Learning to Adapt through Bio-Inspired Gait Strategies for Versatile Quadruped Locomotion
Learning to Adapt through Bio-Inspired Gait Strategies for Versatile Quadruped Locomotion
Legged robots must adapt their gait to navigate unpredictable environments, a challenge that animals master with ease. However, most deep reinforcement learning (DRL) approaches to quadruped locomotion rely on a fixed gait, limiting adaptability to changes in terrain and dynamic state. Here we show that integrating three core principles of animal locomotion-gait transition strategies, gait memory and real-time motion adjustments enables a DRL control framework to fluidly switch among multiple gaits and recover from instability, all without external sensing. Our framework is guided by biomechanics-inspired metrics that capture efficiency, stability and system limits, which are unified to inform optimal gait selection. The resulting framework achieves blind zero-shot deployment across diverse, real-world terrains and substantially significantly outperforms baseline controllers. By embedding biological principles into data-driven control, this work marks a step towards robust, efficient and versatile robotic locomotion, highlighting how animal motor intelligence can shape the next generation of adaptive machines.
Joseph Humphreys、Chengxu Zhou
生物科学理论、生物科学方法动物学自动化技术、自动化技术设备计算技术、计算机技术
Joseph Humphreys,Chengxu Zhou.Learning to Adapt through Bio-Inspired Gait Strategies for Versatile Quadruped Locomotion[EB/OL].(2025-06-22)[2025-07-16].https://arxiv.org/abs/2412.09440.点此复制
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