利用神经网络和演化表面肌电信号特征预测局部肌肉疲劳时间

M. Al-Mulla, F. Sepulveda
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引用次数: 11

摘要

记录了9名受试者肱二头肌的表面肌电活动。在受试者进行动态收缩直至疲劳时记录数据。信号最初被分割成两部分(非疲劳和过渡到疲劳),以实现进化过程。通过将11个表面肌电信号肌肉疲劳特征和6个数学算子的组合进行选择,形成了一个新的特征。进化程序在其适应度函数中使用DB指数来得出最大动态强度(MDS)百分比为40和70 MDS的最佳特征,以最佳地分离两个部分(非疲劳和过渡到疲劳)。利用进化的特征,我们使人工神经网络能够仅使用总表面肌电信号的20%来预测疲劳时间,平均预测误差为9.22%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the time to localized muscle fatigue using ANN and evolved sEMG feature
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%.
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CiteScore
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