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Finite element method

The finite element method (FEM) is a popular method for numerically solving differential equations arising in engineering and mathematical modeling. Typical problem areas of interest include the traditional fields of structural analysis, heat transfer, fluid flow, mass transport, and electromagnetic potential.

Visualization of how a car deforms in an asymmetrical crash using finite element analysis

The FEM is a general numerical method for solving partial differential equations in two or three space variables (i.e., some boundary value problems). To solve a problem, the FEM subdivides a large system into smaller, simpler parts that are called finite elements. This is achieved by a particular space discretization in the space dimensions, which is implemented by the construction of a mesh of the object: the numerical domain for the solution, which has a finite number of points. The finite element method formulation of a boundary value problem finally results in a system of algebraic equations. The method approximates the unknown function over the domain.[1] The simple equations that model these finite elements are then assembled into a larger system of equations that models the entire problem. The FEM then approximates a solution by minimizing an associated error function via the calculus of variations.

Studying or analyzing a phenomenon with FEM is often referred to as finite element analysis (FEA).

Basic concepts

 
FEM mesh created by an analyst prior to finding a solution to a magnetic problem using FEM software. Colors indicate that the analyst has set material properties for each zone, in this case, a conducting wire coil in orange; a ferromagnetic component (perhaps iron) in light blue; and air in grey. Although the geometry may seem simple, it would be very challenging to calculate the magnetic field for this setup without FEM software, using equations alone.
 
FEM solution to the problem at left, involving a cylindrically shaped magnetic shield. The ferromagnetic cylindrical part is shielding the area inside the cylinder by diverting the magnetic field created by the coil (rectangular area on the right). The color represents the amplitude of the magnetic flux density, as indicated by the scale in the inset legend, red being high amplitude. The area inside the cylinder is the low amplitude (dark blue, with widely spaced lines of magnetic flux), which suggests that the shield is performing as it was designed to.

The subdivision of a whole domain into simpler parts has several advantages:[2]

  • Accurate representation of complex geometry
  • Inclusion of dissimilar material properties
  • Easy representation of the total solution
  • Capture of local effects.

Typical work out of the method involves:

  1. dividing the domain of the problem into a collection of subdomains, with each subdomain represented by a set of element equations to the original problem
  2. systematically recombining all sets of element equations into a global system of equations for the final calculation.

The global system of equations has known solution techniques, and can be calculated from the initial values of the original problem to obtain a numerical answer.

In the first step above, the element equations are simple equations that locally approximate the original complex equations to be studied, where the original equations are often partial differential equations (PDE). To explain the approximation in this process, the finite element method is commonly introduced as a special case of Galerkin method. The process, in mathematical language, is to construct an integral of the inner product of the residual and the weight functions and set the integral to zero. In simple terms, it is a procedure that minimizes the error of approximation by fitting trial functions into the PDE. The residual is the error caused by the trial functions, and the weight functions are polynomial approximation functions that project the residual. The process eliminates all the spatial derivatives from the PDE, thus approximating the PDE locally with

These equation sets are the element equations. They are linear if the underlying PDE is linear, and vice versa. Algebraic equation sets that arise in the steady-state problems are solved using numerical linear algebra methods, while ordinary differential equation sets that arise in the transient problems are solved by numerical integration using standard techniques such as Euler's method or the Runge-Kutta method.

In step (2) above, a global system of equations is generated from the element equations through a transformation of coordinates from the subdomains' local nodes to the domain's global nodes. This spatial transformation includes appropriate orientation adjustments as applied in relation to the reference coordinate system. The process is often carried out by FEM software using coordinate data generated from the subdomains.

The practical application of FEM is known as finite element analysis (FEA). FEA as applied in engineering is a computational tool for performing engineering analysis. It includes the use of mesh generation techniques for dividing a complex problem into small elements, as well as the use of software coded with a FEM algorithm. In applying FEA, the complex problem is usually a physical system with the underlying physics such as the Euler–Bernoulli beam equation, the heat equation, or the Navier-Stokes equations expressed in either PDE or integral equations, while the divided small elements of the complex problem represent different areas in the physical system.

FEA may be used for analyzing problems over complicated domains (like cars and oil pipelines), when the domain changes (as during a solid-state reaction with a moving boundary), when the desired precision varies over the entire domain, or when the solution lacks smoothness. FEA simulations provide a valuable resource as they remove multiple instances of creation and testing of hard prototypes for various high fidelity situations.[citation needed] For instance, in a frontal crash simulation it is possible to increase prediction accuracy in "important" areas like the front of the car and reduce it in its rear (thus reducing the cost of the simulation). Another example would be in numerical weather prediction, where it is more important to have accurate predictions over developing highly nonlinear phenomena (such as tropical cyclones in the atmosphere, or eddies in the ocean) rather than relatively calm areas.

A clear, detailed and practical presentation of this approach can be found in The Finite Element Method for Engineers.[3]

History

While it is difficult to quote a date of the invention of the finite element method, the method originated from the need to solve complex elasticity and structural analysis problems in civil and aeronautical engineering.[4] Its development can be traced back to the work by A. Hrennikoff[5] and R. Courant[6] in the early 1940s. Another pioneer was Ioannis Argyris. In the USSR, the introduction of the practical application of the method is usually connected with name of Leonard Oganesyan.[7] It was also independently rediscovered in China by Feng Kang in the later 1950s and early 1960s, based on the computations of dam constructions, where it was called the finite difference method based on variation principle. Although the approaches used by these pioneers are different, they share one essential characteristic: mesh discretization of a continuous domain into a set of discrete sub-domains, usually called elements.

Hrennikoff's work discretizes the domain by using a lattice analogy, while Courant's approach divides the domain into finite triangular subregions to solve second order elliptic partial differential equations that arise from the problem of torsion of a cylinder. Courant's contribution was evolutionary, drawing on a large body of earlier results for PDEs developed by Rayleigh, Ritz, and Galerkin.

The finite element method obtained its real impetus in the 1960s and 1970s by the developments of J. H. Argyris with co-workers at the University of Stuttgart, R. W. Clough with co-workers at UC Berkeley, O. C. Zienkiewicz with co-workers Ernest Hinton, Bruce Irons[8] and others at Swansea University, Philippe G. Ciarlet at the University of Paris 6 and Richard Gallagher with co-workers at Cornell University. Further impetus was provided in these years by available open source finite element programs. NASA sponsored the original version of NASTRAN, and UC Berkeley made the finite element program SAP IV[9] widely available. In Norway the ship classification society Det Norske Veritas (now DNV GL) developed Sesam in 1969 for use in analysis of ships.[10] A rigorous mathematical basis to the finite element method was provided in 1973 with the publication by Strang and Fix.[11] The method has since been generalized for the numerical modeling of physical systems in a wide variety of engineering disciplines, e.g., electromagnetism, heat transfer, and fluid dynamics.[12][13]

Technical discussion

The structure of finite element methods

A finite element method is characterized by a variational formulation, a discretization strategy, one or more solution algorithms, and post-processing procedures.

Examples of the variational formulation are the Galerkin method, the discontinuous Galerkin method, mixed methods, etc.

A discretization strategy is understood to mean a clearly defined set of procedures that cover (a) the creation of finite element meshes, (b) the definition of basis function on reference elements (also called shape functions) and (c) the mapping of reference elements onto the elements of the mesh. Examples of discretization strategies are the h-version, p-version, hp-version, x-FEM, isogeometric analysis, etc. Each discretization strategy has certain advantages and disadvantages. A reasonable criterion in selecting a discretization strategy is to realize nearly optimal performance for the broadest set of mathematical models in a particular model class.

Various numerical solution algorithms can be classified into two broad categories; direct and iterative solvers. These algorithms are designed to exploit the sparsity of matrices that depend on the choices of variational formulation and discretization strategy.

Postprocessing procedures are designed for the extraction of the data of interest from a finite element solution. In order to meet the requirements of solution verification, postprocessors need to provide for a posteriori error estimation in terms of the quantities of interest. When the errors of approximation are larger than what is considered acceptable then the discretization has to be changed either by an automated adaptive process or by the action of the analyst. There are some very efficient postprocessors that provide for the realization of superconvergence.

Illustrative problems P1 and P2

The following two problems demonstrate the finite element method.

P1 is a one-dimensional problem

 

where   is given,   is an unknown function of  , and   is the second derivative of   with respect to  .

P2 is a two-dimensional problem (Dirichlet problem)

 

where   is a connected open region in the   plane whose boundary   is nice (e.g., a smooth manifold or a polygon), and   and   denote the second derivatives with respect to   and  , respectively.

The problem P1 can be solved directly by computing antiderivatives. However, this method of solving the boundary value problem (BVP) works only when there is one spatial dimension and does not generalize to higher-dimensional problems or problems like  . For this reason, we will develop the finite element method for P1 and outline its generalization to P2.

Our explanation will proceed in two steps, which mirror two essential steps one must take to solve a boundary value problem (BVP) using the FEM.

  • In the first step, one rephrases the original BVP in its weak form. Little to no computation is usually required for this step. The transformation is done by hand on paper.
  • The second step is the discretization, where the weak form is discretized in a finite-dimensional space.

After this second step, we have concrete formulae for a large but finite-dimensional linear problem whose solution will approximately solve the original BVP. This finite-dimensional problem is then implemented on a computer.

Weak formulation

The first step is to convert P1 and P2 into their equivalent weak formulations.

The weak form of P1

If   solves P1, then for any smooth function   that satisfies the displacement boundary conditions, i.e.   at   and  , we have

 

 

 

 

 

(1)

Conversely, if   with   satisfies (1) for every smooth function   then one may show that this   will solve P1. The proof is easier for twice continuously differentiable   (mean value theorem), but may be proved in a distributional sense as well.

We define a new operator or map   by using integration by parts on the right-hand-side of (1):

 

 

 

 

 

(2)

where we have used the assumption that  .

The weak form of P2

If we integrate by parts using a form of Green's identities, we see that if   solves P2, then we may define   for any   by

 

where   denotes the gradient and   denotes the dot product in the two-dimensional plane. Once more   can be turned into an inner product on a suitable space   of once differentiable functions of   that are zero on  . We have also assumed that   (see Sobolev spaces). Existence and uniqueness of the solution can also be shown.

A proof outline of existence and uniqueness of the solution

We can loosely think of   to be the absolutely continuous functions of   that are   at   and   (see Sobolev spaces). Such functions are (weakly) once differentiable and it turns out that the symmetric bilinear map   then defines an inner product which turns   into a Hilbert space (a detailed proof is nontrivial). On the other hand, the left-hand-side   is also an inner product, this time on the Lp space  . An application of the Riesz representation theorem for Hilbert spaces shows that there is a unique   solving (2) and therefore P1. This solution is a-priori only a member of  , but using elliptic regularity, will be smooth if   is.

Discretization

 
A function in   with zero values at the endpoints (blue), and a piecewise linear approximation (red)

P1 and P2 are ready to be discretized which leads to a common sub-problem (3). The basic idea is to replace the infinite-dimensional linear problem:

Find   such that
 

with a finite-dimensional version:

Find   such that
 

 

 

 

 

(3)

where   is a finite-dimensional subspace of  . There are many possible choices for   (one possibility leads to the spectral method). However, for the finite element method we take   to be a space of piecewise polynomial functions.

For problem P1

We take the interval  , choose   values of   with   and we define   by:

 

where we define   and  . Observe that functions in   are not differentiable according to the elementary definition of calculus. Indeed, if   then the derivative is typically not defined at any  ,  . However, the derivative exists at every other value of   and one can use this derivative for the purpose of integration by parts.

 
A piecewise linear function in two dimensions

For problem P2

We need   to be a set of functions of  . In the figure on the right, we have illustrated a triangulation of a 15 sided polygonal region   in the plane (below), and a piecewise linear function (above, in color) of this polygon which is linear on each triangle of the triangulation; the space   would consist of functions that are linear on each triangle of the chosen triangulation.

One hopes that as the underlying triangular mesh becomes finer and finer, the solution of the discrete problem (3) will in some sense converge to the solution of the original boundary value problem P2. To measure this mesh fineness, the triangulation is indexed by a real-valued parameter   which one takes to be very small. This parameter will be related to the size of the largest or average triangle in the triangulation. As we refine the triangulation, the space of piecewise linear functions   must also change with  . For this reason, one often reads   instead of   in the literature. Since we do not perform such an analysis, we will not use this notation.

Choosing a basis

Interpolation of a Bessel function
 
16 scaled and shifted triangular basis functions (colors) used to reconstruct a zeroeth order Bessel function J0 (black).
 
The linear combination of basis functions (yellow) reproduces J0 (black) to any desired accuracy.

To complete the discretization, we must select a basis of  . In the one-dimensional case, for each control point   we will choose the piecewise linear function   in   whose value is   at   and zero at every  , i.e.,

 

for  ; this basis is a shifted and scaled tent function. For the two-dimensional case, we choose again one basis function   per vertex   of the triangulation of the planar region  . The function   is the unique function of   whose value is   at   and zero at every  .

Depending on the author, the word "element" in the "finite element method" refers either to the triangles in the domain, the piecewise linear basis function, or both. So for instance, an author interested in curved domains might replace the triangles with curved primitives, and so might describe the elements as being curvilinear. On the other hand, some authors replace "piecewise linear" by "piecewise quadratic" or even "piecewise polynomial". The author might then say "higher order element" instead of "higher degree polynomial". The finite element method is not restricted to triangles (or tetrahedra in 3-d, or higher-order simplexes in multidimensional spaces), but can be defined on quadrilateral subdomains (hexahedra, prisms, or pyramids in 3-d, and so on). Higher-order shapes (curvilinear elements) can be defined with polynomial and even non-polynomial shapes (e.g. ellipse or circle).

Examples of methods that use higher degree piecewise polynomial basis functions are the hp-FEM and spectral FEM.

More advanced implementations (adaptive finite element methods) utilize a method to assess the quality of the results (based on error estimation theory) and modify the mesh during the solution aiming to achieve an approximate solution within some bounds from the exact solution of the continuum problem. Mesh adaptivity may utilize various techniques, the most popular are:

  • moving nodes (r-adaptivity)
  • refining (and unrefined) elements (h-adaptivity)
  • changing order of base functions (p-adaptivity)
  • combinations of the above (hp-adaptivity).

Small support of the basis

 
Solving the two-dimensional problem   in the disk centered at the origin and radius 1, with zero boundary conditions.
(a) The triangulation.
 
(b) The sparse matrix L of the discretized linear system
 
(c) The computed solution,  

The primary advantage of this choice of basis is that the inner products

 

and

 

will be zero for almost all  . (The matrix containing   in the   location is known as the Gramian matrix.) In the one dimensional case, the support of   is the interval  . Hence, the integrands of   and   are identically zero whenever  .

Similarly, in the planar case, if   and   do not share an edge of the triangulation, then the integrals

 

and

 

are both zero.

Matrix form of the problem

If we write   and   then problem (3), taking   for  , becomes

  for  

 

 

 

 

(4)

If we denote by   and   the column vectors   and  , and if we let

 

and

 

be matrices whose entries are

 

and

 

then we may rephrase (4) as

 

 

 

 

 

(5)

It is not necessary to assume  . For a general function  , problem (3) with   for   becomes actually simpler, since no matrix   is used,

 

 

 

 

 

(6)

where   and   for  .

As we have discussed before, most of the entries of   and   are zero because the basis functions   have small support. So we now have to solve a linear system in the unknown   where most of the entries of the matrix  , which we need to invert, are zero.

Such matrices are known as sparse matrices, and there are efficient solvers for such problems (much more efficient than actually inverting the matrix.) In addition,   is symmetric and positive definite, so a technique such as the conjugate gradient method is favored. For problems that are not too large, sparse LU decompositions and Cholesky decompositions still work well. For instance, MATLAB's backslash operator (which uses sparse LU, sparse Cholesky, and other factorization methods) can be sufficient for meshes with a hundred thousand vertices.

The matrix   is usually referred to as the stiffness matrix, while the matrix   is dubbed the mass matrix.

General form of the finite element method

In general, the finite element method is characterized by the following process.

  • One chooses a grid for  . In the preceding treatment, the grid consisted of triangles, but one can also use squares or curvilinear polygons.
  • Then, one chooses basis functions. In our discussion, we used piecewise linear basis functions, but it is also common to use piecewise polynomial basis functions.

Separate consideration is the smoothness of the basis functions. For second-order elliptic boundary value problems, piecewise polynomial basis function that is merely continuous suffice (i.e., the derivatives are discontinuous.) For higher-order partial differential equations, one must use smoother basis functions. For instance, for a fourth-order problem such as  , one may use piecewise quadratic basis functions that are  .

Another consideration is the relation of the finite-dimensional space   to its infinite-dimensional counterpart, in the examples above  . A conforming element method is one in which space   is a subspace of the element space for the continuous problem. The example above is such a method. If this condition is not satisfied, we obtain a nonconforming element method, an example of which is the space of piecewise linear functions over the mesh which are continuous at each edge midpoint. Since these functions are in general discontinuous along the edges, this finite-dimensional space is not a subspace of the original  .

Typically, one has an algorithm for taking a given mesh and subdividing it. If the main method for increasing precision is to subdivide the mesh, one has an h-method (h is customarily the diameter of the largest element in the mesh.) In this manner, if one shows that the error with a grid   is bounded above by  , for some   and  , then one has an order p method. Under certain hypotheses (for instance, if the domain is convex), a piecewise polynomial of order   method will have an error of order  .

If instead of making h smaller, one increases the degree of the polynomials used in the basis function, one has a p-method. If one combines these two refinement types, one obtains an hp-method (hp-FEM). In the hp-FEM, the polynomial degrees can vary from element to element. High order methods with large uniform p are called spectral finite element methods (SFEM). These are not to be confused with spectral methods.

For vector partial differential equations, the basis functions may take values in  .

Various types of finite element methods

AEM

The Applied Element Method or AEM combines features of both FEM and Discrete element method, or (DEM).

A-FEM

The Augmented-Finite Element Method is introduced by Yang and Lui whose goal was to model the weak and strong discontinuities without the need of extra DoFs as in PuM stated.

Generalized finite element method

The generalized finite element method (GFEM) uses local spaces consisting of functions, not necessarily polynomials, that reflect the available information on the unknown solution and thus ensure good local approximation. Then a partition of unity is used to “bond” these spaces together to form the approximating subspace. The effectiveness of GFEM has been shown when applied to problems with domains having complicated boundaries, problems with micro-scales, and problems with boundary layers.[14]

Mixed finite element method

The mixed finite element method is a type of finite element method in which extra independent variables are introduced as nodal variables during the discretization of a partial differential equation problem.

Variable – polynomial

The hp-FEM combines adaptively, elements with variable size h and polynomial degree p in order to achieve exceptionally fast, exponential convergence rates.[15]

hpk-FEM

The hpk-FEM combines adaptively, elements with variable size h, polynomial degree of the local approximations p and global differentiability of the local approximations (k-1) to achieve best convergence rates.

XFEM

The extended finite element method (XFEM) is a numerical technique based on the generalized finite element method (GFEM) and the partition of unity method (PUM). It extends the classical finite element method by enriching the solution space for solutions to differential equations with discontinuous functions. Extended finite element methods enrich the approximation space so that it can naturally reproduce the challenging feature associated with the problem of interest: the discontinuity, singularity, boundary layer, etc. It was shown that for some problems, such an embedding of the problem's feature into the approximation space can significantly improve convergence rates and accuracy. Moreover, treating problems with discontinuities with XFEMs suppresses the need to mesh and re-mesh the discontinuity surfaces, thus alleviating the computational costs and projection errors associated with conventional finite element methods, at the cost of restricting the discontinuities to mesh edges.

Several research codes implement this technique to various degrees: 1. GetFEM++ 2. xfem++ 3. openxfem++

XFEM has also been implemented in codes like Altair Radios, ASTER, Morfeo, and Abaqus. It is increasingly being adopted by other commercial finite element software, with a few plugins and actual core implementations available (ANSYS, SAMCEF, OOFELIE, etc.).

Scaled boundary finite element method (SBFEM)

The introduction of the scaled boundary finite element method (SBFEM) came from Song and Wolf (1997).[16] The SBFEM has been one of the most profitable contributions in the area of numerical analysis of fracture mechanics problems. It is a semi-analytical fundamental-solutionless method which combines the advantages of both the finite element formulations and procedures and the boundary element discretization. However, unlike the boundary element method, no fundamental differential solution is required.

S-FEM

The S-FEM, Smoothed Finite Element Methods, is a particular class of numerical simulation algorithms for the simulation of physical phenomena. It was developed by combining meshfree methods with the finite element method.

Spectral element method

Spectral element methods combine the geometric flexibility of finite elements and the acute accuracy of spectral methods. Spectral methods are the approximate solution of weak form partial equations that are based on high-order Lagrangian interpolants and used only with certain quadrature rules.[17]

Meshfree methods

Discontinuous Galerkin methods

Finite element limit analysis

Stretched grid method

Loubignac iteration

Loubignac iteration is an iterative method in finite element methods.

Crystal plasticity finite element method (CPFEM)

Crystal plasticity finite element method (CPFEM) is an advanced numerical tool developed by Franz Roters. Metals can be regarded as crystal aggregates and it behave anisotropy under deformation, for example, abnormal stress and strain localization. CPFEM based on slip (shear strain rate) can calculate dislocation, crystal orientation and other texture information to consider crystal anisotropy during the routine. Now it has been applied in the numerical study of material deformation, surface roughness, fractures and so on.

Virtual element method (VEM)

The virtual element method (VEM), introduced by Beirão da Veiga et al. (2013)[18] as an extension of mimetic finite difference (MFD) methods, is a generalisation of the standard finite element method for arbitrary element geometries. This allows admission of general polygons (or polyhedra in 3D) that are highly irregular and non-convex in shape. The name virtual derives from the fact that knowledge of the local shape function basis is not required, and is in fact never explicitly calculated.

Link with the gradient discretization method

Some types of finite element methods (conforming, nonconforming, mixed finite element methods) are particular cases of the gradient discretization method (GDM). Hence the convergence properties of the GDM, which are established for a series of problems (linear and non-linear elliptic problems, linear, nonlinear, and degenerate parabolic problems), hold as well for these particular finite element methods.

Comparison to the finite difference method

The finite difference method (FDM) is an alternative way of approximating solutions of PDEs. The differences between FEM and FDM are:

  • The most attractive feature of the FEM is its ability to handle complicated geometries (and boundaries) with relative ease. While FDM in its basic form is restricted to handle rectangular shapes and simple alterations thereof, the handling of geometries in FEM is theoretically straightforward.[2][19]
  • FDM is not usually used for irregular CAD geometries but more often rectangular or block shaped models.[20]
  • FEM generally allows for more flexible mesh adaptivity than FDM.[19]
  • The most attractive feature of finite differences is that it is very easy to implement.[19]
  • There are several ways one could consider the FDM a special case of the FEM approach. E.g., first-order FEM is identical to FDM for Poisson's equation, if the problem is discretized by a regular rectangular mesh with each rectangle divided into two triangles.
  • There are reasons to consider the mathematical foundation of the finite element approximation more sound, for instance, because the quality of the approximation between grid points is poor in FDM.
  • The quality of a FEM approximation is often higher than in the corresponding FDM approach, but this is extremely problem-dependent and several examples to the contrary can be provided.

Generally, FEM is the method of choice in all types of analysis in structural mechanics (i.e. solving for deformation and stresses in solid bodies or dynamics of structures) while computational fluid dynamics (CFD) tend to use FDM or other methods like finite volume method (FVM). CFD problems usually require discretization of the problem into a large number of cells/gridpoints (millions and more), therefore the cost of the solution favors simpler, lower-order approximation within each cell. This is especially true for 'external flow' problems, like airflow around the car or airplane, or weather simulation.

Application

 
3D pollution transport model - concentration field on ground level
 
3D pollution transport model - concentration field on perpendicular surface

A variety of specializations under the umbrella of the mechanical engineering discipline (such as aeronautical, biomechanical, and automotive industries) commonly use integrated FEM in the design and development of their products. Several modern FEM packages include specific components such as thermal, electromagnetic, fluid, and structural working environments. In a structural simulation, FEM helps tremendously in producing stiffness and strength visualizations and also in minimizing weight, materials, and costs.[21]

FEM allows detailed visualization of where structures bend or twist, and indicates the distribution of stresses and displacements. FEM software provides a wide range of simulation options for controlling the complexity of both modeling and analysis of a system. Similarly, the desired level of accuracy required and associated computational time requirements can be managed simultaneously to address most engineering applications. FEM allows entire designs to be constructed, refined, and optimized before the design is manufactured. The mesh is an integral part of the model and it must be controlled carefully to give the best results. Generally the higher the number of elements in a mesh, the more accurate the solution of the discretized problem. However, there is a value at which the results converge and further mesh refinement does not increase accuracy.[22]

 
Finite Element Model of a human knee joint.[23]

This powerful design tool has significantly improved both the standard of engineering designs and the methodology of the design process in many industrial applications.[24] The introduction of FEM has substantially decreased the time to take products from concept to the production line.[24] It is primarily through improved initial prototype designs using FEM that testing and development have been accelerated.[25] In summary, benefits of FEM include increased accuracy, enhanced design and better insight into critical design parameters, virtual prototyping, fewer hardware prototypes, a faster and less expensive design cycle, increased productivity, and increased revenue.[24]

In the 1990s FEM was proposed for use in stochastic modelling for numerically solving probability models[26] and later for reliability assessment.[27]

See also

References

  1. ^ Daryl L. Logan (2011). A first course in the finite element method. Cengage Learning. ISBN 978-0495668251.
  2. ^ a b Reddy, J. N. (2006). An Introduction to the Finite Element Method (Third ed.). McGraw-Hill. ISBN 9780071267618.
  3. ^ Huebner, Kenneth H. (2001). The Finite Element Method for Engineers. Wiley. ISBN 978-0-471-37078-9.
  4. ^ Liu, Wing Kam; Li, Shaofan; Park, Harold S. (2022). "Eighty Years of the Finite Element Method: Birth, Evolution, and Future". Archives of Computational Methods in Engineering. 29 (6): 4431–4453. doi:10.1007/s11831-022-09740-9. ISSN 1134-3060. S2CID 235794921.
  5. ^ Hrennikoff, Alexander (1941). "Solution of problems of elasticity by the framework method". Journal of Applied Mechanics. 8 (4): 169–175. Bibcode:1941JAM.....8A.169H. doi:10.1115/1.4009129.
  6. ^ Courant, R. (1943). "Variational methods for the solution of problems of equilibrium and vibrations". Bulletin of the American Mathematical Society. 49: 1–23. doi:10.1090/s0002-9904-1943-07818-4.
  7. ^ . emi.nw.ru. Archived from the original on 30 September 2015. Retrieved 17 March 2018.
  8. ^ Hinton, Ernest; Irons, Bruce (July 1968). "Least squares smoothing of experimental data using finite elements". Strain. 4 (3): 24–27. doi:10.1111/j.1475-1305.1968.tb01368.x.
  9. ^ "SAP-IV Software and Manuals". NISEE e-Library, The Earthquake Engineering Online Archive.
  10. ^ Gard Paulsen; Håkon With Andersen; John Petter Collett; Iver Tangen Stensrud (2014). Building Trust, The history of DNV 1864-2014. Lysaker, Norway: Dinamo Forlag A/S. pp. 121, 436. ISBN 978-82-8071-256-1.
  11. ^ Strang, Gilbert; Fix, George (1973). An Analysis of The Finite Element Method. Prentice Hall. ISBN 978-0-13-032946-2.
  12. ^ Olek C Zienkiewicz; Robert L Taylor; J.Z. Zhu (31 August 2013). The Finite Element Method: Its Basis and Fundamentals. Butterworth-Heinemann. ISBN 978-0-08-095135-5.
  13. ^ Bathe, K.J. (2006). Finite Element Procedures. Cambridge, MA: Klaus-Jürgen Bathe. ISBN 978-0979004902.
  14. ^ Babuška, Ivo; Banerjee, Uday; Osborn, John E. (June 2004). "Generalized Finite Element Methods: Main Ideas, Results, and Perspective". International Journal of Computational Methods. 1 (1): 67–103. doi:10.1142/S0219876204000083.
  15. ^ P. Solin, K. Segeth, I. Dolezel: Higher-Order Finite Element Methods, Chapman & Hall/CRC Press, 2003
  16. ^ Song, Chongmin; Wolf, John P. (5 August 1997). "The scaled boundary finite-element method – alias consistent infinitesimal finite-element cell method – for elastodynamics". Computer Methods in Applied Mechanics and Engineering. 147 (3–4): 329–355. Bibcode:1997CMAME.147..329S. doi:10.1016/S0045-7825(97)00021-2.
  17. ^ "Spectral Element Methods". State Key Laboratory of Scientific and Engineering Computing. Retrieved 2017-07-28.
  18. ^ Beirão da Veiga, L.; Brezzi, F.; Cangiani, A.; Manzini, G.; Marini, L. D.; Russo, A. (2013). "Basic principles of Virtual Element Methods". Mathematical Models and Methods in Applied Sciences. 23 (1): 199–214. doi:10.1142/S0218202512500492.
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  20. ^ "What's The Difference Between FEM, FDM, and FVM?". Machine Design. 2016-04-18. Retrieved 2017-07-28.
  21. ^ Kiritsis, D.; Eemmanouilidis, Ch.; Koronios, A.; Mathew, J. (2009). "Engineering Asset Management". Proceedings of the 4th World Congress on Engineering Asset Management (WCEAM): 591–592.
  22. ^ "Finite Element Analysis: How to create a great model". Coventive Composites. 2019-03-18. Retrieved 2019-04-05.
  23. ^ Naghibi Beidokhti, Hamid; Janssen, Dennis; Khoshgoftar, Mehdi; Sprengers, Andre; Perdahcioglu, Emin Semih; Boogaard, Ton Van den; Verdonschot, Nico (2016). "A comparison between dynamic implicit and explicit finite element simulations of the native knee joint" (PDF). Medical Engineering & Physics. 38 (10): 1123–1130. doi:10.1016/j.medengphy.2016.06.001. PMID 27349493.
  24. ^ a b c Hastings, J. K., Juds, M. A., Brauer, J. R., Accuracy and Economy of Finite Element Magnetic Analysis, 33rd Annual National Relay Conference, April 1985.
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  27. ^ Haldar, Achintya; Mahadevan, Sankaran (2000). Reliability Assessment Using Stochastic Finite Element Analysis. John Wiley & Sons. ISBN 978-0471369615.

Further reading

  • G. Allaire and A. Craig: Numerical Analysis and Optimization: An Introduction to Mathematical Modelling and Numerical Simulation.
  • K. J. Bathe: Numerical methods in finite element analysis, Prentice-Hall (1976).
  • Thomas J.R. Hughes: The Finite Element Method: Linear Static and Dynamic Finite Element Analysis, Prentice-Hall (1987).
  • J. Chaskalovic: Finite Elements Methods for Engineering Sciences, Springer Verlag, (2008).
  • Endre Süli: Finite Element Methods for Partial Differential Equations.
  • O. C. Zienkiewicz, R. L. Taylor, J. Z. Zhu : The Finite Element Method: Its Basis and Fundamentals, Butterworth-Heinemann (2005).
  • N. Ottosen, H. Petersson : Introduction to the Finite Element Method, Prentice-Hall (1992).
  • Zohdi, T. I. (2018) A finite element primer for beginners-extended version including sample tests and projects. Second Edition https://link.springer.com/book/10.1007/978-3-319-70428-9

finite, element, method, finite, element, redirects, here, elements, poset, compact, element, finite, element, method, popular, method, numerically, solving, differential, equations, arising, engineering, mathematical, modeling, typical, problem, areas, intere. Finite element redirects here For the elements of a poset see compact element The finite element method FEM is a popular method for numerically solving differential equations arising in engineering and mathematical modeling Typical problem areas of interest include the traditional fields of structural analysis heat transfer fluid flow mass transport and electromagnetic potential Visualization of how a car deforms in an asymmetrical crash using finite element analysis The FEM is a general numerical method for solving partial differential equations in two or three space variables i e some boundary value problems To solve a problem the FEM subdivides a large system into smaller simpler parts that are called finite elements This is achieved by a particular space discretization in the space dimensions which is implemented by the construction of a mesh of the object the numerical domain for the solution which has a finite number of points The finite element method formulation of a boundary value problem finally results in a system of algebraic equations The method approximates the unknown function over the domain 1 The simple equations that model these finite elements are then assembled into a larger system of equations that models the entire problem The FEM then approximates a solution by minimizing an associated error function via the calculus of variations Studying or analyzing a phenomenon with FEM is often referred to as finite element analysis FEA Contents 1 Basic concepts 2 History 3 Technical discussion 3 1 The structure of finite element methods 3 2 Illustrative problems P1 and P2 3 3 Weak formulation 3 3 1 The weak form of P1 3 3 2 The weak form of P2 3 3 3 A proof outline of existence and uniqueness of the solution 4 Discretization 4 1 For problem P1 4 2 For problem P2 4 3 Choosing a basis 4 4 Small support of the basis 4 5 Matrix form of the problem 4 6 General form of the finite element method 5 Various types of finite element methods 5 1 AEM 5 2 A FEM 5 3 Generalized finite element method 5 4 Mixed finite element method 5 5 Variable polynomial 5 6 hpk FEM 5 7 XFEM 5 8 Scaled boundary finite element method SBFEM 5 9 S FEM 5 10 Spectral element method 5 11 Meshfree methods 5 12 Discontinuous Galerkin methods 5 13 Finite element limit analysis 5 14 Stretched grid method 5 15 Loubignac iteration 5 16 Crystal plasticity finite element method CPFEM 5 17 Virtual element method VEM 6 Link with the gradient discretization method 7 Comparison to the finite difference method 8 Application 9 See also 10 References 11 Further readingBasic concepts Edit FEM mesh created by an analyst prior to finding a solution to a magnetic problem using FEM software Colors indicate that the analyst has set material properties for each zone in this case a conducting wire coil in orange a ferromagnetic component perhaps iron in light blue and air in grey Although the geometry may seem simple it would be very challenging to calculate the magnetic field for this setup without FEM software using equations alone FEM solution to the problem at left involving a cylindrically shaped magnetic shield The ferromagnetic cylindrical part is shielding the area inside the cylinder by diverting the magnetic field created by the coil rectangular area on the right The color represents the amplitude of the magnetic flux density as indicated by the scale in the inset legend red being high amplitude The area inside the cylinder is the low amplitude dark blue with widely spaced lines of magnetic flux which suggests that the shield is performing as it was designed to The subdivision of a whole domain into simpler parts has several advantages 2 Accurate representation of complex geometry Inclusion of dissimilar material properties Easy representation of the total solution Capture of local effects Typical work out of the method involves dividing the domain of the problem into a collection of subdomains with each subdomain represented by a set of element equations to the original problem systematically recombining all sets of element equations into a global system of equations for the final calculation The global system of equations has known solution techniques and can be calculated from the initial values of the original problem to obtain a numerical answer In the first step above the element equations are simple equations that locally approximate the original complex equations to be studied where the original equations are often partial differential equations PDE To explain the approximation in this process the finite element method is commonly introduced as a special case of Galerkin method The process in mathematical language is to construct an integral of the inner product of the residual and the weight functions and set the integral to zero In simple terms it is a procedure that minimizes the error of approximation by fitting trial functions into the PDE The residual is the error caused by the trial functions and the weight functions are polynomial approximation functions that project the residual The process eliminates all the spatial derivatives from the PDE thus approximating the PDE locally with a set of algebraic equations for steady state problems a set of ordinary differential equations for transient problems These equation sets are the element equations They are linear if the underlying PDE is linear and vice versa Algebraic equation sets that arise in the steady state problems are solved using numerical linear algebra methods while ordinary differential equation sets that arise in the transient problems are solved by numerical integration using standard techniques such as Euler s method or the Runge Kutta method In step 2 above a global system of equations is generated from the element equations through a transformation of coordinates from the subdomains local nodes to the domain s global nodes This spatial transformation includes appropriate orientation adjustments as applied in relation to the reference coordinate system The process is often carried out by FEM software using coordinate data generated from the subdomains The practical application of FEM is known as finite element analysis FEA FEA as applied in engineering is a computational tool for performing engineering analysis It includes the use of mesh generation techniques for dividing a complex problem into small elements as well as the use of software coded with a FEM algorithm In applying FEA the complex problem is usually a physical system with the underlying physics such as the Euler Bernoulli beam equation the heat equation or the Navier Stokes equations expressed in either PDE or integral equations while the divided small elements of the complex problem represent different areas in the physical system FEA may be used for analyzing problems over complicated domains like cars and oil pipelines when the domain changes as during a solid state reaction with a moving boundary when the desired precision varies over the entire domain or when the solution lacks smoothness FEA simulations provide a valuable resource as they remove multiple instances of creation and testing of hard prototypes for various high fidelity situations citation needed For instance in a frontal crash simulation it is possible to increase prediction accuracy in important areas like the front of the car and reduce it in its rear thus reducing the cost of the simulation Another example would be in numerical weather prediction where it is more important to have accurate predictions over developing highly nonlinear phenomena such as tropical cyclones in the atmosphere or eddies in the ocean rather than relatively calm areas A clear detailed and practical presentation of this approach can be found in The Finite Element Method for Engineers 3 History EditWhile it is difficult to quote a date of the invention of the finite element method the method originated from the need to solve complex elasticity and structural analysis problems in civil and aeronautical engineering 4 Its development can be traced back to the work by A Hrennikoff 5 and R Courant 6 in the early 1940s Another pioneer was Ioannis Argyris In the USSR the introduction of the practical application of the method is usually connected with name of Leonard Oganesyan 7 It was also independently rediscovered in China by Feng Kang in the later 1950s and early 1960s based on the computations of dam constructions where it was called the finite difference method based on variation principle Although the approaches used by these pioneers are different they share one essential characteristic mesh discretization of a continuous domain into a set of discrete sub domains usually called elements Hrennikoff s work discretizes the domain by using a lattice analogy while Courant s approach divides the domain into finite triangular subregions to solve second order elliptic partial differential equations that arise from the problem of torsion of a cylinder Courant s contribution was evolutionary drawing on a large body of earlier results for PDEs developed by Rayleigh Ritz and Galerkin The finite element method obtained its real impetus in the 1960s and 1970s by the developments of J H Argyris with co workers at the University of Stuttgart R W Clough with co workers at UC Berkeley O C Zienkiewicz with co workers Ernest Hinton Bruce Irons 8 and others at Swansea University Philippe G Ciarlet at the University of Paris 6 and Richard Gallagher with co workers at Cornell University Further impetus was provided in these years by available open source finite element programs NASA sponsored the original version of NASTRAN and UC Berkeley made the finite element program SAP IV 9 widely available In Norway the ship classification society Det Norske Veritas now DNV GL developed Sesam in 1969 for use in analysis of ships 10 A rigorous mathematical basis to the finite element method was provided in 1973 with the publication by Strang and Fix 11 The method has since been generalized for the numerical modeling of physical systems in a wide variety of engineering disciplines e g electromagnetism heat transfer and fluid dynamics 12 13 Technical discussion EditThe structure of finite element methods Edit A finite element method is characterized by a variational formulation a discretization strategy one or more solution algorithms and post processing procedures Examples of the variational formulation are the Galerkin method the discontinuous Galerkin method mixed methods etc A discretization strategy is understood to mean a clearly defined set of procedures that cover a the creation of finite element meshes b the definition of basis function on reference elements also called shape functions and c the mapping of reference elements onto the elements of the mesh Examples of discretization strategies are the h version p version hp version x FEM isogeometric analysis etc Each discretization strategy has certain advantages and disadvantages A reasonable criterion in selecting a discretization strategy is to realize nearly optimal performance for the broadest set of mathematical models in a particular model class Various numerical solution algorithms can be classified into two broad categories direct and iterative solvers These algorithms are designed to exploit the sparsity of matrices that depend on the choices of variational formulation and discretization strategy Postprocessing procedures are designed for the extraction of the data of interest from a finite element solution In order to meet the requirements of solution verification postprocessors need to provide for a posteriori error estimation in terms of the quantities of interest When the errors of approximation are larger than what is considered acceptable then the discretization has to be changed either by an automated adaptive process or by the action of the analyst There are some very efficient postprocessors that provide for the realization of superconvergence Illustrative problems P1 and P2 Edit The following two problems demonstrate the finite element method P1 is a one dimensional problem P1 u x f x in 0 1 u 0 u 1 0 displaystyle mbox P1 begin cases u x f x mbox in 0 1 u 0 u 1 0 end cases where f displaystyle f is given u displaystyle u is an unknown function of x displaystyle x and u displaystyle u is the second derivative of u displaystyle u with respect to x displaystyle x P2 is a two dimensional problem Dirichlet problem P2 u x x x y u y y x y f x y in W u 0 on W displaystyle mbox P2 begin cases u xx x y u yy x y f x y amp mbox in Omega u 0 amp mbox on partial Omega end cases where W displaystyle Omega is a connected open region in the x y displaystyle x y plane whose boundary W displaystyle partial Omega is nice e g a smooth manifold or a polygon and u x x displaystyle u xx and u y y displaystyle u yy denote the second derivatives with respect to x displaystyle x and y displaystyle y respectively The problem P1 can be solved directly by computing antiderivatives However this method of solving the boundary value problem BVP works only when there is one spatial dimension and does not generalize to higher dimensional problems or problems like u u f displaystyle u u f For this reason we will develop the finite element method for P1 and outline its generalization to P2 Our explanation will proceed in two steps which mirror two essential steps one must take to solve a boundary value problem BVP using the FEM In the first step one rephrases the original BVP in its weak form Little to no computation is usually required for this step The transformation is done by hand on paper The second step is the discretization where the weak form is discretized in a finite dimensional space After this second step we have concrete formulae for a large but finite dimensional linear problem whose solution will approximately solve the original BVP This finite dimensional problem is then implemented on a computer Weak formulation Edit The first step is to convert P1 and P2 into their equivalent weak formulations The weak form of P1 Edit If u displaystyle u solves P1 then for any smooth function v displaystyle v that satisfies the displacement boundary conditions i e v 0 displaystyle v 0 at x 0 displaystyle x 0 and x 1 displaystyle x 1 we have 0 1 f x v x d x 0 1 u x v x d x displaystyle int 0 1 f x v x dx int 0 1 u x v x dx 1 Conversely if u displaystyle u with u 0 u 1 0 displaystyle u 0 u 1 0 satisfies 1 for every smooth function v x displaystyle v x then one may show that this u displaystyle u will solve P1 The proof is easier for twice continuously differentiable u displaystyle u mean value theorem but may be proved in a distributional sense as well We define a new operator or map ϕ u v displaystyle phi u v by using integration by parts on the right hand side of 1 0 1 f x v x d x 0 1 u x v x d x u x v x 0 1 0 1 u x v x d x 0 1 u x v x d x ϕ u v displaystyle begin aligned int 0 1 f x v x dx amp int 0 1 u x v x dx amp u x v x 0 1 int 0 1 u x v x dx amp int 0 1 u x v x dx equiv phi u v end aligned 2 where we have used the assumption that v 0 v 1 0 displaystyle v 0 v 1 0 The weak form of P2 Edit If we integrate by parts using a form of Green s identities we see that if u displaystyle u solves P2 then we may define ϕ u v displaystyle phi u v for any v displaystyle v by W f v d s W u v d s ϕ u v displaystyle int Omega fv ds int Omega nabla u cdot nabla v ds equiv phi u v where displaystyle nabla denotes the gradient and displaystyle cdot denotes the dot product in the two dimensional plane Once more ϕ displaystyle phi can be turned into an inner product on a suitable space H 0 1 W displaystyle H 0 1 Omega of once differentiable functions of W displaystyle Omega that are zero on W displaystyle partial Omega We have also assumed that v H 0 1 W displaystyle v in H 0 1 Omega see Sobolev spaces Existence and uniqueness of the solution can also be shown A proof outline of existence and uniqueness of the solution Edit We can loosely think of H 0 1 0 1 displaystyle H 0 1 0 1 to be the absolutely continuous functions of 0 1 displaystyle 0 1 that are 0 displaystyle 0 at x 0 displaystyle x 0 and x 1 displaystyle x 1 see Sobolev spaces Such functions are weakly once differentiable and it turns out that the symmetric bilinear map ϕ displaystyle phi then defines an inner product which turns H 0 1 0 1 displaystyle H 0 1 0 1 into a Hilbert space a detailed proof is nontrivial On the other hand the left hand side 0 1 f x v x d x displaystyle int 0 1 f x v x dx is also an inner product this time on the Lp space L 2 0 1 displaystyle L 2 0 1 An application of the Riesz representation theorem for Hilbert spaces shows that there is a unique u displaystyle u solving 2 and therefore P1 This solution is a priori only a member of H 0 1 0 1 displaystyle H 0 1 0 1 but using elliptic regularity will be smooth if f displaystyle f is Discretization Edit A function in H 0 1 displaystyle H 0 1 with zero values at the endpoints blue and a piecewise linear approximation red P1 and P2 are ready to be discretized which leads to a common sub problem 3 The basic idea is to replace the infinite dimensional linear problem Find u H 0 1 displaystyle u in H 0 1 such that v H 0 1 ϕ u v f v displaystyle forall v in H 0 1 phi u v int fv with a finite dimensional version Find u V displaystyle u in V such that v V ϕ u v f v displaystyle forall v in V phi u v int fv 3 where V displaystyle V is a finite dimensional subspace of H 0 1 displaystyle H 0 1 There are many possible choices for V displaystyle V one possibility leads to the spectral method However for the finite element method we take V displaystyle V to be a space of piecewise polynomial functions For problem P1 Edit We take the interval 0 1 displaystyle 0 1 choose n displaystyle n values of x displaystyle x with 0 x 0 lt x 1 lt lt x n lt x n 1 1 displaystyle 0 x 0 lt x 1 lt cdots lt x n lt x n 1 1 and we define V displaystyle V by V v 0 1 R v is continuous v x k x k 1 is linear for k 0 n and v 0 v 1 0 displaystyle V v 0 1 rightarrow mathbb R v mbox is continuous v x k x k 1 mbox is linear for k 0 dots n mbox and v 0 v 1 0 where we define x 0 0 displaystyle x 0 0 and x n 1 1 displaystyle x n 1 1 Observe that functions in V displaystyle V are not differentiable according to the elementary definition of calculus Indeed if v V displaystyle v in V then the derivative is typically not defined at any x x k displaystyle x x k k 1 n displaystyle k 1 ldots n However the derivative exists at every other value of x displaystyle x and one can use this derivative for the purpose of integration by parts A piecewise linear function in two dimensions For problem P2 Edit We need V displaystyle V to be a set of functions of W displaystyle Omega In the figure on the right we have illustrated a triangulation of a 15 sided polygonal region W displaystyle Omega in the plane below and a piecewise linear function above in color of this polygon which is linear on each triangle of the triangulation the space V displaystyle V would consist of functions that are linear on each triangle of the chosen triangulation One hopes that as the underlying triangular mesh becomes finer and finer the solution of the discrete problem 3 will in some sense converge to the solution of the original boundary value problem P2 To measure this mesh fineness the triangulation is indexed by a real valued parameter h gt 0 displaystyle h gt 0 which one takes to be very small This parameter will be related to the size of the largest or average triangle in the triangulation As we refine the triangulation the space of piecewise linear functions V displaystyle V must also change with h displaystyle h For this reason one often reads V h displaystyle V h instead of V displaystyle V in the literature Since we do not perform such an analysis we will not use this notation Choosing a basis Edit Interpolation of a Bessel function 16 scaled and shifted triangular basis functions colors used to reconstruct a zeroeth order Bessel function J0 black The linear combination of basis functions yellow reproduces J0 black to any desired accuracy To complete the discretization we must select a basis of V displaystyle V In the one dimensional case for each control point x k displaystyle x k we will choose the piecewise linear function v k displaystyle v k in V displaystyle V whose value is 1 displaystyle 1 at x k displaystyle x k and zero at every x j j k displaystyle x j j neq k i e v k x x x k 1 x k x k 1 if x x k 1 x k x k 1 x x k 1 x k if x x k x k 1 0 otherwise displaystyle v k x begin cases x x k 1 over x k x k 1 amp mbox if x in x k 1 x k x k 1 x over x k 1 x k amp mbox if x in x k x k 1 0 amp mbox otherwise end cases for k 1 n displaystyle k 1 dots n this basis is a shifted and scaled tent function For the two dimensional case we choose again one basis function v k displaystyle v k per vertex x k displaystyle x k of the triangulation of the planar region W displaystyle Omega The function v k displaystyle v k is the unique function of V displaystyle V whose value is 1 displaystyle 1 at x k displaystyle x k and zero at every x j j k displaystyle x j j neq k Depending on the author the word element in the finite element method refers either to the triangles in the domain the piecewise linear basis function or both So for instance an author interested in curved domains might replace the triangles with curved primitives and so might describe the elements as being curvilinear On the other hand some authors replace piecewise linear by piecewise quadratic or even piecewise polynomial The author might then say higher order element instead of higher degree polynomial The finite element method is not restricted to triangles or tetrahedra in 3 d or higher order simplexes in multidimensional spaces but can be defined on quadrilateral subdomains hexahedra prisms or pyramids in 3 d and so on Higher order shapes curvilinear elements can be defined with polynomial and even non polynomial shapes e g ellipse or circle Examples of methods that use higher degree piecewise polynomial basis functions are the hp FEM and spectral FEM More advanced implementations adaptive finite element methods utilize a method to assess the quality of the results based on error estimation theory and modify the mesh during the solution aiming to achieve an approximate solution within some bounds from the exact solution of the continuum problem Mesh adaptivity may utilize various techniques the most popular are moving nodes r adaptivity refining and unrefined elements h adaptivity changing order of base functions p adaptivity combinations of the above hp adaptivity Small support of the basis Edit Solving the two dimensional problem u x x u y y 4 displaystyle u xx u yy 4 in the disk centered at the origin and radius 1 with zero boundary conditions a The triangulation b The sparse matrix L of the discretized linear system c The computed solution u x y 1 x 2 y 2 displaystyle u x y 1 x 2 y 2 The primary advantage of this choice of basis is that the inner products v j v k 0 1 v j v k d x displaystyle langle v j v k rangle int 0 1 v j v k dx and ϕ v j v k 0 1 v j v k d x displaystyle phi v j v k int 0 1 v j v k dx will be zero for almost all j k displaystyle j k The matrix containing v j v k displaystyle langle v j v k rangle in the j k displaystyle j k location is known as the Gramian matrix In the one dimensional case the support of v k displaystyle v k is the interval x k 1 x k 1 displaystyle x k 1 x k 1 Hence the integrands of v j v k displaystyle langle v j v k rangle and ϕ v j v k displaystyle phi v j v k are identically zero whenever j k gt 1 displaystyle j k gt 1 Similarly in the planar case if x j displaystyle x j and x k displaystyle x k do not share an edge of the triangulation then the integrals W v j v k d s displaystyle int Omega v j v k ds and W v j v k d s displaystyle int Omega nabla v j cdot nabla v k ds are both zero Matrix form of the problem Edit If we write u x k 1 n u k v k x displaystyle u x sum k 1 n u k v k x and f x k 1 n f k v k x displaystyle f x sum k 1 n f k v k x then problem 3 taking v x v j x displaystyle v x v j x for j 1 n displaystyle j 1 dots n becomes k 1 n u k ϕ v k v j k 1 n f k v k v j d x displaystyle sum k 1 n u k phi v k v j sum k 1 n f k int v k v j dx for j 1 n displaystyle j 1 dots n 4 If we denote by u displaystyle mathbf u and f displaystyle mathbf f the column vectors u 1 u n t displaystyle u 1 dots u n t and f 1 f n t displaystyle f 1 dots f n t and if we let L L i j displaystyle L L ij and M M i j displaystyle M M ij be matrices whose entries are L i j ϕ v i v j displaystyle L ij phi v i v j and M i j v i v j d x displaystyle M ij int v i v j dx then we may rephrase 4 as L u M f displaystyle L mathbf u M mathbf f 5 It is not necessary to assume f x k 1 n f k v k x displaystyle f x sum k 1 n f k v k x For a general function f x displaystyle f x problem 3 with v x v j x displaystyle v x v j x for j 1 n displaystyle j 1 dots n becomes actually simpler since no matrix M displaystyle M is used L u b displaystyle L mathbf u mathbf b 6 where b b 1 b n t displaystyle mathbf b b 1 dots b n t and b j f v j d x displaystyle b j int fv j dx for j 1 n displaystyle j 1 dots n As we have discussed before most of the entries of L displaystyle L and M displaystyle M are zero because the basis functions v k displaystyle v k have small support So we now have to solve a linear system in the unknown u displaystyle mathbf u where most of the entries of the matrix L displaystyle L which we need to invert are zero Such matrices are known as sparse matrices and there are efficient solvers for such problems much more efficient than actually inverting the matrix In addition L displaystyle L is symmetric and positive definite so a technique such as the conjugate gradient method is favored For problems that are not too large sparse LU decompositions and Cholesky decompositions still work well For instance MATLAB s backslash operator which uses sparse LU sparse Cholesky and other factorization methods can be sufficient for meshes with a hundred thousand vertices The matrix L displaystyle L is usually referred to as the stiffness matrix while the matrix M displaystyle M is dubbed the mass matrix General form of the finite element method Edit In general the finite element method is characterized by the following process One chooses a grid for W displaystyle Omega In the preceding treatment the grid consisted of triangles but one can also use squares or curvilinear polygons Then one chooses basis functions In our discussion we used piecewise linear basis functions but it is also common to use piecewise polynomial basis functions Separate consideration is the smoothness of the basis functions For second order elliptic boundary value problems piecewise polynomial basis function that is merely continuous suffice i e the derivatives are discontinuous For higher order partial differential equations one must use smoother basis functions For instance for a fourth order problem such as u x x x x u y y y y f displaystyle u xxxx u yyyy f one may use piecewise quadratic basis functions that are C 1 displaystyle C 1 Another consideration is the relation of the finite dimensional space V displaystyle V to its infinite dimensional counterpart in the examples above H 0 1 displaystyle H 0 1 A conforming element method is one in which space V displaystyle V is a subspace of the element space for the continuous problem The example above is such a method If this condition is not satisfied we obtain a nonconforming element method an example of which is the space of piecewise linear functions over the mesh which are continuous at each edge midpoint Since these functions are in general discontinuous along the edges this finite dimensional space is not a subspace of the original H 0 1 displaystyle H 0 1 Typically one has an algorithm for taking a given mesh and subdividing it If the main method for increasing precision is to subdivide the mesh one has an h method h is customarily the diameter of the largest element in the mesh In this manner if one shows that the error with a grid h displaystyle h is bounded above by C h p displaystyle Ch p for some C lt displaystyle C lt infty and p gt 0 displaystyle p gt 0 then one has an order p method Under certain hypotheses for instance if the domain is convex a piecewise polynomial of order d displaystyle d method will have an error of order p d 1 displaystyle p d 1 If instead of making h smaller one increases the degree of the polynomials used in the basis function one has a p method If one combines these two refinement types one obtains an hp method hp FEM In the hp FEM the polynomial degrees can vary from element to element High order methods with large uniform p are called spectral finite element methods SFEM These are not to be confused with spectral methods For vector partial differential equations the basis functions may take values in R n displaystyle mathbb R n Various types of finite element methods EditAEM Edit The Applied Element Method or AEM combines features of both FEM and Discrete element method or DEM Main article Applied element method A FEM Edit The Augmented Finite Element Method is introduced by Yang and Lui whose goal was to model the weak and strong discontinuities without the need of extra DoFs as in PuM stated Generalized finite element method Edit The generalized finite element method GFEM uses local spaces consisting of functions not necessarily polynomials that reflect the available information on the unknown solution and thus ensure good local approximation Then a partition of unity is used to bond these spaces together to form the approximating subspace The effectiveness of GFEM has been shown when applied to problems with domains having complicated boundaries problems with micro scales and problems with boundary layers 14 Mixed finite element method Edit Main article Mixed finite element method The mixed finite element method is a type of finite element method in which extra independent variables are introduced as nodal variables during the discretization of a partial differential equation problem Variable polynomial Edit The hp FEM combines adaptively elements with variable size h and polynomial degree p in order to achieve exceptionally fast exponential convergence rates 15 hpk FEM Edit The hpk FEM combines adaptively elements with variable size h polynomial degree of the local approximations p and global differentiability of the local approximations k 1 to achieve best convergence rates XFEM Edit Main article Extended finite element method The extended finite element method XFEM is a numerical technique based on the generalized finite element method GFEM and the partition of unity method PUM It extends the classical finite element method by enriching the solution space for solutions to differential equations with discontinuous functions Extended finite element methods enrich the approximation space so that it can naturally reproduce the challenging feature associated with the problem of interest the discontinuity singularity boundary layer etc It was shown that for some problems such an embedding of the problem s feature into the approximation space can significantly improve convergence rates and accuracy Moreover treating problems with discontinuities with XFEMs suppresses the need to mesh and re mesh the discontinuity surfaces thus alleviating the computational costs and projection errors associated with conventional finite element methods at the cost of restricting the discontinuities to mesh edges Several research codes implement this technique to various degrees 1 GetFEM 2 xfem 3 openxfem XFEM has also been implemented in codes like Altair Radios ASTER Morfeo and Abaqus It is increasingly being adopted by other commercial finite element software with a few plugins and actual core implementations available ANSYS SAMCEF OOFELIE etc Scaled boundary finite element method SBFEM Edit The introduction of the scaled boundary finite element method SBFEM came from Song and Wolf 1997 16 The SBFEM has been one of the most profitable contributions in the area of numerical analysis of fracture mechanics problems It is a semi analytical fundamental solutionless method which combines the advantages of both the finite element formulations and procedures and the boundary element discretization However unlike the boundary element method no fundamental differential solution is required S FEM Edit Main article Smoothed finite element method The S FEM Smoothed Finite Element Methods is a particular class of numerical simulation algorithms for the simulation of physical phenomena It was developed by combining meshfree methods with the finite element method Spectral element method Edit Main article Spectral element methodSpectral element methods combine the geometric flexibility of finite elements and the acute accuracy of spectral methods Spectral methods are the approximate solution of weak form partial equations that are based on high order Lagrangian interpolants and used only with certain quadrature rules 17 Meshfree methods Edit Main article Meshfree methods Discontinuous Galerkin methods Edit Main article Discontinuous Galerkin method Finite element limit analysis Edit Main article Finite element limit analysis Stretched grid method Edit Main article Stretched grid method Loubignac iteration Edit Loubignac iteration is an iterative method in finite element methods Crystal plasticity finite element method CPFEM Edit Crystal plasticity finite element method CPFEM is an advanced numerical tool developed by Franz Roters Metals can be regarded as crystal aggregates and it behave anisotropy under deformation for example abnormal stress and strain localization CPFEM based on slip shear strain rate can calculate dislocation crystal orientation and other texture information to consider crystal anisotropy during the routine Now it has been applied in the numerical study of material deformation surface roughness fractures and so on Virtual element method VEM Edit The virtual element method VEM introduced by Beirao da Veiga et al 2013 18 as an extension of mimetic finite difference MFD methods is a generalisation of the standard finite element method for arbitrary element geometries This allows admission of general polygons or polyhedra in 3D that are highly irregular and non convex in shape The name virtual derives from the fact that knowledge of the local shape function basis is not required and is in fact never explicitly calculated Link with the gradient discretization method EditSome types of finite element methods conforming nonconforming mixed finite element methods are particular cases of the gradient discretization method GDM Hence the convergence properties of the GDM which are established for a series of problems linear and non linear elliptic problems linear nonlinear and degenerate parabolic problems hold as well for these particular finite element methods Comparison to the finite difference method EditThis section does not cite any sources Please help improve this section by adding citations to reliable sources Unsourced material may be challenged and removed November 2010 Learn how and when to remove this template message The finite difference method FDM is an alternative way of approximating solutions of PDEs The differences between FEM and FDM are The most attractive feature of the FEM is its ability to handle complicated geometries and boundaries with relative ease While FDM in its basic form is restricted to handle rectangular shapes and simple alterations thereof the handling of geometries in FEM is theoretically straightforward 2 19 FDM is not usually used for irregular CAD geometries but more often rectangular or block shaped models 20 FEM generally allows for more flexible mesh adaptivity than FDM 19 The most attractive feature of finite differences is that it is very easy to implement 19 There are several ways one could consider the FDM a special case of the FEM approach E g first order FEM is identical to FDM for Poisson s equation if the problem is discretized by a regular rectangular mesh with each rectangle divided into two triangles There are reasons to consider the mathematical foundation of the finite element approximation more sound for instance because the quality of the approximation between grid points is poor in FDM The quality of a FEM approximation is often higher than in the corresponding FDM approach but this is extremely problem dependent and several examples to the contrary can be provided Generally FEM is the method of choice in all types of analysis in structural mechanics i e solving for deformation and stresses in solid bodies or dynamics of structures while computational fluid dynamics CFD tend to use FDM or other methods like finite volume method FVM CFD problems usually require discretization of the problem into a large number of cells gridpoints millions and more therefore the cost of the solution favors simpler lower order approximation within each cell This is especially true for external flow problems like airflow around the car or airplane or weather simulation Application Edit 3D pollution transport model concentration field on ground level 3D pollution transport model concentration field on perpendicular surface A variety of specializations under the umbrella of the mechanical engineering discipline such as aeronautical biomechanical and automotive industries commonly use integrated FEM in the design and development of their products Several modern FEM packages include specific components such as thermal electromagnetic fluid and structural working environments In a structural simulation FEM helps tremendously in producing stiffness and strength visualizations and also in minimizing weight materials and costs 21 FEM allows detailed visualization of where structures bend or twist and indicates the distribution of stresses and displacements FEM software provides a wide range of simulation options for controlling the complexity of both modeling and analysis of a system Similarly the desired level of accuracy required and associated computational time requirements can be managed simultaneously to address most engineering applications FEM allows entire designs to be constructed refined and optimized before the design is manufactured The mesh is an integral part of the model and it must be controlled carefully to give the best results Generally the higher the number of elements in a mesh the more accurate the solution of the discretized problem However there is a value at which the results converge and further mesh refinement does not increase accuracy 22 Finite Element Model of a human knee joint 23 This powerful design tool has significantly improved both the standard of engineering designs and the methodology of the design process in many industrial applications 24 The introduction of FEM has substantially decreased the time to take products from concept to the production line 24 It is primarily through improved initial prototype designs using FEM that testing and development have been accelerated 25 In summary benefits of FEM include increased accuracy enhanced design and better insight into critical design parameters virtual prototyping fewer hardware prototypes a faster and less expensive design cycle increased productivity and increased revenue 24 In the 1990s FEM was proposed for use in stochastic modelling for numerically solving probability models 26 and later for reliability assessment 27 See also EditApplied element method Boundary element method Cea s lemma Computer experiment Direct stiffness method Discontinuity layout optimization Discrete element method Finite difference method Finite element machine Finite element method in structural mechanics Finite volume method Finite volume method for unsteady flow Infinite element method Interval finite element Isogeometric analysis Lattice Boltzmann methods List of finite element software packages Meshfree methods Movable cellular automaton Multidisciplinary design optimization Multiphysics Patch test Rayleigh Ritz method Space mapping STRAND7 Tessellation computer graphics Weakened weak formReferences Edit Daryl L Logan 2011 A first course in the finite element method Cengage Learning ISBN 978 0495668251 a b Reddy J N 2006 An Introduction to the Finite Element Method Third ed McGraw Hill ISBN 9780071267618 Huebner Kenneth H 2001 The Finite Element Method for Engineers Wiley ISBN 978 0 471 37078 9 Liu Wing Kam Li Shaofan Park Harold S 2022 Eighty Years of the Finite Element Method Birth Evolution and Future Archives of Computational Methods in Engineering 29 6 4431 4453 doi 10 1007 s11831 022 09740 9 ISSN 1134 3060 S2CID 235794921 Hrennikoff Alexander 1941 Solution of problems of elasticity by the framework method Journal of Applied Mechanics 8 4 169 175 Bibcode 1941JAM 8A 169H doi 10 1115 1 4009129 Courant R 1943 Variational methods for the solution of problems of equilibrium and vibrations Bulletin of the American Mathematical Society 49 1 23 doi 10 1090 s0002 9904 1943 07818 4 SPb EMI RAN emi nw ru Archived from the original on 30 September 2015 Retrieved 17 March 2018 Hinton Ernest Irons Bruce July 1968 Least squares smoothing of experimental data using finite elements Strain 4 3 24 27 doi 10 1111 j 1475 1305 1968 tb01368 x SAP IV Software and Manuals NISEE e Library The Earthquake Engineering Online Archive Gard Paulsen Hakon With Andersen John Petter Collett Iver Tangen Stensrud 2014 Building Trust The history of DNV 1864 2014 Lysaker Norway Dinamo Forlag A S pp 121 436 ISBN 978 82 8071 256 1 Strang Gilbert Fix George 1973 An Analysis of The Finite Element Method Prentice Hall ISBN 978 0 13 032946 2 Olek C Zienkiewicz Robert L Taylor J Z Zhu 31 August 2013 The Finite Element Method Its Basis and Fundamentals Butterworth Heinemann ISBN 978 0 08 095135 5 Bathe K J 2006 Finite Element Procedures Cambridge MA Klaus Jurgen Bathe ISBN 978 0979004902 Babuska Ivo Banerjee Uday Osborn John E June 2004 Generalized Finite Element Methods Main Ideas Results and Perspective International Journal of Computational Methods 1 1 67 103 doi 10 1142 S0219876204000083 P Solin K Segeth I Dolezel Higher Order Finite Element Methods Chapman amp Hall CRC Press 2003 Song Chongmin Wolf John P 5 August 1997 The scaled boundary finite element method alias consistent infinitesimal finite element cell method for elastodynamics Computer Methods in Applied Mechanics and Engineering 147 3 4 329 355 Bibcode 1997CMAME 147 329S doi 10 1016 S0045 7825 97 00021 2 Spectral Element Methods State Key Laboratory of Scientific and Engineering Computing Retrieved 2017 07 28 Beirao da Veiga L Brezzi F Cangiani A Manzini G Marini L D Russo A 2013 Basic principles of Virtual Element Methods Mathematical Models and Methods in Applied Sciences 23 1 199 214 doi 10 1142 S0218202512500492 a b c Topper Jurgen January 2005 Option pricing with finite elements Wilmott 2005 1 84 90 doi 10 1002 wilm 42820050119 ISSN 1540 6962 What s The Difference Between FEM FDM and FVM Machine Design 2016 04 18 Retrieved 2017 07 28 Kiritsis D Eemmanouilidis Ch Koronios A Mathew J 2009 Engineering Asset Management Proceedings of the 4th World Congress on Engineering Asset Management WCEAM 591 592 Finite Element Analysis How to create a great model Coventive Composites 2019 03 18 Retrieved 2019 04 05 Naghibi Beidokhti Hamid Janssen Dennis Khoshgoftar Mehdi Sprengers Andre Perdahcioglu Emin Semih Boogaard Ton Van den Verdonschot Nico 2016 A comparison between dynamic implicit and explicit finite element simulations of the native knee joint PDF Medical Engineering amp Physics 38 10 1123 1130 doi 10 1016 j medengphy 2016 06 001 PMID 27349493 a b c Hastings J K Juds M A Brauer J R Accuracy and Economy of Finite Element Magnetic Analysis 33rd Annual National Relay Conference April 1985 McLaren Mercedes 2006 McLaren Mercedes Feature Stress to impress Archived from the original on 2006 10 30 Retrieved 2006 10 03 Peng Long Wang Jinliang Zhu Qiding 19 May 1995 Methods with high accuracy for finite element probability computing Journal of Computational and Applied Mathematics 59 2 181 189 doi 10 1016 0377 0427 94 00027 X Haldar Achintya Mahadevan Sankaran 2000 Reliability Assessment Using Stochastic Finite Element Analysis John Wiley amp Sons ISBN 978 0471369615 Further reading Edit Wikimedia Commons has media related to Finite element modelling G Allaire and A Craig Numerical Analysis and Optimization An Introduction to Mathematical Modelling and Numerical Simulation K J Bathe Numerical methods in finite element analysis Prentice Hall 1976 Thomas J R Hughes The Finite Element Method Linear Static and Dynamic Finite Element Analysis Prentice Hall 1987 J Chaskalovic Finite Elements Methods for Engineering Sciences Springer Verlag 2008 Endre Suli Finite Element Methods for Partial Differential Equations O C Zienkiewicz R L Taylor J Z Zhu The Finite Element Method Its Basis and Fundamentals Butterworth Heinemann 2005 N Ottosen H Petersson Introduction to the Finite Element Method Prentice Hall 1992 Zohdi T I 2018 A finite element primer for beginners extended version including sample tests and projects Second Edition https link springer com book 10 1007 978 3 319 70428 9 Retrieved from https en wikipedia org w index php title Finite element method amp oldid 1131413770, wikipedia, wiki, book, books, library,

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