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Muscle Synergy Priors Enhance Biomechanical Fidelity in Predictive Musculoskeletal Locomotion Simulation

arXiv cs.LG / 3/12/2026

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Key Points

  • We present a physiology-informed reinforcement-learning framework that constrains muscle-driven locomotion control using a low-dimensional muscle-synergy basis derived from inverse analyses of walking trials.
  • The synergy-based action space enables a 3D musculoskeletal model to achieve stable gait from 0.7–1.8 m/s across variable speeds, slopes, and uneven terrain, reproducing condition-dependent joint angles, moments, and ground reaction forces.
  • Compared with an unconstrained controller, synergy-constrained RL reduces non-physiological knee kinematics and keeps knee moment profiles within the experimental envelope, with simulated vertical ground reaction forces and muscle-activation timing aligning with human data.
  • The study demonstrates that embedding neurophysiological structure into reinforcement learning can improve biomechanical fidelity and generalization in predictive human locomotion simulation with limited experimental data.

Abstract

Human locomotion emerges from high-dimensional neuromuscular control, making predictive musculoskeletal simulation challenging. We present a physiology-informed reinforcement-learning framework that constrains control using muscle synergies. We extracted a low-dimensional synergy basis from inverse musculoskeletal analyses of a small set of overground walking trials and used it as the action space for a muscle-driven three-dimensional model trained across variable speeds, slopes and uneven terrain. The resulting controller generated stable gait from 0.7-1.8 m/s and on \pm 6^{\circ} grades and reproduced condition-dependent modulation of joint angles, joint moments and ground reaction forces. Compared with an unconstrained controller, synergy-constrained control reduced non-physiological knee kinematics and kept knee moment profiles within the experimental envelope. Across conditions, simulated vertical ground reaction forces correlated strongly with human measurements, and muscle-activation timing largely fell within inter-subject variability. These results show that embedding neurophysiological structure into reinforcement learning can improve biomechanical fidelity and generalization in predictive human locomotion simulation with limited experimental data.