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A statistical feature investigation of the spalling propagation assessment for a ball bearing

机译:滚珠轴承剥落传播评估的统计特征研究

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摘要

Spalling is a main fatigue failure type of ball bearings. Vibration features of the bearing will be changed during the spalling propagation, which can be utilized to identify the spalling damage level. In this study, a new spalling propagation assessment algorithm dependent on the spectrum amplitude ratio and statistical features is established to identify the spalling damage location and level. The damage level is determined by the test fault samples in the listed test works. The spectrum amplitude ratio based on the bearing fault frequencies and spectrum amplitudes is applied to identify the damage location. 25 statistical features of the time-domain vibration signal are calculated. Pearson correlation coefficient (PCC) is used to determine the effective ones in the 25 statistical features presented by the previous works. The effective statistical features are applied to estimate the damage level. The test data given by the previous work in the list reference is utilized to verify the developed spalling propagation assessment algorithm. The results indicate that the established method can give a new approach to identify the spalling damage location and level of a ball bearing. (C) 2018 Elsevier Ltd. All rights reserved.
机译:剥落是滚珠轴承的主要疲劳失效类型。在剥落传播期间,轴承的振动特征将被改变,这可以用于识别剥落损坏水平。在该研究中,建立了一种依赖于频谱幅度比和统计特征的新的剥落传播评估算法,以识别剥落损坏位置和水平。损坏水平由列出的测试工作中的测试故障样本确定。应用基于轴承故障频率和频谱振幅的频谱幅度比来识别损坏位置。计算时域振动信号的统计特征。 Pearson相关系数(PCC)用于确定先前作品所呈现的25个统计特征中的有效的系数。应用有效的统计特征来估计损害水平。列表参考中以前的工作给出的测试数据用于验证开发的剥落传播评估算法。结果表明,建立的方法可以提供一种新方法来识别剥落损坏位置和滚珠轴承的水平。 (c)2018年elestvier有限公司保留所有权利。

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