Self-learning how to swim at low Reynolds number
Alan Cheng Hou Tsang, Pun Wai Tong, Shreyes Nallan, On Shun Pak

TL;DR
This paper introduces a novel approach where synthetic microswimmers use reinforcement learning to autonomously develop and adapt their propulsion strategies in different low Reynolds number environments, enhancing their biomedical applicability.
Contribution
It demonstrates a self-learning microswimmer that can discover, optimize, and adapt its locomotion strategies without prior knowledge, using reinforcement learning integrated with a minimal sphere assembly model.
Findings
Successfully recovered known propulsion strategies without prior knowledge
Identified more effective gaits with increased sphere number
Adapted locomotion strategies to different media environments
Abstract
Synthetic microswimmers show great promise in biomedical applications such as drug delivery and microsurgery. Their locomotion, however, is subject to stringent constraints due to the dominance of viscous over inertial forces at low Reynolds number (Re) in the microscopic world. Furthermore, locomotory gaits designed for one medium may become ineffective in a different medium. Successful biomedical applications of synthetic microswimmers rely on their ability to traverse biological environments with vastly different properties. Here we leverage the prowess of machine learning to present an alternative approach to designing low Re swimmers. Instead of specifying any locomotory gaits \textit{a priori}, here a swimmer develops its own propulsion strategy based on its interactions with the surrounding medium via reinforcement learning. This self-learning capability enables the swimmer to…
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