Abstract We present a model order reduction technique for parametrized nonlinear reaction-diffusion systems. In our approach we combine the reduced basis method -a computational framework for rapid evaluation of functional outputs associated with the solution of parametrized partial differential equations -with the empirical interpolation method -a tool to construct "affine" coefficient-function approximations of nonlinear parameter dependent functions. We develop an efficient offline-online computational procedure for the evaluation of the reduced basis approximation: in the offline stage, we generate the reduced basis space; in the online stage, given a new parameter value, we calculate the reduced basis output. The operation co...
In this work, we investigate a model order reduction scheme for high-fidelity nonlinear structured p...
The model order reduction methodology of reduced basis (RB) techniques offers efficient treatment of...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 2008.In...
The Reduced Basis Method (RBM) is a model order reduction technique for solving parametric partial d...
High dimensionality continues to be a challenge in computational systems biology. The kinetic models...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientic...
In this work, we construct a structure-preserving reduced-order model for the resolution of parametr...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientif...
In the presence of nonaffine and highly nonlinear terms in parametrized partial differential equatio...
This work develops a technique for constructing a reduced-order system that not only has low computa...
This work formulates a new approach to reduced modeling of parameterized, time-dependent partial dif...
BACKGROUND: Stochastic biochemical reaction networks are commonly modelled by the chemical master eq...
In this work, we present a model order reduction (MOR) technique for hyperbolic conservation laws wi...
Numerical simulation of parametrized differential equations is of crucial importance in the study of...
In this paper, we extend the reduced-basis approximations developed earlier for linear elliptic and ...
In this work, we investigate a model order reduction scheme for high-fidelity nonlinear structured p...
The model order reduction methodology of reduced basis (RB) techniques offers efficient treatment of...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 2008.In...
The Reduced Basis Method (RBM) is a model order reduction technique for solving parametric partial d...
High dimensionality continues to be a challenge in computational systems biology. The kinetic models...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientic...
In this work, we construct a structure-preserving reduced-order model for the resolution of parametr...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientif...
In the presence of nonaffine and highly nonlinear terms in parametrized partial differential equatio...
This work develops a technique for constructing a reduced-order system that not only has low computa...
This work formulates a new approach to reduced modeling of parameterized, time-dependent partial dif...
BACKGROUND: Stochastic biochemical reaction networks are commonly modelled by the chemical master eq...
In this work, we present a model order reduction (MOR) technique for hyperbolic conservation laws wi...
Numerical simulation of parametrized differential equations is of crucial importance in the study of...
In this paper, we extend the reduced-basis approximations developed earlier for linear elliptic and ...
In this work, we investigate a model order reduction scheme for high-fidelity nonlinear structured p...
The model order reduction methodology of reduced basis (RB) techniques offers efficient treatment of...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 2008.In...