Enabling microrobotic chemotaxis via reset-free hierarchical reinforcement learning

Tongzhao Xiong, Zhaorong Liu, Chong Jin Ong, Lailai Zhu
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Abstract

Microorganisms have evolved diverse strategies to propel in viscous fluids, navigate complex environments, and exhibit taxis in response to stimuli. This has inspired the development of synthetic microrobots, where machine learning (ML) is playing an increasingly important role. Can ML endow these robots with intelligence resembling that developed by their natural counterparts over evolutionary timelines? Here, we demonstrate chemotactic navigation of a multi-link articulated microrobot using two-level hierarchical reinforcement learning (RL). The lower-level RL allows the robot -- featuring either a chain or ring topology -- to acquire topology-specific swimming gaits: wave propagation characteristic of flagella or body oscillation akin to an ameboid. Such flagellar and ameboid microswimmers, further enabled by the higher-level RL, accomplish chemotactic navigation in prototypical biologically-relevant scenarios that feature conflicting chemoattractants, pursuing a swimming bacterial mimic, steering in vortical flows, and squeezing through tight constrictions. Additionally, we achieve reset-free, partially observable RL, where the robot observes only its joint angles and local scalar quantities. This advancement illuminates solutions for overcoming the persistent challenges of manual resets and partial observability in real-world microrobotic RL.
通过无重置分层强化学习实现微机器人趋化
微生物已经进化出了多种策略,可以在粘性流体中推进、在复杂环境中航行,并在受到刺激时表现出滑行。这启发了合成微型机器人的发展,而机器学习(ML)在其中扮演着越来越重要的角色。机器学习能否赋予这些机器人与自然界中的机器人一样的智能?在这里,我们利用两级分层强化学习(RL)演示了多链节铰接式微型机器人的趋化导航。较低级别的强化学习允许机器人(具有链状或环状拓扑结构)获得拓扑结构特有的游泳步态:鞭毛特有的波状传播或类似于meboid的身体摆动。这种鞭毛和meboid微型游泳机器人在较高级别的强化学习的进一步支持下,在原型生物相关情景中完成趋化导航,这些情景包括冲突的趋化吸引物、追逐游泳的细菌模仿体、在涡流中转向以及挤过狭小的限制。此外,我们还实现了无重置、部分可观测的 RL,在这种情况下,机器人只需观测其关节角度和局部标量。这一进展为克服现实世界中微型机器人 RL 所面临的手动重置和部分可观测性的长期挑战提供了解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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