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arxiv:2012.03448

Variational Autoencoders for Learning Nonlinear Dynamics of Physical Systems

Published on Dec 7, 2020
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Abstract

Variational Autoencoders are used to learn parsimonious representations of nonlinear systems from parameterized PDEs and mechanics by incorporating physical information and geometric priors through manifold latent space representations.

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We develop data-driven methods for incorporating physical information for priors to learn parsimonious representations of nonlinear systems arising from parameterized PDEs and mechanics. Our approach is based on Variational Autoencoders (VAEs) for learning from observations nonlinear state space models. We develop ways to incorporate geometric and topological priors through general manifold latent space representations. We investigate the performance of our methods for learning low dimensional representations for the nonlinear Burgers equation and constrained mechanical systems.

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