Learning Hip Exoskeleton Control Policy via Predictive Neuromusculoskeletal Simulation
This work offers a scalable method for developing exoskeleton controllers, reducing the need for extensive motion-capture data and experimental burden for researchers and developers in biomechanics and robotics.
This paper developed a hip-exoskeleton control policy entirely in simulation using a physics-based neuromusculoskeletal learning framework. The exoskeleton assistance reduced mean muscle activation by up to 3.4% and mean positive joint power by up to 7.0% in simulation, and these assistance profiles transferred to hardware with high fidelity (r: 0.82, RMSE: 0.03 Nm/kg).
Developing exoskeleton controllers that generalize across diverse locomotor conditions typically requires extensive motion-capture data and biomechanical labeling, limiting scalability beyond instrumented laboratory settings. Here, we present a physics-based neuromusculoskeletal learning framework that trains a hip-exoskeleton control policy entirely in simulation, without motion-capture demonstrations, and deploys it on hardware via policy distillation. A reinforcement learning teacher policy is trained using a muscle-synergy action prior over a wide range of walking speeds and slopes through a two-stage curriculum, enabling direct comparison between assisted and no-exoskeleton conditions. In simulation, exoskeleton assistance reduces mean muscle activation by up to 3.4% and mean positive joint power by up to 7.0% on level ground and ramp ascent, with benefits increasing systematically with walking speed. On hardware, the assistance profiles learned in simulation are preserved across matched speed-slope conditions (r: 0.82, RMSE: 0.03 Nm/kg), providing quantitative evidence of sim-to-real transfer without additional hardware tuning. These results demonstrate that physics-based neuromusculoskeletal simulation can serve as a practical and scalable foundation for exoskeleton controller development, substantially reducing experimental burden during the design phase.