Abstract
In this paper, we investigate a reinforcement learning of walking behavior for a four-legged robot. The robot has two servo motors per leg, so this problem has eight-dimensional continuous state/action space. We present an action selection scheme for actor-critic algorithms, in which the actor selects a continuous action from its bounded action space by using the normal distribution. The experimental results show the robot successfully learns to walk in practical learning steps.
Cite
CITATION STYLE
Kimura, H., Yamashita, T., & Kobayashi, S. (2001). Reinforcement learning of walking behavior for a four-legged robot. In Proceedings of the IEEE Conference on Decision and Control (Vol. 1, pp. 411–416). https://doi.org/10.1541/ieejeiss1987.122.3_330
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