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Non-iterative denoising algorithm for mechanical vibration signal using spectral graph wavelet transform and detrended fluctuation analysis

机译:使用光谱图小波变换的机械振动信号的非迭代去噪算法和措施波动分析

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摘要

A novel non-iterative denoising technique combining spectral graph wavelet transform and detrended fluctuation analysis is proposed to solve the filtering problem of nonlinear and non-stationary mechanical vibration signals. The vibration signal is firstly converted to a graph signal defined on the path graph. Then, the graph signal is decomposed into scaling function coefficients and spectral graph wavelet coefficients by spectral graph wavelet transform. Finally, the threshold is adopted to shrink the spectral graph wavelet coefficients, and the denoised signal is obtained via the inverse transform. Besides, an efficient criterion based on detrended fluctuation analysis is designed to select the decomposition level of spectral graph wavelet transform. The denoising performance of the presented approach for mechanical vibration signal has been thoroughly evaluated through analog signals compared with five conventional methods. The developed technique is then applied to denoise the vibration signal collected in hob fault experiments, and the influence of different optional parameters on the denoising performance is analyzed by single factor experiments. Experimental results indicate that the proposed approach can remove noise well and retain the fine signatures of signal as much as possible, and Euclidean weight function and Minimax threshold can achieve desired denoising capability when combined with soft threshold function or hard threshold function.
机译:提出了一种新颖的非迭代去噪技术,组合光谱图小波变换和减法的波动分析,以解决非线性和非静止机械振动信号的滤波问题。首先将振动信号转换为在路径图上定义的曲线图信号。然后,通过光谱图小波变换将曲线图信号分解成缩放功能系数和光谱曲线图小波系数。最后,采用阈值来缩小光谱曲线图小波系数,并且通过逆变换获得去噪信号。此外,设计基于减法分析的有效标准旨在选择光谱图小波变换的分解水平。与五种常规方法相比,通过模拟信号彻底评估了机械振动信号的呈现方法的去噪性能。然后将开发的技术应用于滚动器故障实验中收集的振动信号,通过单因素实验分析了不同可选参数对去噪性能的影响。实验结果表明,所提出的方法可以很好地去除噪声并尽可能地保持信号的精细签名,并且在与软阈值函数或硬阈值结合时,欧几里德重量函数和最小阈值可以实现所需的去噪能力。

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