Daniel Natalia, Małachowski Jerzy
Military University of Technology, Faculty of Mechatronics, Armament and Aviation, Warsaw, Poland.
Military University of Technology, Faculty of Mechanical Engineering, Warsaw, Poland.
Acta Bioeng Biomech. 2023;25(2):15-27.
The aim of this publication was to propose a method to determine changes in fatigue in selected muscle groups of the lower extremity during dynamic and cyclical motion performed on a rowing ergometer. The study aimed to use the discrete wavelet transform (DWT) to analyze electromyographic signals (EMG) recorded during diagnostic assessment of muscle and peripheral nerve electrical activity (electroneurography) using an electromyography device (EMG).
The analysis involved implementing calculations such as mean frequency (MNF) and median frequency (MDF) using the reconstructed EMG signal through DWT. The study examined the efficacy of DWT analysis in assessing muscle fatigue after physical exertion.
The study obtained a negative regression coefficient for DWT analysis in all muscles except for the right gastrocnemius (GAS). The results suggest that DWT analysis can be an effective tool for evaluating muscle fatigue after physical exertion.
The use of DWT in the analysis of EMG signals during rowing ergometer exercises has shown promising results in assessing muscle fatigue. However, additional investigations are necessary to confirm and expand these findings. This publication addresses the literature gap on the determination of muscle fatigue considering motion analysis on a rowing ergometer using the discrete wavelet transform. Previous studies have extensively compared and analyzed methods such as the Fourier transform (FFT), short-time Fourier transform (STFT), and wavelet transform (WT) for muscle fatigue analysis. However, no previous work has specifically examined the assessment of muscle fatigue by incorporating DWT analysis with motion analysis on a rowing ergometer.
本出版物的目的是提出一种方法,以确定在划船测力计上进行动态循环运动时下肢选定肌肉群的疲劳变化。该研究旨在使用离散小波变换(DWT)来分析在使用肌电图设备(EMG)进行肌肉和周围神经电活动诊断评估(神经电图)期间记录的肌电信号(EMG)。
分析包括通过DWT对重建的EMG信号进行平均频率(MNF)和中位数频率(MDF)等计算。该研究检验了DWT分析在评估体力消耗后肌肉疲劳方面的功效。
除右腓肠肌(GAS)外,该研究在所有肌肉中获得了DWT分析的负回归系数。结果表明,DWT分析可以成为评估体力消耗后肌肉疲劳的有效工具。
在划船测力计运动期间使用DWT分析EMG信号在评估肌肉疲劳方面已显示出有希望的结果。然而,需要进一步的研究来证实和扩展这些发现。本出版物填补了在使用离散小波变换考虑划船测力计上的运动分析来确定肌肉疲劳方面的文献空白。先前的研究广泛比较和分析了傅里叶变换(FFT)、短时傅里叶变换(STFT)和小波变换(WT)等用于肌肉疲劳分析的方法。然而,以前没有工作专门研究通过将DWT分析与划船测力计上的运动分析相结合来评估肌肉疲劳。