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首页> 外文期刊>The International journal of robotics research >Million Module March: Scalable Locomotion for Large Self-Reconfiguring Robots
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Million Module March: Scalable Locomotion for Large Self-Reconfiguring Robots

机译:百万模块游行:大型自我重新配置机器人的可扩展运动

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摘要

Self-reconfiguring robots have the potential to explore highly variable terrain, operating as parallel groups or combining to surmount large obstacles. If the modules are at a smaller scale, they may also be able to physically render arbitrary shapes in an interactive way. In order to realize these capabilities, groups with large numbers of modules must be used, and algorithms to control such large groups must be extremely scalable in order to be executed on simple modules. In this work, we present an algorithm for locomotion of lattice-based self-reconfiguring robots that uses constant memory per module with execution times that are sublinear in the number of modules. The algorithm is inspired by reinforcement learning and uses dynamic programming to plan module paths in parallel. We have also developed a novel localized cooperation scheme that allows the modules to move both without disconnecting the system and with small amounts of communication. The combined algorithm is able to direct locomotion over arbitrary obstacles, and due to continuous replanning the goal can be moved at any time to 'joystick' the robot over the environment. The formulation of the goal used in the planning also encourages dynamic stability. We have developed both centralized and decentralized implementations in simulation, as well as an implementation for the Superbot system, and present empirical results showing the sublinear nature of our technique.
机译:自我重组的机器人具有探索高度变化的地形的潜力,可以作为并行组操作或组合以克服较大的障碍。如果模块规模较小,则它们也可能能够以交互方式物理渲染任意形状。为了实现这些功能,必须使用具有大量模块的组,并且控制此类大组的算法必须具有极大的可伸缩性,以便在简单的模块上执行。在这项工作中,我们提出了一种用于基于格的自重构机器人运动的算法,该算法对每个模块使用恒定的内存,执行时间在模块数量上是次线性的。该算法的灵感来自强化学习,并使用动态编程来并行计划模块路径。我们还开发了一种新颖的本地化合作方案,该方案允许模块在不断开系统连接的情况下进行移动,并且通信量很少。组合算法能够将运动定向到任意障碍物上,并且由于进行了连续的重新规划,因此可以随时移动目标,以“操纵杆”操纵机器人。规划中使用的目标的制定还鼓励动态稳定性。我们已经在仿真中开发了集中式和分散式实现,以及Superbot系统的实现,并提供了经验结果,表明了我们技术的亚线性性质。

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