In this work, we present a model order reduction (MOR) technique for hyperbolic conservation laws with applications in uncertainty quantification (UQ). The problem consists of a parametrized time dependent hyperbolic system of equations, where the parameters affect the initial conditions and the fluxes in a non- linear way. The procedure utilized to reduce the order is a combination of a Greedy algorithm in the parameter space, a proper orthogonal decomposition (POD) in time and empirical interpolation method (EIM) to deal with non-linearities (Drohmann, 2012). We provide under some hypothesis an error bound for the reduced solution with respect to the high order one. The algorithm shows small errors and savings of the computational time up...
The Reduced Basis Method (RBM) is a model order reduction technique for solving parametric partial d...
In this paper we develop reduced-order models (ROMs) for dynamic, parameter-dependent, linear and n...
This chapter reviews techniques of model reduction of fluid dynamics systems. Fluid systems are know...
In this work, we present a model order reduction (MOR) technique for hyperbolic conservation laws wi...
This paper proposes a data-based approach for model order reduction that preserves incremental stabi...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 2008.In...
This thesis is concerned with the development, analysis and implementation of efficient reduced orde...
International audienceThis lecture will be organized in two complementary parts focused on advances ...
Nonlinear dynamical systems are known to be sensitive to input parameters. In this thesis, we apply ...
International audienceWe investigate new developments of the combined Reduced-Basis and Empirical In...
This paper presents a model order reduction (MOR) approach for high dimensional problems in the anal...
I use reduced order models (ROMs) to substantially decrease the computational cost of Newton's metho...
Many natural phenomena can be modeled as ordinary or partial differential equations. A way to find s...
Abstract We present a model order reduction technique for parametrized nonlinear reaction-diffusion ...
This work formulates a new approach to reduced modeling of parameterized, time-dependent partial dif...
The Reduced Basis Method (RBM) is a model order reduction technique for solving parametric partial d...
In this paper we develop reduced-order models (ROMs) for dynamic, parameter-dependent, linear and n...
This chapter reviews techniques of model reduction of fluid dynamics systems. Fluid systems are know...
In this work, we present a model order reduction (MOR) technique for hyperbolic conservation laws wi...
This paper proposes a data-based approach for model order reduction that preserves incremental stabi...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 2008.In...
This thesis is concerned with the development, analysis and implementation of efficient reduced orde...
International audienceThis lecture will be organized in two complementary parts focused on advances ...
Nonlinear dynamical systems are known to be sensitive to input parameters. In this thesis, we apply ...
International audienceWe investigate new developments of the combined Reduced-Basis and Empirical In...
This paper presents a model order reduction (MOR) approach for high dimensional problems in the anal...
I use reduced order models (ROMs) to substantially decrease the computational cost of Newton's metho...
Many natural phenomena can be modeled as ordinary or partial differential equations. A way to find s...
Abstract We present a model order reduction technique for parametrized nonlinear reaction-diffusion ...
This work formulates a new approach to reduced modeling of parameterized, time-dependent partial dif...
The Reduced Basis Method (RBM) is a model order reduction technique for solving parametric partial d...
In this paper we develop reduced-order models (ROMs) for dynamic, parameter-dependent, linear and n...
This chapter reviews techniques of model reduction of fluid dynamics systems. Fluid systems are know...