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Hyper-Reduced Autoencoders for Efficient and Accurate Nonlinear Model Reductions

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arxiv 2303.09630 v1 pith:FSIOTKVL submitted 2023-03-16 physics.comp-ph cs.LGcs.NAmath.NA

Hyper-Reduced Autoencoders for Efficient and Accurate Nonlinear Model Reductions

classification physics.comp-ph cs.LGcs.NAmath.NA
keywords accuratedisadvantageefficienthigh-fidelitymethodmethodsmodelmodels
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Projection-based model order reduction on nonlinear manifolds has been recently proposed for problems with slowly decaying Kolmogorov n-width such as advection-dominated ones. These methods often use neural networks for manifold learning and showcase improved accuracy over traditional linear subspace-reduced order models. A disadvantage of the previously proposed methods is the potential high computational costs of training the networks on high-fidelity solution snapshots. In this work, we propose and analyze a novel method that overcomes this disadvantage by training a neural network only on subsampled versions of the high-fidelity solution snapshots. This method coupled with collocation-based hyper-reduction and Gappy-POD allows for efficient and accurate surrogate models. We demonstrate the validity of our approach on a 2d Burgers problem.

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