Recurrent flow patterns as a basis for two-dimensional turbulence: Predicting statistics from structures

Author:

Page Jacob1ORCID,Norgaard Peter2,Brenner Michael P.23ORCID,Kerswell Rich R.4ORCID

Affiliation:

1. School of Mathematics, University of Edinburgh, Edinburgh EH9 3FD, United Kingdom

2. Google Research, Mountain View, CA 94043

3. School of Engineering and Applied Sciences, Harvard University, Cambridge, MA 02138

4. Department of Applied Mathematics and Theoretical Physics, Centre for Mathematical Sciences, University of Cambridge, Cambridge CB3 0WA, United Kingdom

Abstract

A dynamical systems approach to turbulence envisions the flow as a trajectory through a high-dimensional state space [Hopf, Commun. Appl. Maths 1 , 303 (1948)]. The chaotic dynamics are shaped by the unstable simple invariant solutions populating the inertial manifold. The hope has been to turn this picture into a predictive framework where the statistics of the flow follow from a weighted sum of the statistics of each simple invariant solution. Two outstanding obstacles have prevented this goal from being achieved: 1) paucity of known solutions and 2) the lack of a rational theory for predicting the required weights. Here, we describe a method to substantially solve these problems, and thereby provide compelling evidence that the probability density functions (PDFs) of a fully developed turbulent flow can be reconstructed with a set of unstable periodic orbits. Our method for finding solutions uses automatic differentiation, with high-quality guesses constructed by minimizing a trajectory-dependent loss function. We use this approach to find hundreds of solutions in turbulent, two-dimensional Kolmogorov flow. Robust statistical predictions are then computed by learning weights after converting a turbulent trajectory into a Markov chain for which the states are individual solutions, and the nearest solution to a given snapshot is determined using a deep convolutional autoencoder. In this study, the PDFs of a spatiotemporally chaotic system have been successfully reproduced with a set of simple invariant states, and we provide a fascinating connection between self-sustaining dynamical processes and the more well-known statistical properties of turbulence.

Funder

UK Research and Innovation

DOD | USN | Office of Naval Research

National Science Foundation

Publisher

Proceedings of the National Academy of Sciences

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