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Bearing performance degradation assessment by using LMD and CFS clustering without cluster number selection

机译:通过使用LMD和CFS群集而无需簇号选择,轴承性能降级评估

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A method based on local mean decomposition (LMD) with clustering by using a fast search (CFS) algorithm for roller bearings performance degradation assessment (PDA) is presented because CFS is rarely used in bearing PDA without clustering center point selection. Firstly, The LMD is used to decompose the original vibration signal into some production function components (PFs), then the effective first two PFs are selected according to the correlation coefficient and calculated by singular-value decomposition. Then the selected first two singular values are regarded as the input of the CFS for finding the clustering center point under different states of bearing health, namely “Normal”, “Slight”, and “Severe”. Finally, a health evaluation index (confidence value), which is obtained from the dissimilarity between the samples and the various clustering center points, is used to evaluate the health of the roller bearings. The results of the experiment show that the proposed method has a good ability to assess performance degradation well.
机译:带有通过使用用于滚子轴承的性能退化评估快速搜索(CFS)算法(PDA)聚类基于局部均值分解(LMD)的方法,是因为CFS是在轴承PDA无需聚类中心点选择很少使用。首先,LMD用于将原始振动信号分解为一些生产函数分量(PFS),然后根据相关系数选择有效的前两个PFS,并通过奇异值分解计算。然后,所选择的前两个奇异值被视为CFS的输入,用于在不同状态下找到聚类中心点,即“正常”,“轻微”和“严重”。最后,从样品和各种聚类中心点之间的不同性获得的健康评估指标(置信度值)用于评估滚子轴承的健康。实验结果表明,该方法具有良好评估性能下降的良好能力。

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