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Teaching Quadruped to Walk Using Fault Adaptive Deep Reinforcement Learning Algorithm

机译:使用故障自适应深度加强学习算法教学Quadruped走路

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Reinforcement learning holds the promise of enabling autonomous robots to learn behavioural skills with minimal human intervention. Reinforcement learning in robotics allows designing an algorithm that makes a robot learn a specific task by itself and arrive at an optimal policy that accomplishes its task without being specifically programmed to do so. This paper demonstrates the approach of using Deep reinforcement Learning in Teaching a quadruped robot how to walk, without programming it specifically to do so, and how to utilize the ability of self-learning robots in fault adaptive control algorithm based on reinforcement learning to teach the robot to adapt to faults and accomplish its mission.
机译:强化学习具有使自治机器人能够以最小的人为干预来学习行为技能的承担。 机器人中的加固学习允许设计一种使机器人自身学习特定任务的算法,并到达最佳策略,以完成其任务而不专门编程为这样做。 本文展示了使用深度加强学习在教授一个Quadruced Robot时如何行走的方法,而无需编程,特别是这样做,以及如何利用自学习机器人在基于加固学习的故障自适应控制算法中的能力来教导 机器人适应故障并完成其使命。

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