Eigenvalues of Autocovariance Matrix: A Practical Method to Identify the Koopman Eigenfrequencies
Yicun Zhen, Bertrand Chapron, Etienne Memin, Lin Peng

TL;DR
This paper presents a practical method to identify Koopman eigenfrequencies by analyzing the eigenvalues of autocovariance matrices, linking them to the spectral properties of the Koopman operator in dynamical systems.
Contribution
It establishes a theoretical foundation connecting autocovariance eigenvalues with Koopman eigenfrequencies and proposes a practical methodology for their identification from time series data.
Findings
Eigenvalues of autocovariance matrices correspond to Koopman eigenfrequencies.
The method applies to ergodic systems with finite invariant measures.
Convergence of Gram matrix eigenvalues indicates the presence of Koopman eigenfrequencies.
Abstract
To infer eigenvalues of the infinite-dimensional Koopman operator, we study the leading eigenvalues of the autocovariance matrix associated with a given observable of a dynamical system. For any observable for which all the time-delayed autocovariance exist, we construct a Hilbert space and a Koopman-like operator that acts on . We prove that the leading eigenvalues of the autocovariance matrix has one-to-one correspondence with the energy of that is represented by the eigenvectors of . The proof is associated to several representation theorems of isometric operators on a Hilbert space, and the weak-mixing property of the observables represented by the continuous spectrum. We also provide an alternative proof of the weakly mixing property. When is an observable of an ergodic dynamical system which has a finite…
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