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Real-time prediction learning for the simultaneous actuation of multiple prosthetic joints

Integrating learned predictions into a prosthetic control system promises to enhance multi-joint prosthesis use by amputees. In this article, we present a preliminary study of different cases where it may be beneficial to use a set of temporally extended predictions - learned and maintained in real time - within an engineered or learned prosthesis controller. Our study demonstrates the first successful combination of actor-critic reinforcement learning with real-time prediction learning. We evaluate this new approach to control learning during the myoelectric operation of a robot limb. Our results suggest that the integration of real-time prediction and control learning may speed control policy acquisition, allow unsupervised adaptation in myoelectric controllers, and facilitate synergies in highly actuated limbs. These experiments also show that temporally extended prediction learning enables anticipatory actuation, opening the way for coordinated motion in assistive robotic devices. Our work therefore provides initial evidence that realtime prediction learning is a practical way to support intuitive joint control in increasingly complex prosthetic systems.

Citation

P. Pilarski, T. Dick, R. Sutton. "Real-time prediction learning for the simultaneous actuation of multiple prosthetic joints". International Conference on Rehabilitation Robotics (ICORR), June 2013.

Keywords: Real-time systems, Joints, Wrist, Prosthetics, Robot kinematics, Actuators
Category: In Conference
Web Links: doi

BibTeX

@incollection{Pilarski+al:ICORR13,
  author = {Patrick M. Pilarski and Travis B. Dick and Richard S. Sutton},
  title = {Real-time prediction learning for the simultaneous actuation of
    multiple prosthetic joints},
  booktitle = {International Conference on Rehabilitation Robotics (ICORR)},
  year = 2013,
}

Last Updated: January 19, 2021
Submitted by Sabina P

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