Title :
Predicting the time to localized muscle fatigue using ANN and evolved sEMG feature
Author :
Al-Mulla, M.R. ; Sepulveda, F.
Author_Institution :
Dept. of Comput. Sci. & Electron. Eng., Univ. of Essex, Colchester, UK
Abstract :
Surface Electromyography (sEMG) activity of the biceps muscle was recorded from nine subjects. Data were recorded while subjects performed dynamic contraction until fatigue. The signals were initially segmented into two parts (Non-Fatigue and Transition-to-Fatigue) to enable the evolutionary process. A novel feature was evolved by selecting then using a combination of the eleven sEMG muscle fatigue features and six mathematical operators. The evolutionary program used the DB index in its fitness function to derive the best feature that best separate the two segments (Non-Fatigue and Transition-to-Fatigue), for both Maximum Dynamic Strength (MDS) percentage of 40 and 70 MDS. Using the evolved feature we enabled an ANN to predict the time to fatigue by using only twenty percent of the total sEMG signal with an average prediction error of 9.22%.
Keywords :
electromyography; evolutionary computation; medical signal processing; neural nets; DB index; artificial neural nets; dynamic contraction; evolutionary process; evolved sEMG feature; maximum dynamic strength; muscle fatigue localization; nonfatigue part; surface electromyography; transition-to-fatigue part; Artificial neural networks; Fatigue; Feature extraction; Indexes; Muscles; Time frequency analysis; Training; Artificial neural networks; evolutionary computation; fatigue prediction; muscle fatigue; peripheral fatigue; sEMG feature extraction;
Conference_Titel :
Autonomous and Intelligent Systems (AIS), 2010 International Conference on
Conference_Location :
Povoa de Varzim
Print_ISBN :
978-1-4244-7104-1
DOI :
10.1109/AIS.2010.5547025