Institute of Intelligent Machines, Hefei Institutes of Physical Science, Chinese Academy of Sciences, Hefei 230031, China.
Department of Science Island, University of Science and Technology of China, Hefei 230026, China.
Sensors (Basel). 2022 Jun 20;22(12):4651. doi: 10.3390/s22124651.
During lower-extremity rehabilitation training, muscle activity status needs to be monitored in real time to adjust the assisted force appropriately, but it is a challenging task to obtain muscle force noninvasively. Mechanomyography (MMG) signals offer unparalleled advantages over sEMG, reflecting the intention of human movement while being noninvasive. Therefore, in this paper, based on MMG, a combined scheme of gray relational analysis (GRA) and support vector regression optimized by an improved cuckoo search algorithm (ICS-SVR) is proposed to estimate the knee joint extension force. Firstly, the features reflecting muscle activity comprehensively, such as time-domain features, frequency-domain features, time-frequency-domain features, and nonlinear dynamics features, were extracted from MMG signals, and the relational degree was calculated using the GRA method to obtain the correlation features with high relatedness to the knee joint extension force sequence. Then, a combination of correlated features with high relational degree was input into the designed ICS-SVR model for muscle force estimation. The experimental results show that the evaluation indices of the knee joint extension force estimation obtained by the combined scheme of GRA and ICS-SVR were superior to other regression models and could estimate the muscle force with higher estimation accuracy. It is further demonstrated that the proposed scheme can meet the need of muscle force estimation required for rehabilitation devices, powered prostheses, etc.
在下肢康复训练中,需要实时监测肌肉活动状态,以便适当地调整辅助力,但非侵入式地获取肌肉力是一项具有挑战性的任务。肌电讯号(MMG)相对于表面肌电讯号(sEMG)具有无与伦比的优势,它在非侵入式的情况下反映了人体运动的意图。因此,在本文中,基于 MMG,提出了一种结合灰度关联分析(GRA)和改进的布谷鸟搜索算法(ICS)优化的支持向量回归(SVR)的组合方案,用于估计膝关节伸展力。首先,从 MMG 信号中提取出全面反映肌肉活动的特征,如时域特征、频域特征、时频域特征和非线性动力学特征,并使用 GRA 方法计算关联度,以获得与膝关节伸展力序列高度相关的关联特征。然后,将具有高度相关度的相关特征组合输入到设计的 ICS-SVR 模型中进行肌肉力估计。实验结果表明,基于 GRA 和 ICS-SVR 的组合方案的膝关节伸展力估计的评估指标优于其他回归模型,可以以更高的估计精度估计肌肉力。进一步证明了所提出的方案可以满足康复设备、动力假肢等所需的肌肉力估计的需求。