Characterization, identification and life prediction of acoustic emission signals of tensile damage for HSR gearbox housing material

Ai Yibo, Z. Yuanyuan, Cui Hao, Zhang Weidong
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Abstract

PurposeThis study aims to ensure the operation safety of high speed trains, it is necessary to carry out nondestructive monitoring of the tensile damage of the gearbox housing material in rail time, yet the traditional tests of mechanical property can hardly meet this requirement.Design/methodology/approachIn this study the acoustic emission (AE) technology is applied in the tensile tests of the gearbox housing material of an high-speed rail (HSR) train, during which the acoustic signatures are acquired for parameter analysis. Afterward, the support vector machine (SVM) classifier is introduced to identify and classify the characteristic parameters extracted, on which basis the SVM is improved and the weighted support vector machine (WSVM) method is applied to effectively reduce the misidentification of the SVM classifier. Through the study of the law of relations between the characteristic values and the tensile life, a degradation model of the gearbox housing material amid tensile is built.FindingsThe results show that the growth rate of the logarithmic hit count of AE signals and that of logarithmic amplitude can well characterize the stage of the material tensile process, and the WSVM method can improve the classification accuracy of the imbalanced data to above 94%. The degradation model built can identify the damage occurred to the HSR gearbox housing material amid the tensile process and predict the service life remains.Originality/valueThe results of this study provide new concepts for the life prediction of tensile samples, and more further tests should be conducted to verify the conclusion of this research.
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高铁齿轮箱壳体材料拉伸损伤声发射信号表征、识别及寿命预测
本研究的目的是为了保证高速列车的运行安全,有必要对齿轮箱壳体材料在轨时的拉伸损伤进行无损监测,而传统的力学性能测试难以满足这一要求。设计/方法/方法本研究将声发射(AE)技术应用于高速铁路(HSR)列车齿轮箱壳体材料的拉伸试验中,在此过程中获取声特征并进行参数分析。然后,引入支持向量机(SVM)分类器对提取的特征参数进行识别和分类,在此基础上对支持向量机进行改进,并采用加权支持向量机(WSVM)方法有效减少支持向量机分类器的误识别。通过研究特征值与拉伸寿命之间的关系规律,建立了齿轮箱壳体材料在拉伸过程中的退化模型。结果表明,声发射信号的对数命中数和对数幅值的增长率可以很好地表征材料拉伸过程的阶段,WSVM方法可以将不平衡数据的分类准确率提高到94%以上。建立的退化模型可以识别高铁齿轮箱壳体材料在拉伸过程中发生的损伤,并预测其使用寿命。独创性/价值本研究结果为拉伸试样的寿命预测提供了新的概念,需要进一步的试验来验证本研究的结论。
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