Recurrent flow patterns as a basis for turbulence: predicting statistics from structures
Jacob Page, Peter Norgaard, Michael P. Brenner, Rich R. Kerswell

TL;DR
This paper demonstrates that the probability distribution functions of a turbulent flow can be accurately reconstructed using a set of unstable periodic orbits, advancing the predictive understanding of turbulence through dynamical systems theory.
Contribution
The authors develop a new method combining automatic differentiation and deep autoencoders to find and utilize invariant solutions for predicting turbulence statistics.
Findings
Reconstructed turbulence PDFs using unstable periodic orbits.
Developed a method to find solutions with automatic differentiation.
Predicted flow statistics with high accuracy.
Abstract
A dynamical systems approach to turbulence envisions the flow as a trajectory through a high-dimensional state space transiently visiting the neighbourhoods of unstable simple invariant solutions (E. Hopf, Commun. Appl. Maths 1, 303, 1948). The hope has always been to turn this appealing picture into a predictive framework where the statistics of the flow follows 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 the first compelling evidence that the PDFs of a fully developed turbulent flow can be reconstructed with a set of unstable periodic orbits. Our new method for finding solutions uses automatic…
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Taxonomy
TopicsScientific Research and Discoveries · Time Series Analysis and Forecasting · Image Processing and 3D Reconstruction
