SEACKgram:一种用于滚动轴承复合故障诊断的有针对性的解调带优化选择方法

Huibin Wang, Changfeng Yan, Yingjie Zhao, Shen Li, Jiadong Meng, Lixiao Wu
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引用次数: 0

摘要

滚动轴承在旋转机械中起着承载和传递动力的重要作用,轴承故障容易引发机械事故,造成巨大损失和人员伤亡。因此,滚动轴承的状态监测和诊断对于提高设备的安全性非常重要。复合故障是由初始缺陷演变而来的常见故障,具有随机性、耦合性、隐蔽性、继发性等特点。这些特点的存在给复合故障的准确诊断带来了巨大挑战。在复合故障诊断中,传统的选择单一最优解调频段进行分析识别的方法有时无法完全提取多个故障成分,容易造成漏诊和误诊。为了解决这一问题,本文提出了 SEACKgram 方法,即构建一个平方包络无偏自相关峰度(SEACK)指数。通过最大重叠离散小波包变换对原始信号的频带进行划分,利用 SEACK 指数对不同频带的故障信号进行定量描述。根据不同的故障周期,选取 SEACK 值最大的共振频段,然后对共振频段信号进行方包络谱分析,并根据故障特征频率确定故障类型。利用带有复合故障的滚动轴承的模拟和实验振动信号来验证所提方法的可行性。结果表明,所提出的 SEACKgram 能提高复合故障识别的准确性,并能在一定程度上应用于工程实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SEACKgram: a targeted method of optimal demodulation-band selection for compound faults diagnosis of rolling bearing
Rolling bearing plays an important role in carrying and transmitting power in rotating machinery, and the bearing fault is easy to lead to mechanical accidents, resulting in huge losses and casualties. Therefore, the condition monitoring and diagnosis of rolling bearings are very important to improve the safety of equipment. Compound fault is a common fault evolved from the initial defect, which is characterized by randomness, coupling, concealment, and secondary. The existence of these characteristics brings great challenges to the accurate diagnosis of compound faults. In the diagnosis of compound faults, the traditional methods that select the single optimal demodulation frequency band for analysis and identification sometimes cannot completely extract multiple fault components, which are prone to miss diagnosis and misdiagnosis. In order to solve this problem, the SEACKgram method is proposed by constructing a Square Envelope Unbiased Autocorrelation Correlation Kurtosis (SEACK) index. The frequency band of the original signal is divided by the Maximal Overlap Discrete Wavelet Packet Transform, and the SEACK index is used to quantitatively describe the fault signals of different frequency bands. According to the different fault periods, the resonant frequency bands of the maximum SEACK value are selected, then the resonance band signal is analyzed by square envelope spectrum, and the fault type is identified according to the fault characteristic frequency. The simulated and experimental vibration signals of rolling bearings with compound faults are used to verify the feasibility of the proposed method. The results show that the proposed SEACKgram can improve the accuracy of compound faults identification and would be applied in engineering practice to a certain extent.
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