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Autonomous Robust Skill Generation Using Reinforcement Learning with Plant Variation

机译:使用带有植物变异的强化学习来自主产生强大的技能

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This paper discusses an autonomous space robot for a truss structure assembly using some reinforcement learning. It is difficult for a space robot to complete contact tasks within a real environment, for example, a peg-in-hole task, because of error between the real environment and the controller model. In order to solve problems, we propose an autonomous space robot able to obtain proficient and robust skills by overcoming error to complete a task. The proposed approach develops skills by reinforcement learning that considers plant variation, that is, modeling error. Numerical simulations and experiments show the proposed method is useful in real environments.
机译:本文讨论了使用一些强化学习的用于桁架结构组装的自主空间机器人。由于真实环境和控制器模型之间的误差,太空机器人很难在真实环境中完成接触任务,例如,孔中钉任务。为了解决问题,我们提出了一种自主的太空机器人,该机器人能够克服错误来完成任务,从而获得熟练而强大的技能。所提出的方法通过考虑植物变异(即建模错误)的强化学习来开发技能。数值仿真和实验表明,该方法在实际环境中是有用的。

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