International audienceAbstract We propose the use of reduced order modeling (ROM) to reduce the computational cost and improve the convergence rate of nonlinear solvers of full order models (FOM) for solving partial differential equations. In this study, a novel ROM-assisted approach is developed to improve the computational efficiency of FOM nonlinear solvers by using ROM’s prediction as an initial guess. We hypothesize that the nonlinear solver will take fewer steps to the converged solutions with an initial guess that is closer to the real solutions. To evaluate our approach, four physical problems with varying degrees of nonlinearity in flow and mechanics have been tested: Richards’ equation of water flow in heterogeneous porous media, ...
For over a century, reduced order models (ROMs) have been a fundamental discipline of theoretical fl...
L'objectif de cette thèse est de réduire significativement le coût de calcul associé aux simulations...
In this paper, we develop data-driven closure/correction terms to increase the pressure and velocity...
International audienceAbstract We propose the use of reduced order modeling (ROM) to reduce the comp...
This report describes work performed from October 2007 through September 2009 under the Sandia Labor...
Despite great improvements in computing hardware and developments of new methodologies for solving p...
A novel parameterized non-intrusive reduced order model (P-NIROM) based on proper orthogonal decompo...
A greedy nonintrusive reduced order method (ROM) is proposed for parameterized time-dependent proble...
International audienceIn this contribution we explore some numerical alternatives to derive efficien...
A novel parameterized non-intrusive reduced order model (P -NIROM) based on proper orthogonal decomp...
International audienceAbstract We propose a unified data-driven reduced order model (ROM) that bridg...
A new method is presented to generate reduced order models (ROMs) in Fluid Dynamics problems. The me...
International audienceWe review a few applications of reduced-order modeling in aeronautics and medi...
Reduced order models are computationally inexpensive approximations that capture the important dynam...
Physics-based numerical simulation remains challenging as the complexity of today’s high-fidelity mo...
For over a century, reduced order models (ROMs) have been a fundamental discipline of theoretical fl...
L'objectif de cette thèse est de réduire significativement le coût de calcul associé aux simulations...
In this paper, we develop data-driven closure/correction terms to increase the pressure and velocity...
International audienceAbstract We propose the use of reduced order modeling (ROM) to reduce the comp...
This report describes work performed from October 2007 through September 2009 under the Sandia Labor...
Despite great improvements in computing hardware and developments of new methodologies for solving p...
A novel parameterized non-intrusive reduced order model (P-NIROM) based on proper orthogonal decompo...
A greedy nonintrusive reduced order method (ROM) is proposed for parameterized time-dependent proble...
International audienceIn this contribution we explore some numerical alternatives to derive efficien...
A novel parameterized non-intrusive reduced order model (P -NIROM) based on proper orthogonal decomp...
International audienceAbstract We propose a unified data-driven reduced order model (ROM) that bridg...
A new method is presented to generate reduced order models (ROMs) in Fluid Dynamics problems. The me...
International audienceWe review a few applications of reduced-order modeling in aeronautics and medi...
Reduced order models are computationally inexpensive approximations that capture the important dynam...
Physics-based numerical simulation remains challenging as the complexity of today’s high-fidelity mo...
For over a century, reduced order models (ROMs) have been a fundamental discipline of theoretical fl...
L'objectif de cette thèse est de réduire significativement le coût de calcul associé aux simulations...
In this paper, we develop data-driven closure/correction terms to increase the pressure and velocity...