Title :
Real-Time Myoprocessors for a Neural Controlled Powered Exoskeleton Arm
Author :
Cavallaro, E.E. ; Rosen, J. ; Perry, J.C. ; Burns, S.
Author_Institution :
Dept. of Electr. Eng., Univ. of Washington, Seattle, WA
Abstract :
Exoskeleton robots are promising assistive/rehabilitative devices that can help people with force deficits or allow the recovery of patients who have suffered from pathologies such as stroke. The key component that allows the user to control the exoskeleton is the human machine interface (HMI). Setting the HMI at the neuro-muscular level may lead to seamless integration and intuitive control of the exoskeleton arm as a natural extension of the human body. At the core of the exoskeleton HMI there is a model of the human muscle, the "myoprocessor," running in real-time and in parallel to the physiological muscle, that predicts joint torques as a function of the joint kinematics and neural activation levels. This paper presents the development of myoprocessors for the upper limb based on the Hill phenomenological muscle model. Genetic algorithms are used to optimize the internal parameters of the myoprocessors utilizing an experimental database that provides inputs to the model and allows for performance assessment. The results indicate high correlation between joint moment predictions of the model and the measured data. Consequently, the myoprocessor seems an adequate model, sufficiently robust for further integration into the exoskeleton control system
Keywords :
biomechanics; genetic algorithms; interactive systems; kinematics; medical robotics; muscle; neurophysiology; patient rehabilitation; torque; Hill phenomenological muscle model; assistive/rehabilitative devices; exoskeleton control system; exoskeleton robots; genetic algorithms; human machine interface; human muscle; joint kinematics; joint moment; joint torque; neural activation levels; neural controlled powered exoskeleton arm; neuromuscular level; real-time myoprocessors; Biological system modeling; Exoskeletons; Genetic algorithms; Humans; Joints; Kinematics; Muscles; Pathology; Predictive models; Rehabilitation robotics; Exoskeletons; genetic algorithms; muscle models; Arm; Biomimetics; Computer Systems; Computer-Aided Design; Cybernetics; Feedback; Humans; Models, Biological; Movement; Muscle, Skeletal; Orthotic Devices; Peripheral Nervous System; Robotics; Skeleton; Therapy, Computer-Assisted;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2006.880883