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A Novel Fault Feature Recognition Method for Time-Varying Signals and Its Application to Planetary Gearbox Fault Diagnosis under Variable Speed Conditions

机译:一种新型故障特征识别方法,时变信号及其在变速条件下的行星齿轮箱故障诊断的应用

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摘要

The existing time-frequency analysis (TFA) methods mainly highlight the time-frequency ridges of the interested components by optimizing the time-frequency plane to facilitate the extraction of the relevant components. Generalized demodulation (GD), order tracking (OT), and other methods are generally used in conjunction with the TFA methods to realize the transition from a time-varying signal to a stationary signal, and finally identify the fault feature through a time-frequency plane. Generally, it is necessary to clarify the accuracy of the estimated components such as the rotational frequency or the fault characteristic frequency (FCF) during the operation of the GD or OT methods. Unfortunately, it is not only difficult to extract and locate rotational frequency or FCF, but also complicated in the whole estimation process. In this paper, a simple yet readable method is proposed to reveal the fault feature of time-varying signals. First, the method only needs to extract an arbitrary instantaneous frequency (IF). This is different from the GD method which needs to estimate and locate all phase functions. Then, it converts all variable frequency curves into corresponding lines parallel to the frequency axis based on the extracted IF to determine the proportional relationship between the components. Finally, to further improve the readability of the final results, we reduce the dimension of the transformed time-frequency representation to generate a two-dimensional (2D) energy-frequency map with high resolution and the same proportion. Subsequently, the performance is validated by simulated and experimental data.
机译:现有的时间 - 频率分析(TFA)方法主要通过优化时间频率平面,以便于相关成分的提取高亮感兴趣的组分的时频脊。广义解调(GD),订单跟踪(OT),和其他方法与TFA方法结合通常用于实现从一个随时间变化的信号,以一个固定的信号转变,并最后通过一个时间 - 频率识别故障特征飞机。通常,有必要澄清估计部件的精度,如旋转频率或的GD或OT方法操作过程中故障特征频率(FCF)。不幸的是,它不仅难以提取和定位旋转频率或FCF,但也很复杂,在整个评估过程。在本文中,一个简单而可读方法,提出了以显示随时间变化的信号的故障特征。首先,该方法仅需要提取的任意的瞬时频率(IF)。这是从中需要估计并找到所有相位函数的GD方法不同。然后,所有可变频率曲线转换成线平行于频率轴上基于所提取的IF,以确定组分之间的比例关系相应。最后,为了进一步提高最终结果的可读性,我们降低经变换的时频表示的尺寸,以产生二维(2D)能量频率以高分辨率和相同比例的地图。随后,性能是通过模拟和实验数据验证。

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