In this contribution, we present a solution to the stochastic Galerkin (SG) matrix equations coming from the Darcy flow problem with uncertain material coefficients in the separable form. The SG system of equations is kept in the compressed tensor form and its solution is a very challenging task. Here, we present the reduced basis (RB) method as a solver which looks for a low-rank representation of the solution. The construction of the RB consists of iterative expanding of the basis using Monte Carlo sampling. We discuss the setting of the sampling procedure and an efficient solution of multiple similar systems emerging during the sampling procedure using deflation. We conclude with a demonstration of the use of SG solution for forward unce...
We consider the approximation of the Reynolds equation with an uncertain film thickness. The resulti...
Conservation laws with uncertain initial and boundary conditions are approximated using a generalize...
This thesis contains methods for uncertainty quantification of flow in porous media through stochast...
summary:We examine different approaches to an efficient solution of the stochastic Galerkin (SG) mat...
summary:In this contribution, we present a solution to the stochastic Galerkin (SG) matrix equations...
This article presents a study of the Stochastic Galerkin Method (SGM) applied to the Darcy flow prob...
We consider the estimation of parameter-dependent statistics of functional outputs of elliptic bound...
We consider the estimation of parameter-dependent statistics of functional outputs of steady-state c...
Reduced basis methods (RBMs) are recommended to reduce the computational cost of solving parameter-d...
2013-08-02This dissertation focuses on facilitating the analysis of probabilistic models for physica...
Mathematical models of engineering systems and physical processes typically take the form of a parti...
We address two computational challenges for numerical simulations of Darcy flow problems: rough and ...
Fluid flow and the transport of chemicals in flows in heterogeneous porous media are modelled mathem...
The focus of the present work is to develop stochastic reduced basis methods (SRBMs) for solving par...
This research is concerned with the development of subspace projection schemes for efficiently solvi...
We consider the approximation of the Reynolds equation with an uncertain film thickness. The resulti...
Conservation laws with uncertain initial and boundary conditions are approximated using a generalize...
This thesis contains methods for uncertainty quantification of flow in porous media through stochast...
summary:We examine different approaches to an efficient solution of the stochastic Galerkin (SG) mat...
summary:In this contribution, we present a solution to the stochastic Galerkin (SG) matrix equations...
This article presents a study of the Stochastic Galerkin Method (SGM) applied to the Darcy flow prob...
We consider the estimation of parameter-dependent statistics of functional outputs of elliptic bound...
We consider the estimation of parameter-dependent statistics of functional outputs of steady-state c...
Reduced basis methods (RBMs) are recommended to reduce the computational cost of solving parameter-d...
2013-08-02This dissertation focuses on facilitating the analysis of probabilistic models for physica...
Mathematical models of engineering systems and physical processes typically take the form of a parti...
We address two computational challenges for numerical simulations of Darcy flow problems: rough and ...
Fluid flow and the transport of chemicals in flows in heterogeneous porous media are modelled mathem...
The focus of the present work is to develop stochastic reduced basis methods (SRBMs) for solving par...
This research is concerned with the development of subspace projection schemes for efficiently solvi...
We consider the approximation of the Reynolds equation with an uncertain film thickness. The resulti...
Conservation laws with uncertain initial and boundary conditions are approximated using a generalize...
This thesis contains methods for uncertainty quantification of flow in porous media through stochast...