首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Enhancement of fault vibration signature analysis for rotary machines using an improved wavelet-based periodic group-sparse signal estimation technique
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Enhancement of fault vibration signature analysis for rotary machines using an improved wavelet-based periodic group-sparse signal estimation technique

机译:利用改进的基于小波的周期性组 - 稀疏信号估计技术提高旋转机器故障振动特征分析

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摘要

In this paper, a wavelet-based periodic group-sparse signal denoising approach is proposed for detecting faults in rotary machines. The proposed approach exploits group sparsity in the wavelet domain. For this purpose, a periodicity-induced overlapping group shrinkage technique is utilized to threshold the wavelet coefficients. The wavelet coefficients are obtained by using the tunable Q-factor wavelet transform to decompose the measured vibration signals. The proposed approach is constrained to promote sparsity more strongly than convex regularization for estimating periodic group-sparse signals in noise, while avoiding nonconvex optimization. In addition, this maximally sparse convex approach has the advantage of preserving the oscillatory behavior of the useful fault features. A simulated signal is formulated to verify the performance of the proposed approach in periodic feature extraction. The detection performance of the proposed approach is compared with that of the comparative methods via root mean square error values. Finally, the proposed approach is applied to fault diagnosis of both experimental cases and engineering application. The processed results demonstrate that the proposed feature extraction technique can effectively detect the fault features from heavy background noise.
机译:本文提出了一种基于小波的周期性组 - 稀疏信号去噪方法,用于检测旋转机器中的故障。所提出的方法利用小波域的小组稀疏性。为此目的,使用周期性诱导的重叠组收缩技术来阈值阈值。通过使用可调谐Q因子小波变换来解析测量的振动信号来获得小波系数。所提出的方法受到限制,以促进比凸正常化更强烈的稀疏性,以估计噪声中的周期性组 - 稀疏信号,同时避免了非渗透优化。此外,这种最大稀疏的凸起方法具有保留有用故障特征的振荡行为的优点。配制模拟信号以验证周期性特征提取中所提出的方法的性能。将所提出的方法的检测性能与通过根均方误差值的比较方法的检测性能进行比较。最后,提出的方法适用于实验案例和工程应用的故障诊断。处理后的结果表明,所提出的特征提取技术可以有效地检测来自繁重背景噪声的故障特征。

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