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Distributed Adaptive Locomotion Learning in ModRED Modular Self-reconfigurable Robot

机译:在模块化的自我可重新配置机器人中分布式自适应运动学习

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We study the problem of adaptive locomotion learning for modular self-reconfigurable robots (MSRs). MSRs are mostly used in unknown and difficult-to-navigate environments where they can take a completely new shape to accomplish the current task at hand. Therefore it is almost impossible to develop the control sequences for all possible configurations with varying shape and size. The modules have to learn and adapt their locomotion in dynamic time to be more robust in nature. In this paper, we propose a Q-learning based locomotion adaptation strategy which balances exploration versus exploitation in a more sophisticated fashion. We have applied our proposed strategy mainly on the ModRED modular robot within the Webots simulator environment. To show the generalizability of our approach, we have also applied it on a Yamor modular robot. Experimental results show that our proposed technique outperforms a random locomotion strategy and it is able to adapt to module failures.
机译:我们研究模块化自我可重构机器人(MSRS)的自适应运动学习问题。 MSRS主要用于未知且难以导航的环境,在那里他们可以采取全新的形状来完成当前的任务。因此,对于具有不同形状和尺寸的所有可能的配置,几乎不可能开发控制序列。该模块必须在动态时间中学习和调整它们的运动,本质上更加强大。在本文中,我们提出了一种基于Q学习的机置适应策略,以更复杂的方式平衡勘探与利用。我们主要在博彩模拟器环境中主要应用于模型模块化机器人的拟议策略。为了展示我们的方法的普遍性,我们还将其应用于Yamor模块化机器人。实验结果表明,我们所提出的技术优于随机运动策略,它能够适应模块故障。

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