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Saving the Limping: Fault-tolerant Quadruped Locomotion via Reinforcement Learning

Dikai Liu, Tianwei Zhang, Jianxiong Yin, Simon See

发表年份
2022
引用次数
3
访问权限
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摘要

Modern quadrupeds are skillful in traversing or even sprinting on uneven terrains in a remote uncontrolled environment. However, survival in the wild requires not only maneuverability, but also the ability to handle potential critical hardware failures. How to grant such ability to quadrupeds is rarely investigated. In this paper, we propose a novel methodology to train and test hardware fault-tolerant controllers for quadruped locomotion, both in the simulation and physical world. We adopt the teacher-student reinforcement learning framework to train the controller with close-to-reality joint-locking failure in the simulation, which can be zero-shot transferred to the physical robot without any fine-tuning. Extensive experiments show that our fault-tolerant controller can efficiently lead a quadruped stably when it faces joint failures during locomotion.

关键词

TraverseReinforcement learningTerrainFault toleranceRobotController (irrigation)Computer scienceSimulationReinforcementJoint (building)

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