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Early fault diagnosis of gearbox using Empirical Wavelet Transform and Hilbert Transform

机译:基于经验小波变换和希尔伯特变换的变速箱早期故障诊断

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Gears are one of the most common mechanisms used for transmitting power and motion in various mechanical applications. Tooth pitting fault is frequently failure modes encountered. An analytical model of one stage spur gearbox is presented where the effects of tooth pitting fault were simulated by magnitude and phase changes in the gearmesh stiffness. This paper deals with the problem by using the Empirical Wavelet Transform (EWT) and the Hilbert Transform (HT) techniques. First, the EWT is used to extract adaptive modes from the vibration signals by designing an appropriate wavelet Alter bank. Then, the instantaneous frequencies are performed for each mode using the HT. The proposed tooth pitting fault diagnosis method was tested on both clean and noisy signals to evaluate its performance. The results show that the proposed method can effectively detect the fault in an early stage of development.
机译:齿轮是在各种机械应用中用于传递动力和运动的最常见的机构之一。齿蚀故障是经常遇到的故障模式。提出了一种单级正齿轮箱的分析模型,其中通过齿轮啮合刚度的大小和相位变化模拟了点蚀故障的影响。本文通过使用经验小波变换(EWT)和希尔伯特变换(HT)技术来解决该问题。首先,通过设计适当的小波Alter bank,将EWT用于从振动信号中提取自适应模式。然后,使用HT对每种模式执行瞬时频率。提出的齿蚀故障诊断方法在干净和嘈杂的信号上进行了测试,以评估其性能。结果表明,该方法可以在开发的早期阶段有效地检测出故障。

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