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Online Learning of Centroidal Angular Momentum towards Enhancing DCM-based Locomotion

Robert Schuller, George Mesesan, Johannes Englsberger, Jinoh Lee, Christian Ott

Year
2022
Citations
8

Abstract

Gait generation frameworks for humanoid robots typically assume a constant centroidal angular momentum (CAM) throughout the walking cycle, which induces undesirable contact torques in the feet and results in performance degradation. In this work, we present a novel algorithm to learn the CAM online and include the obtained knowledge within the closed-form solutions of the Divergent Component of Motion (DCM) locomotion framework. To ensure a reduction of the contact torques at the desired center of pressure position, a CAM trajectory is generated and explicitly tracked by a whole-body controller. Experiments with the humanoid robot TORO demonstrate that the proposed method significantly increases the maximum step length and walking speed during locomotion.

Keywords

Humanoid robotTorqueTrajectoryControl theory (sociology)Angular momentumRobotComputer sciencePosition (finance)Controller (irrigation)Center of pressure (fluid mechanics)

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