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IROS
2006
IEEE

Fast and Stable Learning of Quasi-Passive Dynamic Walking by an Unstable Biped Robot based on Off-Policy Natural Actor-Critic

14 years 5 months ago
Fast and Stable Learning of Quasi-Passive Dynamic Walking by an Unstable Biped Robot based on Off-Policy Natural Actor-Critic
— Recently, many researchers on humanoid robotics are interested in Quasi-Passive-Dynamic Walking (Quasi-PDW) which is similar to human walking. It is desirable that control parameters in Quasi-PDW are automatically adjusted because robots often suffer from changes in their physical parameters and the surrounding environment. Reinforcement learning (RL) can be a key technology to this adaptability, and it has been shown that RL realizes Quasi-PDW in a simulation study. To apply the existing method to controlling real robots, however, requires further improvement to accelerate its learning, otherwise the robots will break down before acquiring appropriate controls. To accelerate the learning, this study employs off-policy natural actor-critic (off-NAC), and applies it to an acquisition problem of Quasi-PDW. The most important feature of the off-NAC is that it reuses the samples that has already been obtained by previous controllers. This study also shows an adaptive method of the lear...
Tsuyoshi Ueno, Yutaka Nakamura, Takashi Takuma, To
Added 12 Jun 2010
Updated 12 Jun 2010
Type Conference
Year 2006
Where IROS
Authors Tsuyoshi Ueno, Yutaka Nakamura, Takashi Takuma, Tomohiro Shibata, Koh Hosoda, Shin Ishii
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