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Published April 18, 2022 | Published
Journal Article Open

Neural Gaits: Learning Bipedal Locomotion via Control Barrier Functions and Zero Dynamics Policies

Abstract

This work presents Neural Gaits, a method for learning dynamic walking gaits through the enforcement of set invariance that can be refined episodically using experimental data from the robot. We frame walking as a set invariance problem enforceable via control barrier functions (CBFs) defined on the reduced-order dynamics quantifying the underactuated component of the robot: the zero dynamics. Our approach contains two learning modules: one for learning a policy that satisfies the CBF condition, and another for learning a residual dynamics model to refine imperfections of the nominal model. Importantly, learning only over the zero dynamics significantly reduces the dimensionality of the learning problem while using CBFs allows us to still make guarantees for the full-order system. The method is demonstrated experimentally on an underactuated bipedal robot, where we are able to show agile and dynamic locomotion, even with partially unknown dynamics.

Additional Information

© 2022 I.D. Jimenez Rodriguez, N. Csomay-Shanklin, Y. Yue & A.D. Ames. The authors would like to thank Min Dai, Ryan Cosner, and Andrew Taylor for their insightful discussions related to walking, barrier functions, and projection to state safety.

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Created:
August 20, 2023
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October 23, 2023