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Estimation of muscle fatigue using wavelet decomposition

机译:用小波分解估计肌肉疲劳

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摘要

Muscle fatigue causes numerous injuries among workers in industries involving mechanical labour each year. This study explores a new feature based on energy of detail wavelet coefficient for muscle fatigue detection in the upper limb. The muscle fatigue data was generated after isometric muscle action. 7 subjects underwent 3 trails each using 3 channels corresponding to Biceps Brachii, Extensor Digitorum Communis and Flexor Carpi Radialis muscle respectively. It was found that the energy of detail coefficients of 3, 4 and 5 level of wavelet decomposition (15.625-125 Hz) increases as the muscle fatigue level increases. Moreover, it was also found that the intercept of regression curve plotted to approximate this increase and the rate of increase of the energy, had maximum value for the energy of 3 level of wavelet decomposition followed by 4 and 5 level resp. To detect the onset of fatigue, the energy of coefficients of frequency 15.6-62.5 Hz at the start and end of duration of time for which the isometric contraction is performed is considered. The fatigue was detected among subjects when this average final energy value was approximately five times the initial value for 15.6-62.5 Hz range.
机译:每年,肌肉疲劳都会给从事机械劳动的行业的工人造成许多伤害。这项研究探索了一种基于细节小波系数能量的上肢肌肉疲劳检测的新功能。肌肉疲劳数据是在等距肌肉动作后生成的。 7名受试者分别通过3条通道分别进行3条试验,分别对应于肱二头肌,肘伸肌和Car腕Car肌。结果发现,随着肌肉疲劳程度的增加,小波分解的详细系数3、4和5的能量(15.625-125 Hz)增加。此外,还发现绘制的回归曲线的截距近似于这种增加和能量的增加速率,在3级小波分解的能量之后分别是4级和5级的能量具有最大值。为了检测疲劳的开始,考虑了在执行等距收缩的时间的开始和结束时频率为15.6-62.5 Hz的系数的能量。当此平均最终能量值约为15.6-62.5 Hz范围内初始值的五倍时,在受试者中检测到疲劳。

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