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Fuzzy central tendency measure for time series variability analysis with application to fatigue electromyography signals

机译:时间序列变异性分析的模糊集中趋势测度及其在疲劳肌电信号中的应用

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A new method, namely fuzzy central tendency measure (fCTM) analysis, that could enable measurement of the variability of a time series, is presented in this study. Tests on simulated data sets show that fCTM is superior to the conventional central tendency measure (CTM) in several respects, including improved relative consistency and robustness to noise. The proposed fCTM method was applied to electromyograph (EMG) signals recorded during sustained isometric contraction for tracking local muscle fatigue. The results showed that the fCTM increased significantly during the development of muscle fatigue, and it was more sensitive to the fatigue phenomenon than mean frequency (MNF), the most commonly-used muscle fatigue indicator.
机译:这项研究提出了一种新的方法,即模糊中央趋势量度(fCTM)分析,该方法可以测量时间序列的变异性。对模拟数据集的测试表明,fCTM在多个方面均优于常规的集中趋势量度(CTM),包括改进的相对一致性和抗噪性。提出的fCTM方法应用于在持续等距收缩期间记录的肌电图(EMG)信号,以跟踪局部肌肉疲劳。结果表明,fCTM在肌肉疲劳发展过程中显着增加,并且对疲劳现象的敏感性比最常用的肌肉疲劳指标平均频率(MNF)高。

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