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Licensed Unlicensed Requires Authentication Published by De Gruyter December 7, 2006

Application of EMG signals for controlling exoskeleton robots

  • Christian Fleischer , Andreas Wege , Konstantin Kondak and Günter Hommel

Abstract

Exoskeleton robots are mechanical constructions attached to human body parts, containing actuators for influencing human motion. One important application area for exoskeletons is human motion support, for example, for disabled people, including rehabilitation training, and for force enhancement in healthy subjects. This paper surveys two exoskeleton systems developed in our laboratory. The first system is a lower-extremity exoskeleton with one actuated degree of freedom in the knee joint. This system was designed for motion support in disabled people. The second system is an exoskeleton for a human hand with 16 actuated joints, four for each finger. This hand exoskeleton will be used in rehabilitation training after hand surgeries. The application of EMG signals for motion control is presented. An overview of the design and control methods, and first experimental results for the leg exoskeleton are reported.


Corresponding author: Christian Fleischer, Technical University of Berlin, Institute for Computer Engineering and Microelectronics, Sekr. EN 10, Einsteinufer 17, 10587 Berlin, Germany Phone: +49-30-31473114 Fax: +49-30-31421116

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Published Online: 2006-12-07
Published in Print: 2006-12-01

©2006 by Walter de Gruyter Berlin New York

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