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Reduced-order models for coupled dynamical systems: Data-driven methods and the Koopman operator

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posted on 2025-02-06, 09:29 authored by M Santos Gutiérrez, V Lucarini, MD Chekroun, M Ghil
Providing efficient and accurate parameterizations for model reduction is a key goal in many areas of science and technology. Here, we present a strong link between data-driven and theoretical approaches to achieving this goal. Formal perturbation expansions of the Koopman operator allow us to derive general stochastic parameterizations of weakly coupled dynamical systems. Such parameterizations yield a set of stochastic integrodifferential equations with explicit noise and memory kernel formulas to describe the effects of unresolved variables. We show that the perturbation expansions involved need not be truncated when the coupling is additive. The unwieldy integrodifferential equations can be recast as a simpler multilevel Markovian model, and we establish an intuitive connection with a generalized Langevin equation. This connection helps setting up a parallelism between the top-down, equation-based methodology herein and the well-established empirical model reduction (EMR) methodology that has been shown to provide efficient dynamical closures to partially observed systems. Hence, our findings, on the one hand, support the physical basis and robustness of the EMR methodology and, on the other hand, illustrate the practical relevance of the perturbative expansion used for deriving the parameterizations.

Funding

Coordinated Research in Earth Systems and Climate: Experiments, kNowledge, Dissemination and Outreach

European Commission

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Tipping Points in the Earth System

European Commission

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Climate CT- Cloud Tomography by Satellites for Better Climate Prediction

European Research Council

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Multidisciplinary University Research Initiative (MURI) under Grant No. N00014-20-1-2023

Hierarchical empirical models to study and predict the evolution of complex dynamical systems

Russian Science Foundation

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History

Citation

Chaos 31, 053116 (2021); doi: 10.1063/5.0039496

Author affiliation

College of Science & Engineering College of Science & Engineering/Comp' & Math' Sciences

Version

  • VoR (Version of Record)

Published in

Chaos

Volume

31

Issue

5

Publisher

AIP Publishing

issn

1054-1500

eissn

1089-7682

Acceptance date

2021-04-26

Copyright date

2021

Available date

2025-02-06

Spatial coverage

United States

Language

eng

Deposited by

Professor Valerio Lucarini

Deposit date

2024-02-26

Data Access Statement

The data that support the findings of this study are available from the corresponding author upon reasonable request.

Rights Retention Statement

  • No

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