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Main Authors: Panda, Nishant, Singh, Himanshu, Kutz, J. Nathan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.06806
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_version_ 1866913831582695424
author Panda, Nishant
Singh, Himanshu
Kutz, J. Nathan
author_facet Panda, Nishant
Singh, Himanshu
Kutz, J. Nathan
contents Spatial temporal reconstruction of dynamical system is indeed a crucial problem with diverse applications ranging from climate modeling to numerous chaotic and physical processes. These reconstructions are based on the harmonious relationship between the Koopman operators and the choice of dictionary, determined implicitly by a kernel function. This leads to the approximation of the Koopman operators in a reproducing kernel Hilbert space (RKHS) associated with that kernel function. Data-driven analysis of Koopman operators demands that Koopman operators be closable over the underlying RKHS, which still remains an unsettled, unexplored, and critical operator-theoretic challenge. We aim to address this challenge by investigating the embedding of the Laplacian kernel in the measure-theoretic sense, giving rise to a rich enough RKHS to settle the closability of the Koopman operators. We leverage Kernel Extended Dynamic Mode Decomposition with the Laplacian kernel to reconstruct the dominant spatial temporal modes of various diverse dynamical systems. After empirical demonstration, we concrete such results by providing the theoretical justification leveraging the closability of the Koopman operators on the RKHS generated by the Laplacian kernel on the avenues of Koopman mode decomposition and the Koopman spectral measure. Such results were explored from both grounds of operator theory and data-driven science, thus making the Laplacian kernel a robust choice for spatial-temporal reconstruction.
format Preprint
id arxiv_https___arxiv_org_abs_2505_06806
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Kernel Dynamic Mode Decomposition For Sparse Reconstruction of Closable Koopman Operators
Panda, Nishant
Singh, Himanshu
Kutz, J. Nathan
Dynamical Systems
Machine Learning
86A08, 47N60, 47N70, 46E22, 47B32, 46E20, 46E22, 70G60, 76F20
Spatial temporal reconstruction of dynamical system is indeed a crucial problem with diverse applications ranging from climate modeling to numerous chaotic and physical processes. These reconstructions are based on the harmonious relationship between the Koopman operators and the choice of dictionary, determined implicitly by a kernel function. This leads to the approximation of the Koopman operators in a reproducing kernel Hilbert space (RKHS) associated with that kernel function. Data-driven analysis of Koopman operators demands that Koopman operators be closable over the underlying RKHS, which still remains an unsettled, unexplored, and critical operator-theoretic challenge. We aim to address this challenge by investigating the embedding of the Laplacian kernel in the measure-theoretic sense, giving rise to a rich enough RKHS to settle the closability of the Koopman operators. We leverage Kernel Extended Dynamic Mode Decomposition with the Laplacian kernel to reconstruct the dominant spatial temporal modes of various diverse dynamical systems. After empirical demonstration, we concrete such results by providing the theoretical justification leveraging the closability of the Koopman operators on the RKHS generated by the Laplacian kernel on the avenues of Koopman mode decomposition and the Koopman spectral measure. Such results were explored from both grounds of operator theory and data-driven science, thus making the Laplacian kernel a robust choice for spatial-temporal reconstruction.
title Kernel Dynamic Mode Decomposition For Sparse Reconstruction of Closable Koopman Operators
topic Dynamical Systems
Machine Learning
86A08, 47N60, 47N70, 46E22, 47B32, 46E20, 46E22, 70G60, 76F20
url https://arxiv.org/abs/2505.06806