LEARNING
A simple reinforcement learning algorithm for biped walking
Jun Morimoto, Gordon Cheng, Christopher G. Atkeson, Garth Zeglin
- Year
- 2004
- Citations
- 77
Abstract
We propose a model-based reinforcement learning algorithm for biped walking in which the robot learns to appropriately place the swing leg. This decision is based on a learned model of the Poincare map of the periodic walking pattern. The model maps from a state at the middle of a step and foot placement to a state at next middle of a step. We also modify the desired walking cycle frequency based on online measurements. We present simulation results, and are currently implementing this approach on an actual biped robot.
Keywords
Reinforcement learningSwingRobotComputer scienceBiped robotSimple (philosophy)State (computer science)Artificial intelligenceControl theory (sociology)Algorithm
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