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Journal ArticleDOI

An Anisotropic Sparse Grid Stochastic Collocation Method for Partial Differential Equations with Random Input Data

TLDR
This work proposes and analyzes an anisotropic sparse grid stochastic collocation method for solving partial differential equations with random coefficients and forcing terms (input data of the model) and provides a rigorous convergence analysis of the fully discrete problem.
Abstract
This work proposes and analyzes an anisotropic sparse grid stochastic collocation method for solving partial differential equations with random coefficients and forcing terms (input data of the model). The method consists of a Galerkin approximation in the space variables and a collocation, in probability space, on sparse tensor product grids utilizing either Clenshaw-Curtis or Gaussian knots. Even in the presence of nonlinearities, the collocation approach leads to the solution of uncoupled deterministic problems, just as in the Monte Carlo method. This work includes a priori and a posteriori procedures to adapt the anisotropy of the sparse grids to each given problem. These procedures seem to be very effective for the problems under study. The proposed method combines the advantages of isotropic sparse collocation with those of anisotropic full tensor product collocation: the first approach is effective for problems depending on random variables which weigh approximately equally in the solution, while the benefits of the latter approach become apparent when solving highly anisotropic problems depending on a relatively small number of random variables, as in the case where input random variables are Karhunen-Loeve truncations of “smooth” random fields. This work also provides a rigorous convergence analysis of the fully discrete problem and demonstrates (sub)exponential convergence in the asymptotic regime and algebraic convergence in the preasymptotic regime, with respect to the total number of collocation points. It also shows that the anisotropic approximation breaks the curse of dimensionality for a wide set of problems. Numerical examples illustrate the theoretical results and are used to compare this approach with several others, including the standard Monte Carlo. In particular, for moderately large-dimensional problems, the sparse grid approach with a properly chosen anisotropy seems to be very efficient and superior to all examined methods.

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Journal ArticleDOI

A Weighted Reduced Basis Method for Elliptic Partial Differential Equations with Random Input Data

TL;DR: This work proposes and analyzes a weighted reduced basis method to solve elliptic partial differential equations (PDEs) with random input data and provides numerical examples for the assessment of the advantages of the proposed method over the reduction basis method and the stochastic collocation method in both univariate and multivariate Stochastic problems.
Journal ArticleDOI

A trust-region algorithm with adaptive stochastic collocation for pde optimization under uncertainty ∗

TL;DR: In this paper, a trust-region framework is proposed for solving stochastic discretization of partial differential equations (PDEs) with random coefficients, which is based on adaptive sparse-grid collocation.
Book ChapterDOI

Compressed Sensing Approaches for Polynomial Approximation of High-Dimensional Functions

TL;DR: It is shown that smooth, multivariate functions possess expansions in orthogonal polynomial bases that are not only approximately sparse but possess a particular type of structured sparsity defined by so-called lower sets, and the curse of dimensionality – the bane of high-dimensional approximation – is mitigated to a significant extent.

A Trust-Region Algorithm with Adaptive Stochastic Collocation for PDE Optimization under Uncertainty.

TL;DR: An efficient algorithm for solving optimization problems governed by partial differential equations with random coefficients based on a combination of adaptive sparse-grid collocation for the discretization of the PDE in the stochastic space and a trust-region framework is introduced.
Journal ArticleDOI

Approximating Infinity-Dimensional Stochastic Darcy's Equations without Uniform Ellipticity

TL;DR: A stochastic Darcy's pressure equation whose coefficient is generated by a white noise process on a Hilbert space employing the ordinary (rather than the Wick) product using Wiener-Chaos finite element methods is considered.
References
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Book

The Finite Element Method for Elliptic Problems

TL;DR: The finite element method has been applied to a variety of nonlinear problems, e.g., Elliptic boundary value problems as discussed by the authors, plate problems, and second-order problems.
Book

Finite Element Method for Elliptic Problems

TL;DR: In this article, Ciarlet presents a self-contained book on finite element methods for analysis and functional analysis, particularly Hilbert spaces, Sobolev spaces, and differential calculus in normed vector spaces.
Book

The Mathematical Theory of Finite Element Methods

TL;DR: In this article, the construction of a finite element of space in Sobolev spaces has been studied in the context of operator-interpolation theory in n-dimensional variational problems.
Book

Probability theory

Michel Loève
TL;DR: These notes cover the basic definitions of discrete probability theory, and then present some results including Bayes' rule, inclusion-exclusion formula, Chebyshev's inequality, and the weak law of large numbers.
Book

Probability Theory I

Michel Loève
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