In this paper, the proper orthogonal decomposition and the Arnoldi-based Krylov subspace methods are applied to the magnetodynamic finite element analysis of power electronic converters. The performance of these two model order reduction techniques is compared both in frequency and time domain. Moreover, two original, adaptive and automated greedy snapshots selection methods are investigated using either local or global quantities for selecting the snapshots (frequencies or time steps).status: publishe
The proper orthogonal decomposition combined with the discrete empirical interpolation method is inv...
In this paper, proper orthogonal decomposition method is employed to build a reduced-order model fro...
In this paper, a proper-orthogonal-decomposition reduced-order model is applied to an eddy-current p...
In this paper, the proper orthogonal decomposition and the Arnoldi-based Krylov subspace methods are...
The proper orthogonal decomposition method and Arnoldi-based Krylov projection method are investigat...
Among the model order reduction techniques, the Proper Orthogonal Decomposition (POD) has shown its ...
This paper proposes a reduced-order model of power electronic components based on the proper orthogo...
In order to reduce the computation time and the memory resources required to solve an electromagneti...
This PhD thesis aim at developing original, fast and accurate models well adapted to the growing com...
A novel Model Order Reduction (MOR) technique is developed to compute high-dimensional parametric so...
A novel Model Order Reduction (MOR) technique is developed to compute high-dimensional parametric so...
This dissertation addresses the seemingly inevitable compromise between modeling fidelity and simula...
Among the model order reduction techniques, the Proper Generalized Decomposition (PGD) has shown its...
In this paper, reduced order modeling (ROM) based on the proper orthogonal decomposition (POD) are a...
AbstractThis paper examines classical Model Order Reduction (MOR) strategies in view of the particul...
The proper orthogonal decomposition combined with the discrete empirical interpolation method is inv...
In this paper, proper orthogonal decomposition method is employed to build a reduced-order model fro...
In this paper, a proper-orthogonal-decomposition reduced-order model is applied to an eddy-current p...
In this paper, the proper orthogonal decomposition and the Arnoldi-based Krylov subspace methods are...
The proper orthogonal decomposition method and Arnoldi-based Krylov projection method are investigat...
Among the model order reduction techniques, the Proper Orthogonal Decomposition (POD) has shown its ...
This paper proposes a reduced-order model of power electronic components based on the proper orthogo...
In order to reduce the computation time and the memory resources required to solve an electromagneti...
This PhD thesis aim at developing original, fast and accurate models well adapted to the growing com...
A novel Model Order Reduction (MOR) technique is developed to compute high-dimensional parametric so...
A novel Model Order Reduction (MOR) technique is developed to compute high-dimensional parametric so...
This dissertation addresses the seemingly inevitable compromise between modeling fidelity and simula...
Among the model order reduction techniques, the Proper Generalized Decomposition (PGD) has shown its...
In this paper, reduced order modeling (ROM) based on the proper orthogonal decomposition (POD) are a...
AbstractThis paper examines classical Model Order Reduction (MOR) strategies in view of the particul...
The proper orthogonal decomposition combined with the discrete empirical interpolation method is inv...
In this paper, proper orthogonal decomposition method is employed to build a reduced-order model fro...
In this paper, a proper-orthogonal-decomposition reduced-order model is applied to an eddy-current p...