Abstract. Recently, the use of Polynomial Chaos Expansion (PCE) has been in-creasing to study the uncertainty in mathematical models for a wide range of appli-cations and several extensions of the original PCE technique have been developed to deal with some of its limitations. But as of to date PCE methods still have the restriction that the random variables have to be statistically independent. This paper presents a method to construct a basis of the probability space of orthogonal poly-nomials for general multivariate distributions with correlations between the random input variables. We show that, as for the current PCE methods, the statistics like mean, variance and Sobol ’ indices can be obtained at no significant extra postprocess-ing...
This paper presents an algorithm for efficient uncertainty quantification (UQ) in the presence of ma...
The polynomial chaos expansion (PCE) is an efficient numerical method for performing a reliability a...
Uncertainty quantification (UQ) is an emerging research area that aims to develop methods for accura...
Recently, the use of Polynomial Chaos Expansion (PCE) has been increasing to study the uncertainty i...
International audienceA methodology and algorithms are proposed for constructing the polynomial chao...
Abstract. In this paper we review some applications of generalized polynomial chaos expansion for un...
International audienceMultidisciplinary analysis (MDA) is nowadays a powerful tool for analysis and ...
The generalized Polynomial Chaos Expansion Method (gPCEM), which is a random uncertainty analysis me...
International audienceThis paper deals with computational aspects related to the construction of rea...
Uncertainty is a common feature in first-principles models that are widely used in various engineeri...
Polynomial chaos expansions (PCE) are an attractive technique for uncertainty quan-tification (UQ) d...
A number of approaches for discretizing partial differential equations with random data ar...
Polynomial chaos expansion (PCE) is a Hilbert space technique for random variables that alleviates u...
We propose a thorough comparison of polynomial chaos expansion (PCE) for indicator functions of the ...
This paper deals with the analysis of the dynamic behavior of nonlinear systems subject to probabili...
This paper presents an algorithm for efficient uncertainty quantification (UQ) in the presence of ma...
The polynomial chaos expansion (PCE) is an efficient numerical method for performing a reliability a...
Uncertainty quantification (UQ) is an emerging research area that aims to develop methods for accura...
Recently, the use of Polynomial Chaos Expansion (PCE) has been increasing to study the uncertainty i...
International audienceA methodology and algorithms are proposed for constructing the polynomial chao...
Abstract. In this paper we review some applications of generalized polynomial chaos expansion for un...
International audienceMultidisciplinary analysis (MDA) is nowadays a powerful tool for analysis and ...
The generalized Polynomial Chaos Expansion Method (gPCEM), which is a random uncertainty analysis me...
International audienceThis paper deals with computational aspects related to the construction of rea...
Uncertainty is a common feature in first-principles models that are widely used in various engineeri...
Polynomial chaos expansions (PCE) are an attractive technique for uncertainty quan-tification (UQ) d...
A number of approaches for discretizing partial differential equations with random data ar...
Polynomial chaos expansion (PCE) is a Hilbert space technique for random variables that alleviates u...
We propose a thorough comparison of polynomial chaos expansion (PCE) for indicator functions of the ...
This paper deals with the analysis of the dynamic behavior of nonlinear systems subject to probabili...
This paper presents an algorithm for efficient uncertainty quantification (UQ) in the presence of ma...
The polynomial chaos expansion (PCE) is an efficient numerical method for performing a reliability a...
Uncertainty quantification (UQ) is an emerging research area that aims to develop methods for accura...