Data-driven Characterization of Human Interaction for Model-based Control of Powered Prostheses

IROS(2020)

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摘要
This paper proposes a data-driven method for powered prosthesis control that achieves stable walking without the need for additional sensors on the human. The key idea is to extract the nominal gait and the human interaction information from motion capture data, and reconstruct the walking behavior with a dynamic model of the human-prosthesis system. The walking behavior of a human wearing a powered prosthesis is obtained through motion capture, which yields the limb and joint trajectories. Then a nominal trajectory is obtained by solving a gait optimization problem designed to reconstruct the walking behavior observed by motion capture. Moreover, the interaction force profiles between the human and the prosthesis are recovered by simulating the model following the recorded gaits, which are then used to construct a force tube that covers all the interaction force profiles. Finally, a robust Control Lyapunov Function (CLF) Quadratic Programming (QP) controller is designed to guarantee the convergence to the nominal trajectory under all possible interaction forces within the tube. Simulation results show this controller's improved tracking performance with a perturbed force profile compared to other control methods with less model information.
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关键词
nominal gait,human interaction information,motion capture data,walking behavior,dynamic model,human-prosthesis system,joint trajectories,nominal trajectory,gait optimization problem,interaction force profiles,force tube,interaction forces,perturbed force profile,data-driven method,powered prosthesis control,robust control Lyapunov function quadratic programming controller
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