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arXiv:2106.08609 [physics.flu-dyn]AbstractReferencesReviewsResources

Reinforcement learning for pursuit and evasion of microswimmers at low Reynolds number

Francesco Borra, Luca Biferale, Massimo Cencini, Antonio Celani

Published 2021-06-16Version 1

Aquatic organisms can use hydrodynamic cues to navigate, find their preys and escape from predators. We consider a model of two competing microswimmers engaged in a pursue-evasion task while immersed in a low-Reynolds-number environment. The players have limited abilities: they can only sense hydrodynamic disturbances, which provide some cue about the opponent's position, and perform simple manoeuvres. The goal of the pursuer is to capturethe evader in the shortest possible time. Conversely the evader aims at deferring capture as much as possible. We show that by means of Reinforcement Learning the players find efficient and physically explainable strategies which non-trivially exploit the hydrodynamic environment. This Letter offers a proof-of-concept for the use of Reinforcement Learning to discover prey-predator strategies in aquatic environments, with potential applications to underwater robotics.

Comments: 6 pages, 3 figures (Supplementary Material in ancillary directory)
Categories: physics.flu-dyn
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