Optimal Elbow Angle for Extracting sEMG Signals During Fatiguing Dynamic Contraction

Surface electromyographic (sEMG) activity of the biceps muscle was recorded from 13 subjects. Data was recorded while subjects performed dynamic contraction until fatigue and the signals were segmented into two parts (Non-Fatigue and Fatigue). An evolutionary algorithm was used to determine the elbo...

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Main Authors: Mohamed R. Al-Mulla, Francisco Sepulveda, Bader Al-Bader
Format: Article
Language:English
Published: MDPI AG 2015-09-01
Series:Computers
Subjects:
Online Access:http://www.mdpi.com/2073-431X/4/3/251
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spelling doaj-9c7ec38968f142b2b3148dea46dc045a2020-11-24T22:38:46ZengMDPI AGComputers2073-431X2015-09-014325126410.3390/computers4030251computers4030251Optimal Elbow Angle for Extracting sEMG Signals During Fatiguing Dynamic ContractionMohamed R. Al-Mulla0Francisco Sepulveda1Bader Al-Bader2Department of Computing Science and Engineering, Kuwait University, P.O. Box 5969, Safat 13060, KuwaitSchool of Computer Science and Electronic Engineering, University of Essex, Colchester, CO4 3SQ, UKDepartment of Computing Science and Engineering, Kuwait University, P.O. Box 5969, Safat 13060, KuwaitSurface electromyographic (sEMG) activity of the biceps muscle was recorded from 13 subjects. Data was recorded while subjects performed dynamic contraction until fatigue and the signals were segmented into two parts (Non-Fatigue and Fatigue). An evolutionary algorithm was used to determine the elbow angles that best separate (using Davies-Bouldin Index, DBI) both Non-Fatigue and Fatigue segments of the sEMG signal. Establishing the optimal elbow angle for feature extraction used in the evolutionary process was based on 70% of the conducted sEMG trials. After completing 26 independent evolution runs, the best run containing the optimal elbow angles for separation (Non-Fatigue and Fatigue) was selected and then tested on the remaining 30% of the data to measure the classification performance. Testing the performance of the optimal angle was undertaken on nine features extracted from each of the two classes (Non-Fatigue and Fatigue) to quantify the performance. Results showed that the optimal elbow angles can be used for fatigue classification, showing 87.90% highest correct classification for one of the features and on average of all eight features (including worst performing features) giving 78.45%.http://www.mdpi.com/2073-431X/4/3/251genetic algorithmslocalised muscle fatigueelectromyographywavelet analysispseudo-waveletselbow angle
collection DOAJ
language English
format Article
sources DOAJ
author Mohamed R. Al-Mulla
Francisco Sepulveda
Bader Al-Bader
spellingShingle Mohamed R. Al-Mulla
Francisco Sepulveda
Bader Al-Bader
Optimal Elbow Angle for Extracting sEMG Signals During Fatiguing Dynamic Contraction
Computers
genetic algorithms
localised muscle fatigue
electromyography
wavelet analysis
pseudo-wavelets
elbow angle
author_facet Mohamed R. Al-Mulla
Francisco Sepulveda
Bader Al-Bader
author_sort Mohamed R. Al-Mulla
title Optimal Elbow Angle for Extracting sEMG Signals During Fatiguing Dynamic Contraction
title_short Optimal Elbow Angle for Extracting sEMG Signals During Fatiguing Dynamic Contraction
title_full Optimal Elbow Angle for Extracting sEMG Signals During Fatiguing Dynamic Contraction
title_fullStr Optimal Elbow Angle for Extracting sEMG Signals During Fatiguing Dynamic Contraction
title_full_unstemmed Optimal Elbow Angle for Extracting sEMG Signals During Fatiguing Dynamic Contraction
title_sort optimal elbow angle for extracting semg signals during fatiguing dynamic contraction
publisher MDPI AG
series Computers
issn 2073-431X
publishDate 2015-09-01
description Surface electromyographic (sEMG) activity of the biceps muscle was recorded from 13 subjects. Data was recorded while subjects performed dynamic contraction until fatigue and the signals were segmented into two parts (Non-Fatigue and Fatigue). An evolutionary algorithm was used to determine the elbow angles that best separate (using Davies-Bouldin Index, DBI) both Non-Fatigue and Fatigue segments of the sEMG signal. Establishing the optimal elbow angle for feature extraction used in the evolutionary process was based on 70% of the conducted sEMG trials. After completing 26 independent evolution runs, the best run containing the optimal elbow angles for separation (Non-Fatigue and Fatigue) was selected and then tested on the remaining 30% of the data to measure the classification performance. Testing the performance of the optimal angle was undertaken on nine features extracted from each of the two classes (Non-Fatigue and Fatigue) to quantify the performance. Results showed that the optimal elbow angles can be used for fatigue classification, showing 87.90% highest correct classification for one of the features and on average of all eight features (including worst performing features) giving 78.45%.
topic genetic algorithms
localised muscle fatigue
electromyography
wavelet analysis
pseudo-wavelets
elbow angle
url http://www.mdpi.com/2073-431X/4/3/251
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