This paper presents a method to learn stepping motions for fall avoidance by reinforcement learning. In order to overcome the curse of dimensionality associated with the large number of degrees of freedom with a humanoid robot, we consider learning on a reduced dimension state space based on a simplified inverted pendulum model. The proposed method is applied to a humanoid robot in numerical simulations, and simulation results demonstrate the feasibility of the proposed method as a mean to acquire appropriate stepping motions in order to avoid falling due to external perturbations.
CITATION STYLE
Maruyama, J., Matsubara, T., Hale, J. G., & Morimoto, J. (2009). Learning Stepping Motions for Fall Avoidance with Reinforcement Learning. Journal of the Robotics Society of Japan, 27(5), 527–537. https://doi.org/10.7210/jrsj.27.527
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