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Identifying Inverse Human Arm Dynamics Using a Robotic Testbed

  • Eric M. Schearer
  • , Yu-Wei Liao
  • , Eric J. Perreault
  • , Matthew C. Tresch
  • , William D. Memberg
  • , Robert F. Kirsch
  • , Kevin M. Lynch
    • Northwestern University
    • Case Western Reserve University

    Research output: Contribution to journalArticlepeer-review

    Abstract

    We present a method to experimentally identify the inverse dynamics of a human arm. We drive a person's hand with a robot along smooth reaching trajectories while measuring the motion of the shoulder and elbow joints and the force required to move the hand. We fit a model that predicts the shoulder and elbow joint torques required to achieve a desired arm motion. This torque can be supplied by functional electrical stimulation of muscles to control the arm of a person paralyzed by spinal cord injury. Errors in predictions of the joint torques for a subject without spinal cord injury were less than 20% of the maximum torques observed in the identification experiments. In most cases a semiparametric Gaussian process model predicted joint torques with equal or less error than a nonparametric Gaussian process model or a parametric model.

    Disciplines

    • Biomechanical Engineering

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