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Exploring Behaviors of Caterpillar-Like Soft Robots with a Central Pattern Generator-Based Controller and Reinforcement Learning

机译:基于中央模式生成器的控制器和强化学习探索类似卡特彼勒的软机器人的行为

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摘要

Due to their flexibility, soft-bodied robots can potentially achieve rich and various behaviors within a single body. However, to date, no methodology has effectively harnessed these robots to achieve such diverse desired functionalities. Controllers that accomplish only a limited range of behaviors in such robots have been handcrafted. Moreover, the behaviors of these robots should be determined through body–environment interactions because an appropriate behavior may not always be manifested even if the body dynamics are given. Therefore, we have proposed SenseCPG-PGPE, a method for automatically designing behaviors for caterpillar-like soft-bodied robots. This method optimizes mechanosensory feedback to a central pattern generator (CPG)-based controller, which controls actuators in a robot, using policy gradients with parameter-based exploration (PGPE). In this article, we deeply investigated this method. We found that PGPE can optimize a CPG-based controller for soft-bodied robots that exhibit viscoelasticity and large deformation, whereas other popular policy gradient methods, such as trust region policy optimization and proximal policy optimization, cannot. Scalability of the method was confirmed using simulation as well. Although SenseCPG-PGPE uses a CPG-based controller, it can achieve nonsteady motion such as climbing a step in a simulated robot. The approach also resulted in distinctive behaviors depending on different body–environment conditions. These results demonstrate that the proposed method enables soft robots to explore a variety of behaviors automatically.
机译:由于其灵活性,轻巧的机器人可以在单个体内实现丰富多样的行为。但是,迄今为止,还没有方法可以有效地利用这些机器人来实现如此多样化的所需功能。在这种机器人中只能完成有限行为范围的控制器都是手工制作的。此外,这些机器人的行为应通过身体与环境的相互作用来确定,因为即使给出了身体动力学,也不一定总是表现出适当的行为。因此,我们提出了SenseCPG-PGPE,这是一种为毛毛虫状的软体机器人自动设计行为的方法。此方法可优化对基于中央模式生成器(CPG)的控制器的机械感测反馈,该控制器使用基于参数的探索(PGPE)的策略梯度来控制机器人中的执行器。在本文中,我们对这种方法进行了深入研究。我们发现PGPE可以为表现出粘弹性和大变形的软体机器人优化基于CPG的控制器,而其他流行的策略梯度方法(例如信任区域策略优化和近端策略优化)则不能。该方法的可扩展性也通过仿真得到了证实。尽管SenseCPG-PGPE使用基于CPG的控制器,但它可以实现非稳定运动,例如在模拟机器人中爬上台阶。该方法还根据不同的身体环境条件产生了独特的行为。这些结果表明,该方法使软机器人能够自动探索各种行为。

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