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首页> 外文期刊>The European physical journal, E. Soft matter >Finding efficient swimming strategies in a three-dimensional chaotic flow by reinforcement learning
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Finding efficient swimming strategies in a three-dimensional chaotic flow by reinforcement learning

机译:通过加固学习在三维混沌流中找到高效的游泳策略

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摘要

We apply a reinforcement learning algorithm to show how smart particles can learn approximately optimal strategies to navigate in complex flows. In this paper we consider microswimmers in a paradigmatic three-dimensional case given by a stationary superposition of two Arnold-Beltrami-Childress flows with chaotic advection along streamlines. In such a flow, we study the evolution of point-like particles which can decide in which direction to swim, while keeping the velocity amplitude constant. We show that it is sufficient to endow the swimmers with a very restricted set of actions (six fixed swimming directions in our case) to have enough freedom to find efficient strategies to move upward and escape local fluid traps. The key ingredient is the learning-from-experience structure of the algorithm, which assigns positive or negative rewards depending on whether the taken action is, or is not, profitable for the predetermined goal in the long-term horizon. This is another example supporting the efficiency of the reinforcement learning approach to learn how to accomplish difficult tasks in complex fluid environments.
机译:我们应用加强学习算法来展示智能粒子如何学习近似最佳的策略,以便在复杂流中导航。在本文中,我们认为通过沿着简化的混沌平流的两个Arnold-Beltrami-Childress流动的固定叠加的滑翔机三维案例中的微风。在这样的流动中,我们研究了点状颗粒的演变,可以决定游泳的方向,同时保持速度幅度常数。我们表明,赋予游泳运动员具有非常受限制的行动(我们的案例中的六个固定游泳方向),以获得足够的自由来寻找高效的策略来向上移动和逃避当地流体陷阱。关键成分是算法的学习 - 从体验结构,这取决于所采取的动作是否是所采取的行动,或者不是,在长期地平线中的预定目标有利可图。这是支持加强学习方法效率的另一个示例,以了解如何在复杂的流体环境中实现困难的任务。

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  • 作者单位

    Univ Gothenburg Dept Phys Origovagen 6 B S-41296 Gothenburg Sweden;

    Univ Roma Tor Vergata Dept Phys Via Ric Sci 1 I-00133 Rome Italy;

    Abdus Salam Int Ctr Theoret Phys Quantitat Life Sci Str Costiera 11 I-34151 Trieste Italy;

    Univ Roma Tor Vergata Dept Phys Via Ric Sci 1 I-00133 Rome Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 物理学;
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