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Real-World Reinforcement Learning for Autonomous Humanoid Robot Charging in a Home Environment

机译:自主人形机器人在家庭环境中充电的真实加固学习

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In this paper we investigate and develop a real-world reinforcement learning approach to autonomously recharge a humanoid Nao robot [1]. Using a supervised reinforcement learning approach, combined with a Gaussian distributed states activation, we are able to teach the robot to navigate towards a docking station, and thus extend the duration of autonomy of the Nao by recharging. The control concept is based on visual information provided by naomarks and six basic actions. It was developed and tested using a real Nao robot within a home environment scenario. No simulation was involved. This approach promises to be a robust way of implementing real-world reinforcement learning, has only few model assumptions and offers faster learning than conventional Q-learning or SARSA.
机译:在本文中,我们调查并开发了一个真正的加强学习方法,以自主充电人形NAO机器人[1]。使用监督的强化学习方法,结合高斯分布式状态激活,我们能够教导机器人朝向对接站导航,从而通过再充电来延长NAO的自主性持续时间。控制概念基于Naomarks提供的视觉信息和六种基本动作。它是在家庭环境场景中使用真正的NAO机器人开发和测试。没有涉及模拟。这种方法有望成为实现真实世界强力学习的强大方法,只有很少的模型假设,并且比传统的Q-Learning或Sarsa提供更快的学习。

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