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Stiffness modulation of a cable-driven leg exoskeleton for effective human–robot interaction

Published online by Cambridge University Press:  28 April 2021

N. S. S. Sanjeevi
Affiliation:
Human Centered Robotics Lab, IIT Gandhinagar, Ahmedabad, India E-mail: nakka.suryasatyasanjeevi@iitgn.ac.in
Vineet Vashista*
Affiliation:
Human Centered Robotics Lab, IIT Gandhinagar, Ahmedabad, India E-mail: nakka.suryasatyasanjeevi@iitgn.ac.in
*
*Corresponding author. Email: vineet.vashista@iitgn.ac.in

Abstract

With the widespread development of leg exoskeletons to provide external force-based repetitive training for gait rehabilitation, the prospect of undesired movement adaptation due to applied forces and imposed constraints require adequate investigation. A cable-driven leg exoskeleton, CDLE, presents a lightweight, flexible, and redundantly actuated architecture that enables the possibility of system parameters modulation to alter human–robot interaction while applying the desired forces. In this work, multi-joint stiffness performance of CDLE is formulated to systematically analyze human–CDLE interaction. Further, potential alterations in CDLE architecture are presented to tune human–CDLE interaction that favors the desired human leg movement during a gait rehabilitation paradigm.

Type
Article
Copyright
© The Author(s), 2021. Published by Cambridge University Press

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