application of Electron Backscatter Diffraction to Phase Identification Electron Backscatter Diffraction in Materials Science Boston MA Springer US pp 81 95 doi 10 1007 978 0 387 88136 2 6 ISBN 978 0 387 88136 2 archived from the original on 25 March 2023 retrieved 20 March 2023 New technique provides detailed views of metals crystal structure MIT News Massachusetts Institute of Technology 6 July 2016 Archived from the original on 2 March 2023 a b c Electron backscatter diffraction in materials science 2nd ed Springer Science Business Media 2009 p 1 ISBN 978 0 387 88135 5 Wright Stuart I Zhao Jun Wu Adams Brent L 1991 Automated Determination of Lattice Orientation From Electron Backscattered Kikuchi Diffraction Patterns Texture Stress and Microstructure 13 2 3 123 131 doi 10 1155 TSM 13 123 Wright Stuart I Adams Brent L Kunze Karsten 1993 Application of a new automatic lattice orientation measurement technique to polycrystalline aluminum Materials Science and Engineering A 160 2 229 240 doi 10 1016 0921 5093 93 90452 K Lassen Niels Chr Krieger 1992 Automatic crystal orientation determination from EBSPs Micron and Microscopica Acta 23 1 191 192 doi 10 1016 0739 6260 92 90133 X Krieger Lassen N C Juul Jensen Dorte Condradsen K 1994 Automatic Recognition of Deformed and Recrystallized Regions in Partly Recrystallized Samples Using Electron Back Scattering Patterns Materials Science Forum 157 162 149 158 doi 10 4028 www scientific net msf 157 162 149 S2CID 137129038 Wright Stuart I Nowell Matthew M Lindeman Scott P Camus Patrick P De Graef Marc Jackson Michael A 2015 Introduction and comparison of new EBSD post processing methodologies Ultramicroscopy 159 81 94 doi 10 1016 j ultramic 2015 08 001 PMID 26342553 Randle Valerie 2009 Electron backscatter diffraction Strategies for reliable data acquisition and processing Materials Characterization 60 9 913 922 doi 10 1016 j matchar 2009 05 011 a b c Lassen Niels Christian Krieger 1994 Automated Determination of Crystal Orientations from Electron Backscattering Patterns PDF PhD thesis The Technical University of Denmark Archived PDF from the original on 8 March 2022 Sitzman Scott Schmidt Niels Henrik Palomares Garcia Alberto Munoz Moreno Rocio Goulden Jenny 2015 Addressing Pseudo Symmetric Misindexing in EBSD Analysis of g TiAl with High Accuracy Band Detection Microscopy and Microanalysis 21 S3 2037 2038 Bibcode 2015MiMic 21S2037S doi 10 1017 s143192761501096x S2CID 51964340 Lenthe W Singh S De Graef M 2019 Prediction of potential pseudo symmetry issues in the indexing of electron backscatter diffraction patterns Journal of Applied Crystallography 52 5 1157 1168 Bibcode 2019JApCr 52 1157L doi 10 1107 S1600576719011233 OSTI 1575873 S2CID 204108200 Dingley David J Wright S I 2009 Schwartz Adam J Kumar Mukul Adams Brent L Field David P eds Phase Identification Through Symmetry Determination in EBSD Patterns Electron Backscatter Diffraction in Materials Science Boston MA Springer US pp 97 107 doi 10 1007 978 0 387 88136 2 7 ISBN 978 0 387 88136 2 a b Winkelmann Aimo Trager Cowan Carol Sweeney Francis Day Austin P Parbrook Peter 2007 Many beam dynamical simulation of electron backscatter diffraction patterns Ultramicroscopy 107 4 414 421 doi 10 1016 j ultramic 2006 10 006 PMID 17126489 Britton T B Tong V S Hickey J Foden A Wilkinson A J 2018 AstroEBSD exploring new space in pattern indexing with methods launched from an astronomical approach Journal of Applied Crystallography 51 6 1525 1534 arXiv 1804 02602 Bibcode 2018JApCr 51 1525B doi 10 1107 S1600576718010373 S2CID 51687153 Britton Thomas Benjamin Tong Vivian S Hickey Jim Foden Alex Wilkinson Angus J 2018 AstroEBSD exploring new space in pattern indexing with methods launched from an astronomical approach Journal of Applied Crystallography 51 6 1525 1534 arXiv 1804 02602 Bibcode 2018JApCr 51 1525B doi 10 1107 S1600576718010373 S2CID 51687153 Pang Edward L Larsen Peter M Schuh Christopher A 2020 Global optimization for accurate determination of EBSD pattern centers Ultramicroscopy 209 112876 arXiv 1908 10692 doi 10 1016 j ultramic 2019 112876 PMID 31707232 S2CID 201651309 Tanaka Tomohito Wilkinson Angus J 1 July 2019 Pattern matching analysis of electron backscatter diffraction patterns for pattern centre crystal orientation and absolute elastic strain determination accuracy and precision assessment Ultramicroscopy 202 87 99 arXiv 1904 06891 doi 10 1016 j ultramic 2019 04 006 PMID 31005023 S2CID 119294636 Foden A Collins D M Wilkinson A J Britton T B 2019 Indexing electron backscatter diffraction patterns with a refined template matching approach Ultramicroscopy 207 112845 arXiv 1807 11313 doi 10 1016 j ultramic 2019 112845 PMID 31586829 S2CID 203307560 Jackson M A Pascal E De Graef M 2019 Dictionary Indexing of Electron Back Scatter Diffraction Patterns a Hands On Tutorial Integrating Materials and Manufacturing Innovation 8 2 226 246 doi 10 1007 s40192 019 00137 4 S2CID 182073071 Dingley D J Randle V 1992 Microtexture determination by electron back scatter diffraction Journal of Materials Science 27 17 4545 4566 Bibcode 1992JMatS 27 4545D doi 10 1007 BF01165988 S2CID 137281137 Adams Brent L 1997 Orientation imaging microscopy Emerging and future applications Ultramicroscopy Frontiers in Electron Microscopy in Materials Science 67 1 11 17 doi 10 1016 S0304 3991 96 00103 9 Hielscher Ralf Bartel Felix Britton Thomas Benjamin 2019 Gazing at crystal balls Electron backscatter diffraction pattern analysis and cross correlation on the sphere Ultramicroscopy 207 112836 arXiv 1810 03211 doi 10 1016 j ultramic 2019 112836 PMID 31539865 S2CID 202711517 Hielscher R Silbermann C B Schmidl E Ihlemann Joern 2019 Denoising of crystal orientation maps Journal of Applied Crystallography 52 5 984 996 Bibcode 2019JApCr 52 984H doi 10 1107 s1600576719009075 S2CID 202068671 a b Adams Brent L Wright Stuart I Kunze Karsten 1993 Orientation imaging The emergence of a new microscopy Metallurgical Transactions A 24 4 819 831 Bibcode 1993MTA 24 819A doi 10 1007 BF02656503 S2CID 137379846 Randle Valerie Engler Olaf 2000 Introduction to texture analysis macrotexture microtexture and orientation mapping Digital printing 2003 ed Boca Raton CRC Press ISBN 978 9056992248 a b Prior 1999 Problems in determining the misorientation axes for small angular misorientations using electron backscatter diffraction in the SEM Journal of Microscopy 195 3 217 225 doi 10 1046 j 1365 2818 1999 00572 x PMID 10460687 S2CID 10144078 Humphreys F J 2001 Review Grain and subgrain characterisation by electron backscatter diffraction Journal of Materials Science 36 16 3833 3854 doi 10 1023 A 1017973432592 S2CID 135659350 a b Wilkinson Angus J Hirsch Peter B 1997 Electron diffraction based techniques in scanning electron microscopy of bulk materials Micron 28 4 279 308 arXiv 1904 05550 doi 10 1016 S0968 4328 97 00032 2 S2CID 118944816 Shi Qiwei Roux Stephane Latourte Felix Hild Francois 2019 Estimation of elastic strain by integrated image correlation on electron diffraction patterns Ultramicroscopy 199 16 33 doi 10 1016 j ultramic 2019 02 001 PMID 30738984 S2CID 73418370 Lassen N C Krieger Jensen Dorte Juul Condradsen K 1994 Automatic Recognition of Deformed and Recrystallized Regions in Partly Recrystallized Samples Using Electron Back Scattering Patterns Materials Science Forum 157 162 149 158 doi 10 4028 www scientific net MSF 157 162 149 S2CID 137129038 Archived from the original on 2 March 2023 Retrieved 2 March 2023 Wilkinson A J 1 January 1997 Methods for determining elastic strains from electron backscatter diffraction and electron channelling patterns Materials Science and Technology 13 1 79 84 Bibcode 1997MatST 13 79W doi 10 1179 mst 1997 13 1 79 Troost K Z van der Sluis P Gravesteijn D J 1993 Microscale elastic strain determination by backscatter Kikuchi diffraction in the scanning electron microscope Applied Physics Letters 62 10 1110 1112 Bibcode 1993ApPhL 62 1110T doi 10 1063 1 108758 Wilkinson A J Dingley D J 1991 Quantitative deformation studies using electron back scatter patterns Acta Metallurgica et Materialia 39 12 3047 3055 doi 10 1016 0956 7151 91 90037 2 Wilkinson Angus J 1996 Measurement of elastic strains and small lattice rotations using electron back scatter diffraction Ultramicroscopy 62 4 237 247 doi 10 1016 0304 3991 95 00152 2 PMID 22666906 Wilkinson A J Meaden G Dingley D J 1 November 2006 High resolution mapping of strains and rotations using electron backscatter diffraction Materials Science and Technology 22 11 1271 1278 Bibcode 2006MatST 22 1271W doi 10 1179 174328406X130966 S2CID 135875163 Archived from the original on 25 March 2023 Retrieved 20 March 2023 a b c d e f g h Wilkinson Angus J Meaden Graham Dingley David J 2006 High resolution elastic strain measurement from electron backscatter diffraction patterns New levels of sensitivity Ultramicroscopy 106 4 307 313 doi 10 1016 j ultramic 2005 10 001 PMID 16324788 Barabash Rozaliya Ice Gene 2013 Strain and Dislocation Gradients from Diffraction doi 10 1142 p897 ISBN 978 1 908979 62 9 a b c d Britton T B Wilkinson A J 2012 High resolution electron backscatter diffraction measurements of elastic strain variations in the presence of larger lattice rotations Ultramicroscopy 114 82 95 doi 10 1016 j ultramic 2012 01 004 PMID 22366635 a b c Wilkinson Angus J Dingley David J Meaden Graham 2009 Schwartz Adam J Kumar Mukul Adams Brent L Field David P eds Strain Mapping Using Electron Backscatter Diffraction Electron Backscatter Diffraction in Materials Science Boston MA Springer US pp 231 249 doi 10 1007 978 0 387 88136 2 17 ISBN 978 0 387 88136 2 a b Hardin T J Ruggles T J Koch D P Niezgoda S R Fullwood D T Homer E R 2015 Analysis of traction free assumption in high resolution EBSD measurements HR EBSD TRACTION FREE ASSUMPTION Journal of Microscopy 260 1 73 85 doi 10 1111 jmi 12268 PMID 26138919 S2CID 25692536 Pantleon W 1 June 2008 Resolving the geometrically necessary dislocation content by conventional electron backscattering diffraction Scripta Materialia 58 11 994 997 doi 10 1016 j scriptamat 2008 01 050 Brewer Luke N Field David P Merriman Colin C 2009 Schwartz Adam J Kumar Mukul Adams Brent L Field David P eds Mapping and Assessing Plastic Deformation Using EBSD Electron Backscatter Diffraction in Materials Science Boston MA Springer US pp 251 262 doi 10 1007 978 0 387 88136 2 18 ISBN 978 0 387 88136 2 a b Plancher E Petit J Maurice C Favier V Saintoyant L Loisnard D Rupin N Marijon J B Ulrich O Bornert M Micha J S Robach O Castelnau O 1 March 2016 On the Accuracy of Elastic Strain Field Measurements by Laue Microdiffraction and High Resolution EBSD a Cross Validation Experiment PDF Experimental Mechanics 56 3 483 492 doi 10 1007 s11340 015 0114 1 S2CID 255157494 Archived PDF from the original on 13 March 2020 Retrieved 20 March 2023 Maurice Claire Driver Julian H Fortunier Roland 2012 On solving the orientation gradient dependency of high angular resolution EBSD Ultramicroscopy 113 171 181 doi 10 1016 j ultramic 2011 10 013 a b Koko Abdalrhaman Marrow James Elmukashfi Elsiddig 12 June 2022 A Computational Method for the Determination of the Elastic Displacement Field using Measured Elastic Deformation Field arXiv 2107 10330 cond mat mtrl sci nbsp This article incorporates text from this source which is available under the CC BY 4 0 license Ruggles T J Bomarito G F Qiu R L Hochhalter J D 1 December 2018 New levels of high angular resolution EBSD performance via inverse compositional Gauss Newton based digital image correlation Ultramicroscopy 195 85 92 doi 10 1016 j ultramic 2018 08 020 PMC 7780544 PMID 30216795 Vermeij T Hoefnagels J P M 2018 A consistent full field integrated DIC framework for HR EBSD PDF Ultramicroscopy 191 44 50 doi 10 1016 j ultramic 2018 05 001 PMID 29772417 S2CID 21685690 Archived PDF from the original on 16 July 2021 Retrieved 20 March 2023 Ernould Clement Beausir Benoit Fundenberger Jean Jacques Taupin Vincent Bouzy Emmanuel 2021 Integrated correction of optical distortions for global HR EBSD techniques Ultramicroscopy 221 113158 doi 10 1016 j ultramic 2020 113158 PMID 33338818 S2CID 228997006 Shi Qiwei Loisnard Dominique Dan Chengyi Zhang Fengguo Zhong Hongru Li Han Li Yuda Chen Zhe Wang Haowei Roux Stephane 2021 Calibration of crystal orientation and pattern center of EBSD using integrated digital image correlation PDF Materials Characterization 178 111206 doi 10 1016 j matchar 2021 111206 S2CID 236241507 Archived PDF from the original on 25 March 2023 Retrieved 20 March 2023 a b c d Maurice Claire Fortunier Roland Driver Julian Day Austin Mingard Ken Meaden Graham 2010 Comments on the paper Bragg s law diffraction simulations for electron backscatter diffraction analysis by Josh Kacher Colin Landon Brent L Adams amp David Fullwood Ultramicroscopy 110 7 758 759 doi 10 1016 j ultramic 2010 02 003 PMID 20223590 a b Wright Stuart I Nowell Matthew M 2006 EBSD Image Quality Mapping Microscopy and Microanalysis 12 1 72 84 Bibcode 2006MiMic 12 72W doi 10 1017 s1431927606060090 PMID 17481343 S2CID 35055001 Jiang Jun Zhang Tiantian Dunne Fionn P E Britton T Ben 2016 Deformation compatibility in a single crystalline Ni superalloy Proceedings of the Royal Society A Mathematical Physical and Engineering Sciences 472 2185 20150690 Bibcode 2016RSPSA 47250690J doi 10 1098 rspa 2015 0690 PMC 4786046 PMID 26997901 a b c d Mikami Yoshiki Oda Kazuo Kamaya Masayuki Mochizuki Masahito 2015 Effect of reference point selection on microscopic stress measurement using EBSD Materials Science and Engineering A 647 256 264 doi 10 1016 j msea 2015 09 004 Koko A Earp P Wigger T Tong J Marrow T J 2020 J integral analysis An EDXD and DIC comparative study for a fatigue crack International Journal of Fatigue 134 105474 doi 10 1016 j ijfatigue 2020 105474 S2CID 214391445 Archived from the original on 27 January 2021 Retrieved 20 March 2023 Kacher Josh Landon Colin Adams Brent L Fullwood David 1 August 2009 Bragg s Law diffraction simulations for electron backscatter diffraction analysis Ultramicroscopy 109 9 1148 1156 doi 10 1016 j ultramic 2009 04 007 PMID 19520512 Winkelmann A Nolze G Vos M Salvat Pujol F Werner W S M 2016 Physics based simulation models for EBSD advances and challenges IOP Conference Series Materials Science and Engineering 109 1 012018 arXiv 1505 07982 Bibcode 2016MS amp E 109a2018W doi 10 1088 1757 899x 109 1 012018 S2CID 38586851 Alkorta Jon Marteleur Matthieu Jacques Pascal J 2017 Improved simulation based HR EBSD procedure using image gradient based DIC techniques Ultramicroscopy 182 17 27 doi 10 1016 j ultramic 2017 06 015 PMID 28644960 Winkelmann Aimo Nolze Gert Cios Grzegorz Tokarski Tomasz Bala Piotr Hourahine Ben Trager Cowan Carol November 2021 Kikuchi pattern simulations of backscattered and transmitted electrons PDF Journal of Microscopy 284 2 157 184 doi 10 1111 jmi 13051 PMID 34275156 S2CID 236091618 Archived PDF from the original on 25 March 2023 Retrieved 20 March 2023 Winkelmann A 2010 Principles of depth resolved Kikuchi pattern simulation for electron backscatter diffraction KIKUCHI PATTERN SIMULATION FOR EBSD Journal of Microscopy 239 1 32 45 doi 10 1111 j 1365 2818 2009 03353 x PMID 20579267 S2CID 23590722 Vermeij Tijmen De Graef Marc Hoefnagels Johan 15 March 2019 Demonstrating the potential of accurate absolute cross grain stress and orientation correlation using electron backscatter diffraction Scripta Materialia 162 266 271 arXiv 1807 03908 doi 10 1016 j scriptamat 2018 11 030 S2CID 54575778 a b Tanaka Tomohito Wilkinson Angus J 1 July 2019 Pattern matching analysis of electron backscatter diffraction patterns for pattern centre crystal orientation and absolute elastic strain determination accuracy and precision assessment Ultramicroscopy 202 87 99 arXiv 1904 06891 doi 10 1016 j ultramic 2019 04 006 PMID 31005023 S2CID 119294636 Kacher Josh Basinger Jay Adams Brent L Fullwood David T 1 June 2010 Reply to comment by Maurice et al in response to Bragg s Law Diffraction Simulations for Electron Backscatter Diffraction Analysis Ultramicroscopy 110 7 760 762 doi 10 1016 j ultramic 2010 02 004 PMID 20189305 Britton T B Maurice C Fortunier R Driver J H Day A P Meaden G Dingley D J Mingard K Wilkinson A J 2010 Factors affecting the accuracy of high resolution electron backscatter diffraction when using simulated patterns Ultramicroscopy 110 12 1443 1453 doi 10 1016 j ultramic 2010 08 001 PMID 20888125 Alkorta Jon 1 August 2013 Limits of simulation based high resolution EBSD Ultramicroscopy 131 33 38 doi 10 1016 j ultramic 2013 03 020 PMID 23676453 Jackson Brian E Christensen Jordan J Singh Saransh De Graef Marc Fullwood David T Homer Eric R Wagoner Robert H August 2016 Performance of Dynamically Simulated Reference Patterns for Cross Correlation Electron Backscatter Diffraction Microscopy and Microanalysis 22 4 789 802 Bibcode 2016MiMic 22 789J doi 10 1017 S143192761601148X PMID 27509538 S2CID 24482631 Zhang Tiantian Collins David M Dunne Fionn P E Shollock Barbara A 2014 Crystal plasticity and high resolution electron backscatter diffraction analysis of full field polycrystal Ni superalloy strains and rotations under thermal loading Acta Materialia 80 25 38 doi 10 1016 j actamat 2014 07 036 hdl 10044 1 25979 Guo Yi Zong Cui Britton T B 2021 Development of local plasticity around voids during tensile deformation Materials Science and Engineering A 814 141227 arXiv 2007 11890 doi 10 1016 j msea 2021 141227 S2CID 234850241 Jiang J Britton T B Wilkinson A J 1 November 2013 Evolution of dislocation density distributions in copper during tensile deformation Acta Materialia 61 19 7227 7239 Bibcode 2013AcMat 61 7227J doi 10 1016 j actamat 2013 08 027 Britton T B Hickey J L R 2018 Understanding deformation with high angular resolution electron backscatter diffraction HR EBSD IOP Conference Series Materials Science and Engineering 304 1 012003 arXiv 1710 00728 Bibcode 2018MS amp E 304a2003B doi 10 1088 1757 899x 304 1 012003 S2CID 54529072 Kalacska Szilvia Dankhazi Zoltan Zilahi Gyula Maeder Xavier Michler Johann Ispanovity Peter Dusan Groma Istvan 2020 Investigation of geometrically necessary dislocation structures in compressed Cu micropillars by 3 dimensional HR EBSD Materials Science and Engineering A 770 138499 arXiv 1906 06980 doi 10 1016 j msea 2019 138499 S2CID 189928469 Archived from the original on 17 July 2020 Retrieved 20 March 2023 Wallis David Hansen Lars N Britton T Ben Wilkinson Angus J 2017 Dislocation Interactions in Olivine Revealed by HR EBSD Dislocation Interactions in Olivine Journal of Geophysical Research Solid Earth 122 10 7659 7678 doi 10 1002 2017JB014513 hdl 10044 1 50615 S2CID 134570945 Moussa C Bernacki M Besnard R Bozzolo N 2015 About quantitative EBSD analysis of deformation and recovery substructures in pure Tantalum IOP Conference Series Materials Science and Engineering 89 1 012038 Bibcode 2015MS amp E 89a2038M doi 10 1088 1757 899x 89 1 012038 S2CID 53137730 Wright Stuart I Matthew M Nowell David P Field 2011 A review of strain analysis using electron backscatter diffraction Microscopy and Microanalysis 17 17 3 316 329 Bibcode 2011MiMic 17 316W doi 10 1017 S1431927611000055 PMID 21418731 S2CID 26116915 Tao Xiaodong Eades Alwyn 2002 Alternatives to Image Quality IQ Mapping in EBSD Microscopy and Microanalysis 8 S02 692 693 Bibcode 2002MiMic 8S 692T doi 10 1017 s1431927602106465 S2CID 138999871 McLean Mark J Osborn William A 2018 In situ elastic strain mapping during micromechanical testing using EBSD Ultramicroscopy 185 21 26 doi 10 1016 j ultramic 2017 11 007 PMID 29161620 Yu Hongbing Liu Junliang Karamched Phani Wilkinson Angus J Hofmann Felix 2019 Mapping the full lattice strain tensor of a single dislocation by high angular resolution transmission Kikuchi diffraction HR TKD Scripta Materialia 164 36 41 arXiv 1808 10055 doi 10 1016 j scriptamat 2018 12 039 S2CID 119075799 Prior David J Mariani Elisabetta Wheeler John 2009 EBSD in the Earth Sciences Applications Common Practice and Challenges Electron Backscatter Diffraction in Materials Science Boston MA Springer US pp 345 360 doi 10 1007 978 0 387 88136 2 26 ISBN 978 0 387 88135 5 Choi Seung Han Seokyoung Lee Yuong Nam 2019 Rahman Imran ed Electron backscatter diffraction EBSD analysis of maniraptoran eggshells with important implications for microstructural and taphonomic interpretations Palaeontology 62 5 777 803 Bibcode 2019Palgy 62 777C doi 10 1111 pala 12427 S2CID 182770470 Wolfe Kennedy Smith Abigail M Trimby Patrick Byrne Maria 1 August 2013 Microstructure of the paper nautilus Argonauta nodosa shell and the novel application of electron backscatter diffraction EBSD to address effects of ocean acidification Marine Biology 160 8 2271 2278 Bibcode 2013MarBi 160 2271W doi 10 1007 s00227 012 2032 4 S2CID 253745873 Piazolo S Jessell M W Prior D J Bons P D 2004 The integration of experimental in situ EBSD observations and numerical simulations a novel technique of microstructural process analysis Journal of Microscopy 213 3 273 284 doi 10 1111 j 0022 2720 2004 01304 x PMID 15009695 S2CID 24037204 Koblischka Veneva Anjela Koblischka Michael R Schmauch Jorg Hannig Matthias 2018 Human dental enamel A natural nanotechnology masterpiece investigated by TEM and t EBSD Nano Research 11 7 3911 3921 doi 10 1007 s12274 018 1968 1 S2CID 139757769 a b c Wright Stuart I Nowell Matthew M de Kloe Rene Camus Patrick Rampton Travis 2015 Electron imaging with an EBSD detector Ultramicroscopy 148 132 145 doi 10 1016 j ultramic 2014 10 002 PMID 25461590 a b Schwarzer Robert A Hjelen Jarle 9 January 2015 Backscattered Electron Imaging with an EBSD Detector Microscopy Today 23 1 12 17 doi 10 1017 S1551929514001333 S2CID 138740715 a b Tong Vivian S Knowles Alexander J Dye David Britton T Ben 1 January 2019 Rapid electron backscatter diffraction mapping Painting by numbers Materials Characterization 147 271 279 arXiv 1809 07283 doi 10 1016 j matchar 2018 11 014 S2CID 119328762 Discriminating Phases with Similar Crystal Structures Using Electron Backscatter Diffraction EBSD and Energy Dispersive X Ray Spectrometry EDS AZoNano com 2015 Archived from the original on 2 March 2023 Nolze G Geist V Neumann R Saliwan Buchheim M 2005 Investigation of orientation relationships by EBSD and EDS on the example of the Watson iron meteorite Crystal Research and Technology 40 8 791 804 Bibcode 2005CryRT 40 791N doi 10 1002 crat 200410434 S2CID 96785527 Uncovering the tiny defects that make materials fail Physics World 29 November 2022 Archived from the original on 3 March 2023 Kell J Tyrer J R Higginson R L Thomson R C 2005 Microstructural characterization of autogenous laser welds on 316L stainless steel using EBSD and EDS Journal of Microscopy 217 2 167 173 doi 10 1111 j 1365 2818 2005 01447 x PMID 15683414 S2CID 12285114 West G D Thomson R C 2009 Combined EBSD EDS tomography in a dual beam FIB FEG SEM Journal of Microscopy 233 3 442 450 doi 10 1111 j 1365 2818 2009 03138 x PMID 19250465 S2CID 42955621 Moser D E Cupelli C L Barker I R Flowers R M Bowman J R Wooden J Hart J R 2011 Davis William J ed New zircon shock phenomena and their use for dating and reconstruction of large impact structures revealed by electron nanobeam EBSD CL EDS and isotopic U Pb and U Th He analysis of the Vredefort domeThis article is one of a series of papers published in this Special Issue on the theme of Geochronology in honour of Tom Krogh Canadian Journal of Earth Sciences 48 2 117 139 Bibcode 2011CaJES 48 117D doi 10 1139 E11 011 Laigo J Christien F Le Gall R Tancret F Furtado J 2008 SEM EDS EPMA WDS and EBSD characterization of carbides in HP type heat resistant alloys Materials Characterization 59 11 1580 1586 doi 10 1016 j matchar 2008 02 001 Microscale Analysis of Lithium Containing Compounds and Alloys AZoM com 18 January 2023 Archived from the original on 17 February 2023 Wisniewski Wolfgang Svancarek Peter Prnova Anna Parchoviansky Milan Galusek Dusan 2020 Y2O3 Al2O3 microsphere crystallization analyzed by electron backscatter diffraction EBSD Scientific Reports 10 1 11122 Bibcode 2020NatSR 1011122W doi 10 1038 s41598 020 67816 7 PMC 7338460 PMID 32632218 Ohfuji Hiroaki Yamamoto Masashi 2015 EDS quantification of light elements using osmium surface coating Journal of Mineralogical and Petrological Sciences 110 4 189 195 Bibcode 2015JMPeS 110 189O doi 10 2465 jmps 141126 S2CID 93672390 Frahm Ellery 2014 Scanning Electron Microscopy SEM Applications in Archaeology Encyclopedia of Global Archaeology New York New York Springer New York pp 6487 6495 doi 10 1007 978 1 4419 0465 2 341 ISBN 978 1 4419 0426 3 Stinville J C Callahan P G Charpagne M A Echlin M P Valle V Pollock T M 2020 Direct measurements of slip irreversibility in a nickel based superalloy using high resolution digital image correlation Acta Materialia 186 172 189 Bibcode 2020AcMat 186 172S doi 10 1016 j actamat 2019 12 009 OSTI 1803462 S2CID 213631580 Charpagne Marie Agathe Strub Florian Pollock Tresa M 2019 Accurate reconstruction of EBSD datasets by a multimodal data approach using an evolutionary algorithm Materials Characterization 150 184 198 arXiv 1903 02988 doi 10 1016 j matchar 2019 01 033 S2CID 71144677 Zhao Chong Stewart David Jiang Jun Dunne Fionn P E 2018 A comparative assessment of iron and cobalt based hard facing alloy deformation using HR EBSD and HR DIC Acta Materialia 159 173 186 Bibcode 2018AcMat 159 173Z doi 10 1016 j actamat 2018 08 021 hdl 10044 1 68967 S2CID 139436094 Orozco Caballero Alberto Jackson Thomas da Fonseca Joao Quinta 2021 High resolution digital image correlation study of the strain localization during loading of a shot peened RR1000 nickel based superalloy PDF Acta Materialia 220 117306 Bibcode 2021AcMat 22017306O doi 10 1016 j actamat 2021 117306 S2CID 240539022 Archived PDF from the original on 25 March 2023 Retrieved 20 March 2023 Ye Zhenhua Li Chuanwei Zheng Mengyao Zhang Xinyu Yang Xudong Gu Jianfeng 2022 In situ EBSD DIC based investigation of deformation and fracture mechanism in FCC and L12 structured FeCoNiV high entropy alloys International Journal of Plasticity 152 103247 doi 10 1016 j ijplas 2022 103247 S2CID 246553822 a b c Hestroffer Jonathan M Stinville Jean Charles Charpagne Marie Agathe Miller Matthew P Pollock Tresa M Beyerlein Irene J 2023 Slip localization behavior at triple junctions in nickel base superalloys Acta Materialia 249 118801 Bibcode 2023AcMat 24918801H doi 10 1016 j actamat 2023 118801 S2CID 257216017 Sperry Ryan Han Songyang Chen Zhe Daly Samantha H Crimp Martin A Fullwood David T 2021 Comparison of EBSD DIC AFM and ECCI for active slip system identification in deformed Ti 7Al Materials Characterization 173 110941 doi 10 1016 j matchar 2021 110941 S2CID 233839426 Gao Wenjie Lu Junxia Zhou Jianli Liu Ling en Wang Jin Zhang Yuefei Zhang Ze 2022 Effect of grain size on deformation and fracture of Inconel718 An in situ SEM EBSD DIC investigation Materials Science and Engineering A 861 144361 doi 10 1016 j msea 2022 144361 S2CID 253797056 Di Gioacchino Fabio Quinta da Fonseca Joao 2015 An experimental study of the polycrystalline plasticity of austenitic stainless steel International Journal of Plasticity 74 92 109 doi 10 1016 j ijplas 2015 05 012 Mingard K P Roebuck B Jones H G Stewart M Cox D Gee M G 2018 Visualisation and measurement of hardmetal microstructures in 3D International Journal of Refractory Metals and Hard Materials 71 285 291 doi 10 1016 j ijrmhm 2017 11 023 a b Lin F X Godfrey A Jensen D Juul Winther G 2010 3D EBSD characterization of deformation structures in commercial purity aluminum Materials Characterization 61 11 1203 1210 doi 10 1016 j matchar 2010 07 013 Khorashadizadeh A Raabe D Zaefferer S Rohrer G S Rollett A D Winning M 2011 Five Parameter Grain Boundary Analysis by 3D EBSD of an Ultra Fine Grained CuZr Alloy Processed by Equal Channel Angular Pressing Advanced Engineering Materials 13 4 237 244 doi 10 1002 adem 201000259 S2CID 18389821 Tsai Shao Pu Konijnenberg Peter J Gonzalez Ivan Hartke Samuel Griffiths Thomas A Herbig Michael Kawano Miyata Kaori Taniyama Akira Sano Naoyuki Zaefferer Stefan 2022 Development of a new fully automated system for electron backscatter diffraction EBSD based large volume three dimensional microstructure mapping using serial sectioning by mechanical polishing and its application to the analysis of special boundaries in 316L stainless steel Review of Scientific Instruments 93 9 093707 Bibcode 2022RScI 93i3707T doi 10 1063 5 0087945 PMID 36182491 S2CID 252628156 Zaafarani N Raabe D Singh R N Roters F Zaefferer S 2006 Three dimensional investigation of the texture and microstructure below a nanoindent in a Cu single crystal using 3D EBSD and crystal plasticity finite element simulations Acta Materialia 54 7 1863 1876 Bibcode 2006AcMat 54 1863Z doi 10 1016 j actamat 2005 12 014 hdl 11858 00 001M 0000 0019 5A14 4 Hashimoto Teruo Thompson George E Zhou Xiaorong Withers Philip J 2016 3D imaging by serial block face scanning electron microscopy for materials science using ultramicrotomy Ultramicroscopy 163 6 18 doi 10 1016 j ultramic 2016 01 005 PMID 26855205 DeMott Ryan Haghdadi Nima Kong Charlie Gandomkar Ziba Kenney Matthew Collins Peter Primig Sophie 2021 3D electron backscatter diffraction characterization of fine a titanium microstructures collection reconstruction and analysis methods Ultramicroscopy 230 113394 doi 10 1016 j ultramic 2021 113394 PMID 34614440 S2CID 238422160 Konrad J Zaefferer S Raabe D 2006 Investigation of orientation gradients around a hard Laves particle in a warm rolled Fe3Al based alloy using a 3D EBSD FIB technique Acta Materialia 54 5 1369 1380 Bibcode 2006AcMat 54 1369K doi 10 1016 j actamat 2005 11 015 Calcagnotto Marion Ponge Dirk Demir Eralp Raabe Dierk 2010 Orientation gradients and geometrically necessary dislocations in ultrafine grained dual phase steels studied by 2D and 3D EBSD Materials Science and Engineering A 527 10 2738 2746 doi 10 1016 j msea 2010 01 004 Gholinia A Brough I Humphreys J McDonald D Bate P 2010 An investigation of dynamic recrystallisation on Cu Sn bronze using 3D EBSD Materials Science and Technology 26 6 685 690 Bibcode 2010MatST 26 685G doi 10 1179 026708309X12547309760966 S2CID 137530768 Pirgazi Hadi 2019 On the alignment of 3D EBSD data collected by serial sectioning technique Materials Characterization 152 223 229 doi 10 1016 j matchar 2019 04 026 S2CID 149835216 Winiarski B Gholinia A Mingard K Gee M Thompson G Withers P J 2021 Correction of artefacts associated with large area EBSD Ultramicroscopy 226 113315 doi 10 1016 j ultramic 2021 113315 PMID 34049196 S2CID 235241941 Konijnenberg P J Zaefferer S Raabe D 2015 Assessment of geometrically necessary dislocation levels derived by 3D EBSD Acta Materialia 99 402 414 Bibcode 2015AcMat 99 402K doi 10 1016 j actamat 2015 06 051 Further reading edit Electron Backscatter Diffraction EBSD DoITPoMS Britton T Ben Jiang Jun Guo Y Vilalta Clemente A Wallis D Hansen L N Winkelmann A Wilkinson A J July 2016 Tutorial Crystal orientations and EBSD Or which way is up Materials Characterization 117 113 126 doi 10 1016 j matchar 2016 04 008 hdl 10044 1 31250 S2CID 138070296 Charpagne Marie Agathe Strub Florian Pollock Tresa M April 2019 Accurate reconstruction of EBSD datasets by a multimodal data approach using an evolutionary algorithm Materials Characterization 150 184 198 arXiv 1903 02988 doi 10 1016 j matchar 2019 01 033 S2CID 71144677 Jackson M A Pascal E De Graef M 2019 Dictionary Indexing of Electron Back Scatter Diffraction Patterns a Hands On Tutorial Integrating Materials and Manufacturing Innovation 8 2 226 246 doi 10 1007 s40192 019 00137 4 S2CID 182073071 Randle Valerie September 2009 Electron backscatter diffraction Strategies for reliable data acquisition and processing Materials Characterization 60 90 913 922 doi 10 1016 j matchar 2009 05 011 Schwartz Adam J Kumar Mukul Adams Brent L Field David P eds 2009 Electron Backscatter Diffraction in Materials Science 2nd ed New York New York Springer New York New York published 12 August 2009 doi 10 1007 978 0 387 88136 2 ISBN 978 0 387 88135 5 Zaefferer S Raabe D A Khorashadizadeh Tomographic orientation microscopy 3D EBSD on steels using a joint FIB SEM technique Max Planck Institute for Iron Research External links edit nbsp Wikimedia Commons has media related to Electron backscatter diffraction Codes edit De Graef M July 2017 EMsoft simulate EBSP GitHub Anes Hakon 2020 kikuchipy process simulate analyze EBSD patterns with python kikuchipy Hielscher Schaeben 2008 MTEX EBSD analysis MTEX Ruggles T J Bomarito G F Qiu R L Hochhalter J D 1 December 2018 OpenXY HR EBSD GitHub Tong Vivian Britton Ben July 2017 TrueEBSD correcting spatial distortions in electron backscatter diffraction maps Ultramicroscopy 221 113130 arXiv 1909 00347 doi 10 1016 j ultramic 2020 113130 PMID 33290982 S2CID 202538027 Videos edit Britton Ben 11 January 2021 Introduction to EBSD Section 1 What can EBSD tell you YouTube Nowell Matt 22 February 2022 Learn How I Prepare Samples for EBSD Analysis EDAX YouTube Wright Stuart 31 January 2022 EBSD Analysis of Deformed Microstructures EDAX YouTube Electron Backscatter Diffraction Explained QUANTAX EBSD Bruker Nano Analytics YouTube 1 September 2020 Retrieved from https en wikipedia org w index php title Electron backscatter diffraction amp oldid 1224585237 Scattered electron imaging, wikipedia, wiki, book, books, library,

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