Nonlinear Theory and Its Applications, IEICE
Online ISSN : 2185-4106
ISSN-L : 2185-4106
Special Section on Nonlinear Dynamical Aspects of Edge Computing and Neuromorphic Hardware
Extended dynamic mode decomposition with dictionary learning using neural ordinary differential equations
Hiroaki TeraoSho ShirasakaHideyuki Suzuki
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2021 Volume 12 Issue 4 Pages 626-638

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Abstract

Nonlinear phenomena can be analyzed via linear techniques using operator-theoretic approaches. Data-driven method called the extended dynamic mode decomposition (EDMD) and its variants, which approximate the Koopman operator associated with the nonlinear phenomena, have been rapidly developing by incorporating machine learning methods. Neural ordinary differential equations (NODEs), which are a neural network equipped with a continuum of layers, and have high parameter and memory efficiencies, have been proposed. In this paper, we propose an algorithm to perform EDMD using NODEs. NODEs are used to find a parameter-efficient dictionary which provides a good finite-dimensional approximation of the Koopman operator. We show the superiority of the parameter efficiency of the proposed method through numerical experiments.

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© 2021 The Institute of Electronics, Information and Communication Engineers
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