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A histogram statistical method for the detection of localized faults in deep groove ball bearing

机译:用于检测深沟滚珠轴承局部故障的直方图统计方法

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摘要

This study aims to use the histogram statistical method to establish a deep groove ball bearing fault diagnosis strategy. First, statistical indicators are used to excavate the fault characteristics buried in the vibration signal, and use the histogram to define the characteristic area for fault diagnosis. The results show that the indicators 1, 3, 6 have better statistical differences. Based on this, the accuracy of pattern recognition for all test data is 100%. Finally, the statistical significance of ball damage was significant, and the results showed high correlation (56~73%). The correlation between inner race damage model was 49~57% and healthy model was 52%. As the inner race damage and health model in the statistical sense, there are some similar, so there is a relatively high correlation. In the future research work, it will be committed to mining more representative indicators to enhance the relevance of abnormal characteristics.
机译:本研究旨在使用直方图统计方法来建立一个深沟球轴承故障诊断策略。首先,统计指标用于挖掘埋在振动信号中的故障特性,并使用直方图来定义故障诊断的特征区域。结果表明,指标1,3,6具有更好的统计差异。基于此,所有测试数据的模式识别的准确性为100%。最后,球损伤的统计显着性显着显着,结果表现出高的相关性(56〜73%)。内部血迹损伤模型之间的相关性为49〜57%,健康模式为52%。随着统计意义上的内部种族损伤和健康模型,存在一些类似的,所以相关性相对较高。在未来的研究工作中,将致力于采矿更具代表性指标,以提高异常特征的相关性。

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