Unbalance Bearing Fault Identification Using Highly Accurate Hilbert-Huang Transform Approach

IF 2 Q2 ENGINEERING, MULTIDISCIPLINARY
V. G. Salunkhe, S. Khot, R. Desavale, Nitesh P. Yelve
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引用次数: 1

Abstract

The dynamic characteristics of rolling element bearings are strongly related to their geometric and operating parameters, most importantly the bearing unbalance. Modern condition monitoring necessitates the use of intrinsic mode functions (IMFs) to diagnose unbalance bearing failure. This paper presents an Hilbert–Huang transform (HHT) method to diagnose the unbalanced rolling bearing faults of rotating machinery. To initially reduce the noise levels with slight signal distortion, the noises of the sample in normal and unbalanced fault states are measured and denoised using the wavelet threshold approach. The complex vibration signatures are decomposed into finite IMFs with ensemble empirical mode decomposition technique. Fast Fourier techniques (FFT) are employed to extract the vibration responses of bearings that are artificially damaged using electrochemical machining on a newly established test setup for rotor disc bearings. The similarities between the information-contained marginal Hilbert spectra can be used to diagnose rotating machinery bearing faults. The data marginal Hilbert spectra of Mahalanobis and cosine index are compared to determine the fault indicator index's similarity score. The HHT models simplicity enhanced the precision of diagnosis correlated to the results of the experiments with weak fault characteristic signals. The effectiveness of the proposed approach is evaluated with several theoretical models from the literature. The HHT approach is experimentally proven with unbalance diagnosis and capable of classifying marginal Hilbert spectra distribution. Because of its superior time-frequency characteristics and pattern identification of marginal Hilbert spectra and fault indicator indices, the newly stated HHT can process nonlinear, non-stationary, and even transient signals. The findings demonstrate that the suggested method is superior in terms of unbalance fault identification accuracy for monitoring the dynamic stability of industrial rotating machinery.
基于高精度Hilbert-Huang变换方法的不平衡轴承故障识别
滚动轴承的动态特性与其几何参数和运行参数密切相关,其中最重要的是轴承不平衡。现代状态监测需要使用内禀模态函数(IMFs)来诊断不平衡轴承故障。提出了一种基于Hilbert-Huang变换(HHT)的旋转机械滚动轴承不平衡故障诊断方法。为了初步降低信号畸变较小的噪声水平,测量了正常和不平衡故障状态下样本的噪声,并采用小波阈值方法去噪。采用集合经验模态分解技术,将复杂振动特征分解为有限分量。在新建立的转子盘轴承试验装置上,采用快速傅立叶技术(FFT)提取了电化学加工人为损坏轴承的振动响应。含有信息的边缘希尔伯特谱之间的相似性可用于旋转机械轴承故障的诊断。比较马氏体和余弦指数的数据边际希尔伯特谱,确定故障指标指数的相似度得分。HHT模型的简便性提高了故障特征信号较弱的实验结果的诊断精度。本文用文献中的几个理论模型对所提出方法的有效性进行了评估。实验证明,HHT方法具有不平衡诊断和边缘希尔伯特谱分布分类的能力。由于其优越的时频特性、边缘希尔伯特谱和故障指示指标的模式识别能力,新提出的HHT可以处理非线性、非平稳甚至瞬态信号。结果表明,该方法对工业旋转机械的动态稳定性监测具有较高的不平衡故障识别精度。
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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来源期刊
CiteScore
3.80
自引率
9.10%
发文量
25
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