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Generalizing Koopman Theory to Allow for Inputs and Control
Author(s) -
Joshua L. Proctor,
Steven L. Brunton,
J. Nathan Kutz
Publication year - 2018
Publication title -
siam journal on applied dynamical systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.218
H-Index - 61
ISSN - 1536-0040
DOI - 10.1137/16m1062296
Subject(s) - dynamic mode decomposition , nonlinear system , generalization , operator (biology) , dynamical systems theory , control theory (sociology) , nonlinear control , computer science , mathematics , control (management) , mathematical analysis , artificial intelligence , physics , biochemistry , chemistry , repressor , quantum mechanics , machine learning , transcription factor , gene
We develop a new generalization of Koopman operator theory that incorporates the e ects of inputs and control. Koopman spectral analysis is a theoretical tool for the analysis of nonlinear dynamical systems. Moreover, Koopman is intimately connected to dynamic mode decomposition (DMD), a method that discovers coherent, spatio-temporal modes from data, connects local-linear analysis to nonlinear operator theory, and importantly creates an equation-free architecture for the study of complex systems. For actuated systems, standard Koopman analysis and DMD are incapable of producing input-output models; moreover, the dynamics and the modes will be corrupted by external forcing. Our new theoretical developments extend Koopman operator theory to allow for systems with nonlinear input-output characteristics. We show how this generalization is rigorously connected to a recent development called dynamic mode decomposition with control. We demonstrate this new theory on nonlinear dynamical systems, including a standard susceptible-infectious-recovered model with relevance to the analysis of infectious disease data with mass vaccination (actuation).

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