基于支持向量机的谱峰度分析在轴承诊断中的最佳频率选择

A. Fasana, S. Marchesiello, Miriam Pirra, L. Garibaldi, A. Torri
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引用次数: 7

摘要

滚动轴承可能是旋转机械设备中应用最广泛的部件,多年来对其进行状态监测和故障诊断以防止故障的发生越来越受到人们的关注。基于振动信号的方法是目前应用最广泛的一种方法,已广泛应用于各种状态监测系统中。从60年代初开始,在此基础上提出了大量不同的方法,以进行轴承故障的诊断,故障识别和分类。其中,一种典型的方法包括对被测系统最具信息量的频率范围输出进行深入分析;这个波段的识别并不简单,因为基本任务在于找出内容中信息量最大的波段,而这些波段又可能不符合某些作者所声称的最大响应之一。本文对谱峭度和支持向量机进行了分析和比较,结果表明,尽管它们的方法完全不同,但它们通常会得到相似的结果。本文简要介绍了两种方法,并对实验数据进行了分析,该实验使用了AVIO设计的全尺寸动力传动齿轮箱的备件。利用这些比较,使用经典指标进行分析-应用于先前分析建议的特定波段,如均方根和其他统计量。多维图显示了所得结果的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral Kurtosis against SVM for best frequency selection in bearing diagnostics
Rolling bearing is probably the most widely used component in rotating mechanical equipments and its condition monitoring and fault diagnosis to prevent the occurrence of breakdown is growing in interest since many years. Vibration signal based methods are the most popular and have been adopted in many kinds of condition monitoring systems. Starting in the early 60, an immense range of different methods has been proposed on this basis, to perform diagnosis, fault identification and classification of bearing faults. Among the others, one typical approach consists in deep analysis of the most informative frequency range output of the system under test; the identification of this band is not straightforward because the fundamental task consists in finding out the band which is the most informative in contents which, in turn, might not be corresponding to that one of the maximum response, as claimed by some authors. In this paper, Spectral Kurtosis and Support Vector Machine are analysed and compared and it is shown that they typically reach similar results, in spite of their totally different approach. A brief description of both methods is given and laboratory data are analysed from a lab rig which uses spare parts of a full size power transmission gearbox, designed by AVIO. By taking advantage of these comparisons, the analyses are conducted using classical indicators-applied to the specific bands suggested by previous analysis such as the RMS and other statistical quantities. Multi dimensional graphs are reported to show the reliability of the obtained results.
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来源期刊
Mecanique & Industries
Mecanique & Industries 工程技术-工程:机械
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