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A Bearing Fault Diagnosis Method Based on VMD-SVD and Fuzzy Clustering

机译:基于VMD-SVD和模糊聚类的轴承故障诊断方法

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摘要

To obtain the fault features of the bearing, a method based on variational mode decomposition (VMD), singular value decomposition (SVD) is proposed for fault diagnosis by Gath-Geva (G-G) fuzzy clustering. Firstly, the original signals are decomposed into mode components by VMD accurately and adaptively, and the spatial condition matrix (SCM) can be obtained. The SCM utilized as the reconstruction matrix of SVD can inherit the time delay parameter and embedded dimension automatically, and then the first three singular values from the SCM are used as fault eigenvalues to decrease the feature dimension and improve the computational efficiency. G-G clustering, one of the unsupervised machine learning fuzzy clustering techniques, is employed to obtain the clustering centers and membership matrices under various bearing faults. Finally, Hamming approach degree between the test samples and the known cluster centers is calculated to realize the bearing fault identification. By comparing with EEMD and EMD based on a recursive decomposition algorithm, VMD adopts a novel completely nonrecursive method to avoid mode mixing and end effects. Furthermore, the IMF components calculated from VMD include large amounts of fault information. G-G clustering is not limited by the shapes, sizes and densities in comparison with other clustering methods. VMD and G-G clustering are more suitable for fault diagnosis of the bearing system, and the results of experiment and engineering analysis show that the proposed method can diagnose bearing faults accurately and effectively.
机译:为了获得轴承的故障特征,提出了一种基于变分模分解(VMD),奇异值分解(SVD)的方法,用于基于Gath-Geva(G-G)模糊聚类的故障诊断。首先,通过VMD将原始信号准确,自适应地分解为模式分量,从而获得空间条件矩阵(SCM)。用作SVD重构矩阵的SCM可以自动继承时延参数和嵌入维数,然后将来自SCM的前三个奇异值用作故障特征值,以减小特征维数并提高计算效率。 G-G聚类是无监督的机器学习模糊聚类技术之一,用于获得各种轴承故障下的聚类中心和隶属矩阵。最后,计算出样本与已知聚类中心之间的汉明接近度,以实现轴承故障识别。通过与基于递归分解算法的EEMD和EMD进行比较,VMD采用了一种新颖的完全非递归的方法来避免模式混合和最终效应。此外,从VMD计算得出的IMF组件包含大量故障信息。与其他聚类方法相比,G-G聚类不受形状,大小和密度的限制。 VMD和G-G聚类更适合轴承系统的故障诊断,实验和工程分析结果表明,该方法可以准确,有效地诊断轴承故障。

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