The solution of PDE with stochastic data commonly leads to very high-dimensional algebraic problems, e.g. when multiplicative noise is present. The Stochastic Galerkin FEM considered in this paper then suffers from the curse of dimensionality. This is directly related to the number of random variables required for an adequate representation of the random fields included in the PDE. With the presented new approach, we circumvent this major complexity obstacle by combining two highly efficient model reduction strategies, namely a modern low-rank tensor representation in the tensor train format of the problem and a refinement algorithm on the basis of a posteriori error estimates to adaptively adjust the different employed discretizations. The...
In this paper, we introduce and analyze a new low-rank multilevel strategy for the solution of rando...
We analyze an adaptive algorithm for the numerical solution of parametric elliptic partial different...
Abstract We apply the Tensor Train (TT) approximation to construct the Poly-nomial Chaos Expansion (...
The solution of PDE with stochastic data commonly leads to very high-dimensional algebraic problems,...
The solution of PDE with stochastic data commonly leads to very high-dimensional algebraic problems,...
Stochastic Galerkin methods for non-affine coefficient representations are known to cause major diff...
summary:We introduce a new tool for obtaining efficient a posteriori estimates of errors of approxim...
A linear PDE problem for randomly perturbed domains is considered in an adaptive Galerkin framework....
A linear PDE problem for randomly perturbed domains is considered in an adaptive Galerkin framework....
A framework for residual-based a posteriori error estimation and adaptive mesh refinement and polyno...
Numerical methods for random parametric PDEs can greatly benefit from adaptive refinement schemes, i...
Numerical methods for random parametric PDEs can greatly benefit from adaptive refinement schemes, i...
Stochastic Galerkin finite element methods (SGFEMs) are commonly used to approximate solutions to PD...
2013-08-02This dissertation focuses on facilitating the analysis of probabilistic models for physica...
Equilibration error estimators have been shown to commonly lead to very accurate guaranteed error bo...
In this paper, we introduce and analyze a new low-rank multilevel strategy for the solution of rando...
We analyze an adaptive algorithm for the numerical solution of parametric elliptic partial different...
Abstract We apply the Tensor Train (TT) approximation to construct the Poly-nomial Chaos Expansion (...
The solution of PDE with stochastic data commonly leads to very high-dimensional algebraic problems,...
The solution of PDE with stochastic data commonly leads to very high-dimensional algebraic problems,...
Stochastic Galerkin methods for non-affine coefficient representations are known to cause major diff...
summary:We introduce a new tool for obtaining efficient a posteriori estimates of errors of approxim...
A linear PDE problem for randomly perturbed domains is considered in an adaptive Galerkin framework....
A linear PDE problem for randomly perturbed domains is considered in an adaptive Galerkin framework....
A framework for residual-based a posteriori error estimation and adaptive mesh refinement and polyno...
Numerical methods for random parametric PDEs can greatly benefit from adaptive refinement schemes, i...
Numerical methods for random parametric PDEs can greatly benefit from adaptive refinement schemes, i...
Stochastic Galerkin finite element methods (SGFEMs) are commonly used to approximate solutions to PD...
2013-08-02This dissertation focuses on facilitating the analysis of probabilistic models for physica...
Equilibration error estimators have been shown to commonly lead to very accurate guaranteed error bo...
In this paper, we introduce and analyze a new low-rank multilevel strategy for the solution of rando...
We analyze an adaptive algorithm for the numerical solution of parametric elliptic partial different...
Abstract We apply the Tensor Train (TT) approximation to construct the Poly-nomial Chaos Expansion (...