功率谱密度、Higuchi分形维数和表面肌电信号在不同权重下的去趋势波动分析

Sanjoy Kumar Das, Nilotpal Das, M. Chakraborty
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引用次数: 0

摘要

我们的肌肉细胞产生有节奏的电位,当数百万个细胞同时放电时,这些电位被汇总成一个波形,这个波形的记录被称为肌电图(EMG)。这种记录被称为肌电图,记录的过程被称为肌电图。这项工作的主要目的是观察当一个人举重不同重量时肌肉动力学的变化。本研究采用功率谱密度(PSD)对肌表肌电信号进行线性分析,评估肌肉的总功率。本研究使用HFD (Higuchi 's Fractal维数)分析来估计二头肌和前臂肌肉活动时的表面肌电信号的分形维数。采用去趋势波动分析(DFA)的非线性分析方法,观察了不同权重下表面肌电信号模式的变化。实验采用具有所需信号采集电路的表面电极,信号数据通过笔记本电脑采集,并使用MATLAB 2013平台进行处理。该信号还进行了频域分析,以测量不同重量条件下的肌肉力量。所测量的分形维数取决于所施加的权重。对不同体重情况下肌电信号非线性性质的研究可能会产生实质性的结果,作为肌肉耐久性和再生的基于时间的定量监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power Spectral Density, Higuchi’s Fractal Dimension and Detrended Fluctuation Analysis of sEMG at Varying Weights
Our muscle cells produce rhythmical potentials that get totalized as millions of cells discharge simultaneously and represent as a waveform, the recording of this waveform is known as Electromyogram (EMG). The device is used this recording is called Electromyograph and process of this recording is known as Electromyography. The primary objective of this work is to see the changes in muscles dynamics when a person lifts various weights. This study used power spectral density (PSD) for linear analysis of surface EMG (sEMG) signal and total powers of the muscles were evaluated. This study used HFD (Higuchi’s Fractal Dimension) analysis to estimate fractal dimension of the sEMG signal during biceps and forearm muscles activities. Using Detrended Fluctuation Analysis (DFA) nonlinear analysis the change in the pattern of the sEMG signals was observed with varying weights. Surface electrodes with required signal collection circuitry were used for the experiments, and signal data was acquired using a laptop and processed using MATLAB 2013 platform. The signal was also subjected to frequency domain analysis to measure muscle power at varying weights conditions. The fractal dimension measured varies depending on the applied weights. The investigation of the nonlinear nature of the sEMG signal at various weight situations might yield substantial results as time-based quantitative monitoring of muscle durability and regeneration.
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