自适应循环内容比率图:一种用于轴承并发故障诊断的新信号分解方法

Cai Yi, Ye Tao, Jiayin Tang, Xiaoyu Xian, Fengkun Yang, Qiuyang Zhou, Yunzhi Lin, Hao Wang, Jianhui Lin, Weihua Zhang
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引用次数: 0

摘要

快速峰度图(FK)已被证明是共振频率带检测的有效工具,在轴承故障诊断中得到广泛应用。然而,FK 对脉冲噪声的鲁棒性较差,且其频带分割规则固定,导致其信号分解结果中故障共振频段的过度分解或分解不足。因此,本文提出了一种自适应循环内容比率图。首先,根据振动信号在不同频率成分上的能量分布,进行自适应频谱分割,得到包含不同频率成分的多个子信号。其次,应用不仅能更准确地表征轴承故障冲击周期性,而且对脉冲噪声不敏感的周期含量比(RCC)来分别评估各子信号中包含的故障特征信息。同时,考虑到在 RCC 评估过程中需要故障特征频率信息,提出的方法基于包络谱对每个子信号进行自适应故障特征频率检测。利用 RCC 最大化来定位故障共振频率带。同时,结合估计的故障特征频率,该方法还能实现并发故障特征的提取。仿真和实验数据验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive cyclic content ratiogram: a new signal decomposition method for bearing concurrent fault diagnosis
Fast kurtogram (FK) has been proven to be an effective tool for resonance frequency band detection, which is widely used in bearing fault diagnosis. However, FK is not robust to impulsive noise, and its frequency band segmentation rule is fixed, which leads to over-decomposition or under-decomposition of the fault resonance frequency band in its signal decomposition results. Therefore, an adaptive cyclic content ratiogram is proposed in this paper. Firstly, based on the energy distribution of vibration signals on different frequency components, the frequency spectral segmentation is performed adaptively, and multiple sub-signals containing different frequency components are obtained. Secondly, the ratio of cyclic content (RCC), which cannot only more accurately characterize the cyclostationarity of bearing fault impacts but also be insensitive to impulsive noise, is applied to evaluate the fault feature information contained in each sub-signal separately. In the meanwhile, considering that fault characteristic frequency information is required in the process of RCC evaluation, the proposed method performs adaptive fault characteristic frequency detection for each sub-signal based on the envelope spectrum. The RCC maximization is used to locate the fault resonance frequency band. Also, combined with the estimated fault characteristic frequencies, the proposed method can achieve the extraction of concurrent fault features. Simulation and experimental data verify the effectiveness of the proposed method.
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