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A FAULT DIAGNOSIS APPROACH FOR ROLLING ELEMENT BEARING BASED ON S-TRANSFORM AND ARTIFICIAL NEURAL NETWORK

机译:基于S变换和人工神经网络的滚动轴承故障诊断方法。

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The condition monitoring and fault diagnosis of rolling element bearing is a very important research content in the field of gas turbine health management. In this paper, a hybrid fault diagnosis approach combining S-transform with artificial neural network (ANN) is developed to achieve the accurate feature extraction and effective fault diagnosis of rolling element bearing health status. Considering the nonlinear and non-stationary vibration characteristics of rolling element bearing under stable loading and rotational speeds, S-transform and singular value decomposition (SVD) theory are firstly used to process the vibration signal and extract its time-frequency information features. Then, radical basis function (RBF) neural network classification model is designed to carry out the state pattern recognition and fault diagnosis. As a practical application, the experimental data of rolling element bearing including four health status are analyzed to evaluate the performance of the proposed approach. The results demonstrate that the present hybrid fault diagnosis approach is very effective to extract the fault features and diagnose the fault pattern of rolling element bearing under different rotor speed, which may be a potential technology to enhance the condition monitoring of rotating equipment. Besides, the advantages of the developed approach are also confirmed by the comparisons with the other two approaches, i.e. the Wigner-Ville (WV) distribution and RBF neural network based method as well as the S-transform and Elman neural network based one.
机译:滚动轴承的状态监测与故障诊断是燃气轮机健康管理领域非常重要的研究内容。本文提出了一种将S变换与人工神经网络(ANN)相结合的混合故障诊断方法,以实现滚动轴承健康状态的准确特征提取和有效的故障诊断。考虑到稳定载荷和转速下滚动轴承的非线性和非平稳振动特性,首先采用S变换和奇异值分解(SVD)理论对振动信号进行处理,提取其时频信息特征。然后,设计了自由基基函数(RBF)神经网络分类模型,以进行状态模式识别和故障诊断。在实际应用中,分析了包括四个健康状态的滚动轴承的实验数据,以评估该方法的性能。结果表明,该混合故障诊断方法对于提取不同转子转速下滚动轴承的故障特征并进行故障模式诊断非常有效,可能是增强旋转设备状态监测的一项潜在技术。此外,与Wigner-Ville(WV)分布和基于RBF神经网络的方法以及基于S变换和Elman神经网络的其他两种方法的比较也证实了该开发方法的优势。

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