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Distributed reinforcement learning for self-reconfiguring modular robots

机译:用于自重构模块化机器人的分布式强化学习

摘要

In this thesis, we study distributed reinforcement learning in the context of automating the design of decentralized control for groups of cooperating, coupled robots. Specifically, we develop a framework and algorithms for automatically generating distributed controllers for self-reconfiguring modular robots using reinforcement learning. The promise of self-reconfiguring modular robots is that of robustness, adaptability and versatility. Yet most state-of-the-art distributed controllers are laboriously handcrafted and task-specific, due to the inherent complexities of distributed, local-only control. In this thesis, we propose and develop a framework for using reinforcement learning for automatic generation of such controllers. The approach is profitable because reinforcement learning methods search for good behaviors during the lifetime of the learning agent, and are therefore applicable to online adaptation as well as automatic controller design. However, we must overcome the challenges due to the fundamental partial observability inherent in a distributed system such as a self reconfiguring modular robot. We use a family of policy search methods that we adapt to our distributed problem. The outcome of a local search is always influenced by the search space dimensionality, its starting point, and the amount and quality of available exploration through experience.
机译:在本文中,我们研究了在协作控制,耦合机器人组的分散控制自动化设计背景下的分布式强化学习。具体来说,我们开发了一种框架和算法,用于使用强化学习为自重构模块化机器人自动生成分布式控制器。自我重新配置的模块化机器人的承诺是鲁棒性,适应性和多功能性。然而,由于分布式,仅本地控制的内在复杂性,大多数最先进的分布式控制器都是手工精心制作的并且是针对特定任务的。在本文中,我们提出并开发了一种框架,用于使用强化学习来自动生成此类控制器。该方法是有利可图的,因为强化学习方法会在学习代理的整个生命周期内搜索良好的行为,因此适用于在线适应以及自动控制器设计。但是,由于诸如自动重配置模块化机器人之类的分布式系统固有的基本局部可观察性,我们必须克服挑战。我们使用一系列策略搜索方法来适应分布式问题。本地搜索的结果始终受搜索空间维度,其起点以及通过经验获得的可用探索的数量和质量的影响。

著录项

  • 作者

    Varshavskaya Paulina;

  • 作者单位
  • 年度 2007
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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