Author:
Ahmed Saygin Siddiq,Almusawi Ahmed R. J.,Yilmaz Bülent,Dogru Nuran
Abstract
Abstract. This study introduces a new control method for electromyography (EMG) in a prosthetic hand application with a practical design of the whole system. The hand is controlled by a motor (which regulates a significant part of the hand movement) and a microcontroller
board, which is responsible for receiving and analyzing signals acquired by
a Myoware muscle device. The Myoware device accepts muscle signals and sends them to the controller. The controller interprets the received signals
based on the designed artificial neural network. In this design, the muscle
signals are read and saved in a MATLAB system file. After neural network
program processing by MATLAB, they are then applied online to the prosthetic hand. The obtained signal, i.e., electromyogram, is programmed to control the motion of the prosthetic hand with similar behavior to a real human hand.
The designed system is tested on seven individuals at Gaziantep University.
Due to the sufficient signal of the Mayo armband compared to Myoware sensors, Mayo armband muscle is applied in the proposed system. The discussed results
have been shown to be satisfactory in the final proposed system. This system was a feasible, useful, and cost-effective solution for the handless or
amputated individuals. They have used the system in their day-to-day
activities that allowed them to move freely, easily, and comfortably.
Subject
Industrial and Manufacturing Engineering,Fluid Flow and Transfer Processes,Mechanical Engineering,Mechanics of Materials,Civil and Structural Engineering,Control and Systems Engineering
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