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Hierarchical reinforcement learning with central pattern generator for enabling a quadruped robot simulator to walk on a variety of terrains

Toshiki Watanabe, Akihiro Kubo, Tatsuya Matsuba, Yukihiro Noda, Hiroaki Kioka, Jun Izawa, Shin Ishii, Yutaka Nakamura

发表年份
2025
引用次数
5
访问权限
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摘要

We present a data-driven deep reinforcement learning (DRL) method for the optimization of a hierarchically structured control policy that includes the central pattern generator. This method, which is as a whole referred to as the hierarchical reinforcement learning with the central pattern generator (HRL-CPG), is then evaluated with the expectation of its applicability in real robot controls. We observed that stable gait motions were gained in a reasonably small number of trials and errors. Thus, it can be deduced that our HRL-CPG can be a candidate DRL method that enables dynamical systems such as real or realistic robots to adapt to a variety of environments within a moderate physical time.

关键词

Reinforcement learningCentral pattern generatorComputer scienceRobotTerrainGenerator (circuit theory)Variety (cybernetics)GaitArtificial intelligenceSimulation

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