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Main Authors: Curtis, Christopher W., Bollt, Erik, Alford-Lago, Daniel Jay
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.12062
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author Curtis, Christopher W.
Bollt, Erik
Alford-Lago, Daniel Jay
author_facet Curtis, Christopher W.
Bollt, Erik
Alford-Lago, Daniel Jay
contents In this work, we present a method which determines optimal multi-step dynamic mode decomposition (DMD) models via entropic regression, which is a nonlinear information flow detection algorithm. Motivated by the higher-order DMD (HODMD) method of \cite{clainche}, and the entropic regression (ER) technique for network detection and model construction found in \cite{bollt, bollt2}, we develop a method that we call ERDMD that produces high fidelity time-delay DMD models that allow for nonuniform time space, and the time spacing is discovered by consider most informativity based on ER. These models are shown to be highly efficient and robust. We test our method over several data sets generated by chaotic attractors and show that we are able to build excellent reconstructions using relatively minimal models. We likewise are able to better identify multiscale features via our models which enhances the utility of dynamic mode decomposition.
format Preprint
id arxiv_https___arxiv_org_abs_2406_12062
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Entropic Regression DMD (ERDMD) Discovers Informative Sparse and Nonuniformly Time Delayed Models
Curtis, Christopher W.
Bollt, Erik
Alford-Lago, Daniel Jay
Machine Learning
Chaotic Dynamics
In this work, we present a method which determines optimal multi-step dynamic mode decomposition (DMD) models via entropic regression, which is a nonlinear information flow detection algorithm. Motivated by the higher-order DMD (HODMD) method of \cite{clainche}, and the entropic regression (ER) technique for network detection and model construction found in \cite{bollt, bollt2}, we develop a method that we call ERDMD that produces high fidelity time-delay DMD models that allow for nonuniform time space, and the time spacing is discovered by consider most informativity based on ER. These models are shown to be highly efficient and robust. We test our method over several data sets generated by chaotic attractors and show that we are able to build excellent reconstructions using relatively minimal models. We likewise are able to better identify multiscale features via our models which enhances the utility of dynamic mode decomposition.
title Entropic Regression DMD (ERDMD) Discovers Informative Sparse and Nonuniformly Time Delayed Models
topic Machine Learning
Chaotic Dynamics
url https://arxiv.org/abs/2406.12062