Data-Driven Model Order Reduction for Magnetostatic Problem Coupled with Circuit Equations

Archive ouverte : Article de revue

Pierquin, Antoine | Henneron, Thomas | Clenet, Stephane

Edité par HAL CCSD ; Institute of Electrical and Electronics Engineers

Among the model order reduction techniques, the Proper Orthogonal Decomposition (POD) has shown its efficiency to solve magnetostatic and magneto-quasistatic problems in the time domain. However, the POD is intrusive in the sense that it requires the extraction of the matrix system of the full model to build the reduced model. To avoid this extraction, nonintrusive approaches like the Data Driven (DD) methods enable to approximate the reduced model without the access to the full matrix system. In this article, the DD-POD method is applied to build a low dimensional system to solve a magnetostatic problem coupled with electric circuit equations.

Consulter en ligne

Suggestions

Du même auteur

Comparison of DEIM and BPIM to Speed up a POD-based Nonlinear Magnetostatic Model | Henneron, Thomas

Comparison of DEIM and BPIM to Speed up a POD-based Nonlinear Magnetostatic...

Archive ouverte: Article de revue

Henneron, Thomas | 2017-01-27

International audience. Proper Orthogonal Decomposition (POD) has been successfully used to reduce the size of linear Finite Element (FE) problems, and thus the computational time associated with. When considering a...

Proper Generalized Decomposition Applied on a Rotating Electrical Machine | Montier, Laurent

Proper Generalized Decomposition Applied on a Rotating Electrical Machine

Archive ouverte: Article de revue

Montier, Laurent | 2017

International audience. The Proper Generalized Decomposition (PGD) is a model order reduction method which allows to reduce the computational time of a numerical problem by seeking for a separated representation of ...

Application of the Proper Generalized Decomposition to Solve MagnetoElectric Problem | Henneron, Thomas

Application of the Proper Generalized Decomposition to Solve MagnetoElectri...

Archive ouverte: Article de revue

Henneron, Thomas | 2017

International audience. Among the model order reduction techniques, the Proper Generalized Decomposition (PGD) has shown its efficiency to solve a large number of engineering problems. In this article, the PGD appro...

Du même sujet

Nonlinear data-driven model order reduction applied to circuit-field magnetic problem | Pierquin, Antoine

Nonlinear data-driven model order reduction applied to circuit-field magnet...

Archive ouverte: Article de revue

Pierquin, Antoine | 2021-11

International audience. As in most of the domains in physics, finite element formulation is a very common method for electromagnetic fields computation. Since many years both proper orthogonal decomposition and empi...

Model-Order Reduction of Magnetoquasi-Static Problems Based on POD and Arnoldi-Based Krylov Methods | Pierquin, Antoine

Model-Order Reduction of Magnetoquasi-Static Problems Based on POD and Arno...

Archive ouverte: Communication dans un congrès

Pierquin, Antoine | 2014-05

The proper orthogonal decomposition method and Arnoldi-based Krylov projection method are investigated in order to reduce a finite-element model of a quasi-static problem. Both methods are compared on an academic example in terms ...

A priori error estimation of the structure-preserving modal model reduction by state residualization of a grid forming converter for use in 100% power electronics transmission systems | Cossart, Quentin

A priori error estimation of the structure-preserving modal model reduction...

Archive ouverte: Communication dans un congrès

Cossart, Quentin | 2019-02

International audience. This article deals with the model order reduction by state residualization of power electronic converters. It presents a method to a priori estimate the error induced by this reduction. This ...

Parametric Geometric Metamodel of Nonlinear Magnetostatic Problem Based on POD and RBF Approaches | Boumesbah, Allaa Eddine

Parametric Geometric Metamodel of Nonlinear Magnetostatic Problem Based on ...

Archive ouverte: Article de revue

Boumesbah, Allaa Eddine | 2022

International audience. A parametric geometric metamodel is built for a nonlinear magnetostatic problem, using proper orthogonal decomposition approach combined with radial basis functions interpolation. Furthermore...

Model Order Reduction of Magnetoquasistatic Problems Based on POD and Arnoldi-based Krylov Methods | Pierquin, Antoine

Model Order Reduction of Magnetoquasistatic Problems Based on POD and Arnol...

Archive ouverte: Article de revue

Pierquin, Antoine | 2015

International audience. The Proper Orthogonal Decomposition method and the Arnoldi-based Krylov projection method are investigated in order to reduce a finite element model of a quasistatic problem. Both methods are...

Error Estimator for Cauer Ladder Network Representation | Hiruma, Shingo

Error Estimator for Cauer Ladder Network Representation

Archive ouverte: Article de revue

Hiruma, Shingo | 2022

International audience. The Cauer Ladder Network (CLN) method enables to construct a reduced based circuit model of analytical or numerical models, e.g. Finite Element (FE) model, under quasistatic approximation. Th...

Chargement des enrichissements...