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Learning Arm Motion Strategies for Balance Recovery of Humanoid Robots

Masaki Nakada, Brian F. Allen, Shigeo Morishima, Demetri Terzopoulos

发表年份
2010
引用次数
11

摘要

Humans are able to robustly maintain balance in the presence of disturbances by combining a variety of control strategies using posture adjustments and limb motions. Such responses can be applied to balance control in two-armed bipedal robots. We present an upper-body control strategy for improving balance in a humanoid robot. Our method improves on lower-body balance techniques by introducing an arm rotation strategy (ARS). The ARS uses Q-learning to map sensed state to the appropriate arm control torques. We demonstrate successful balance in a physically-simulated humanoid robot, in response to perturbations that overwhelm lower-body balance strategies alone.

关键词

Humanoid robotBalance (ability)RobotDynamic balanceComputer scienceTorqueControl theory (sociology)Motion (physics)Robot controlSimulation

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