Using an autoencoder for dimensionality reduction, this article presents a novel projection-based reduced-order model for eigenvalue problems. Reduced-order modeling relies on finding suitable basis functions which define a low-dimensional space in which a high-dimensional system is approximated. Proper orthogonal decomposition (POD) and singular value decomposition (SVD) are often used for this purpose and yield an optimal linear subspace. Autoencoders provide a nonlinear alternative to POD/SVD, that may capture, more efficiently, features or patterns in the high-fidelity model results. Reduced-order models based on an autoencoder and a novel hybrid SVD-autoencoder are developed. These methods are compared with the standard POD-Galerkin approach and are applied to two test cases taken from the field of nuclear reactor physics.
机构:
Univ Paris Saclay, CEA, List, Lab Natl Henri Becquerel LNE LNHB, F-91120 Palaiseau, FranceUniv Paris Saclay, IRFU, CEA, F-91191 Gif sur yvette, France
Bobin, Christophe
Thiam, Cheick
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机构:
Univ Paris Saclay, CEA, List, Lab Natl Henri Becquerel LNE LNHB, F-91120 Palaiseau, FranceUniv Paris Saclay, IRFU, CEA, F-91191 Gif sur yvette, France