Exoskeleton Control through Learning to Reduce Biological Joint Moments in Simulations
Zihang You, Xianlian Zhou

TL;DR
This paper introduces a reinforcement learning framework to develop exoskeleton assistance policies that effectively reduce biological joint moments, validated through a new pipeline comparing simulation predictions with real gait data.
Contribution
It presents a novel RL-based method for training exoskeleton controllers and a validation pipeline to verify their performance against biological data.
Findings
High correlation between predicted and biological joint moments, especially at the hip.
Assistance strategies preserve task trends across different walking speeds and inclines.
Discrepancies increase at higher speeds and steeper inclines, highlighting transfer challenges.
Abstract
Data-driven joint-moment predictors offer a scalable alternative to laboratory-based inverse-dynamics pipelines for biomechanics estimation and exoskeleton control. Meanwhile, physics-based reinforcement learning (RL) enables simulation-trained controllers to learn dynamics-aware assistance strategies without extensive human experimentation. However, quantitative verification of simulation-trained exoskeleton torque predictors, and their impact on human joint power injection, remains limited. This paper presents (1) an RL framework to learn exoskeleton assistance policies that reduce biological joint moments, and (2) a validation pipeline that verifies the trained control networks using an open-source gait dataset through inference and comparison with biological joint moments. Simulation-trained multilayer perceptron (MLP) controllers are developed for level-ground and ramp walking,…
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Taxonomy
TopicsProsthetics and Rehabilitation Robotics · Balance, Gait, and Falls Prevention · Muscle activation and electromyography studies
