The first graduate-level textbook to focus on fundamental aspects of numerical methods for stochastic computations, this book describes the class of numerical methods based on generalized polynomial chaos (gPC). These fast, efficient, and accurate methods are an extension of the classical spectral methods of high-dimensional random spaces. Designed to simulate complex systems subject to random inputs, these methods are widely used in many areas of computer science and engineering. The book introduces polynomial approximation theory and probability theory; describes the basic theory of gPC methThe@ first graduate-level textbook to focus on fundamental aspects of numerical methods for stochastic computations, this book describes the class of ...
A numerical algorithm combining the Gauss Pseudospectral Method (GPM) with a Generalized Polynomial ...
The elementary operations of addition, subtraction, multiplication, and division involving trun-cate...
This thesis has investigated the field of Uncertainty Quantification with regard to differential equ...
Uncertainty quantification techniques based on the spectral approach have been studied extensively i...
Polynomial chaos-based methods have been extensively applied in electrical and other engineering pro...
International audienceWe present an extension of the Generalized Spectral Decomposition method for t...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...
A hybrid numerical algorithm combining the Gauss Pseudospectral Method (GPM) with a Generalized Poly...
International audienceUncertainty quantification appears today as a crucial point in numerous branch...
One widely used and computationally efficient method for uncertainty quantification using spectral s...
The stochastic computation of electromagnetic (EM) problems is a relatively new topic, yet very impo...
An enrichment scheme based upon the Neumann expansion method is proposed to augment the deterministi...
We present a generalized polynomial chaos algorithm to model the input uncertainty and its propagati...
We formulate a Multi-Element generalized Polynomial Chaos (ME-gPC) method to deal with long-term int...
summary:We introduce a new tool for obtaining efficient a posteriori estimates of errors of approxim...
A numerical algorithm combining the Gauss Pseudospectral Method (GPM) with a Generalized Polynomial ...
The elementary operations of addition, subtraction, multiplication, and division involving trun-cate...
This thesis has investigated the field of Uncertainty Quantification with regard to differential equ...
Uncertainty quantification techniques based on the spectral approach have been studied extensively i...
Polynomial chaos-based methods have been extensively applied in electrical and other engineering pro...
International audienceWe present an extension of the Generalized Spectral Decomposition method for t...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...
A hybrid numerical algorithm combining the Gauss Pseudospectral Method (GPM) with a Generalized Poly...
International audienceUncertainty quantification appears today as a crucial point in numerous branch...
One widely used and computationally efficient method for uncertainty quantification using spectral s...
The stochastic computation of electromagnetic (EM) problems is a relatively new topic, yet very impo...
An enrichment scheme based upon the Neumann expansion method is proposed to augment the deterministi...
We present a generalized polynomial chaos algorithm to model the input uncertainty and its propagati...
We formulate a Multi-Element generalized Polynomial Chaos (ME-gPC) method to deal with long-term int...
summary:We introduce a new tool for obtaining efficient a posteriori estimates of errors of approxim...
A numerical algorithm combining the Gauss Pseudospectral Method (GPM) with a Generalized Polynomial ...
The elementary operations of addition, subtraction, multiplication, and division involving trun-cate...
This thesis has investigated the field of Uncertainty Quantification with regard to differential equ...