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Dynamic modeling of SEMG-force relation in the presence of muscle fatigue during isometric contractions

机译:等距收缩过程中存在肌肉疲劳时SEMG力关系的动态建模

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Electromyogram signals contain information for predicting muscle force that can be used in human machine interaction and medical applications such as the control of prosthetic hands. Different methods exist for estimating the SEMG-force relation. However, muscle dynamic variations during voluntary contractions due to fatigue have been neglected in the identification stage. This would make the models not applicable to normal working conditions. We developed a model based on Laguerre expansion technique, LET, to identify the dynamic SEMG-force relation and investigate the presence of fatigue through kernel analysis. Our proposed data acquisition protocol was used to induce fatigue in the muscles involved in the act of grasping, hence enabling us to study the effects of muscle fatigue. The results of LET in comparison with fast orthogonal search and parallel cascade identification, which were able to accurately identify the desired dynamics, represent an improvement of 15% and 3.8% in prediction fitness, respectively. Moreover, by extracting median frequency (MDF) of the recorded SEMG signals and tracking its changes over time, the existence of muscle fatigue was studied. The results showed that fatigue had an impact on the Brachioradialis muscle. The first and second order kernels of the LET illustrated variations in the time and frequency domains similar to that of MDF for the Brachioradialis muscle corresponding to the fatigue generation process. Employing the proposed model the dynamics of SEMG-force relation can be predicted and its variations due to muscle fatigue can also be investigated. (C) 2016 Elsevier Ltd. All rights reserved.
机译:肌电信号包含用于预测肌肉力量的信息,该信息可用于人机交互和医疗应用,例如假手的控制。存在估计SEMG力关系的不同方法。然而,在识别阶段忽略了由于疲劳引起的自愿性收缩期间的肌肉动态变化。这将使模型不适用于正常工作条件。我们开发了一个基于Laguerre扩展技术LET的模型,以识别动态SEMG力关系并通过核分析研究疲劳的存在。我们提出的数据采集协议被用来诱发与抓握有关的肌肉疲劳,从而使我们能够研究肌肉疲劳的影响。与快速正交搜索和并行级联识别相比,LET的结果能够准确识别所需的动力学,分别代表预测适应性提高了15%和3.8%。此外,通过提取记录的SEMG信号的中值频率(MDF)并跟踪其随时间的变化,研究了肌肉疲劳的存在。结果表明,疲劳会影响臂radi臂肌。 LET的一阶和二阶内核在时域和频域中的变化类似于对应于疲劳生成过程的臂radi肌MDF的时域和频域变化。使用提出的模型,可以预测SEMG力关系的动态,还可以研究由于肌肉疲劳而引起的变化。 (C)2016 Elsevier Ltd.保留所有权利。

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