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Araştırma Çıktıları | Web Of Science
Web of Science Koleksiyonu
English
English
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Date
Authors
Karlik, B
Kocyigit, Y
Korürek, M
Journal Title
Journal ISSN
Volume Title
Publisher
0266-4720
Abstract
WILEY
Description
Keywords
The electromyographic signals observed at the surface of the skin are the sum of many small action potentials generated in the muscle fibres. After the signals are processed, they can be used as a control source of multifunction prostheses. The myoelectric signals are represented by wavelet transform model parameters. For this purpose, four different arm movements (elbow extension, elbow flexion, wrist supination and wrist pronation) are considered in studying muscle contraction. Wavelet parameters of myoelectric signals received from the muscles for these different movements were used as features to classify the electromyographic signals in a fuzzy clustering neural network classifier model. After 1000 iterations, the average recognition percentage of the test was found to be 97.67% with clustering into 10 features. The fuzzy clustering neural network programming language was developed using Pascal under Delphi.
Citation
URI
http://akademikarsiv.cbu.edu.tr:4000/handle/123456789/6945
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Web of Science Koleksiyonu
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