Deep learning enhanced dynamic mode decomposition

Author:

Alford-Lago D. J.12ORCID,Curtis C. W.2,Ihler A. T.3ORCID,Issan O.4ORCID

Affiliation:

1. Naval Information Warfare Center Pacific, San Diego, California 92152, USA

2. Department of Mathematics and Statistics, San Diego State University, San Diego, California 92182, USA

3. Department of Computer Science, University of California Irvine, Irvine, California 92697, USA

4. Department of Mechanical and Aerospace Engineering, University of California San Diego, San Diego, California 92093, USA

Abstract

Koopman operator theory shows how nonlinear dynamical systems can be represented as an infinite-dimensional, linear operator acting on a Hilbert space of observables of the system. However, determining the relevant modes and eigenvalues of this infinite-dimensional operator can be difficult. The extended dynamic mode decomposition (EDMD) is one such method for generating approximations to Koopman spectra and modes, but the EDMD method faces its own set of challenges due to the need of user defined observables. To address this issue, we explore the use of autoencoder networks to simultaneously find optimal families of observables, which also generate both accurate embeddings of the flow into a space of observables and submersions of the observables back into flow coordinates. This network results in a global transformation of the flow and affords future state prediction via the EDMD and the decoder network. We call this method the deep learning dynamic mode decomposition (DLDMD). The method is tested on canonical nonlinear data sets and is shown to produce results that outperform a standard DMD approach and enable data-driven prediction where the standard DMD fails.

Funder

Naval Information Warfare Center Pacific

Office of Naval Research

NSF

Publisher

AIP Publishing

Subject

Applied Mathematics,General Physics and Astronomy,Mathematical Physics,Statistical and Nonlinear Physics

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