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A Motion Planning Method Based on HRL for Autonomous Exoskeleton

机译:基于HRL的自主外骨骼运动的运动规划方法

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With the increase of the world's population and the serious aging phenomenon, more and more people with mobility impairments need technology to assist them in their daily lives. Autonomous Exoskeleton are one of the important technologies. The existing gait generation algorithm are most based on simplified mathematical model calculations, which have the problem of poor accuracy and unfriendliness to the wearer. This research aims to propose a path planning and gait generation policies (HPPO) based on hierarchical reinforcement learning (HRL), so that the wearer can safely avoid obstacles and maintain dynamic balance when using the autonomous exoskeleton controlled by this policy to walk. The high-level controller (HL) is responsible for path planning, it can quickly plan a reasonable exoskeleton footholds in the indoor environment. The low-level controller (LL) can imitate a given reference trajectory, learn a walking policy suitable for the exoskeleton, and it can follow the planned footholds, so as to achieve the purpose of avoiding obstacles for the wearer. The algorithm is verified in simulation environment.
机译:随着世界人口的增加和严重的老化现象,越来越多的流动性障碍的人需要技术来帮助他们在日常生活中。自主外骨骼是重要的技术之一。现有的步态生成算法最基于简化的数学模型计算,这对佩戴者的准确性和不友善不佳存在。本研究旨在提出基于等级强化学习(HRL)的路径规划和步态生成政策(HPPO),以便在使用这项政策控制的自主外骨骼时,穿着者可以安全地避免障碍物并保持动态平衡。高级控制器(HL)负责路径规划,它可以在室内环境中快速计划合理的外骨骼立足点。低级控制器(LL)可以模仿给定的参考轨迹,了解适合外骨骼的行走政策,可以遵循计划的立足点,以达到避免佩戴者障碍物的目的。仿真环境中验证了算法。

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