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Exact coherent structures in two-dimensional turbulence identified with convolutional autoencoders

Jacob Page, Joe Holey, Michael P. Brenner, Rich R. Kerswell

2024Journal of Fluid Mechanics17 citationsDOIOpen Access PDF

Abstract

Convolutional autoencoders are used to deconstruct the changing dynamics of two-dimensional Kolmogorov flow as $Re$ is increased from weakly chaotic flow at $Re=40$ to a chaotic state dominated by a domain-filling vortex pair at $Re=400$ . ‘Latent Fourier analysis’ (Page et al. , Phys. Rev. Fluids 6 , 2021, p. 034402) reveals a detached class of bursting dynamics at $Re=40$ which merge with the low-dissipation dynamics as $Re$ is increased to $100$ and provides an efficient representation within which to find unstable periodic orbits (UPOs) using recurrent flow analysis. Focusing on initial guesses with energy in higher latent Fourier wavenumbers allows a significant number of high-dissipation-rate UPOs associated with the bursting events to be found for the first time. At $Re=400$ , the UPOs discovered at lower $Re$ move away from the attractor, and an entirely different embedding structure is formed within the network devoid of small-scale vortices. Here latent Fourier projections identify an associated ‘large-scale’ UPO which we believe to be a finite- $Re$ continuation of a solution to the Euler equations.

Topics & Concepts

Lagrangian coherent structuresTurbulencePhysicsComputer scienceStatistical physicsMechanicsFluid Dynamics and Turbulent FlowsWind and Air Flow StudiesMeteorological Phenomena and Simulations