• Invited

Learning to swim in potential flow

Yusheng Jiao, Feng Ling, Sina Heydari, Nicolas Heess, Josh Merel, and Eva Kanso
Phys. Rev. Fluids 6, 050505 – Published 12 May 2021
An article within the collection: Machine Learning in Fluid Mechanics Invited Papers

Abstract

Fish swim by undulating their bodies. These propulsive motions require coordinated shape changes of a body that interacts with its fluid environment, but the specific shape coordination that leads to robust turning and swimming motions remains unclear. To address the problem of underwater motion planning, we propose a simple model of a three-link fish swimming in a potential flow environment and we use model-free reinforcement learning for shape control. We arrive at optimal shape changes for two swimming tasks: swimming in a desired direction and swimming towards a known target. This fish model belongs to a class of problems in geometric mechanics, known as driftless dynamical systems, which allow us to analyze the swimming behavior in terms of geometric phases over the shape space of the fish. These geometric methods are less intuitive in the presence of drift. Here, we use the shape space analysis as a tool for assessing, visualizing, and interpreting the control policies obtained via reinforcement learning in the absence of drift. We then examine the robustness of these policies to drift-related perturbations. Although the fish has no direct control over the drift itself, it learns to take advantage of the presence of moderate drift to reach its target.

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  • Received 8 August 2020
  • Accepted 15 March 2021
  • Corrected 13 May 2021

DOI:https://doi.org/10.1103/PhysRevFluids.6.050505

©2021 American Physical Society

Physics Subject Headings (PhySH)

  1. Research Areas
  1. Physical Systems
Nonlinear DynamicsPhysics of Living SystemsFluid Dynamics

Corrections

13 May 2021

Correction: The previously published order of authors was presented incorrectly and has been fixed, and the affiliations are now identified by superscript numbers.

Collections

This article appears in the following collection:

Machine Learning in Fluid Mechanics Invited Papers

Physical Review Fluids publishes a collection of invited papers which advance the use of machine learning in fluid mechanics.

Authors & Affiliations

Yusheng Jiao1, Feng Ling1, Sina Heydari1, Nicolas Heess2, Josh Merel2, and Eva Kanso1,*

  • 1Department of Aerospace and Mechanical Engineering, University of Southern California, Los Angeles, California 90089, USA
  • 2DeepMind, London, United Kingdom

  • *kanso@usc.edu; https://sites.usc.edu/kansolab/

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Issue

Vol. 6, Iss. 5 — May 2021

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