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Title

Dynamic Fall Recovery Control for Legged Robots via Reinforcement Learning.

Authors

Li, Sicen; Pang, Yiming; Bai, Panju; Hu, Shihao; Wang, Liquan; Wang, Gang

Abstract

Falling is inevitable for legged robots when deployed in unstructured and unpredictable real-world scenarios, such as uneven terrain in the wild. Therefore, to recover dynamically from a fall without unintended termination of locomotion, the robot must possess the complex motor skills required for recovery maneuvers. However, this is exceptionally challenging for existing methods, since it involves multiple unspecified internal and external contacts. To go beyond the limitation of existing methods, we introduced a novel deep reinforcement learning framework to train a learning-based state estimator and a proprioceptive history policy for dynamic fall recovery under external disturbances. The proposed learning-based framework applies to different fall cases indoors and outdoors. Furthermore, we show that the learned fall recovery policies are hardware-feasible and can be implemented on real robots. The performance of the proposed approach is evaluated with extensive trials using a quadruped robot, which shows good effectiveness in recovering the robot after a fall on flat surfaces and grassland.

Subjects

DEEP reinforcement learning; ROBOT control systems; REINFORCEMENT learning; MOTOR ability

Publication

Biomimetics (2313-7673), 2024, Vol 9, Issue 4, p193

ISSN

2313-7673

Publication type

Academic Journal

DOI

10.3390/biomimetics9040193

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