Reinforcement learning selects multimodal locomotion strategies for bioinspired microswimmers.

IF 2.9 3区 化学 Q3 CHEMISTRY, PHYSICAL Soft Matter Pub Date : 2025-03-03 DOI:10.1039/d4sm01274g
Yangzhe Liu, Zhao Wang, Alan C H Tsang
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Abstract

Natural microswimmers exhibit multimodal locomotion strategies to achieve versatile navigation tasks such as finding nutrient sources, avoiding danger and migrating to new habitats. These multimodal locomotion strategies typically involve complex coordination of cell actuators (i.e., flagella) to generate translation, rotation and combined motions. Yet, it is generally difficult to establish a simple relationship between actuation and locomotion strategies due to the complex hydrodynamic coupling between the swimmer and the surrounding fluid. While many bioinspired microswimmers have been engendered, it remains challenging for these artificial swimmers to generate effective locomotion strategies for different functional tasks similar to their biological counterparts. Here, we explore a reinforcement learning (RL) method to enable a bioinspired microswimmer to select locomotion strategies based on different functional tasks. We illustrate this approach using a bioinspired model swimmer derived from Chlamydomonas reinhardtii, which consists of a body sphere and two flagella spheres. We first demonstrate that this RL-powered bioinspired swimmer can select effective locomotion strategies that maximize displacement or minimize energy input by setting corresponding learning goals. We further illustrate how RL can enable the bioinspired swimmer to achieve multi-directional navigation via multimodal locomotion strategies that coordinately switch between forward and steering gaits. Our approach opens a new avenue to designing bioinspired microswimmers with multimodal locomotion capabilities.

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自然界中的微型游泳者表现出多模式运动策略,以完成多种导航任务,如寻找营养源、避免危险和迁移到新的栖息地。这些多模式运动策略通常涉及细胞致动器(即鞭毛)的复杂协调,以产生平移、旋转和组合运动。然而,由于游泳者与周围流体之间复杂的流体动力耦合,一般很难在致动器和运动策略之间建立简单的关系。虽然许多受生物启发的微型游泳者已经诞生,但要让这些人工游泳者为不同的功能任务制定与生物游泳者类似的有效运动策略,仍然具有挑战性。在这里,我们探索了一种强化学习(RL)方法,使生物启发微型游泳者能够根据不同的功能任务来选择运动策略。我们使用了一个从莱茵衣藻(Chlamydomonas reinhardtii)中提取的生物启发模型游泳器来说明这种方法,该游泳器由一个体球和两个鞭毛球组成。我们首先证明,这种由 RL 驱动的生物启发游泳者可以通过设定相应的学习目标,选择有效的运动策略,使位移最大化或能量输入最小化。我们进一步说明了 RL 如何使生物启发泳者通过多模式运动策略实现多向导航,在前进步态和转向步态之间协调切换。我们的方法为设计具有多模态运动能力的生物启发微型游泳器开辟了一条新途径。
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来源期刊
Soft Matter
Soft Matter 工程技术-材料科学:综合
CiteScore
6.00
自引率
5.90%
发文量
891
审稿时长
1.9 months
期刊介绍: Soft Matter is an international journal published by the Royal Society of Chemistry using Engineering-Materials Science: A Synthesis as its research focus. It publishes original research articles, review articles, and synthesis articles related to this field, reporting the latest discoveries in the relevant theoretical, practical, and applied disciplines in a timely manner, and aims to promote the rapid exchange of scientific information in this subject area. The journal is an open access journal. The journal is an open access journal and has not been placed on the alert list in the last three years.
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