Extraction and diagnosis of rolling bearing fault signals based on improved wavelet transform

IF 0.6 Q4 ENGINEERING, MECHANICAL
Zhiqing Cheng
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引用次数: 0

Abstract

As the continuous growth of the machinery industry, the importance of rolling bearings as key connecting parts in machinery movement is also increasing. However, the extraction and diagnosis of rolling bearing fault signals are difficult, and how to use modern transform analysis methods to raise the extraction efficiency and diagnostic accuracy becomes the focus. For this, a rolling bearing fault signal extraction and diagnosis model is designed based on empirical wavelet transform. The diagnostic model is optimized by using support vector machine and quantum genetic algorithm to design a rolling bearing fault signal extraction and diagnosis model based on improved empirical wavelet transform-support vector machine. The test results show that the research method can obtain four component signals showing different anomalies when generating time domain diagrams. Only five component peaks are generated and one group is extracted as output when generating component peaks. The abnormal amplitude of envelope spectrum basically reaches 0.40×10 -6 or above. The judgment accuracy of component diagnosis reaches 98.12%. The above results show that the research method has better fault signal extraction ability and better diagnostic accuracy when performing fault signal diagnosis, which can provide new technical support for rolling bearing fault signal extraction and diagnosis.
基于改进小波变换的滚动轴承故障信号提取与诊断
随着机械工业的不断增长,滚动轴承作为机械运动中的关键连接部件的重要性也越来越大。然而,滚动轴承故障信号的提取和诊断是一个难点,如何利用现代变换分析方法提高提取效率和诊断精度成为人们关注的焦点。为此,设计了基于经验小波变换的滚动轴承故障信号提取与诊断模型。利用支持向量机和量子遗传算法对诊断模型进行优化,设计了基于改进经验小波变换-支持向量机的滚动轴承故障信号提取与诊断模型。测试结果表明,该方法在生成时域图时,可以得到表现出不同异常的四分量信号。只产生5个分量峰,在产生分量峰时提取一组作为输出。包络谱异常幅值基本达到0.40×10 -6以上。构件诊断判断正确率达到98.12%。以上结果表明,研究方法在进行故障信号诊断时具有较好的故障信号提取能力和较好的诊断精度,可为滚动轴承故障信号提取与诊断提供新的技术支持。
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来源期刊
Journal of Measurements in Engineering
Journal of Measurements in Engineering ENGINEERING, MECHANICAL-
CiteScore
2.00
自引率
6.20%
发文量
16
审稿时长
16 weeks
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