4.6 Article

Learning Complex Motor Skills for Legged Robot Fall Recovery

Journal

IEEE ROBOTICS AND AUTOMATION LETTERS
Volume 8, Issue 7, Pages 4307-4314

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2023.3281290

Keywords

Machine learning for robot control; reinforcement learning; sensorimotor learning; legged robots

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Falling is inevitable for legged robots in challenging real-world scenarios. We propose a deep reinforcement learning approach to learn generalized feedback-control policies for fall recovery that are robust to external disturbances. Our proposed pipeline is applicable to different robot models and can be implemented on real robots.
Falling is inevitable for legged robots in challenging real-world scenarios, where environments are unstructured and situations are unpredictable, such as uneven terrain in the wild. Hence, to recover from falls and achieve all-terrain traversability, it is essential for intelligent robots to possess the complex motor skills required to resume operation. To go beyond the limitation of handcrafted control, we investigated a deep reinforcement learning approach to learn generalized feedback-control policies for fall recovery that are robust to external disturbances. We proposed a design guideline for selecting key states for initialization, including a comparison to the random state initialization. The proposed learning-based pipeline is applicable to different robot models and their corner cases, including both small-/large-size bipeds and quadrupeds. Further, we show that the learned fall recovery policies are hardware-feasible and can be implemented on real robots.

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