首页|Perception-Driven Learning of High-Dynamic Jumping Motions for Single-Legged Robots

Perception-Driven Learning of High-Dynamic Jumping Motions for Single-Legged Robots

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Legged robots show great potential for high-dynamic motions in continuous interaction with the physical environment,yet achieving animal-like agility remains significant challenges.Legged animals usually predict and plan their next locomotion by combining high-dimensional information from proprioception and exteroception,and adjust the stiffness of the body's skeletal muscle system to adapt to the current environment.Traditional control methods have limitations in handling high-dimensional state information or complex robot motion that are difficult to plan manually,and Deep Reinforcement Learn-ing(DRL)algorithms provide new solutions to robot motioncontrol problems.Inspired by biomimetics theory,we propose a perception-driven high-dynamic jump adaptive learning algorithm by combining DRL algorithms with Virtual Model Control(VMC)method.The robot will be fully trained in simulation to explore its motion potential by learning the factors related to continuous jumping while knowing its real-time jumping height.The policy trained in simulation is successfully deployed on the bio-inspired single-legged robot testing platform without further adjustments.Experimental results show that the robot can achieve continuous and ideal vertical jumping motion through simple training

Deep reinforcement learningHigh-dynamic jumpPerception drivenSingle-legged robot

Nengxiang Sun、Fei Meng、Sai Gu、Botao Liu、Xuechao Chen、Zhangguo Yu、Qiang Huang

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School of Mechatronical Engineering,Beijing Institute of Technology,Beijing 100081,China

Key Laboratory of Biomimetic Robots and Systems,Ministry of Education,Beijing 100081,China

National Key Research Program of China

2018AAA0100103

2024

仿生工程学报(英文版)
吉林大学

仿生工程学报(英文版)

CSTPCDEI
影响因子:0.837
ISSN:1672-6529
年,卷(期):2024.21(4)
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