Title :
Multi-Muscle FES Force Control of the Human Arm for Arbitrary Goals
Author :
Schearer, Eric M. ; Yu-Wei Liao ; Perreault, Eric J. ; Tresch, Matthew C. ; Memberg, William D. ; Kirsch, Robert F. ; Lynch, Kevin M.
Author_Institution :
Dept. of Mech. Eng., Northwestern Univ., Evanston, IL, USA
Abstract :
We present a method for controlling a neuroprosthesis for a paralyzed human arm using functional electrical stimulation (FES) and characterize the errors of the controller. The subject has surgically implanted electrodes for stimulating muscles in her shoulder and arm. Using input/output data, a model mapping muscle stimulations to isometric endpoint forces measured at the subject´s hand was identified. We inverted the model of this redundant and coupled multiple-input multiple-output system by minimizing muscle activations and used this inverse for feedforward control. The magnitude of the total root mean square error over a grid in the volume of achievable isometric endpoint force targets was 11% of the total range of achievable forces. Major sources of error were random error due to trial-to-trial variability and model bias due to nonstationary system properties. Because the muscles working collectively are the actuators of the skeletal system, the quantification of errors in force control guides designs of motion controllers for multi-joint, multi-muscle FES systems that can achieve arbitrary goals.
Keywords :
MIMO systems; biomedical electrodes; feedforward; medical control systems; neuromuscular stimulation; prosthetics; controller errors; coupled multiple-input multiple-output system; feedforward control; functional electrical stimulation; input-output data; isometric endpoint forces; multimuscle FES force control; muscle activations; muscle stimulations; neuroprosthesis control; paralyzed human arm; surgically implanted electrodes; Data models; Electrodes; Force; Force control; Force measurement; Muscles; Shoulder; Force control; neural prosthesis; neuromuscular stimulation; system identification;
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
DOI :
10.1109/TNSRE.2013.2282903