Iteratively Learning Muscle Memory for Legged Robots to Master Adaptive and High Precision Locomotion
Jing Cheng, Yasser G. Alqaham, Zhenyu Gan, Amit K. Sanyal

TL;DR
This paper introduces a scalable control framework combining Iterative Learning Control with a biologically inspired torque library to improve adaptive, high-precision locomotion in legged robots, validated on Cassie and A1.
Contribution
The novel integration of ILC with a generalized torque library enables rapid adaptation and reduces online computation for diverse locomotion tasks.
Findings
Joint tracking errors reduced by up to 85% within seconds.
Framework enables reliable execution of both periodic and nonperiodic gaits.
Control update rates exceed 30 times those of existing methods.
Abstract
This paper presents a scalable and adaptive control framework for legged robots that integrates Iterative Learning Control (ILC) with a biologically inspired torque library (TL), analogous to muscle memory. The proposed method addresses key challenges in robotic locomotion, including accurate trajectory tracking under unmodeled dynamics and external disturbances. By leveraging the repetitive nature of periodic gaits and extending ILC to nonperiodic tasks, the framework enhances accuracy and generalization across diverse locomotion scenarios. The control architecture is data-enabled, combining a physics-based model derived from hybrid-system trajectory optimization with real-time learning to compensate for model uncertainties and external disturbances. A central contribution is the development of a generalized TL that stores learned control profiles and enables rapid adaptation to…
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