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Application of EWT AR model and FCM Clustering in Rolling Bearing Fault Diagnosis

机译:EWT AR模型和FCM聚类在滚动轴承故障诊断中的应用

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A fault diagnosis method is proposed, which is based on Empirical Wavelet Transform (EWT), Auto-Regressive (AR) model and Fuzzy C-Mean clustering (FCM) clustering algorithm, in order to solve the problem of fault category is difficult to identify of rolling bearing fault signal. In this method, the original signal of the rolling bearing is decomposed by the EWT, and several AM-FM components are obtained. The AR model is established for each AM-FM component, and the original feature subset is constructed. Then, through the correlation analysis, the four AM-FM components are extremely correlated with the original vibration signal are selected and their AR models are established. Construction of high-dimensional feature subsets based on the auto-regressive parameters of AR model. Finally, using the Locality Preserving Projection (LPP) algorithm to reduce the dimension and enter the low-dimensional feature subset to the FCM clustering, in order to achieve fault diagnosis of bearings. Experiments show that the fault identification method which is proposed in this paper has certain advantages and the fault recognition effect is better.
机译:提出了一种故障诊断方法,基于经验小波变换(EWT),自动回归(AR)模型和模糊C均值(FCM)聚类算法,以解决故障类别难以识别的问题滚动轴承故障信号。在该方法中,滚动轴承的原始信号由EWT分解,获得几个AM-FM组件。 AR模型是为每个AM-FM组件建立的,并且构造了原始特征子集。然后,通过相关性分析,四个AM-FM组件与选择原始振动信号非常相关,并且其AR模型建立。基于AR模型自动回归参数的高维特征子集的构造。最后,使用局部保留投影(LPP)算法来减少维度并进入FCM聚类的低维特征子集,以实现轴承的故障诊断。实验表明,本文提出的故障识别方法具有一定的优点,故障识别效果更好。

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