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Time-Varying Spectral Kurtosis: Generalization of Spectral Kurtosis for Local Damage Detection in Rotating Machines under Time-Varying Operating Conditions

机译:时变光谱峰值:在时变运行条件下旋转机器局部损伤检测的光谱峰度的推广

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摘要

Vibration-based local damage detection in rotating machines (i.e., rolling element bearings) is typically a problem of detecting low-energy cyclic impulsive modulations in the measured signal. This can be challenging as both the amplitude of a single damage-related impulse and the distance between impulses might be changing in time. From the signal processing point of view, this means time varying regarding the the signal-to-noise ratio, location of information in the frequency domain, and loss of periodicity (this remains cyclic but not periodic). One of the many attempted approaches to this problem is filtration using custom filters derived in a data-driven fashion. One of the methods to obtain such filters is a selector approach, where the value of a certain statistic is calculated for individual frequency bands of a signal that results in the magnitude response of a filter. In this approach, each chosen statistic will yield different results, and the obtained filter will be focused on different frequency bands focusing on different behaviors. One of the most popular and powerful selectors is spectral kurtosis as popularized by Antoni, which uses kurtosis as an operational statistic. Unfortunately, after closer inspection, it is easy to notice that, although selectors can significantly enhance the signal, they accumulate a great deal of noise and other background content of signals, which occupies the space (or rather time) in between the impulses. Another disadvantage is that such filters are time-invariant, because, in the principle of their construction, they are not adaptive, and even slight changes in the signal yield suboptimal results either by missing relevant data when the conditions in the signal change (i.e., informative impulses widen in bandwidth), or by accumulating unnecessary noise when the relevant information is not present (in between impulses or in frequency bands that impulses no longer occupy). To address this issue, I propose generalization of the selector approach using the example of spectral kurtosis. This assumes creating a time-varying selector that can be seen as a spatial filter in the time-frequency domain. The time-varying SK (TVSK) is estimated for segments of the signal, and, instead of a vector of SK-based filter coefficients, one obtains a TVSK-based matrix of coefficients that takes into account the time-varying properties of the signal. The obtained structure is then binarized and used as a filter. The presented method is tested using a simulated signal as well as two real-life signals measured on heavy-duty bearings in two different types of machine.
机译:旋转机器(即,滚动元件轴承)基于振动的局部损伤检测通常是检测测量信号中的低能量循环冲击调制的问题。这可能是具有挑战性的,因为单一伤害相关的脉冲的幅度和冲动之间的距离可能及时变化。从信号处理的角度来看,这意味着关于信噪比的时间变化,频域中的信息的位置,并且周期性丢失(这保持循环但不周期数)。使用以数据驱动方式派生的自定义筛选器来过滤此问题的许多尝试方法之一。获得这种滤波器的方法之一是选择器方法,其中针对导致滤波器的幅度响应的信号的各个频带计算特定统计的值。在这种方法中,每个所选择的统计数据将产生不同的结果,并且所获得的滤波器将聚焦在聚焦在不同行为的不同频带上。最受欢迎和最强大的选择器之一是Spectral Kurtosis,由Antoni推广,它使用Kurtosis作​​为操作统计数据。不幸的是,在接近检查后,很容易注意到,尽管选择器可以显着提升信号,但它们积累了大量的噪声和信号的其他背景含量,占据了冲动之间的空间(或相当时间)。另一个缺点是这种滤波器是时间不变的,因为,在其结构的原则上,它们不是自适应的,并且在信号变化中的条件时,信号不会通过缺少相关数据缺少相关数据的略微变化(即,信息冲动在带宽上扩大),或者当相关信息不存在时累积不必要的噪音(在冲动不再占用的冲动或冲动的频段之间)。为了解决这个问题,我建议使用光谱峰氏症的举例来推广选择器方法。这假设创建一个时变的选择器,其可以被视为时频域中的空间滤波器。估计时变SK(TVSK)估计信号的段,而不是基于SK的滤波器系数的向量,而不是考虑信号的时变特性的基于TVSK的系数矩阵。 。然后将得到的结构二值化并用作过滤器。使用模拟信号测试所提出的方法以及在两种不同类型的机器上以重型轴承测量的两个现实寿命信号。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者

    Jacek Wodecki;

  • 作者单位
  • 年(卷),期 2021(21),11
  • 年度 2021
  • 页码 3590
  • 总页数 19
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:Kurtosis;空间过滤;时频分析;振动;局部损坏检测;

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