We explore and develop POD-based deflation methods to accelerate the solution of large-scale linear systems resulting from two-phase flow simulation. The techniques here presented collect information from the system in a POD basis, which is later used in a deflation scheme. The snapshots required to obtain the POD basis are captured in two ways: a moving window approach, where the most recently computed solutions are used, and a training phase approach, where a full pre-simulation is run. We test this methodology in highly heterogeneous porous media: a full SPE 10 model containing O(10^6) cells, and in an academic layered problem presenting a contrast in permeability layers up to 10^6. Among the experiments, we study cases including gravity...
International audienceWe focus here on the difficult problem of linear solving, when considering imp...
In this work, preconditioners for the iterative solution by Krylov methods of the linear systems ari...
Reduced order models is a fashionable field that aims at dramatically reducing the computational cos...
We explore and develop POD-based deflation methods to accelerate the solution of large-scale linear ...
We explore and develop a Proper Orthogonal Decomposition (POD)-based deflation method for the soluti...
We study fast and robust iterative solvers for large systems of linear equations resulting from simu...
Simulation of flow through highly heterogeneous porous media results in large ill-conditioned system...
We study fast and robust iterative solvers for large systems of linear equations resulting from simu...
Simulation of flow through highly heterogeneous porous media results in large ill-conditioned system...
We consider deflation-based pre-conditioning of the pressure equation for large-scale reservoir mode...
We consider deflation-based pre-conditioning of the pressure equation for large-scale reservoir mode...
Reduced-order modeling approaches for gas flow in dual-porosity dual-permeability porous media are s...
Fast prediction modeling via proper orthogonal decomposition method combined with Galerkin projectio...
High-precision and high-speed reservoir simulation is important in engineering. Proper orthogonal de...
We investigate the simulation of one-phase and two-phase flow through heterogeneous porous media.The...
International audienceWe focus here on the difficult problem of linear solving, when considering imp...
In this work, preconditioners for the iterative solution by Krylov methods of the linear systems ari...
Reduced order models is a fashionable field that aims at dramatically reducing the computational cos...
We explore and develop POD-based deflation methods to accelerate the solution of large-scale linear ...
We explore and develop a Proper Orthogonal Decomposition (POD)-based deflation method for the soluti...
We study fast and robust iterative solvers for large systems of linear equations resulting from simu...
Simulation of flow through highly heterogeneous porous media results in large ill-conditioned system...
We study fast and robust iterative solvers for large systems of linear equations resulting from simu...
Simulation of flow through highly heterogeneous porous media results in large ill-conditioned system...
We consider deflation-based pre-conditioning of the pressure equation for large-scale reservoir mode...
We consider deflation-based pre-conditioning of the pressure equation for large-scale reservoir mode...
Reduced-order modeling approaches for gas flow in dual-porosity dual-permeability porous media are s...
Fast prediction modeling via proper orthogonal decomposition method combined with Galerkin projectio...
High-precision and high-speed reservoir simulation is important in engineering. Proper orthogonal de...
We investigate the simulation of one-phase and two-phase flow through heterogeneous porous media.The...
International audienceWe focus here on the difficult problem of linear solving, when considering imp...
In this work, preconditioners for the iterative solution by Krylov methods of the linear systems ari...
Reduced order models is a fashionable field that aims at dramatically reducing the computational cos...