Rigged Dynamic Mode Decomposition: Data-Driven Generalized Eigenfunction Decompositions for Koopman Operators
We introduce the Rigged Dynamic Mode Decomposition (Rigged DMD) algorithm, which computes generalized eigenfunction decompositions of Koopman operators. By considering the evolution of observables, Koopman operators transform complex nonlinear dynamics into a linear framework suitable for spectral a...
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Zusammenfassung: | We introduce the Rigged Dynamic Mode Decomposition (Rigged DMD) algorithm,
which computes generalized eigenfunction decompositions of Koopman operators.
By considering the evolution of observables, Koopman operators transform
complex nonlinear dynamics into a linear framework suitable for spectral
analysis. While powerful, traditional Dynamic Mode Decomposition (DMD)
techniques often struggle with continuous spectra. Rigged DMD addresses these
challenges with a data-driven methodology that approximates the Koopman
operator's resolvent and its generalized eigenfunctions using snapshot data
from the system's evolution. At its core, Rigged DMD builds wave-packet
approximations for generalized Koopman eigenfunctions and modes by integrating
Measure-Preserving Extended Dynamic Mode Decomposition with high-order kernels
for smoothing. This provides a robust decomposition encompassing both discrete
and continuous spectral elements. We derive explicit high-order convergence
theorems for generalized eigenfunctions and spectral measures. Additionally, we
propose a novel framework for constructing rigged Hilbert spaces using
time-delay embedding, significantly extending the algorithm's applicability. We
provide examples, including systems with a Lebesgue spectrum, integrable
Hamiltonian systems, the Lorenz system, and a high-Reynolds number lid-driven
flow in a two-dimensional square cavity, demonstrating Rigged DMD's
convergence, efficiency, and versatility. This work paves the way for future
research and applications of decompositions with continuous spectra. |
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DOI: | 10.48550/arxiv.2405.00782 |