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Rolling Element Bearing Performance Degradation Assessment Using Variational Mode Decomposition and Gath-Geva Clustering Time Series Segmentation

机译:滚动元件轴承性能下降评估使用变分模式分解和GHAT-GEVA聚类时间序列分割

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摘要

By focusing on the issue of rolling element bearing (REB) performance degradation assessment (PDA), a solution based on variational mode decomposition (VMD) and Gath-Geva clustering time series segmentation (GGCTSS) has been proposed. VMD is a new decomposition method. Since it is different from the recursive decomposition method, for example, empirical mode decomposition (EMD), local mean decomposition (LMD), and local characteristic-scale decomposition (LCD), VMD needs a priori parameters. In this paper, we will propose a method to optimize the parameters in VMD, namely, the number of decomposition modes and moderate bandwidth constraint, based on genetic algorithm. Executing VMD with the acquired parameters, the BLIMFs are obtained. By taking the envelope of the BLIMFs, the sensitive BLIMFs are selected. And then we take the amplitude of the defect frequency (ADF) as a degradative feature. To get the performance degradation assessment, we are going to use the method called Gath-Geva clustering time series segmentation. Afterwards, the method is carried out by two pieces of run-to-failure data. The results indicate that the extracted feature could depict the process of degradation precisely.
机译:通过专注于滚动元件轴承(REB)性能退化评估(PDA),基于变模式分解(VMD)和加特-Geva(杰瓦)聚类的时间序列分割中的溶液的问题(GGCTSS)已经提出。 VMD是一种新的分解方法。因为它是不进行递归分解方法不同,例如,经验模式分解(EMD),局部均值分解(LMD)和局部特征尺度分解(LCD),VMD需要先验参数。在本文中,我们将提出在VMD来优化参数的方法,即,分解模式和中等带宽约束的数量,基于遗传算法。执行VMD与所获取的参数,获得BLIMFs。通过采取BLIMFs的信封,敏感BLIMFs选择。然后我们取缺陷频率(ADF),其为降解特征的振幅。为了获得性能退化评估,我们将使用名为迦特-Geva(杰瓦)聚类时间序列分割方法。然后,该方法由运行到故障数据的两片进行。结果表明,所提取的特征可以准确描绘降解过程。

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