Bearing Intelligent Fault Diagnosis Under Complex Working Condition Based on SK-ES-CNN

Zhengping Li, Kaiqiang Liu, Lei Xiao
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引用次数: 1

Abstract

At present, most of the existing bearing fault diagnosis methods focus on a single working condition. However, it is far from the complex working condition with changeable motor speed, environmental noise interference and the weakness of early feature in the real industrial applications. Therefore, it is very significant to determine appropriate features for intelligent fault diagnosis of rolling element bearings (REBs) under complex working conditions. To solve this problem, an intelligent diagnosis method of bearing faults based on spectrum kurtosis (SK), envelope spectrum (ES) and convolutional neural net (CNN) is proposed in this paper under variable rotational speed and multiple fault states. In this method, SK and bandpass filtering are firstly used to improve the signal-to-noise rate (SNR) of fault from the original vibration signals. Then the rich information of fault characteristic frequencies related to the rotating speed is extracted by ES analysis. Subsequently, a CNN model is built to identify bearing defects by automatically extracting these representative features. Four experiments are performed on the Case Western Reserve University (CWRU) bearing dataset to demonstrate the effectiveness of this method. By comparing experiment results with others, the superiority and effectiveness of this method are illustrated.
基于SK-ES-CNN的复杂工况轴承智能故障诊断
目前,现有的轴承故障诊断方法大多集中在单一工况下。然而,在实际工业应用中,它与电机转速变化、环境噪声干扰等复杂工况、早期特性的弱点相去甚远。因此,确定合适的特征对复杂工况下滚动轴承的智能故障诊断具有十分重要的意义。针对这一问题,提出了一种基于谱峰度(SK)、包络谱(ES)和卷积神经网络(CNN)的变转速多故障状态下轴承故障智能诊断方法。该方法首先采用SK和带通滤波,从原始振动信号中提高故障的信噪比。然后通过ES分析提取与转速相关的故障特征频率的丰富信息。随后,通过自动提取这些代表性特征,构建CNN模型来识别轴承缺陷。在凯斯西储大学(CWRU)轴承数据集上进行了四次实验,验证了该方法的有效性。通过与其它方法的实验结果比较,说明了该方法的优越性和有效性。
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