Li Kexiang, Sun Ye, Li Jiayi, Li Hui, Zhang Jianhua, Wang Li
College of Mechanical and Material Engineering, North China University of Technology, Beijing 100144, China.
College of Mechanical Engineering, Hebei University of Technology, Tianjin 300401, China.
Biomimetics (Basel). 2025 May 6;10(5):291. doi: 10.3390/biomimetics10050291.
Prolonged and high-intensity human-robot interaction can cause muscle fatigue. This fatigue leads to changes in both the time domain and frequency domain of the surface electromyography (sEMG) signals, which are closely related to human body movements. Consequently, these changes affect the accuracy and stability of using sEMG signals to recognize human body movements. Although numerous studies have confirmed that the median frequency of sEMG signals decreases as the degree of muscle fatigue increases-and this has been used for classifying fatigue and non-fatigue states- there is still a lack of quantitative characterization of the degree of muscle fatigue. Therefore, this paper proposes a method for quantitatively characterizing the degree of muscle fatigue during periodic exercise, based on the high-frequency components obtained through ensemble empirical mode decomposition (EEMD). Firstly, the sEMG signals of the estimated individuals are subjected to EEMD to obtain the high-frequency components, and the short-time Fourier transform is used to calculate the median frequency (MF) of these high-frequency components. Secondly, the obtained median frequencies are linearly fitted, and based on this, a standardized median frequency distribution range (SMFDR) of sEMG signals under muscle fatigue is established. Finally, a muscle fatigue estimator is proposed to achieve the quantification of the degree of muscle fatigue based on the SMFDR. Experimental validation across five subjects demonstrated that this method effectively quantifies cyclical muscle fatigue, with results revealing the methodology exhibits superiority in identifying multiple fatigue states during cyclical movements under consistent loading conditions.
长时间高强度的人机交互会导致肌肉疲劳。这种疲劳会导致表面肌电图(sEMG)信号在时域和频域上发生变化,而这些变化与人体运动密切相关。因此,这些变化会影响使用sEMG信号识别人体运动的准确性和稳定性。尽管众多研究已经证实,随着肌肉疲劳程度的增加,sEMG信号的中位频率会降低,并且这已被用于对疲劳和非疲劳状态进行分类,但仍然缺乏对肌肉疲劳程度的定量表征。因此,本文提出了一种基于通过总体经验模态分解(EEMD)获得的高频分量来定量表征周期性运动期间肌肉疲劳程度的方法。首先,对估计个体的sEMG信号进行EEMD以获得高频分量,并使用短时傅里叶变换来计算这些高频分量的中位频率(MF)。其次,对获得的中位频率进行线性拟合,并在此基础上建立肌肉疲劳状态下sEMG信号的标准化中位频率分布范围(SMFDR)。最后,提出了一种肌肉疲劳估计器,以基于SMFDR实现对肌肉疲劳程度的量化。对五名受试者进行的实验验证表明,该方法有效地量化了周期性肌肉疲劳,结果表明该方法在识别一致负荷条件下周期性运动期间的多种疲劳状态方面具有优越性。