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A new approach to time-domain vibration condition monitoring: Gear tooth fatigue crack detection and identification by the Kolmogorov-Smirnov test

机译:时域振动状态监测的新方法:通过Kolmogorov-Smirnov试验检测和识别齿轮疲劳裂纹

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This paper introduces a new technique for tarry identification of spur gear tooth Fatigue cracks, namely the Kolmogorov-Smirnov test. This test works on the null hypotheses that the cumulative density Function (CDF) of a target distribution is statistically similar to the CDF of a reference distribution. In effect, this is a time-domain signal processing technique that compares two signals, and returns the likelihood that the two signals have the same probability distribution Function. Based on this estimate, it is possible to determine whether the two signals are similar or not. Therefore, by comparing a given vibration signature to a number of template signatures (i.e., signatures From known gear conditions) it is possible to state which is the most likely condition of the gear under analysis. It must be emphasised that this is not a moment technique as it uses the whole CDF, instead of sections of the cumulative density function. In this paper. this technique is applied to the specific problem of fatigue crack detection. Here, it is shown that this test not only successfully identifies the presence of the Fatigue cracks but also gives an indication related to the advancement of the crack. Furthermore, this technique identifies cracks that are not identified by popular methods based on the statistical moment analysis of the vibration signature. This shows that, despite its simplicity, the Kolmogorov-Smirnov test is an extremely powerful method that effectively classifies different vibration signatures, allowing For its safe use as another condition monitoring technique. (C) 2001 Academic Press. [References: 10]
机译:本文介绍了一种用于识别正齿轮齿疲劳裂纹的方法,即Kolmogorov-Smirnov试验。该检验基于零假设,即目标分布的累积密度函数(CDF)在统计上类似于参考分布的CDF。实际上,这是一种时域信号处理技术,用于比较两个信号,并返回两个信号具有相同概率分布Function的可能性。基于该估计,可以确定两个信号是否相似。因此,通过将给定的振动特征与多个模板特征(即,来自已知齿轮状态的特征)进行比较,可以说明哪一个是分析中的齿轮最可能的状态。必须强调的是,这不是一种矩技术,因为它使用了整个CDF,而不是累积密度函数的各个部分。在本文中。该技术被应用于疲劳裂纹检测的特定问题。在这里,表明该测试不仅成功地识别了疲劳裂纹的存在,而且给出了与裂纹发展有关的指示。此外,该技术基于对振动特征的统计矩分析来识别通行方法无法识别的裂纹。这表明,尽管简单,但Kolmogorov-Smirnov测试是一种非常有效的方法,可以有效地对不同的振动特征进行分类,从而可以安全地用作另一种状态监测技术。 (C)2001学术出版社。 [参考:10]

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