Extraction of weak transient signals based on adaptive window merging for rolling bearing fault diagnosis

Wei Guo, Lingjian Huang, M. Zuo
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引用次数: 2

Abstract

The problem of local and weak defect detection in rotating machinery has been widely studied in many literatures. Its vibration signal is not easy to be recognized in the raw signal owing to its low energy level at the early stage of the fault and strong background noise. An early developed and still widely used technique for such a signal detection is envelope analysis. Despite the fruitful modifications and improvements on this technique, its effectiveness and application is still limited by its parameter selection, which is generally understood as the optimization on the structure and the parameters of the filter that are hardly ever known a priori. To solve this problem, this paper focuses on the adaptive selection of the filter parameters, i.e. the center frequency and the band width. By analyzing the energy distribution in frequency domain of the vibration signal, the center frequency is automatically determined by identifying the frequency with the maximal energy; and then, by comparing the energy changes of two adjacent windows and merging these windows if the changes are small enough, the appropriate band width is selected according to the window with the concentrated energy. An experimental vibration signal collected from a bearing with an outer race defect is used to verify the effectiveness of the proposed filter. A comparison between the proposed method and the fast kurtogram is also completed. The results indicate that the proposed filter can quickly identify the resonance frequency band induced by the faulty bearing and then extract weak transient signal for accurate fault diagnosis.
基于自适应窗合并的弱瞬态信号提取在滚动轴承故障诊断中的应用
旋转机械的局部和弱缺陷检测问题在许多文献中得到了广泛的研究。其振动信号在故障早期能级较低,背景噪声较强,在原始信号中不易被识别。包络分析是一种早期发展并仍在广泛使用的信号检测技术。尽管对该技术进行了卓有成效的修改和改进,但其有效性和应用仍然受到参数选择的限制,参数选择通常被理解为对滤波器的结构和参数的优化,而这些几乎是先验的。为了解决这一问题,本文重点研究了滤波器参数的自适应选择,即中心频率和带宽。通过分析振动信号的频域能量分布,识别出能量最大的频率,自动确定中心频率;然后,通过比较相邻两个窗口的能量变化,如果变化足够小,将两个窗口合并,根据能量集中的窗口选择合适的带宽。最后,利用外圈缺陷轴承的实验振动信号验证了该滤波器的有效性。并将该方法与快速峰图进行了比较。结果表明,该滤波器能快速识别故障轴承引起的共振频带,进而提取微弱的瞬态信号,实现准确的故障诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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