Generalized Polynomial Chaos
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Polynomial chaos (PC), also called polynomial chaos expansion (PCE) and Wiener chaos expansion, is a method for representing a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a Mathematics, mathematical formalization of a quantity or object which depends on randomness, random events. The term 'random variable' in its mathema ...
in terms of a
polynomial function In mathematics, a polynomial is a mathematical expression consisting of indeterminates (also called variables) and coefficients, that involves only the operations of addition, subtraction, multiplication and exponentiation to nonnegative int ...
of other random variables. The polynomials are chosen to be
orthogonal In mathematics, orthogonality (mathematics), orthogonality is the generalization of the geometric notion of ''perpendicularity''. Although many authors use the two terms ''perpendicular'' and ''orthogonal'' interchangeably, the term ''perpendic ...
with respect to the joint
probability distribution In probability theory and statistics, a probability distribution is a Function (mathematics), function that gives the probabilities of occurrence of possible events for an Experiment (probability theory), experiment. It is a mathematical descri ...
of these random variables. Note that despite its name, PCE has no immediate connections to
chaos theory Chaos theory is an interdisciplinary area of Scientific method, scientific study and branch of mathematics. It focuses on underlying patterns and Deterministic system, deterministic Scientific law, laws of dynamical systems that are highly sens ...
. The word "chaos" here should be understood as "random". PCE was first introduced in 1938 by
Norbert Wiener Norbert Wiener (November 26, 1894 – March 18, 1964) was an American computer scientist, mathematician, and philosopher. He became a professor of mathematics at the Massachusetts Institute of Technology ( MIT). A child prodigy, Wiener late ...
using
Hermite polynomials In mathematics, the Hermite polynomials are a classical orthogonal polynomial sequence. The polynomials arise in: * signal processing as Hermitian wavelets for wavelet transform analysis * probability, such as the Edgeworth series, as well a ...
to model
stochastic process In probability theory and related fields, a stochastic () or random process is a mathematical object usually defined as a family of random variables in a probability space, where the index of the family often has the interpretation of time. Sto ...
es with
Gaussian Carl Friedrich Gauss (1777–1855) is the eponym of all of the topics listed below. There are over 100 topics all named after this German mathematician and scientist, all in the fields of mathematics, physics, and astronomy. The English eponymo ...
random variables. It was introduced to the physics and engineering community by R. Ghanem and P. D. Spanos in 1991 and generalized to other orthogonal polynomial families by D. Xiu and G. E. Karniadakis in 2002. Mathematically rigorous proofs of existence and convergence of generalized PCE were given by O. G. Ernst and coworkers in 2011. PCE has found widespread use in engineering and the applied sciences because it makes possible to deal with probabilistic uncertainty in the parameters of a system. In particular, PCE has been used as a surrogate model to facilitate uncertainty quantification analyses. PCE has also been widely used in
stochastic Stochastic (; ) is the property of being well-described by a random probability distribution. ''Stochasticity'' and ''randomness'' are technically distinct concepts: the former refers to a modeling approach, while the latter describes phenomena; i ...
finite element analysis Finite element method (FEM) is a popular method for numerically solving differential equations arising in engineering and mathematical models, mathematical modeling. Typical problem areas of interest include the traditional fields of structural ...
and to determine the evolution of
uncertainty Uncertainty or incertitude refers to situations involving imperfect or unknown information. It applies to predictions of future events, to physical measurements that are already made, or to the unknown, and is particularly relevant for decision ...
in a
dynamical system In mathematics, a dynamical system is a system in which a Function (mathematics), function describes the time dependence of a Point (geometry), point in an ambient space, such as in a parametric curve. Examples include the mathematical models ...
when there is probabilistic uncertainty in the system parameters.


Main principles

Polynomial chaos expansion (PCE) provides a way to represent a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a Mathematics, mathematical formalization of a quantity or object which depends on randomness, random events. The term 'random variable' in its mathema ...
Y with finite variance (i.e., \operatorname(Y)<\infty) as a function of an M-dimensional
random vector In probability, and statistics, a multivariate random variable or random vector is a list or vector of mathematical variables each of whose value is unknown, either because the value has not yet occurred or because there is imperfect knowledge ...
\mathbf, using a polynomial basis that is orthogonal with respect to the distribution of this random vector. The prototypical PCE can be written as: : Y = \sum_c_\Psi_(\mathbf). In this expression, c_ is a coefficient and \Psi_ denotes a polynomial basis function. Depending on the distribution of \mathbf, different PCE types are distinguished.


Hermite polynomial chaos

The original PCE formulation used by
Norbert Wiener Norbert Wiener (November 26, 1894 – March 18, 1964) was an American computer scientist, mathematician, and philosopher. He became a professor of mathematics at the Massachusetts Institute of Technology ( MIT). A child prodigy, Wiener late ...
was limited to the case where \mathbf is a random vector with a Gaussian distribution. Considering only the one-dimensional case (i.e., M=1 and \mathbf=X), the polynomial basis function orthogonal w.r.t. the Gaussian distribution are the set of i-th degree
Hermite polynomials In mathematics, the Hermite polynomials are a classical orthogonal polynomial sequence. The polynomials arise in: * signal processing as Hermitian wavelets for wavelet transform analysis * probability, such as the Edgeworth series, as well a ...
H_i. The PCE of Y can then be written as: : Y = \sum_c_H_(X).


Generalized polynomial chaos

Xiu generalized the result of Cameron–Martin to various continuous and discrete distributions using
orthogonal polynomials In mathematics, an orthogonal polynomial sequence is a family of polynomials such that any two different polynomials in the sequence are orthogonal In mathematics, orthogonality (mathematics), orthogonality is the generalization of the geom ...
from the so-called Askey-scheme and demonstrated L_2 convergence in the corresponding Hilbert functional space. This is popularly known as the generalized polynomial chaos (gPC) framework. The gPC framework has been applied to applications including stochastic
fluid dynamics In physics, physical chemistry and engineering, fluid dynamics is a subdiscipline of fluid mechanics that describes the flow of fluids – liquids and gases. It has several subdisciplines, including (the study of air and other gases in motion ...
, stochastic finite elements, solid
mechanics Mechanics () is the area of physics concerned with the relationships between force, matter, and motion among Physical object, physical objects. Forces applied to objects may result in Displacement (vector), displacements, which are changes of ...
, nonlinear estimation, the evaluation of finite word-length effects in non-linear fixed-point digital systems and
probabilistic Probability is a branch of mathematics and statistics concerning events and numerical descriptions of how likely they are to occur. The probability of an event is a number between 0 and 1; the larger the probability, the more likely an e ...
robust control. It has been demonstrated that gPC based methods are computationally superior to
Monte-Carlo Monte Carlo ( ; ; or colloquially ; , ; ) is an official administrative area of Monaco, specifically the ward of Monte Carlo/Spélugues, where the Monte Carlo Casino is located. Informally, the name also refers to a larger district, the Mon ...
based methods in a number of applications. However, the method has a notable limitation. For large numbers of random variables, polynomial chaos becomes very computationally expensive and Monte-Carlo methods are typically more feasible.


Arbitrary polynomial chaos

Recently chaos expansion received a generalization towards the arbitrary polynomial chaos expansion (aPC), which is a so-called data-driven generalization of the PC. Like all polynomial chaos expansion techniques, aPC approximates the dependence of simulation model output on model parameters by expansion in an orthogonal polynomial basis. The aPC generalizes chaos expansion techniques towards arbitrary distributions with arbitrary probability measures, which can be either discrete, continuous, or discretized continuous and can be specified either analytically (as probability density/cumulative distribution functions), numerically as histogram or as raw data sets. The aPC at finite expansion order only demands the existence of a finite number of moments and does not require the complete knowledge or even existence of a probability density function. This avoids the necessity to assign parametric probability distributions that are not sufficiently supported by limited available data. Alternatively, it allows modellers to choose freely of technical constraints the shapes of their statistical assumptions. Investigations indicate that the aPC shows an exponential convergence rate and converges faster than classical polynomial chaos expansion techniques. Yet these techniques are in progress but the impact of them on computational fluid dynamics (CFD) models is quite impressionable.


Polynomial chaos and incomplete statistical information

In many practical situations, only incomplete and inaccurate statistical knowledge on uncertain input parameters are available. Fortunately, to construct a finite-order expansion, only some partial information on the probability measure is required that can be simply represented by a finite number of statistical moments. Any order of expansion is only justified if accompanied by reliable statistical information on input data. Thus, incomplete statistical information limits the utility of high-order polynomial chaos expansions.


Polynomial chaos and non-linear prediction

Polynomial chaos can be utilized in the prediction of non-linear functionals of
Gaussian Carl Friedrich Gauss (1777–1855) is the eponym of all of the topics listed below. There are over 100 topics all named after this German mathematician and scientist, all in the fields of mathematics, physics, and astronomy. The English eponymo ...
stationary increment processes conditioned on their past realizations. Specifically, such prediction is obtained by deriving the chaos expansion of the functional with respect to a special basis for the Gaussian
Hilbert space In mathematics, a Hilbert space is a real number, real or complex number, complex inner product space that is also a complete metric space with respect to the metric induced by the inner product. It generalizes the notion of Euclidean space. The ...
generated by the process that with the property that each basis element is either measurable or independent with respect to the given samples. For example, this approach leads to an easy prediction formula for the
Fractional Brownian motion In probability theory, fractional Brownian motion (fBm), also called a fractal Brownian motion, is a generalization of Brownian motion. Unlike classical Brownian motion, the increments of fBm need not be independent. fBm is a continuous-time Gaus ...
.


Bayesian polynomial chaos

In a non-intrusive setting, the estimation of the expansion coefficients c_ for a given set of basis functions \Psi_ can be considered as a Bayesian regression problem by constructing a surrogate model. This approach has benefits in that analytical expressions for the data evidence (in the sense of
Bayesian inference Bayesian inference ( or ) is a method of statistical inference in which Bayes' theorem is used to calculate a probability of a hypothesis, given prior evidence, and update it as more information becomes available. Fundamentally, Bayesian infer ...
) as well as the uncertainty of the expansion coefficients are available. The evidence then can be used as a measure for the selection of expansion terms and pruning of the series (see also Bayesian model comparison). The uncertainty of the expansion coefficients can be used to assess the quality and trustworthiness of the PCE, and furthermore the impact of this assessment on the actual quantity of interest Y. Let D= \ be a set of j = 1,...,N_s pairs of input-output data that is used to estimate the expansion coefficients c_. Let M be the data matrix with elements = \Psi_i(\mathbf^), let \vec Y = (Y^,..., Y^,...,Y^)^T be the set of N_s output data written in vector form, and let be \vec c = (c_1,...,c_i,...,c_)^T the set of expansion coefficients in vector form. Under the assumption that the uncertainty of the PCE is of Gaussian type with unknown variance and a scale-invariant
prior The term prior may refer to: * Prior (ecclesiastical), the head of a priory (monastery) * Prior convictions, the life history and previous convictions of a suspect or defendant in a criminal case * Prior probability, in Bayesian statistics * Prio ...
, the
expectation value In probability theory, the expected value (also called expectation, expectancy, expectation operator, mathematical expectation, mean, expectation value, or first moment) is a generalization of the weighted average. Informally, the expected va ...
\langle \cdot \rangle for the expansion coefficients is \langle \vec c \rangle = (M^T \;M)^\; M^T\; \vec Y With H = (M^T M)^, then the covariance of the coefficients is \text(c_m, c_n) = \frac H_ where \chi_^2= \vec Y^T( \mathrm-M\; H^M^T) \;\vec Y is the minimal misfit and \mathrm is the identity matrix. The uncertainty of the estimate for the coefficient n is then given by \text(c_m) = \text(c_m, c_m) .Thus the uncertainty of the estimate for expansion coefficients can be obtained with simple vector-matrix multiplications. For a given input propability density function p(\mathbf) , it was shown the second moment for the quantity of interest then simply is \langle Y^2 \rangle = \underbrace _ + \underbrace _ This equation amounts the matrix-vector multiplications above plus the
marginalization Social exclusion or social marginalisation is the social disadvantage and relegation to the fringe of society. It is a term that has been used widely in Europe and was first used in France in the late 20th century. In the EU context, the Euro ...
with respect to \mathbf. The first term I_1 determines the primary uncertainty of the quantity of interest Y , as obtained based on the PCE used as a surrogate. The second term I_2 constitutes an additional inferential uncertainty (often of mixed aleatoric-epistemic type) in the quantity of interest Y that is due to a finite uncertainty of the PCE. If enough data is available, in terms of quality and quantity, it can be shown that \text(c_m) becomes negligibly small and becomes small This can be judged by simply building the ratios of the two terms, e.g. \frac.This ratio quantifies the amount of the PCE's own uncertainty in the total uncertainty and is in the interval ,1/math>. E.g., if \frac \approx 0.5, then half of the uncertainty stems from the PCE itself, and actions to improve the PCE can be taken or gather more data. If\frac \approx 1, then the PCE's uncertainty is low and the PCE may be deemed trustworthy. In a Bayesian surrogate model selection, the probability for a particular surrogate model, i.e. a particular set S of expansion coefficients c_ and basis functions \Psi_ , is given by the evidence of the data Z_S, Z_S = \Omega_ \mid H \mid^ (\chi^2_)^ \frac where \Gamma is the
Gamma-function In mathematics Mathematics is a field of study that discovers and organizes methods, Mathematical theory, theories and theorems that are developed and Mathematical proof, proved for the needs of empirical sciences and mathematics its ...
, \mid H \mid is the determinant of H, N_s is the number of data, and \Omega_ is the solid angle in N_p dimensions, where N_p is the number of terms in the PCE. Analogous findings can be transferred to the computation of PCE-based sensitivity indices. Similar results can be obtained for
Kriging In statistics, originally in geostatistics, kriging or Kriging (), also known as Gaussian process regression, is a method of interpolation based on Gaussian process governed by prior covariances. Under suitable assumptions of the prior, kriging g ...
.


See also

* Surrogate model * Variance-based sensitivity analysis * Karhunen–Loève theorem *
Hilbert space In mathematics, a Hilbert space is a real number, real or complex number, complex inner product space that is also a complete metric space with respect to the metric induced by the inner product. It generalizes the notion of Euclidean space. The ...
*
Proper orthogonal decomposition The proper orthogonal decomposition is a Numerical analysis, numerical method that enables a reduction in the complexity of computer intensive simulations such as computational fluid dynamics and structural analysis (like crash simulations). Typic ...
* Bayesian regression * Bayesian model comparison


References

{{DEFAULTSORT:Polynomial Chaos Stochastic processes