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arxiv:2503.01842

Discrete-Time Hybrid Automata Learning: Legged Locomotion Meets Skateboarding

Published on Mar 3
· Submitted by Hang917 on Mar 5
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Abstract

This paper introduces Discrete-time Hybrid Automata Learning (DHAL), a framework using on-policy Reinforcement Learning to identify and execute mode-switching without trajectory segmentation or event function learning. Hybrid dynamical systems, which include continuous flow and discrete mode switching, can model robotics tasks like legged robot locomotion. Model-based methods usually depend on predefined gaits, while model-free approaches lack explicit mode-switching knowledge. Current methods identify discrete modes via segmentation before regressing continuous flow, but learning high-dimensional complex rigid body dynamics without trajectory labels or segmentation is a challenging open problem. Our approach incorporates a beta policy distribution and a multi-critic architecture to model contact-guided motions, exemplified by a challenging quadrupedal robot skateboard task. We validate our method through simulations and real-world tests, demonstrating robust performance in hybrid dynamical systems.

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💫Discrete-Time Hybrid Automata Learning: Legged Locomotion Meets Skateboarding

Paper: https://arxiv.org/abs/2503.01842
Website: https://umich-curly.github.io/DHAL/
Twitter: https://x.com/uint8_Lau/status/1896917272486347244

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