A domain decomposition approach for high-dimensional random partial differential equations exploiting the localization of random parameters is presented. To obtain high efficiency, surrogate models in multielement representations in the parameter space are constructed locally when possible. The method makes use of a stochastic Galerkin finite element tearing interconnecting dual-primal formulation of the underlying problem with localized representations of involved input random fields. Each local parameter space associated to a subdomain is explored by a subdivision into regions where either the parametric surrogate accuracy can be trusted or where instead one has to resort to Monte Carlo. A heuristic adaptive algorithm carries out a proble...
Mathematical models of engineering systems and physical processes typically take the form of a parti...
The computational cost of uncertainty propagation in a mechanics problem can become prohibitively la...
International audienceWe here propose a multiscale numerical method for the solution of stochastic p...
A domain decomposition approach exploiting the localization of random parameters in highdimensional ...
A domain decomposition approach exploiting the localization of random parameters in high-dimensional...
We propose a stochastic multiscale finite element method (StoMsFEM) to solve random elliptic partial...
International audienceRecently, a new strategy was proposed to solve stochastic partial differential...
A numerical method for the fully adaptive sampling and interpolation of PDE with random data is pres...
The focus of the present work is to develop stochastic reduced basis methods (SRBMs) for solving par...
International audienceAn eXtended Stochastic Finite Element Method has been recently proposed for th...
A numerical method for the fully adaptive sampling and interpolation of PDE with random data is pres...
This paper proposes a novel stochastic finite element scheme to solve partial differential equations...
The presented adaptive modelling approach aims to jointly control the level of renement for each of ...
We introduce a new concept of sparsity for the stochastic elliptic operator - div(ɑ(x,ω)∇(•)), which...
We introduce a model reduction method for elliptic PDEs with random input, which follows the heterog...
Mathematical models of engineering systems and physical processes typically take the form of a parti...
The computational cost of uncertainty propagation in a mechanics problem can become prohibitively la...
International audienceWe here propose a multiscale numerical method for the solution of stochastic p...
A domain decomposition approach exploiting the localization of random parameters in highdimensional ...
A domain decomposition approach exploiting the localization of random parameters in high-dimensional...
We propose a stochastic multiscale finite element method (StoMsFEM) to solve random elliptic partial...
International audienceRecently, a new strategy was proposed to solve stochastic partial differential...
A numerical method for the fully adaptive sampling and interpolation of PDE with random data is pres...
The focus of the present work is to develop stochastic reduced basis methods (SRBMs) for solving par...
International audienceAn eXtended Stochastic Finite Element Method has been recently proposed for th...
A numerical method for the fully adaptive sampling and interpolation of PDE with random data is pres...
This paper proposes a novel stochastic finite element scheme to solve partial differential equations...
The presented adaptive modelling approach aims to jointly control the level of renement for each of ...
We introduce a new concept of sparsity for the stochastic elliptic operator - div(ɑ(x,ω)∇(•)), which...
We introduce a model reduction method for elliptic PDEs with random input, which follows the heterog...
Mathematical models of engineering systems and physical processes typically take the form of a parti...
The computational cost of uncertainty propagation in a mechanics problem can become prohibitively la...
International audienceWe here propose a multiscale numerical method for the solution of stochastic p...