Model reduction of dynamical systems on nonlinear manifolds using deep convolutional autoencoders

Volume: 404, Pages: 108973 - 108973
Published: Mar 1, 2020
Abstract
Nearly all model-reduction techniques project the governing equations onto a linear subspace of the original state space. Such subspaces are typically computed using methods such as balanced truncation, rational interpolation, the reduced-basis method, and (balanced) proper orthogonal decomposition (POD). Unfortunately, restricting the state to evolve in a linear subspace imposes a fundamental limitation to the accuracy of the resulting...
Paper Details
Title
Model reduction of dynamical systems on nonlinear manifolds using deep convolutional autoencoders
Published Date
Mar 1, 2020
Volume
404
Pages
108973 - 108973
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