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Fault Diagnosis of Roller Bearing Using Dual-Tree Complex Wavelet Transform, Rough Set and Neural Network

机译:使用双树复杂小波变换,粗糙集和神经网络的滚子轴承故障诊断

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In a complex field environment for modern mechanical equipment, how to identify all kinds of operational status of the rolling element bearings fastly and accurately is very important and necessary. A novel approach to automated diagnosis is introduced, which is based on feature extraction with the Dual-Tree Complex Wavelet Transform (DT-CWT), then attribute reduction with rough set theory and finally pattern recognition with Artificial Neural Network. In our experiment, 4 kinds of states on a rolling element bearing test table, including normal, pitting on inner ring, pitting on outer ring and pitting on rolling element, are adopted. The experimental results indicate that the proposed feature extraction and automated diagnosis method can extract significant feature sets from signal, and can accurately distinguish many fault pattern, and has some practical value for the on-line condition monitoring of modern industrial demands.
机译:在用于现代机械设备的复杂现场环境中,如何牢固准确地识别滚动元件轴承的各种操作状态非常重要,是必要的。介绍了一种新的自动诊断方法,其基于与双树复络小波变换(DT-CWT)的特征提取,然后用粗糙集理论进行属性,最后与人工神经网络进行图案识别。在我们的实验中,采用4种状态滚动元件轴承测试台,包括正常,在内圈上的凹点,在外环上点蚀,滚动元件蚀。实验结果表明,所提出的特征提取和自动诊断方法可以从信号中提取显着的特征集,并且可以准确地区分许多故障模式,并对现代工业需求的在线状态监测具有一些实用价值。

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