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A Novel Weak Fault Diagnosis Method Based on Sparse Representation and Empirical Wavelet Transform for Rolling Bearing

机译:基于稀疏表示和经验小波变换的滚动轴承弱故障诊断新方法

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Rotating machinery is widely used in industry. However, it works in tough environment, which makes the fault features extraction difficult. In the last few years, sparse representation, as a kind of effective feature extraction method, has great promise in industrial diagnosis. As for the traditional sparse representation, the greedy algorithm used to update the sparse coefficients is prone to produce local optimal solution and lead to over-fitting. In addition, if the signal contains a lot of redundant information, the basis learned by the traditional method cannot well represent the fault signal. Aim at the above questions, a novel weak fault diagnosis method based on sparse representation and empirical wavelet transform (EWT) is proposed in this paper. Gaussian filter is exploited to process the signal spectral, which can make the signal spectral smooth and the spectrum division more precise. Next, the signal spectrum is divided into N parts based on EWT. Then the kurtosis is utilized to screen out the optimal part of spectrum, which will be exploited to obtain a sparse basis. The constraint with nuclear norm is applied to remove the redundant component of the basis. Finally, the LASSO with elastic net, is employed to get sparse signal, the envelope spectrum is used to extract fault feature. Experimental results show that this method is better than traditional sparse representation using learning dictionary.
机译:旋转机械在工业中被广泛使用。但是,它在恶劣的环境下工作,这使得故障特征提取变得困难。近年来,稀疏表示作为一种有效的特征提取方法,在工业诊断中具有广阔的前景。对于传统的稀疏表示,用于更新稀疏系数的贪婪算法易于产生局部最优解并导致过度拟合。另外,如果信号中包含大量冗余信息,则传统方法学习到的基础不能很好地表示故障信号。针对上述问题,提出了一种基于稀疏表示和经验小波变换(EWT)的新型弱故障诊断方法。利用高斯滤波器处理信号频谱,可以使信号频谱平滑,频谱划分更加精确。接下来,基于EWT将信号频谱分为N个部分。然后利用峰度来筛选出频谱的最佳部分,这将被用来获得稀疏的基础。应用具有核规范的约束来去除基础的冗余部分。最后,利用具有弹性网的LASSO获得稀疏信号,利用包络谱提取故障特征。实验结果表明,该方法优于传统的基于学习词典的稀疏表示。

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