Recent advances in high performance computing systems and sensing technologies motivate computational simulations with extremely high resolution models with capabilities to quantify uncertainties for credible numerical predictions. A two-level domain decomposition method is reported in this investigation to devise a linear solver for the large-scale system in the Galerkin spectral stochastic finite element method (SSFEM). In particular, a two-level scalable preconditioner is introduced in order to iteratively solve the large-scale linear system in the intrusive SSFEM using an iterative substructuring based domain decomposition solver. The implementation of the algorithm involves solving a local problem on each subdomain that constructs the ...
A parallel algorithm is developed for the domain decomposition of uncertain dynamical systems define...
In the spectral stochastic finite element method for analyzing an uncertain system, the uncertainty ...
2013-08-02This dissertation focuses on facilitating the analysis of probabilistic models for physica...
For uncertainty quantification in many practical engineering problems, the stochastic finite element...
Stochastic spectral finite element models of practical engineering systems may involve solutions of ...
For efficient numerical solution of stochastic partial differential equations (SPDEs) having random ...
A parallel iterative algorithm is described for efficient solution of the Schur complement (interfac...
This paper presents an overview and comparison of iterative solvers for linear stochastic partial di...
A novel non-overlapping domain decomposition method is proposed to solve the large-scale linear syst...
The stochastic finite element method is an important technique for solving stochastic partial differ...
This work is aimed at reducing the dimensionality in the spectral stochastic finite element method (...
Stochastic Galerkin finite element discretizations of partial differential equations with coefficien...
In the spectral stochastic finite element method for analyzing an uncertain system. the uncertaint...
ABSTRACT The most straightforward technique of solving stochastic partial differential equations (PD...
Deterministic models of fluid flow and the transport of chemicals in flows in heterogeneous porous ...
A parallel algorithm is developed for the domain decomposition of uncertain dynamical systems define...
In the spectral stochastic finite element method for analyzing an uncertain system, the uncertainty ...
2013-08-02This dissertation focuses on facilitating the analysis of probabilistic models for physica...
For uncertainty quantification in many practical engineering problems, the stochastic finite element...
Stochastic spectral finite element models of practical engineering systems may involve solutions of ...
For efficient numerical solution of stochastic partial differential equations (SPDEs) having random ...
A parallel iterative algorithm is described for efficient solution of the Schur complement (interfac...
This paper presents an overview and comparison of iterative solvers for linear stochastic partial di...
A novel non-overlapping domain decomposition method is proposed to solve the large-scale linear syst...
The stochastic finite element method is an important technique for solving stochastic partial differ...
This work is aimed at reducing the dimensionality in the spectral stochastic finite element method (...
Stochastic Galerkin finite element discretizations of partial differential equations with coefficien...
In the spectral stochastic finite element method for analyzing an uncertain system. the uncertaint...
ABSTRACT The most straightforward technique of solving stochastic partial differential equations (PD...
Deterministic models of fluid flow and the transport of chemicals in flows in heterogeneous porous ...
A parallel algorithm is developed for the domain decomposition of uncertain dynamical systems define...
In the spectral stochastic finite element method for analyzing an uncertain system, the uncertainty ...
2013-08-02This dissertation focuses on facilitating the analysis of probabilistic models for physica...