Data-driven Koopman operator predictions of turbulent dynamics in models of shear flows
C. Ricardo Constante-Amores, Andrew J. Fox, Carlos E. P\'erez De, Jes\'us, Michael D. Graham

TL;DR
This paper applies neural network-based Koopman operator methods to model and predict turbulent shear flow dynamics, demonstrating effective long-term chaotic behavior capture and outperforming existing frameworks in reduced-dimensional spaces.
Contribution
It introduces a data-driven Koopman operator approach combined with autoencoder-based dimension reduction for turbulent shear flows, enhancing prediction accuracy and computational feasibility.
Findings
Projected Koopman Dynamics captures chaotic shear flow behavior effectively.
The approach outperforms other models in long-term statistical predictions.
Dimension reduction enables feasible application to high-dimensional systems.
Abstract
The Koopman operator enables the analysis of nonlinear dynamical systems through a linear perspective by describing time evolution in the infinite-dimensional space of observables. Here this formalism is applied to shear flows, specifically the minimal flow unit plane Couette flow and a nine-dimensional model of turbulent shear flow between infinite parallel free-slip walls under a sinusoidal body force (Moehlis et al., New J. Phys. 6, 56 (2004)). We identify a finite set of observables and approximate the Koopman operator using neural networks, following the method developed by Constante-Amores et al., Chaos, 34(4), 043119 (2024). Then the time evolution is determined with a method here denoted as "Projected Koopman Dynamics". Using a high-dimensional approximate Koopman operator directly for the plane Couette system is computationally infeasible due to the high state space dimension…
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