Efficient learning of robust multigait quadruped locomotion for minimizing the cost of transport
Zhicheng WANG , Xin ZHAO , Meng Yee (Michael) CHUAH , Zhibin LI , Jun WU , Qiuguo ZHU
Front. Inform. Technol. Electron. Eng ›› 2025, Vol. 26 ›› Issue (9) : 1679 -1691.
Efficient learning of robust multigait quadruped locomotion for minimizing the cost of transport
Quadruped robots are able to exhibit a range of gaits, each with its own traversability and energy efficiency characteristics. By actively coordinating between gaits in different scenarios, energy-efficient and adaptive locomotion can be achieved. This study investigates the performances of learned energy-efficient policies for quadrupedal gaits under different commands. We propose a training-synthesizing framework that integrates learned gait-conditioned locomotion policies into an efficient multiskill locomotion policy. The resulting control policy achieves low-cost smooth switching and controllable gaits. Our results of the learned multiskill policy demonstrate seamless gait transitions while maintaining energy optimality across all commands.
Reinforcement learning / Locomotion / Motor learning / Energy efficiency
Zhejiang University Press
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