Chowdhury Suman Kanti, Nimbarte Ashish D
Industrial and Management Systems Engineering, West Virginia University, PO Box 6070, Morgantown, WV 26506-6107, United States.
Industrial and Management Systems Engineering, West Virginia University, PO Box 6070, Morgantown, WV 26506-6107, United States.
J Electromyogr Kinesiol. 2015 Apr;25(2):205-13. doi: 10.1016/j.jelekin.2014.11.005. Epub 2014 Nov 25.
The comparative ability of the Fourier transform (FFT) and discrete wavelet transform (DWT) algorithms in assessing muscle fatigue during sub-maximal repetitive dynamic exertion was investigated in this study. Surface electromyography data recorded from the upper trapezius muscle during forty minutes of repetitive upper extremity exertion performed by 10 male participants were used in the analysis. Multi-model regression analysis was performed to study the trend in the power values of the different frequency bands estimated using the FFT and DWT algorithms. Less variability and higher statistical significance was observed for the power value trend computed using the DWT algorithm compared to the FFT algorithm. The regression models provided a better fit for the power values estimated under more fatigued condition compared to the less fatigued condition. The lower frequency bands of 23-46 Hz and 46-93 Hz exhibited the expected and consistent power trend independent of the algorithm (DWT or FFT) used. For the exertions tested in this study, a cubic or curvilinear model explained the fatigue development process with a higher precision than the linear models.
本研究调查了傅里叶变换(FFT)和离散小波变换(DWT)算法在评估次最大重复动态运动期间肌肉疲劳方面的比较能力。分析中使用了10名男性参与者在进行40分钟重复性上肢运动期间从上斜方肌记录的表面肌电图数据。进行多模型回归分析以研究使用FFT和DWT算法估计的不同频带功率值的趋势。与FFT算法相比,使用DWT算法计算的功率值趋势具有更小的变异性和更高的统计显著性。与疲劳程度较轻的情况相比,回归模型对在疲劳程度较高的情况下估计的功率值拟合得更好。23 - 46Hz和46 - 93Hz的较低频带呈现出预期且一致的功率趋势,与所使用的算法(DWT或FFT)无关。对于本研究中测试的运动,三次或曲线模型比线性模型更精确地解释了疲劳发展过程。