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Railway Axle Condition Monitoring Technique Based on Wavelet Packet Transform Features and Support Vector Machines

机译:基于小波包变换特征和支持向量机的铁路车轴状态监测技术

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摘要

Railway axles are critical to the safety of railway vehicles. However, railway axle maintenance is currently based on scheduled preventive maintenance using Nondestructive Testing. The use of condition monitoring techniques would provide information about the status of the axle between periodical inspections, and it would be very valuable in the prevention of catastrophic failures. Nevertheless, in the literature, there are not many studies focusing on this area and there is a lack of experimental data. In this work, a reliable real-time condition-monitoring technique for railway axles is proposed. The technique was validated using vibration measurements obtained at the axle boxes of a full bogie installed on a rig, where four different cracked railway axles were tested. The technique is based on vibration analysis by means of the Wavelet Packet Transform (WPT) energy, combined with a Support Vector Machine (SVM) diagnosis model. In all cases, it was observed that the WPT energy of the vibration signals at the first natural frequency of the axle when the wheelset is first installed (the healthy condition) increases when a crack is artificially created. An SVM diagnosis model based on the WPT energy at this frequency demonstrates good reliability, with a false alarm rate of lower than 10% and defect detection for damage occurring in more than 6.5% of the section in more than 90% of the cases. The minimum number of wheelsets required to build a general model to avoid mounting effects, among others things, is also discussed.
机译:铁路轴对铁路车辆的安全至关重要。但是,铁路轮轴维护当前基于使用无损检测的定期预防性维护。状态监视技术的使用将在定期检查之间提供有关车轴状态的信息,这对于预防灾难性故障非常有价值。然而,在文献中,没有很多针对这一领域的研究,并且缺乏实验数据。在这项工作中,提出了一种可靠的铁路车轴实时状态监测技术。该技术通过在安装在钻机上的完整转向架的轴箱处获得的振动测量值进行了验证,在该处对四个不同的裂纹铁路轴轴进行了测试。该技术基于借助小波包变换(WPT)能量的振动分析,并结合支持向量机(SVM)诊断模型。在所有情况下,都可以观察到,在首次安装轮对时(健康状况),在轴的第一个固有频率处振动信号的WPT能量在人为产生裂纹时会增加。在该频率下基于WPT能量的SVM诊断模型显示出良好的可靠性,在90%以上的案例中,错误警报率低于10%,并且在超过6.5%的断面中发现损坏的缺陷。还讨论了构建通用模型以避免安装效果所需的最小轮对数量。

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