
arXiv: 2102.12086
The field of dynamical systems is being transformed by the mathematical tools and algorithms emerging from modern computing and data science. First-principles derivations and asymptotic reductions are giving way to data-driven approaches that formulate models in operator theoretic or probabilistic frameworks. Koopman spectral theory has emerged as a dominant perspective over the past decade, in which nonlinear dynamics are represented in terms of an infinite-dimensional linear operator acting on the space of all possible measurement functions of the system. This linear representation of nonlinear dynamics has tremendous potential to enable the prediction, estimation, and control of nonlinear systems with standard textbook methods developed for linear systems. However, obtaining finite-dimensional coordinate systems and embeddings in which the dynamics appear approximately linear remains a central open challenge. The success of Koopman analysis is due primarily to three key factors: 1) there exists rigorous theory connecting it to classical geometric approaches for dynamical systems, 2) the approach is formulated in terms of measurements, making it ideal for leveraging big-data and machine learning techniques, and 3) simple, yet powerful numerical algorithms, such as the dynamic mode decomposition (DMD), have been developed and extended to reduce Koopman theory to practice in real-world applications. In this review, we provide an overview of modern Koopman operator theory, describing recent theoretical and algorithmic developments and highlighting these methods with a diverse range of applications. We also discuss key advances and challenges in the rapidly growing field of machine learning that are likely to drive future developments and significantly transform the theoretical landscape of dynamical systems.
110 pages, 27 figures
FOS: Computer and information sciences, Computer Science - Machine Learning, Linear composition operators, Dynamical Systems (math.DS), Systems and Control (eess.SY), Nonlinear ordinary differential equations and systems, Electrical Engineering and Systems Science - Systems and Control, Approximation methods and numerical treatment of dynamical systems, control theory, Machine Learning (cs.LG), operator theory, FOS: Mathematics, FOS: Electrical engineering, electronic engineering, information engineering, dynamic mode decomposition, Mathematics - Dynamical Systems, Koopman operator, Mathematics - Optimization and Control, Ergodic theory of linear operators, data-driven discovery, 34A34, 37A30, 37C10, 37M10, 37M99, 37N35, 47A35, 47B33, spectral theory, dynamical systems, Dynamical systems in control, Optimization and Control (math.OC), Dynamics induced by flows and semiflows, embeddings
FOS: Computer and information sciences, Computer Science - Machine Learning, Linear composition operators, Dynamical Systems (math.DS), Systems and Control (eess.SY), Nonlinear ordinary differential equations and systems, Electrical Engineering and Systems Science - Systems and Control, Approximation methods and numerical treatment of dynamical systems, control theory, Machine Learning (cs.LG), operator theory, FOS: Mathematics, FOS: Electrical engineering, electronic engineering, information engineering, dynamic mode decomposition, Mathematics - Dynamical Systems, Koopman operator, Mathematics - Optimization and Control, Ergodic theory of linear operators, data-driven discovery, 34A34, 37A30, 37C10, 37M10, 37M99, 37N35, 47A35, 47B33, spectral theory, dynamical systems, Dynamical systems in control, Optimization and Control (math.OC), Dynamics induced by flows and semiflows, embeddings
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