A novel algorithmic discussion of the methodological and numerical differences of competing parametric model reduction techniques for nonlinear problems is presented. First, the Galerkin reduced basis (RB) formulation is presented, which fails at providing significant gains with respect to the computational efficiency for nonlinear problems. Renowned methods for the reduction of the computing time of nonlinear reduced order models are the Hyper-Reduction and the (Discrete) Empirical Interpolation Method (EIM, DEIM). An algorithmic description and a methodological comparison of both methods are provided. The accuracy of the predictions of the hyper-reduced model and the (D)EIM in comparison to the Galerkin RB is investigated. All three appro...
When using Newton iterations to solve nonlinear parametrized PDEs in the context of Reduced Basis (R...
This paper presents parametric model order reduction (pMOR) by the Lagrange approach of matrix inter...
During the last decades, reduced basis (RB) methods have been developed to a wide methodology for mo...
A novel algorithmic discussion of the methodological and numerical differences of competing parametr...
International audienceA novel algorithmic discussion of the methodological and numerical differences...
International audienceWe investigate new developments of the combined Reduced-Basis and Empirical In...
Computational numerical methods are important tools in science and technology today. Numerical simul...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientif...
The purpose of Reduced‐Order Modelling (ROM) is to substantially lower the computational cost of num...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientic...
empirical in-terpolation. We apply the reduced basis method to solve Navier-Stokes equations in para...
We consider the Hyper-reduction technique [1], in the framework of parametric structural dynamic pro...
This thesis introduces three new developments of the reduced basis method (RB) and the empirical int...
In this chapter we consider Reduced Basis (RB) approximations of parametrized Partial Differential E...
Nowadays, the use of Hyper Reduced Order Models (HROMs) to tackle the high computational complexity ...
When using Newton iterations to solve nonlinear parametrized PDEs in the context of Reduced Basis (R...
This paper presents parametric model order reduction (pMOR) by the Lagrange approach of matrix inter...
During the last decades, reduced basis (RB) methods have been developed to a wide methodology for mo...
A novel algorithmic discussion of the methodological and numerical differences of competing parametr...
International audienceA novel algorithmic discussion of the methodological and numerical differences...
International audienceWe investigate new developments of the combined Reduced-Basis and Empirical In...
Computational numerical methods are important tools in science and technology today. Numerical simul...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientif...
The purpose of Reduced‐Order Modelling (ROM) is to substantially lower the computational cost of num...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientic...
empirical in-terpolation. We apply the reduced basis method to solve Navier-Stokes equations in para...
We consider the Hyper-reduction technique [1], in the framework of parametric structural dynamic pro...
This thesis introduces three new developments of the reduced basis method (RB) and the empirical int...
In this chapter we consider Reduced Basis (RB) approximations of parametrized Partial Differential E...
Nowadays, the use of Hyper Reduced Order Models (HROMs) to tackle the high computational complexity ...
When using Newton iterations to solve nonlinear parametrized PDEs in the context of Reduced Basis (R...
This paper presents parametric model order reduction (pMOR) by the Lagrange approach of matrix inter...
During the last decades, reduced basis (RB) methods have been developed to a wide methodology for mo...