Musculoskeletal Motion Imitation for Learning Personalized Exoskeleton Control Policy in Impaired Gait
2026-04-10 • Robotics
Robotics
AI summaryⓘ
The authors developed a new method that uses computer simulations of muscles and reinforcement learning to create control systems for lower-limb exoskeletons. Their approach works for both healthy people and those with walking impairments, producing natural movement patterns and adapting automatically to different walking speeds. This method can predict helpful assistance without needing lots of physical testing or manual tuning. It also models how people with muscle problems adjust their gait and provides personalized support that improves walking efficiency and symmetry.
lower-limb exoskeletonreinforcement learningmusculoskeletal simulationgait dynamicsassistive torquemetabolic costkinematic symmetrypersonalized controlmuscular deficitspathological gait
Authors
Itak Choi, Ilseung Park, Eni Halilaj, Inseung Kang
Abstract
Designing generalizable control policies for lower-limb exoskeletons remains fundamentally constrained by exhaustive data collection or iterative optimization procedures, which limit accessibility to clinical populations. To address this challenge, we introduce a device-agnostic framework that combines physiologically plausible musculoskeletal simulation with reinforcement learning to enable scalable personalized exoskeleton assistance for both able-bodied and clinical populations. Our control policies not only generate physiologically plausible locomotion dynamics but also capture clinically observed compensatory strategies under targeted muscular deficits, providing a unified computational model of both healthy and pathological gait. Without task-specific tuning, the resulting exoskeleton control policies produce assistive torque profiles at the hip and ankle that align with state-of-the-art profiles validated in human experiments, while consistently reducing metabolic cost across walking speeds. For simulated impaired-gait models, the learned control policies yield asymmetric, deficit-specific exoskeleton assistance that improves both energetic efficiency and bilateral kinematic symmetry without explicit prescription of the target gait pattern. These results demonstrate that physiologically plausible musculoskeletal simulation via reinforcement learning can serve as a scalable foundation for personalized exoskeleton control across both able-bodied and clinical populations, eliminating the need for extensive physical trials.