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Bearing damage classification using instantaneous energy density

机译:轴承损坏分类使用瞬时能量密度

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>A methodology is proposed for classification of type of defect in a bearing using vibration data. Hilbert-Huang Transform (HHT) is used to obtain Instantaneous energy density (IE) values corresponding to interaction of rolling elements and the defect. IE values are treated as a time series and autocorrelation coefficients (ACs) with varying lags are calculated. Based on the ACs, a Defect Occurrence Index (DOI) is proposed to rank the possibility of a type of bearing damage. Based on the DOI, an adaptive filtering process is used to filter the maximum IE corresponding to the peaks generated during the defect interaction. The main feature of the present approach involves capturing the phenomenon of amplitude modulation (using the approach of autocorrelation) for an inner race defect and uses its absence in the case of outer race defect to distinguish between the inner and outer race defects. Statistical techniques (Chi-square test and Coefficient of variation (CV)) on the filtered IE are used for damage type identification. A new parameter, Defect Severity Value (DSV), is proposed for assessment of the severity of the bearing defect. The proposed methodology is validated on simulated outer/inner race defect, and on two different vibration datasets obtained from seeded defect experiments. The proposed methodology helps uniquely identify the bearing damage.
机译:提出了一种方法,用于使用振动数据对轴承中的缺陷类型进行分类。 Hilbert-Huang变换(HHT)用于获得对应于滚动元件的相互作用和缺陷的瞬时能量密度(即)值。 IE值被视为作为时间序列和具有变化滞后的自相关系数(ACS)被处理。基于ACS,提出了一种缺陷发生指数(DOI),以对轴承损坏的可能性进行排名。基于DOI,自适应滤波过程用于过滤与缺陷交互期间产生的峰值对应的最大IE。本方法的主要特征涉及捕获内部种族缺陷的幅度调制(使用自相关方法)的现象,并且在外部种族缺陷的情况下使用其不存在以区分内部和外部血液缺陷。滤波IE上的统计技术(Chi-Square测试和变异系数(CV))用于损伤类型识别。提出了一种新参数,缺陷严重性值(DSV),以评估轴承缺陷的严重程度。所提出的方法在模拟的外部/内血缺陷上验证,以及从种子缺陷实验获得的两种不同的振动数据集。所提出的方法有助于唯一地识别轴承损坏。

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