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Pink noise

Pink noise, 1f noise, fractional noise or fractal noise is a signal or process with a frequency spectrum such that the power spectral density (power per frequency interval) is inversely proportional to the frequency of the signal. In pink noise, each octave interval (halving or doubling in frequency) carries an equal amount of noise energy.

A two-dimensional pink noise grayscale image, generated with a computer program. Some fields observed in nature are characterized by a similar power spectrum. [1]
A 3D pink noise image, generated with a computer program, viewed as an animation in which each frame is a 2D slice

Pink noise sounds like a waterfall.[2] It is often used to tune loudspeaker systems in professional audio.[3] Pink noise is one of the most commonly observed signals in biological systems.[4]

The name arises from the pink appearance of visible light with this power spectrum.[5] This is in contrast with white noise which has equal intensity per frequency interval.

Definition edit

Within the scientific literature, the term 1/f noise is sometimes used loosely to refer to any noise with a power spectral density of the form

 

where f is frequency, and 0 < α < 2, with exponent α usually close to 1. One-dimensional signals with α = 1 are usually called pink noise.[6]

The following function describes a length   one-dimensional pink noise signal (i.e. a Gaussian white noise signal with zero mean and standard deviation  , which has been suitably filtered), as a sum of sine waves with different frequencies, whose amplitudes fall off inversely with the square root of frequency   (so that power, which is the square of amplitude, falls off inversely with frequency), and phases are random:[7]

 

  are iid chi-distributed variables, and   are uniform random.

In a two-dimensional pink noise signal, the amplitude at any orientation falls off inversely with frequency. A pink noise square of length   can be written as:[7]

 

General 1/f α-like noises occur widely in nature and are a source of considerable interest in many fields. Noises with α near 1 generally come from condensed-matter systems in quasi-equilibrium, as discussed below.[8] Noises with a broad range of α generally correspond to a wide range of non-equilibrium driven dynamical systems.

Pink noise sources include flicker noise in electronic devices. In their study of fractional Brownian motion,[9] Mandelbrot and Van Ness proposed the name fractional noise (sometimes since called fractal noise) to describe 1/f α noises for which the exponent α is not an even integer,[10] or that are fractional derivatives of Brownian (1/f 2) noise.

Description edit

 
Spectrum of a pink noise approximation on a log-log plot. Power density falls off at 10 dB/decade of frequency.
 
Relative intensity of pink noise (left) and white noise (right) on an FFT spectrogram with the vertical axis being linear frequency

In pink noise, there is equal energy per octave of frequency. The energy of pink noise at each frequency level, however, falls off at roughly 3 dB per octave. This is in contrast to white noise which has equal energy at all frequency levels.[11]

The human auditory system, which processes frequencies in a roughly logarithmic fashion approximated by the Bark scale, does not perceive different frequencies with equal sensitivity; signals around 1–4 kHz sound loudest for a given intensity. However, humans still differentiate between white noise and pink noise with ease.

Graphic equalizers also divide signals into bands logarithmically and report power by octaves; audio engineers put pink noise through a system to test whether it has a flat frequency response in the spectrum of interest. Systems that do not have a flat response can be equalized by creating an inverse filter using a graphic equalizer. Because pink noise tends to occur in natural physical systems, it is often useful in audio production. Pink noise can be processed, filtered, and/or effects can be added to produce desired sounds. Pink-noise generators are commercially available.

One parameter of noise, the peak versus average energy contents, or crest factor, is important for testing purposes, such as for audio power amplifier and loudspeaker capabilities because the signal power is a direct function of the crest factor. Various crest factors of pink noise can be used in simulations of various levels of dynamic range compression in music signals. On some digital pink-noise generators the crest factor can be specified.

Generation edit

 
The spatial filter which is convolved with a one-dimensional white noise signal to create a pink noise signal[7]

Pink noise can be computer-generated by first generating a white noise signal, Fourier-transforming it, then dividing the amplitudes of the different frequency components by the square root of the frequency (in one dimension), or by the frequency (in two dimensions) etc. [7] This is equivalent to spatially filtering (convolving) the white noise signal with a white-to-pink-filter. For a length   signal in one dimension, the filter has the following form:[7]

 

Matlab programs are available to generate pink and other power-law coloured noise in one or any number of dimensions.

Properties edit

 
The autocorrelation (Pearson's correlation coefficient) of one-dimensional (top) and two-dimensional (bottom) pink noise signals, across distance d (in units of the longest wavelength comprising the signal). Grey curves are the autocorrelations of a sample of pink noise signals (comprising discrete frequencies), and black is their average. Red is the theoretically calculated autocorrelation when the signal comprises these same discrete frequencies, and blue assumes a continuum of frequencies.[7]

Power-law spectra edit

The power spectrum of pink noise is   only for one-dimensional signals. For two-dimensional signals (e.g., images) the average power spectrum at any orientation falls as  , and in   dimensions, it falls as  . In every case, each octave carries an equal amount of noise power.

The average amplitude   and power   of a pink noise signal at any orientation  , and the total power across all orientations, fall off as some power of the frequency. The following table lists these power-law frequency-dependencies for pink noise signal in different dimensions, and also for general power-law colored noise with power   (e.g.: Brown noise has  ): [7]

Power-law spectra of pink noise
dimensions avg. amp.   avg. power   tot. power  
1      
2      
3      
       
 , power        

Distribution of point values edit

Consider pink noise of any dimension that is produced by generating a Gaussian white noise signal with mean   and sd  , then multiplying its spectrum with a filter (equivalent to spatially filtering it with a filter  ). Then the point values of the pink noise signal will also be normally distributed, with mean   and sd  .[7]

Autocorrelation edit

Unlike white noise, which has no correlations across the signal, a pink noise signal is correlated with itself, as follows.

1D signal edit

The Pearson's correlation coefficient of a one-dimensional pink noise signal (comprising discrete frequencies  ) with itself across a distance   in the configuration (space or time) domain is:[7]

 
If instead of discrete frequencies, the pink noise comprises a superposition of continuous frequencies from   to  , the autocorrelation coefficient is:[7]
 
where   is the cosine integral function.

2D signal edit

The Pearson's autocorrelation coefficient of a two-dimensional pink noise signal comprising discrete frequencies is theoretically approximated as:[7]

 
where   is the Bessel function of the first kind.

Occurrence edit

Pink noise has been discovered in the statistical fluctuations of an extraordinarily diverse number of physical and biological systems (Press, 1978;[12] see articles in Handel & Chung, 1993,[13] and references therein). Examples of its occurrence include fluctuations in tide and river heights, quasar light emissions, heart beat, firings of single neurons, resistivity in solid-state electronics and single-molecule conductance signals[14] resulting in flicker noise. Pink noise describes the statistical structure of many natural images.[1]

General 1/f α noises occur in many physical, biological and economic systems, and some researchers describe them as being ubiquitous.[15] In physical systems, they are present in some meteorological data series, the electromagnetic radiation output of some astronomical bodies. In biological systems, they are present in, for example, heart beat rhythms, neural activity, and the statistics of DNA sequences, as a generalized pattern.[16]

An accessible introduction to the significance of pink noise is one given by Martin Gardner (1978) in his Scientific American column "Mathematical Games".[17] In this column, Gardner asked for the sense in which music imitates nature. Sounds in nature are not musical in that they tend to be either too repetitive (bird song, insect noises) or too chaotic (ocean surf, wind in trees, and so forth). The answer to this question was given in a statistical sense by Voss and Clarke (1975, 1978), who showed that pitch and loudness fluctuations in speech and music are pink noises.[18][19] So music is like tides not in terms of how tides sound, but in how tide heights vary.

Precision timekeeping edit

The ubiquitous 1/f noise poses a "noise floor" to precision timekeeping.[12] The derivation is based on.[20]

 
A clock is most easily tested by comparing it with a far more accurate reference clock. During an interval of time τ, as measured by the reference clock, the clock under test advances by τy, where y is the average (relative) clock frequency over that interval.

Suppose that we have a timekeeping device (it could be anything from quartz oscillators, atomic clocks, and hourglasses[21]). Let its readout be a real number   that changes with the actual time  . For concreteness, let us consider a quartz oscillator. In a quartz oscillator,   is the number of oscillations, and   is the rate of oscillation. The rate of oscillation has a constant component  and a fluctuating component  , so  . By selecting the right units for  , we can have  , meaning that on average, one second of clock-time passes for every second of real-time.

The stability of the clock is measured by how many "ticks" it makes over a fixed interval. The more stable the number of ticks, the better the stability of the clock. So, define the average clock frequency over the interval   as

 
Note that   is unitless: it is the numerical ratio between ticks of the physical clock and ticks of an ideal clock[note 1].

The Allan variance of the clock frequency is half the mean square of change in average clock frequency:

 
where   is an integer large enough for the averaging to converge to a definite value. For example, a 2013 atomic clock[22] achieved  , meaning that if the clock is used to repeatedly measure intervals of 7 hours, the standard deviation of the actually measured time would be around 40 femtoseconds.

Now we have

 
where   is one packet of a square wave with height   and wavelength  . Let   be a packet of a square wave with height 1 and wavelength 2, then  , and its Fourier transform satisfies  .

The Allan variance is then  , and the discrete averaging can be approximated by a continuous averaging:  , which is the total power of the signal  , or the integral of its power spectrum:

 
  is approximately the area under the green curve. When   increases,   shrinks on the x-axis, and the green curve shrinks on the x-axis but expands on the y-axis. When  , the combined effect of both is that  .
 
In words, the Allan variance is approximately the power of the fluctuation after bandpass filtering at   with bandwidth  .


For   fluctuation, we have   for some constant  , so  . In particular, when the fluctuating component   is a 1/f noise, then   is independent of the averaging time  , meaning that the clock frequency does not become more stable by simply averaging for longer. This contrasts with a white noise fluctuation, in which case  , meaning that doubling the averaging time would improve the stability of frequency by  .[12]

The cause of the noise floor is often traced to particular electronic components (such as transistors, resistors, and capacitors) within the oscillator feedback.[23]

Humans edit

In brains, pink noise has been widely observed across many temporal and physical scales from ion channel gating to EEG and MEG and LFP recordings in humans.[24] In clinical EEG, deviations from this 1/f pink noise can be used to identify epilepsy, even in the absence of a seizure, or during the interictal state.[25] Classic models of EEG generators suggested that dendritic inputs in gray matter were principally responsible for generating the 1/f power spectrum observed in EEG/MEG signals. However, recent computational models using cable theory have shown that action potential transduction along white matter tracts in the brain also generates a 1/f spectral density. Therefore, white matter signal transduction may also contribute to pink noise measured in scalp EEG recordings.[26]

It has also been successfully applied to the modeling of mental states in psychology,[27] and used to explain stylistic variations in music from different cultures and historic periods.[28] Richard F. Voss and J. Clarke claim that almost all musical melodies, when each successive note is plotted on a scale of pitches, will tend towards a pink noise spectrum.[29] Similarly, a generally pink distribution pattern has been observed in film shot length by researcher James E. Cutting of Cornell University, in the study of 150 popular movies released from 1935 to 2005.[30]

Pink noise has also been found to be endemic in human response. Gilden et al. (1995) found extremely pure examples of this noise in the time series formed upon iterated production of temporal and spatial intervals.[31] Later, Gilden (1997) and Gilden (2001) found that time series formed from reaction time measurement and from iterated two-alternative forced choice also produced pink noises.[32][33]

Electronic devices edit

The principal sources of pink noise in electronic devices are almost invariably the slow fluctuations of properties of the condensed-matter materials of the devices. In many cases the specific sources of the fluctuations are known. These include fluctuating configurations of defects in metals, fluctuating occupancies of traps in semiconductors, and fluctuating domain structures in magnetic materials.[8][34] The explanation for the approximately pink spectral form turns out to be relatively trivial, usually coming from a distribution of kinetic activation energies of the fluctuating processes.[35] Since the frequency range of the typical noise experiment (e.g., 1 Hz – 1 kHz) is low compared with typical microscopic "attempt frequencies" (e.g., 1014 Hz), the exponential factors in the Arrhenius equation for the rates are large. Relatively small spreads in the activation energies appearing in these exponents then result in large spreads of characteristic rates. In the simplest toy case, a flat distribution of activation energies gives exactly a pink spectrum, because  

There is no known lower bound to background pink noise in electronics. Measurements made down to 10−6 Hz (taking several weeks) have not shown a ceasing of pink-noise behaviour.[36] (Kleinpenning, de Kuijper, 1988)[37] measured the resistance in a noisy carbon-sheet resistor, and found 1/f noise behavior over the range of  , a range of 9.5 decades.

A pioneering researcher in this field was Aldert van der Ziel.[38]

Flicker noise is commonly used for the reliability characterization of electronic devices.[39] It is also used for gas detection in chemoresistive sensors [40] by dedicated measurement setups.[41]

In gravitational wave astronomy edit

 
Noise curves for a selection of gravitational-wave detectors as a function of frequency

1/f α noises with α near 1 are a factor in gravitational-wave astronomy. The noise curve at very low frequencies affects pulsar timing arrays, the European Pulsar Timing Array (EPTA) and the future International Pulsar Timing Array (IPTA); at low frequencies are space-borne detectors, the formerly proposed Laser Interferometer Space Antenna (LISA) and the currently proposed evolved Laser Interferometer Space Antenna (eLISA), and at high frequencies are ground-based detectors, the initial Laser Interferometer Gravitational-Wave Observatory (LIGO) and its advanced configuration (aLIGO). The characteristic strain of potential astrophysical sources are also shown. To be detectable the characteristic strain of a signal must be above the noise curve.[42]

Climate dynamics edit

Pink noise on timescales of decades has been found in climate proxy data, which may indicate amplification and coupling of processes in the climate system.[43][44]

Diffusion processes edit

Many time-dependent stochastic processes are known to exhibit 1/f α noises with α between 0 and 2. In particular Brownian motion has a power spectral density that equals 4D/f 2,[45] where D is the diffusion coefficient. This type of spectrum is sometimes referred to as Brownian noise. Interestingly, the analysis of individual Brownian motion trajectories also show 1/f 2 spectrum, albeit with random amplitudes.[46] Fractional Brownian motion with Hurst exponent H also show 1/f α power spectral density with α=2H+1 for subdiffusive processes (H<0.5) and α=2 for superdiffusive processes (0.5<H<1).[47]

Origin edit

There are many theories about the origin of pink noise. Some theories attempt to be universal, while others apply to only a certain type of material, such as semiconductors. Universal theories of pink noise remain a matter of current research interest.

A hypothesis (referred to as the Tweedie hypothesis) has been proposed to explain the genesis of pink noise on the basis of a mathematical convergence theorem related to the central limit theorem of statistics.[48] The Tweedie convergence theorem[49] describes the convergence of certain statistical processes towards a family of statistical models known as the Tweedie distributions. These distributions are characterized by a variance to mean power law, that have been variously identified in the ecological literature as Taylor's law[50] and in the physics literature as fluctuation scaling.[51] When this variance to mean power law is demonstrated by the method of expanding enumerative bins this implies the presence of pink noise, and vice versa.[48] Both of these effects can be shown to be the consequence of mathematical convergence such as how certain kinds of data will converge towards the normal distribution under the central limit theorem. This hypothesis also provides for an alternative paradigm to explain power law manifestations that have been attributed to self-organized criticality.[52]

There are various mathematical models to create pink noise. Although self-organised criticality has been able to reproduce pink noise in sandpile models, these do not have a Gaussian distribution or other expected statistical qualities.[53][54] It can be generated on computer, for example, by filtering white noise,[55][56][57] inverse Fourier transform,[58] or by multirate variants on standard white noise generation.[19][17]

In supersymmetric theory of stochastics,[59] an approximation-free theory of stochastic differential equations, 1/f noise is one of the manifestations of the spontaneous breakdown of topological supersymmetry. This supersymmetry is an intrinsic property of all stochastic differential equations and its meaning is the preservation of the continuity of the phase space by continuous time dynamics. Spontaneous breakdown of this supersymmetry is the stochastic generalization of the concept of deterministic chaos,[60] whereas the associated emergence of the long-term dynamical memory or order, i.e., 1/f and crackling noises, the Butterfly effect etc., is the consequence of the Goldstone theorem in the application to the spontaneously broken topological supersymmetry.

Audio testing edit

Pink noise is commonly used to test the loudspeakers in sound reinforcement systems, with the resulting sound measured with a test microphone in the listening space connected to a spectrum analyzer[3] or a computer running a real-time fast Fourier transform (FFT) analyzer program such as Smaart. The sound system plays pink noise while the audio engineer makes adjustments on an audio equalizer to obtain the desired results. Pink noise is predictable and repeatable, but it is annoying for a concert audience to hear. Since the late 1990s, FFT-based analysis enabled the engineer to make adjustments using pre-recorded music as the test signal, or even the music coming from the performers in real time.[61] Pink noise is still used by audio system contractors[62] and by computerized sound systems which incorporate an automatic equalization feature.[63]

In manufacturing, pink noise is often used as a burn-in signal for audio amplifiers and other components, to determine whether the component will maintain performance integrity during sustained use.[64] The process of end-users burning in their headphones with pink noise to attain higher fidelity has been called an audiophile "myth".[65]

See also edit

Footnotes edit

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  1. ^ Though in practice, since there are no ideal clocks,   is actually the ticks of a much more accurate clock.

References edit

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External links edit

  • Coloured Noise: Matlab toolbox to generate power-law coloured noise signals of any dimensions.
  • Powernoise: Matlab software for generating 1/f noise, or more generally, 1/fα noise
  • 1/f noise at Scholarpedia
  • White Noise Definition Vs Pink Noise

pink, noise, fractal, noise, redirects, here, novel, fractal, noise, noise, fractional, noise, fractal, noise, signal, process, with, frequency, spectrum, such, that, power, spectral, density, power, frequency, interval, inversely, proportional, frequency, sig. Fractal noise redirects here For the novel see Fractal Noise Pink noise 1 f noise fractional noise or fractal noise is a signal or process with a frequency spectrum such that the power spectral density power per frequency interval is inversely proportional to the frequency of the signal In pink noise each octave interval halving or doubling in frequency carries an equal amount of noise energy A two dimensional pink noise grayscale image generated with a computer program Some fields observed in nature are characterized by a similar power spectrum 1 A 3D pink noise image generated with a computer program viewed as an animation in which each frame is a 2D slicePink noise sounds like a waterfall 2 It is often used to tune loudspeaker systems in professional audio 3 Pink noise is one of the most commonly observed signals in biological systems 4 The name arises from the pink appearance of visible light with this power spectrum 5 This is in contrast with white noise which has equal intensity per frequency interval Contents 1 Definition 2 Description 3 Generation 4 Properties 4 1 Power law spectra 4 2 Distribution of point values 4 3 Autocorrelation 4 3 1 1D signal 4 3 2 2D signal 5 Occurrence 5 1 Precision timekeeping 5 2 Humans 5 3 Electronic devices 5 4 In gravitational wave astronomy 5 5 Climate dynamics 5 6 Diffusion processes 6 Origin 7 Audio testing 8 See also 9 Footnotes 10 References 11 External linksDefinition edit nbsp Pink noise source source 10 seconds of pink noise normalized to 1 dBFS peak amplitude Problems playing this file See media help Within the scientific literature the term 1 f noise is sometimes used loosely to refer to any noise with a power spectral density of the formS f 1fa displaystyle S f propto frac 1 f alpha nbsp where f is frequency and 0 lt a lt 2 with exponent a usually close to 1 One dimensional signals with a 1 are usually called pink noise 6 The following function describes a length N displaystyle N nbsp one dimensional pink noise signal i e a Gaussian white noise signal with zero mean and standard deviation s displaystyle sigma nbsp which has been suitably filtered as a sum of sine waves with different frequencies whose amplitudes fall off inversely with the square root of frequency u displaystyle u nbsp so that power which is the square of amplitude falls off inversely with frequency and phases are random 7 h x sN2 uxuusin 2puxN ϕu xu x 2 ϕu U 0 2p displaystyle h x sigma sqrt frac N 2 sum u frac chi u u sin frac 2 pi ux N phi u quad chi u sim chi 2 quad phi u sim U 0 2 pi nbsp xu displaystyle chi u nbsp are iid chi distributed variables and ϕu displaystyle phi u nbsp are uniform random In a two dimensional pink noise signal the amplitude at any orientation falls off inversely with frequency A pink noise square of length N displaystyle N nbsp can be written as 7 h x y sN2 u vxuvu2 v2sin 2pN ux vy ϕuv xuv x 2 ϕuv U 0 2p displaystyle h x y frac sigma N sqrt 2 sum u v frac chi uv sqrt u 2 v 2 sin left frac 2 pi N ux vy phi uv right quad chi uv sim chi 2 quad phi uv sim U 0 2 pi nbsp General 1 f a like noises occur widely in nature and are a source of considerable interest in many fields Noises with a near 1 generally come from condensed matter systems in quasi equilibrium as discussed below 8 Noises with a broad range of a generally correspond to a wide range of non equilibrium driven dynamical systems Pink noise sources include flicker noise in electronic devices In their study of fractional Brownian motion 9 Mandelbrot and Van Ness proposed the name fractional noise sometimes since called fractal noise to describe 1 f a noises for which the exponent a is not an even integer 10 or that are fractional derivatives of Brownian 1 f 2 noise Description edit nbsp Spectrum of a pink noise approximation on a log log plot Power density falls off at 10 dB decade of frequency nbsp Relative intensity of pink noise left and white noise right on an FFT spectrogram with the vertical axis being linear frequencyIn pink noise there is equal energy per octave of frequency The energy of pink noise at each frequency level however falls off at roughly 3 dB per octave This is in contrast to white noise which has equal energy at all frequency levels 11 The human auditory system which processes frequencies in a roughly logarithmic fashion approximated by the Bark scale does not perceive different frequencies with equal sensitivity signals around 1 4 kHz sound loudest for a given intensity However humans still differentiate between white noise and pink noise with ease Graphic equalizers also divide signals into bands logarithmically and report power by octaves audio engineers put pink noise through a system to test whether it has a flat frequency response in the spectrum of interest Systems that do not have a flat response can be equalized by creating an inverse filter using a graphic equalizer Because pink noise tends to occur in natural physical systems it is often useful in audio production Pink noise can be processed filtered and or effects can be added to produce desired sounds Pink noise generators are commercially available One parameter of noise the peak versus average energy contents or crest factor is important for testing purposes such as for audio power amplifier and loudspeaker capabilities because the signal power is a direct function of the crest factor Various crest factors of pink noise can be used in simulations of various levels of dynamic range compression in music signals On some digital pink noise generators the crest factor can be specified Generation edit nbsp The spatial filter which is convolved with a one dimensional white noise signal to create a pink noise signal 7 Pink noise can be computer generated by first generating a white noise signal Fourier transforming it then dividing the amplitudes of the different frequency components by the square root of the frequency in one dimension or by the frequency in two dimensions etc 7 This is equivalent to spatially filtering convolving the white noise signal with a white to pink filter For a length N displaystyle N nbsp signal in one dimension the filter has the following form 7 a x 1N 1 1N 2cos p x 1 2 k 1N 2 11kcos 2pkN x 1 displaystyle a x frac 1 N left 1 frac 1 sqrt N 2 cos pi x 1 2 sum k 1 N 2 1 frac 1 sqrt k cos frac 2 pi k N x 1 right nbsp Matlab programs are available to generate pink and other power law coloured noise in one or any number of dimensions Properties edit nbsp The autocorrelation Pearson s correlation coefficient of one dimensional top and two dimensional bottom pink noise signals across distance d in units of the longest wavelength comprising the signal Grey curves are the autocorrelations of a sample of pink noise signals comprising discrete frequencies and black is their average Red is the theoretically calculated autocorrelation when the signal comprises these same discrete frequencies and blue assumes a continuum of frequencies 7 Power law spectra edit The power spectrum of pink noise is 1f displaystyle frac 1 f nbsp only for one dimensional signals For two dimensional signals e g images the average power spectrum at any orientation falls as 1f2 displaystyle frac 1 f 2 nbsp and in d displaystyle d nbsp dimensions it falls as 1fd displaystyle frac 1 f d nbsp In every case each octave carries an equal amount of noise power The average amplitude a8 displaystyle a theta nbsp and power p8 displaystyle p theta nbsp of a pink noise signal at any orientation 8 displaystyle theta nbsp and the total power across all orientations fall off as some power of the frequency The following table lists these power law frequency dependencies for pink noise signal in different dimensions and also for general power law colored noise with power a displaystyle alpha nbsp e g Brown noise has a 2 displaystyle alpha 2 nbsp 7 Power law spectra of pink noise dimensions avg amp a8 f displaystyle a theta f nbsp avg power p8 f displaystyle p theta f nbsp tot power p f displaystyle p f nbsp 1 1 f displaystyle 1 sqrt f nbsp 1 f displaystyle 1 f nbsp 1 f displaystyle 1 f nbsp 2 1 f displaystyle 1 f nbsp 1 f2 displaystyle 1 f 2 nbsp 1 f displaystyle 1 f nbsp 3 1 f3 2 displaystyle 1 f 3 2 nbsp 1 f3 displaystyle 1 f 3 nbsp 1 f displaystyle 1 f nbsp d displaystyle d nbsp 1 fd 2 displaystyle 1 f d 2 nbsp 1 fd displaystyle 1 f d nbsp 1 f displaystyle 1 f nbsp d displaystyle d nbsp power a displaystyle alpha nbsp 1 fad 2 displaystyle 1 f alpha d 2 nbsp 1 fad displaystyle 1 f alpha d nbsp 1 f1 a 1 d displaystyle 1 f 1 alpha 1 d nbsp Distribution of point values edit Consider pink noise of any dimension that is produced by generating a Gaussian white noise signal with mean m displaystyle mu nbsp and sd s displaystyle sigma nbsp then multiplying its spectrum with a filter equivalent to spatially filtering it with a filter a displaystyle boldsymbol a nbsp Then the point values of the pink noise signal will also be normally distributed with mean m displaystyle mu nbsp and sd a s displaystyle lVert boldsymbol a rVert sigma nbsp 7 Autocorrelation edit Unlike white noise which has no correlations across the signal a pink noise signal is correlated with itself as follows 1D signal edit The Pearson s correlation coefficient of a one dimensional pink noise signal comprising discrete frequencies k displaystyle k nbsp with itself across a distance d displaystyle d nbsp in the configuration space or time domain is 7 r d kcos 2pkdNk k1k displaystyle r d frac sum k frac cos frac 2 pi kd N k sum k frac 1 k nbsp If instead of discrete frequencies the pink noise comprises a superposition of continuous frequencies from kmin displaystyle k textrm min nbsp to kmax displaystyle k textrm max nbsp the autocorrelation coefficient is 7 r d Ci 2pkmaxdN Ci 2pkmindN log kmaxkmin displaystyle r d frac textrm Ci frac 2 pi k textrm max d N textrm Ci frac 2 pi k textrm min d N log frac k textrm max k textrm min nbsp where Ci x displaystyle textrm Ci x nbsp is the cosine integral function 2D signal edit The Pearson s autocorrelation coefficient of a two dimensional pink noise signal comprising discrete frequencies is theoretically approximated as 7 r d kJ0 2pkdN k k1k displaystyle r d frac sum k frac J 0 frac 2 pi kd N k sum k frac 1 k nbsp where J0 displaystyle J 0 nbsp is the Bessel function of the first kind Occurrence editPink noise has been discovered in the statistical fluctuations of an extraordinarily diverse number of physical and biological systems Press 1978 12 see articles in Handel amp Chung 1993 13 and references therein Examples of its occurrence include fluctuations in tide and river heights quasar light emissions heart beat firings of single neurons resistivity in solid state electronics and single molecule conductance signals 14 resulting in flicker noise Pink noise describes the statistical structure of many natural images 1 General 1 f a noises occur in many physical biological and economic systems and some researchers describe them as being ubiquitous 15 In physical systems they are present in some meteorological data series the electromagnetic radiation output of some astronomical bodies In biological systems they are present in for example heart beat rhythms neural activity and the statistics of DNA sequences as a generalized pattern 16 An accessible introduction to the significance of pink noise is one given by Martin Gardner 1978 in his Scientific American column Mathematical Games 17 In this column Gardner asked for the sense in which music imitates nature Sounds in nature are not musical in that they tend to be either too repetitive bird song insect noises or too chaotic ocean surf wind in trees and so forth The answer to this question was given in a statistical sense by Voss and Clarke 1975 1978 who showed that pitch and loudness fluctuations in speech and music are pink noises 18 19 So music is like tides not in terms of how tides sound but in how tide heights vary Precision timekeeping edit Main article Allan variance The ubiquitous 1 f noise poses a noise floor to precision timekeeping 12 The derivation is based on 20 nbsp A clock is most easily tested by comparing it with a far more accurate reference clock During an interval of time t as measured by the reference clock the clock under test advances by ty where y is the average relative clock frequency over that interval Suppose that we have a timekeeping device it could be anything from quartz oscillators atomic clocks and hourglasses 21 Let its readout be a real number x t displaystyle x t nbsp that changes with the actual time t displaystyle t nbsp For concreteness let us consider a quartz oscillator In a quartz oscillator x t displaystyle x t nbsp is the number of oscillations and x t displaystyle dot x t nbsp is the rate of oscillation The rate of oscillation has a constant component x 0 displaystyle dot x 0 nbsp and a fluctuating component x f displaystyle dot x f nbsp so x t x 0 x f t textstyle dot x t dot x 0 dot x f t nbsp By selecting the right units for x displaystyle x nbsp we can have x 0 1 displaystyle dot x 0 1 nbsp meaning that on average one second of clock time passes for every second of real time The stability of the clock is measured by how many ticks it makes over a fixed interval The more stable the number of ticks the better the stability of the clock So define the average clock frequency over the interval kt k 1 t displaystyle k tau k 1 tau nbsp asyk 1t kt k 1 tx t dt x k 1 t x kt t displaystyle y k frac 1 tau int k tau k 1 tau dot x t dt frac x k 1 tau x k tau tau nbsp Note that yk displaystyle y k nbsp is unitless it is the numerical ratio between ticks of the physical clock and ticks of an ideal clock note 1 The Allan variance of the clock frequency is half the mean square of change in average clock frequency s2 t 12 yk yk 1 2 1K k 1K12 yk yk 1 2 displaystyle sigma 2 tau frac 1 2 overline y k y k 1 2 frac 1 K sum k 1 K frac 1 2 y k y k 1 2 nbsp where K displaystyle K nbsp is an integer large enough for the averaging to converge to a definite value For example a 2013 atomic clock 22 achieved s 25000 seconds 1 6 10 18 displaystyle sigma 25000 text seconds 1 6 times 10 18 nbsp meaning that if the clock is used to repeatedly measure intervals of 7 hours the standard deviation of the actually measured time would be around 40 femtoseconds Now we haveyk yk 1 Rg kt t x f t dt g x f kt displaystyle y k y k 1 int mathbb R g k tau t dot x f t dt g ast dot x f k tau nbsp where g t 1 0 t t 1 t 0 t t displaystyle g t frac 1 0 tau t 1 tau 0 t tau nbsp is one packet of a square wave with height 1 t displaystyle 1 tau nbsp and wavelength 2t displaystyle 2 tau nbsp Let h t displaystyle h t nbsp be a packet of a square wave with height 1 and wavelength 2 then g t h t t t displaystyle g t h t tau tau nbsp and its Fourier transform satisfies F g w F h tw displaystyle mathcal F g omega mathcal F h tau omega nbsp The Allan variance is then s2 t 12 yk yk 1 2 12 g x f kt 2 displaystyle sigma 2 tau frac 1 2 overline y k y k 1 2 frac 1 2 overline g ast dot x f k tau 2 nbsp and the discrete averaging can be approximated by a continuous averaging 1K k 1K12 yk yk 1 2 1Kt 0Kt12 g x f t 2dt displaystyle frac 1 K sum k 1 K frac 1 2 y k y k 1 2 approx frac 1 K tau int 0 K tau frac 1 2 g ast dot x f t 2 dt nbsp which is the total power of the signal g x f displaystyle g ast dot x f nbsp or the integral of its power spectrum nbsp s2 1 displaystyle sigma 2 1 nbsp is approximately the area under the green curve When t displaystyle tau nbsp increases S g w displaystyle S g omega nbsp shrinks on the x axis and the green curve shrinks on the x axis but expands on the y axis When S x f w w a displaystyle S dot x f omega propto omega alpha nbsp the combined effect of both is that s2 t ta 1 displaystyle sigma 2 tau propto tau alpha 1 nbsp s2 t 0 S g x f w dw 0 S g w S x f w dw 0 S h tw S x f w dw displaystyle sigma 2 tau approx int 0 infty S g ast dot x f omega d omega int 0 infty S g omega cdot S dot x f omega d omega int 0 infty S h tau omega cdot S dot x f omega d omega nbsp In words the Allan variance is approximately the power of the fluctuation after bandpass filtering at w 1 t displaystyle omega sim 1 tau nbsp with bandwidth Dw 1 t displaystyle Delta omega sim 1 tau nbsp For 1 fa displaystyle 1 f alpha nbsp fluctuation we have S x f w C wa displaystyle S dot x f omega C omega alpha nbsp for some constant C displaystyle C nbsp so s2 t ta 1s2 1 ta 1 displaystyle sigma 2 tau approx tau alpha 1 sigma 2 1 propto tau alpha 1 nbsp In particular when the fluctuating component x f displaystyle dot x f nbsp is a 1 f noise then s2 t displaystyle sigma 2 tau nbsp is independent of the averaging time t displaystyle tau nbsp meaning that the clock frequency does not become more stable by simply averaging for longer This contrasts with a white noise fluctuation in which case s2 t t 1 displaystyle sigma 2 tau propto tau 1 nbsp meaning that doubling the averaging time would improve the stability of frequency by 2 displaystyle sqrt 2 nbsp 12 The cause of the noise floor is often traced to particular electronic components such as transistors resistors and capacitors within the oscillator feedback 23 Humans edit In brains pink noise has been widely observed across many temporal and physical scales from ion channel gating to EEG and MEG and LFP recordings in humans 24 In clinical EEG deviations from this 1 f pink noise can be used to identify epilepsy even in the absence of a seizure or during the interictal state 25 Classic models of EEG generators suggested that dendritic inputs in gray matter were principally responsible for generating the 1 f power spectrum observed in EEG MEG signals However recent computational models using cable theory have shown that action potential transduction along white matter tracts in the brain also generates a 1 f spectral density Therefore white matter signal transduction may also contribute to pink noise measured in scalp EEG recordings 26 It has also been successfully applied to the modeling of mental states in psychology 27 and used to explain stylistic variations in music from different cultures and historic periods 28 Richard F Voss and J Clarke claim that almost all musical melodies when each successive note is plotted on a scale of pitches will tend towards a pink noise spectrum 29 Similarly a generally pink distribution pattern has been observed in film shot length by researcher James E Cutting of Cornell University in the study of 150 popular movies released from 1935 to 2005 30 Pink noise has also been found to be endemic in human response Gilden et al 1995 found extremely pure examples of this noise in the time series formed upon iterated production of temporal and spatial intervals 31 Later Gilden 1997 and Gilden 2001 found that time series formed from reaction time measurement and from iterated two alternative forced choice also produced pink noises 32 33 Electronic devices edit Main article Flicker noise The principal sources of pink noise in electronic devices are almost invariably the slow fluctuations of properties of the condensed matter materials of the devices In many cases the specific sources of the fluctuations are known These include fluctuating configurations of defects in metals fluctuating occupancies of traps in semiconductors and fluctuating domain structures in magnetic materials 8 34 The explanation for the approximately pink spectral form turns out to be relatively trivial usually coming from a distribution of kinetic activation energies of the fluctuating processes 35 Since the frequency range of the typical noise experiment e g 1 Hz 1 kHz is low compared with typical microscopic attempt frequencies e g 1014 Hz the exponential factors in the Arrhenius equation for the rates are large Relatively small spreads in the activation energies appearing in these exponents then result in large spreads of characteristic rates In the simplest toy case a flat distribution of activation energies gives exactly a pink spectrum because ddfln f 1f displaystyle textstyle frac d df ln f frac 1 f nbsp There is no known lower bound to background pink noise in electronics Measurements made down to 10 6 Hz taking several weeks have not shown a ceasing of pink noise behaviour 36 Kleinpenning de Kuijper 1988 37 measured the resistance in a noisy carbon sheet resistor and found 1 f noise behavior over the range of 10 5 5Hz 104Hz displaystyle 10 5 5 mathrm Hz 10 4 mathrm Hz nbsp a range of 9 5 decades A pioneering researcher in this field was Aldert van der Ziel 38 Flicker noise is commonly used for the reliability characterization of electronic devices 39 It is also used for gas detection in chemoresistive sensors 40 by dedicated measurement setups 41 In gravitational wave astronomy edit nbsp Noise curves for a selection of gravitational wave detectors as a function of frequency1 f a noises with a near 1 are a factor in gravitational wave astronomy The noise curve at very low frequencies affects pulsar timing arrays the European Pulsar Timing Array EPTA and the future International Pulsar Timing Array IPTA at low frequencies are space borne detectors the formerly proposed Laser Interferometer Space Antenna LISA and the currently proposed evolved Laser Interferometer Space Antenna eLISA and at high frequencies are ground based detectors the initial Laser Interferometer Gravitational Wave Observatory LIGO and its advanced configuration aLIGO The characteristic strain of potential astrophysical sources are also shown To be detectable the characteristic strain of a signal must be above the noise curve 42 Climate dynamics edit Pink noise on timescales of decades has been found in climate proxy data which may indicate amplification and coupling of processes in the climate system 43 44 Diffusion processes edit Many time dependent stochastic processes are known to exhibit 1 f a noises with a between 0 and 2 In particular Brownian motion has a power spectral density that equals 4D f 2 45 where D is the diffusion coefficient This type of spectrum is sometimes referred to as Brownian noise Interestingly the analysis of individual Brownian motion trajectories also show 1 f 2 spectrum albeit with random amplitudes 46 Fractional Brownian motion with Hurst exponent H also show 1 f a power spectral density with a 2H 1 for subdiffusive processes H lt 0 5 and a 2 for superdiffusive processes 0 5 lt H lt 1 47 Origin editSee also Supersymmetry Supersymmetry in dynamical systems There are many theories about the origin of pink noise Some theories attempt to be universal while others apply to only a certain type of material such as semiconductors Universal theories of pink noise remain a matter of current research interest A hypothesis referred to as the Tweedie hypothesis has been proposed to explain the genesis of pink noise on the basis of a mathematical convergence theorem related to the central limit theorem of statistics 48 The Tweedie convergence theorem 49 describes the convergence of certain statistical processes towards a family of statistical models known as the Tweedie distributions These distributions are characterized by a variance to mean power law that have been variously identified in the ecological literature as Taylor s law 50 and in the physics literature as fluctuation scaling 51 When this variance to mean power law is demonstrated by the method of expanding enumerative bins this implies the presence of pink noise and vice versa 48 Both of these effects can be shown to be the consequence of mathematical convergence such as how certain kinds of data will converge towards the normal distribution under the central limit theorem This hypothesis also provides for an alternative paradigm to explain power law manifestations that have been attributed to self organized criticality 52 There are various mathematical models to create pink noise Although self organised criticality has been able to reproduce pink noise in sandpile models these do not have a Gaussian distribution or other expected statistical qualities 53 54 It can be generated on computer for example by filtering white noise 55 56 57 inverse Fourier transform 58 or by multirate variants on standard white noise generation 19 17 In supersymmetric theory of stochastics 59 an approximation free theory of stochastic differential equations 1 f noise is one of the manifestations of the spontaneous breakdown of topological supersymmetry This supersymmetry is an intrinsic property of all stochastic differential equations and its meaning is the preservation of the continuity of the phase space by continuous time dynamics Spontaneous breakdown of this supersymmetry is the stochastic generalization of the concept of deterministic chaos 60 whereas the associated emergence of the long term dynamical memory or order i e 1 f and crackling noises the Butterfly effect etc is the consequence of the Goldstone theorem in the application to the spontaneously broken topological supersymmetry Audio testing editPink noise is commonly used to test the loudspeakers in sound reinforcement systems with the resulting sound measured with a test microphone in the listening space connected to a spectrum analyzer 3 or a computer running a real time fast Fourier transform FFT analyzer program such as Smaart The sound system plays pink noise while the audio engineer makes adjustments on an audio equalizer to obtain the desired results Pink noise is predictable and repeatable but it is annoying for a concert audience to hear Since the late 1990s FFT based analysis enabled the engineer to make adjustments using pre recorded music as the test signal or even the music coming from the performers in real time 61 Pink noise is still used by audio system contractors 62 and by computerized sound systems which incorporate an automatic equalization feature 63 In manufacturing pink noise is often used as a burn in signal for audio amplifiers and other components to determine whether the component will maintain performance integrity during sustained use 64 The process of end users burning in their headphones with pink noise to attain higher fidelity has been called an audiophile myth 65 See also editArchitectural acoustics Audio signal processing Brownian noise White noise Colors of noise Crest factor Fractal Flicker noise Johnson Nyquist noise Noise physics Quantum 1 f noise Self organised criticality Shot noise Sound masking StatisticsFootnotes edit a b Field D J 1987 Relations between the statistics of natural images and the response properties of cortical cells PDF J Opt Soc Am A 4 12 2379 2394 Bibcode 1987JOSAA 4 2379F CiteSeerX 10 1 1 136 1345 doi 10 1364 JOSAA 4 002379 PMID 3430225 Glossary Pink Noise Sound on Sound Retrieved November 22 2022 a b Davis Gary Jones Ralph 1987 The Sound Reinforcement Handbook Hal Leonard p 107 ISBN 0 88188 900 8 Szendro P 2001 Pink Noise Behaviour of Biosystems European Biophysics Journal 30 3 227 231 doi 10 1007 s002490100143 PMID 11508842 S2CID 24505215 Downey Allen 2012 Think Complexity O Reilly Media p 79 ISBN 978 1 4493 1463 7 Visible light with this power spectrum looks pink hence the name Baxandall P J November 1968 Noise in Transistor Circuits 1 Mainly on fundamental noise concepts PDF Wireless World pp 388 392 Archived PDF from the original on 2016 04 23 Retrieved 2019 08 08 a b c d e f g h i j k Das Abhranil 2022 Camouflage detection amp signal discrimination theory methods amp experiments corrected PhD The University of Texas at Austin doi 10 13140 RG 2 2 10585 80487 a b Kogan Shulim 1996 Electronic Noise and Fluctuations in Solids Cambridge University Press ISBN 978 0 521 46034 7 Mandelbrot B B Van Ness J W 1968 Fractional Brownian motions fractional noises and applications SIAM Review 10 4 422 437 Bibcode 1968SIAMR 10 422M doi 10 1137 1010093 Mandelbrot Benoit B Wallis James R 1969 Computer Experiments with Fractional Gaussian Noises Part 3 Mathematical Appendix Water Resources Research 5 1 260 267 Bibcode 1969WRR 5 260M doi 10 1029 WR005i001p00260 Noise www sfu ca Retrieved 2024 02 06 a b c Press W H 1978 Flicker noises in astronomy and elsewhere Comments in Astrophysics 7 4 103 119 Bibcode 1978ComAp 7 103P Handel P H Chung A L 1993 Noise in Physical Systems and 1 f Fluctuations New York American Institute of Physics Adak Olgun Rosenthal Ethan Meisner Jeffery Andrade Erick F Pasupathy Abhay N Nuckolls Colin Hybertsen Mark S Venkataraman Latha 2015 05 07 Flicker Noise as a Probe of Electronic Interaction at Metal Single Molecule Interfaces Nano Letters 15 6 4143 4149 Bibcode 2015NanoL 15 4143A doi 10 1021 acs nanolett 5b01270 ISSN 1530 6984 PMID 25942441 Bak P Tang C Wiesenfeld K 1987 Self Organized Criticality An Explanation of 1 ƒ Noise Physical Review Letters 59 4 381 384 Bibcode 1987PhRvL 59 381B doi 10 1103 PhysRevLett 59 381 PMID 10035754 S2CID 7674321 Josephson Brian D 1995 A trans human source of music in P Pylkkanen and P Pylkko eds New Directions in Cognitive Science Finnish Artificial Intelligence Society Helsinki pp 280 285 a b Gardner M 1978 Mathematical Games White and brown music fractal curves and one over f fluctuations Scientific American 238 4 16 32 doi 10 1038 scientificamerican0478 16 Voss R F Clarke J 1975 1 f Noise in Music and Speech Nature 258 5533 317 318 Bibcode 1975Natur 258 317V doi 10 1038 258317a0 S2CID 4182664 a b Voss R F Clarke J 1978 1 f noise in music Music from 1 f noise Journal of the Acoustical Society of America 63 1 258 263 Bibcode 1978ASAJ 63 258V doi 10 1121 1 381721 Voss R F May 1979 1 f Flicker Noise A Brief Review 33rd Annual Symposium on Frequency Control 40 46 doi 10 1109 FREQ 1979 200297 S2CID 37302662 Schick K L Verveen A A October 1974 1 f noise with a low frequency white noise limit Nature 251 5476 599 601 Bibcode 1974Natur 251 599S doi 10 1038 251599a0 ISSN 1476 4687 S2CID 4200003 Hinkley N Sherman J A Phillips N B Schioppo M Lemke N D Beloy K Pizzocaro M Oates C W Ludlow A D 2013 09 13 An Atomic Clock with 10 18 Instability Science 341 6151 1215 1218 arXiv 1305 5869 Bibcode 2013Sci 341 1215H doi 10 1126 science 1240420 ISSN 0036 8075 PMID 23970562 S2CID 206549862 Vessot Robert F C 1976 01 01 Meeks M L ed 5 4 Frequency and Time Standards This work was supported in part by contract NSR 09 015 098 from the National Aeronautics and Space Administration Methods in Experimental Physics Astrophysics vol 12 Academic Press pp 198 227 doi 10 1016 S0076 695X 08 60710 3 retrieved 2023 07 17 Destexhe Alain Bedard Claude 2020 Local Field Potentials LFP in Jaeger Dieter Jung Ranu eds Encyclopedia of Computational Neuroscience New York NY Springer pp 1 12 doi 10 1007 978 1 4614 7320 6 548 2 ISBN 978 1 4614 7320 6 S2CID 243735998 retrieved 2023 07 26 Kerr W T et al 2012 Automated diagnosis of epilepsy using EEG power spectrum Epilepsia 53 11 e189 e192 doi 10 1111 j 1528 1167 2012 03653 x PMC 3447367 PMID 22967005 Douglas PK et al 2019 Reconsidering Spatial Priors in EEG Source Estimation Does White Matter Contribute to EEG Rhythms 2019 7th International Winter Conference on Brain Computer Interface BCI IEEE pp 1 12 arXiv 2111 08939 doi 10 1109 IWW BCI 2019 8737307 ISBN 978 1 5386 8116 9 S2CID 195064621 Van Orden G C Holden J G Turvey M T 2003 Self organization of cognitive performance Journal of Experimental Psychology General 132 3 331 350 doi 10 1037 0096 3445 132 3 331 PMID 13678372 Pareyon G 2011 On Musical Self Similarity International Semiotics Institute amp University of Helsinki On Musical Self Similarity PDF Noise in Man generated Images and Sound Anger Natalie March 1 2010 Bringing New Understanding to the Director s Cut The New York Times Retrieved on March 3 2010 See also original study Archived 2013 01 24 at the Wayback Machine Gilden David L Thornton T Mallon MW 1995 1 ƒ Noise in Human Cognition Science 267 5205 1837 1839 Bibcode 1995Sci 267 1837G doi 10 1126 science 7892611 ISSN 0036 8075 PMID 7892611 Gilden D L 1997 Fluctuations in the time required for elementary decisions Psychological Science 8 4 296 301 doi 10 1111 j 1467 9280 1997 tb00441 x S2CID 145051976 Gilden David L 2001 Cognitive Emissions of 1 ƒ Noise Psychological Review 108 1 33 56 CiteSeerX 10 1 1 136 1992 doi 10 1037 0033 295X 108 1 33 ISSN 0033 295X PMID 11212631 Weissman M B 1988 1 ƒ Noise and other slow non exponential kinetics in condensed matter Reviews of Modern Physics 60 2 537 571 Bibcode 1988RvMP 60 537W doi 10 1103 RevModPhys 60 537 Dutta P amp Horn P M 1981 Low frequency fluctuations in solids 1 f noise Reviews of Modern Physics 53 3 497 516 Bibcode 1981RvMP 53 497D doi 10 1103 RevModPhys 53 497 Kleinpenning T G M amp de Kuijper A H 1988 Relation between variance and sample duration of 1 f Noise signals Journal of Applied Physics 63 1 43 Bibcode 1988JAP 63 43K doi 10 1063 1 340460 Kleinpenning T G M de Kuijper A H 1988 01 01 Relation between variance and sample duration of 1 f noise signals Journal of Applied Physics 63 1 43 45 Bibcode 1988JAP 63 43K doi 10 1063 1 340460 ISSN 0021 8979 Aldert van der Ziel 1954 Noise Prentice Hall Hei Wong 2003 Low frequency noise study in electron devices review and update Microelectronics Reliability 43 4 585 599 doi 10 1016 S0026 2714 02 00347 5 Alexander A Balandin 2013 Low frequency 1 f noise in graphene devices Nature Nanotechnology 8 8 549 555 arXiv 1307 4797 Bibcode 2013NatNa 8 549B doi 10 1038 nnano 2013 144 PMID 23912107 S2CID 16030927 Smulko Janusz Scandurra Graziella Drozdowska Katarzyna Kwiatkowski Andrzej Ciofi Carmine Wen He 2024 Flicker Noise in Resistive Gas Sensors Measurement Setups and Applications for Enhanced Gas Sensing Sensors 24 2 405 Bibcode 2024Senso 24 405S doi 10 3390 s24020405 PMC 10821460 PMID 38257498 Moore Christopher Cole Robert Berry Christopher 19 July 2013 Gravitational Wave Detectors and Sources Retrieved 17 April 2014 Jim Shelton 2018 09 04 Think pink for a better view of climate change YaleNews Retrieved 5 September 2018 Moon Woosok Agarwal Sahil Wettlaufer J S 2018 09 04 Intrinsic Pink Noise Multidecadal Global Climate Dynamics Mode Physical Review Letters 121 10 108701 arXiv 1802 00392 Bibcode 2018PhRvL 121j8701M doi 10 1103 PhysRevLett 121 108701 PMID 30240245 S2CID 52243763 Norton M P 2003 Fundamentals of noise and vibration analysis for engineers Karczub D G Denis G 2nd ed Cambridge UK Cambridge University Press ISBN 9780511674983 OCLC 667085096 Krapf Diego Marinari Enzo Metzler Ralf Oshanin Gleb Xu Xinran Squarcini Alessio 2018 02 09 Power spectral density of a single Brownian trajectory what one can and cannot learn from it New Journal of Physics 20 2 023029 arXiv 1801 02986 Bibcode 2018NJPh 20b3029K doi 10 1088 1367 2630 aaa67c ISSN 1367 2630 Krapf Diego Lukat Nils Marinari Enzo Metzler Ralf Oshanin Gleb Selhuber Unkel Christine Squarcini Alessio Stadler Lorenz Weiss Matthias Xu Xinran 2019 01 31 Spectral Content of a Single Non Brownian Trajectory Physical Review X 9 1 011019 arXiv 1902 00481 Bibcode 2019PhRvX 9a1019K doi 10 1103 PhysRevX 9 011019 ISSN 2160 3308 a b Kendal WS Jorgensen BR 2011 Tweedie convergence a mathematical basis for Taylor s power law 1 f noise and multifractality PDF Phys Rev E 84 6 066120 Bibcode 2011PhRvE 84f6120K doi 10 1103 physreve 84 066120 PMID 22304168 Jorgensen B Martinez JR Tsao M 1994 Asymptotic behaviour of the variance function Scandinavian Journal of Statistics 21 223 243 Taylor LR 1961 Aggregation variance and the mean Nature 189 4766 732 735 Bibcode 1961Natur 189 732T doi 10 1038 189732a0 S2CID 4263093 Eisler Z Bartos I Kertesz J 2008 Fluctuation scaling in complex systems Taylor s law and beyond Advances in Physics 57 1 89 142 arXiv 0708 2053 Bibcode 2008AdPhy 57 89E doi 10 1080 00018730801893043 S2CID 119608542 Kendal WS 2015 Self organized criticality attributed to a central limit like convergence effect Physica A 421 141 150 Bibcode 2015PhyA 421 141K doi 10 1016 j physa 2014 11 035 Milotti Edoardo 2002 04 12 1 f noise a pedagogical review arXiv physics 0204033 O Brien Kevin P Weissman M B 1992 10 01 Statistical signatures of self organization Physical Review A 46 8 R4475 R4478 Bibcode 1992PhRvA 46 4475O doi 10 1103 PhysRevA 46 R4475 PMID 9908765 Noise in Man generated Images and Sound mlab uiah fi Retrieved 2015 11 14 DSP Generation of Pink Noise www firstpr com au Retrieved 2015 11 14 McClain D May 1 2001 Numerical Simulation of Pink Noise PDF Preprint Archived from the original PDF on 2011 10 04 Timmer J Konig M 1995 01 01 On Generating Power Law Noise Astronomy and Astrophysics 300 707 710 Bibcode 1995A amp A 300 707T Ovchinnikov I V 2016 Introduction to supersymmetric theory of stochastics Entropy 18 4 108 arXiv 1511 03393 Bibcode 2016Entrp 18 108O doi 10 3390 e18040108 S2CID 2388285 Ovchinnikov I V Schwartz R N Wang K L 2016 Topological supersymmetry breaking Definition and stochastic generalization of chaos and the limit of applicability of statistics Modern Physics Letters B 30 8 1650086 arXiv 1404 4076 Bibcode 2016MPLB 3050086O doi 10 1142 S021798491650086X S2CID 118174242 Loar Josh 2019 The Sound System Design Primer Routledge pp 274 276 ISBN 9781351768184 Eckstein Matt 30 August 2018 Sound System Commissioning Say What AE Design Retrieved November 22 2022 Cox Tyler What is Pink Noise and What Does It Do Yamaha Insights Yamaha Pro Audio Retrieved November 22 2022 Lacanette Kerry 1990 Create an Accurate Noise Generator Electronic Design Vol 38 Hayden p 108 Thomas Christian April 30 2021 Headphone burn in isn t real Soundguys Retrieved November 22 2022 Though in practice since there are no ideal clocks t displaystyle t nbsp is actually the ticks of a much more accurate clock References editBak P Tang C Wiesenfeld K 1987 Self Organized Criticality An Explanation of 1 ƒ Noise Physical Review Letters 59 4 381 384 Bibcode 1987PhRvL 59 381B doi 10 1103 PhysRevLett 59 381 PMID 10035754 S2CID 7674321 Dutta P Horn P M 1981 Low frequency fluctuations in solids 1 ƒ noise Reviews of Modern Physics 53 3 497 516 Bibcode 1981RvMP 53 497D doi 10 1103 RevModPhys 53 497 Field D J 1987 Relations Between the Statistics of Natural Images and the Response Profiles of Cortical Cells PDF Journal of the Optical Society of America A 4 12 2379 2394 Bibcode 1987JOSAA 4 2379F CiteSeerX 10 1 1 136 1345 doi 10 1364 JOSAA 4 002379 PMID 3430225 Gisiger T 2001 Scale invariance in biology coincidence or footprint of a universal mechanism Biological Reviews 76 2 161 209 CiteSeerX 10 1 1 24 4883 doi 10 1017 S1464793101005607 PMID 11396846 S2CID 14973015 Johnson J B 1925 The Schottky effect in low frequency circuits Physical Review 26 1 71 85 Bibcode 1925PhRv 26 71J doi 10 1103 PhysRev 26 71 Kogan Shulim 1996 Electronic Noise and Fluctuations in Solids Cambridge University Press ISBN 978 0 521 46034 7 Press W H 1978 Flicker noises in astronomy and elsewhere PDF Comments on Astrophysics 7 4 103 119 Bibcode 1978ComAp 7 103P Archived PDF from the original on 2007 09 27 Schottky W 1918 Uber spontane Stromschwankungen in verschiedenen Elektrizitatsleitern Annalen der Physik 362 23 541 567 Bibcode 1918AnP 362 541S doi 10 1002 andp 19183622304 Schottky W 1922 Zur Berechnung und Beurteilung des Schroteffektes Annalen der Physik 373 10 157 176 Bibcode 1922AnP 373 157S doi 10 1002 andp 19223731007 Keshner M S 1982 1 ƒ noise Proceedings of the IEEE 70 3 212 218 doi 10 1109 PROC 1982 12282 S2CID 921772 Chorti A Brookes M 2007 Resolving near carrier spectral infinities due to 1 f phase noise in oscillators 2007 IEEE International Conference on Acoustics Speech and Signal Processing ICASSP 07 Vol 3 pp III 1005 III 1008 doi 10 1109 ICASSP 2007 366852 ISBN 978 1 4244 0727 9 S2CID 14339595 External links editColoured Noise Matlab toolbox to generate power law coloured noise signals of any dimensions Powernoise Matlab software for generating 1 f noise or more generally 1 fa noise 1 f noise at Scholarpedia White Noise Definition Vs Pink Noise 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