In this manuscript we discuss weighted reduced order methods for stochastic partial differential equations. Random inputs (such as forcing terms, equation coefficients, boundary conditions) are considered as parameters of the equations. We take advantage of the resulting parametrized formulation to propose an efficient reduced order model; we also profit by the underlying stochastic assumption in the definition of suitable weights to drive to reduction process. Two viable strategies are discussed, namely the weighted reduced basis method and the weighted proper orthogonal decomposition method. A numerical example on a parametrized elasticity problem is shown
This paper presents mutli-element Stochastic Reduced Basis Methods (ME-SRBMs) for solving linear sto...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientic...
The numerical solution of partial differential equations (PDEs) depending on para- metrized or rando...
In this work we propose and analyze a weighted reduced basis method to solve elliptic partial differ...
This work focuses on model order reduction for parabolic partial differential equations with paramet...
In this work we propose and analyze a weighted proper orthogonal decomposition method to solve ellip...
International audienceWe report here on the recent application of a now classical general reduction ...
In this work, we propose viable and efficient strategies for stabilized parametrized advection domin...
In this work we propose and analyze a weighted reduced basis method to solve elliptic partial differ...
This work considers a weighted POD-greedy method to estimate statistical outputs parabolic PDE probl...
This thesis is concerned with the development of reduced basis methods for parametrized partial diff...
The main theme of this volume is the efficient solution of families of stochastic or parametric part...
In this paper we develop and analyze an efficient computational method for solving stochastic optima...
The focus of the present work is to develop stochastic reduced basis methods (SRBMs) for solving par...
International audienceA priori model reduction methods based on separated representations are introd...
This paper presents mutli-element Stochastic Reduced Basis Methods (ME-SRBMs) for solving linear sto...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientic...
The numerical solution of partial differential equations (PDEs) depending on para- metrized or rando...
In this work we propose and analyze a weighted reduced basis method to solve elliptic partial differ...
This work focuses on model order reduction for parabolic partial differential equations with paramet...
In this work we propose and analyze a weighted proper orthogonal decomposition method to solve ellip...
International audienceWe report here on the recent application of a now classical general reduction ...
In this work, we propose viable and efficient strategies for stabilized parametrized advection domin...
In this work we propose and analyze a weighted reduced basis method to solve elliptic partial differ...
This work considers a weighted POD-greedy method to estimate statistical outputs parabolic PDE probl...
This thesis is concerned with the development of reduced basis methods for parametrized partial diff...
The main theme of this volume is the efficient solution of families of stochastic or parametric part...
In this paper we develop and analyze an efficient computational method for solving stochastic optima...
The focus of the present work is to develop stochastic reduced basis methods (SRBMs) for solving par...
International audienceA priori model reduction methods based on separated representations are introd...
This paper presents mutli-element Stochastic Reduced Basis Methods (ME-SRBMs) for solving linear sto...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientic...
The numerical solution of partial differential equations (PDEs) depending on para- metrized or rando...