DocumentCode :
1091012
Title :
Accelerometers and Force Sensing Resistors for Optimal Control of Walking of a Hemiplegic
Author :
Dosen, S. ; Popovic, Dejan B.
Author_Institution :
Center for Sensory Motor Interaction, Aalborg Univ., Aalborg
Volume :
55
Issue :
8
fYear :
2008
Firstpage :
1973
Lastpage :
1984
Abstract :
We developed a method for use of accelerometers and force sensing resistors (FSRs) within an optimal controller of walking for hemiplegic individuals. The data from four dual-axis accelerometers and four FSRs were inputs, while six muscle activation profiles were outputs. The controller includes two stages: 1) estimating the target gait pattern using artificial neural networks; and 2) optimal control minimizing tracking errors (from the estimated gait pattern) and muscle efforts. The controller was tested using data collected from six healthy subjects walking at five speeds (0.6-1.4 m/s). The average root mean square errors (RMSEs) normalized by the peak-to-peak value of the target signals [normalized RMSE (NRMSE)] were below 6%, 7%, 8%, and 3% for estimation of joint angles, hip acceleration, ground reaction force, and movement of the center of pressure, respectively. Using the estimated data as inputs, the simulation generated the target healthy-like gait patterns and reproducible muscle activation profiles in 90% of 300 tested gait trials. Overall tracking NRMSE was between 2% and 9%. The optimal controller was developed for testing the feasibility of healthy-like gait patterns in hemiplegic individuals, and generating a knowledge base that is required for the synthesis of a sensory-driven control of walking assisted by functional electrical stimulation.
Keywords :
accelerometers; bioelectric phenomena; biomedical equipment; gait analysis; mean square error methods; medical control systems; muscle; neural nets; patient rehabilitation; accelerometers; artificial neural networks; force sensing resistors; functional electrical stimulation; ground reaction force; healthy-like gait patterns; hemiplegic individuals; hip acceleration; joint angles; muscle activation profiles; patient rehabilitation; root mean square errors; sensory-driven control; walking optimal control; Accelerometers; Artificial neural networks; Force control; Legged locomotion; Muscles; Optimal control; Resistors; Target tracking; Test pattern generators; Testing; Artificial Neural Networks; Artificial neural networks (ANNs); Functional Electrical Stimulation; Gait; Machine Learning; Optimal Control; Sensory System; functional electrical stimulation (FES); gait; machine learning; optimal control; sensory system; Acceleration; Artificial Intelligence; Computer Simulation; Electric Impedance; Feedback; Gait Disorders, Neurologic; Hemiplegia; Humans; Manometry; Models, Biological; Therapy, Computer-Assisted; Transducers;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2008.919715
Filename :
4463643
Link To Document :
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