Learning Locomotion For Legged Robots Based on Reinforcement Learning: A Survey

Jinghong Yue
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引用次数: 8

Abstract

The legged robot can adapt to almost any kind of complex terrain and overcome all kinds of obstacles. So to this day, many people are working on using leg-based robots for complex locomotion tasks. It is tractable and difficult to achieve the agile locomotion of quadruped robots. Conventional controllers always need a lot of professional experience and lots of time to debug and tune the parameters. Deep reinforcement learning(DRL) can learn the effective skills from trails directly in practice, which holds the promising to overcome the limitation of the conventional controllers. Therefore, we have surveyed the current research working on learning locomotion skills via DRL techniques; and compare two commonly used DRL algorithms to learn the locomotion skills on a constructed simulation task.
基于强化学习的腿式机器人学习运动研究进展
这种有腿的机器人几乎可以适应任何复杂的地形,克服各种障碍。所以直到今天,许多人都在研究使用基于腿的机器人来完成复杂的运动任务。四足机器人的敏捷运动是一种复杂而困难的运动方式。传统的控制器总是需要大量的专业经验和大量的时间来调试和调整参数。深度强化学习(DRL)可以直接在实践中从轨迹中学习有效技能,有望克服传统控制器的局限性。因此,我们对目前运用DRL技术学习运动技能的研究进行了综述;并比较两种常用的DRL算法,以学习在构建的模拟任务上的移动技能。
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