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Evaluating the Performance of Joint Angle Estimation Algorithms on an Exoskeleton Mock-Up via a Modular Testing

Ryan S Pollard1, Sarah M Bass1, Mark C Schall2

  • 1Department of Mechanical Engineering, Auburn University, Auburn, AL 36849, USA.

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|September 14, 2024
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Summary
This summary is machine-generated.

This study tested two joint angle estimation models for ankle exoskeletons using only one sensor. A Random Forest model showed lower errors and faster actuation times compared to a kinematic model.

Keywords:
estimation algorithmsexoskeleton mock-upjoint angleskinematicsrandom forestsingle sensor

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Area of Science:

  • Robotics
  • Biomechanics
  • Machine Learning

Background:

  • Exoskeleton control requires accurate operator intent detection for seamless actuation.
  • Joint angle estimation algorithms typically use multiple sensors, but single-sensor approaches are less explored.
  • Operator intent is crucial for effective human-machine system integration in exoskeletons.

Purpose of the Study:

  • To evaluate the performance of a kinematic extrapolation algorithm and a Random Forest machine learning algorithm for joint angle estimation using only single-sensor data.
  • To assess the feasibility of a modular testing approach for exoskeleton mock-up evaluation.
  • To compare the accuracy and actuation time of two distinct joint angle estimation models.

Main Methods:

  • A modular testing approach was implemented for exoskeleton mock-up evaluation.
  • Two joint angle estimation models, a kinematic extrapolation algorithm and a Random Forest algorithm, were tested.
  • Each model was solely informed by kinematic gait data from a single potentiometer on an ankle exoskeleton mock-up.

Main Results:

  • The Random Forest algorithm demonstrated lower realized errors in estimated joint angles compared to the kinematic model.
  • The Random Forest algorithm resulted in a decreased actuation time.
  • The modular testing approach proved feasible for evaluating exoskeleton mock-ups.

Conclusions:

  • A single sensor can provide sufficient data for effective joint angle estimation in exoskeleton control.
  • The Random Forest machine learning algorithm is a promising approach for single-sensor-based exoskeleton control.
  • Modular testing facilitates robust evaluation of human-machine systems in exoskeleton development.