Generalizing Dynamic Mode Decomposition: Balancing Accuracy and Expressiveness in Koopman Approximations
Masih Haseli, Jorge Cort\'es

TL;DR
This paper introduces a new algorithm for refining dictionaries in Koopman-operator methods, balancing accuracy and expressiveness to improve data-driven dynamical system approximations.
Contribution
The Tunable Symmetric Subspace Decomposition algorithm generalizes existing methods by adaptively refining dictionaries based on invariance and accuracy criteria.
Findings
Effective in producing Koopman approximations with tunable accuracy
Balances expressiveness and prediction accuracy in dynamical systems
Generalizes both Extended DMD and Symmetric Subspace Decomposition
Abstract
This paper tackles the data-driven approximation of unknown dynamical systems using Koopman-operator methods. Given a dictionary of functions, these methods approximate the projection of the action of the operator on the finite-dimensional subspace spanned by the dictionary. We propose the Tunable Symmetric Subspace Decomposition algorithm to refine the dictionary, balancing its expressiveness and accuracy. Expressiveness corresponds to the ability of the dictionary to describe the evolution of as many observables as possible and accuracy corresponds to the ability to correctly predict their evolution. Based on the observation that Koopman-invariant subspaces give rise to exact predictions, we reason that prediction accuracy is a function of the degree of invariance of the subspace generated by the dictionary and provide a data-driven measure to measure invariance proximity. The…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fluid Dynamics and Vibration Analysis · Aerodynamics and Acoustics in Jet Flows
