Institute of Intelligent Machines, Hefei Institutes of Physical Science, Chinese Academy of Sciences, Hefei 230031, China.
University of Science and Technology of China, Hefei 230026, China.
Sensors (Basel). 2021 Sep 24;21(19):6369. doi: 10.3390/s21196369.
Previous studies have used the anaerobic threshold (AT) to non-invasively predict muscle fatigue. This study proposes a novel method for the automatic classification of muscle fatigue based on surface electromyography (sEMG). The sEMG data were acquired from 20 participants during an incremental test on a cycle ergometer using sEMG sensors placed on the vastus rectus femoris (RF), vastus lateralis (VL), vastus medialis (VM), and gastrocnemius (GA) muscles of the left leg. The ventilation volume (VE), oxygen uptake (VO), and carbon dioxide production (VCO) data of each participant were collected during the test. Then, we extracted the time-domain and frequency-domain features of the sEMG signal denoised by the improved wavelet packet threshold denoising algorithm. In this study, we propose a new muscle fatigue recognition model based on the long short-term memory (LSTM) network. The LSTM network was trained to classify muscle fatigue using sEMG signal features. The results showed that the improved wavelet packet threshold function has better performance in denoising sEMG signals than hard threshold and soft threshold functions. The classification performance of the muscle fatigue recognition model proposed in this paper is better than that of CNN (convolutional neural network), SVM (support vector machine), and the classification models proposed by other scholars. The best performance of the LSTM network was achieved with 70% training, 10% validation, and 20% testing rates. Generally, the proposed model can be used to monitor muscle fatigue.
先前的研究使用无氧阈 (AT) 来非侵入性地预测肌肉疲劳。本研究提出了一种基于表面肌电图 (sEMG) 的肌肉疲劳自动分类的新方法。使用放置在左大腿股直肌 (RF)、股外侧肌 (VL)、股内侧肌 (VM) 和腓肠肌 (GA) 上的 sEMG 传感器,从 20 名参与者在测功机上进行递增测试时获取 sEMG 数据。每位参与者的通气量 (VE)、耗氧量 (VO) 和二氧化碳产生量 (VCO) 数据在测试过程中收集。然后,我们提取了经过改进的小波包阈值去噪算法去噪后的 sEMG 信号的时域和频域特征。在本研究中,我们提出了一种基于长短期记忆 (LSTM) 网络的新的肌肉疲劳识别模型。LSTM 网络经过训练,使用 sEMG 信号特征对肌肉疲劳进行分类。结果表明,改进的小波包阈值函数在去噪 sEMG 信号方面的性能优于硬阈值和软阈值函数。本文提出的肌肉疲劳识别模型的分类性能优于 CNN(卷积神经网络)、SVM(支持向量机)和其他学者提出的分类模型。当训练率为 70%、验证率为 10%、测试率为 20%时,LSTM 网络的性能最佳。总体而言,所提出的模型可用于监测肌肉疲劳。