Railway vehicle bearings risk monitoring based on normal region estimation for no-fault data situations

IF 2.4 3区 工程技术 Q3 TRANSPORTATION Journal of Transportation Safety & Security Pub Date : 2021-10-08 DOI:10.1080/19439962.2019.1616020
Yuan Zhang, Yong Qin, Y. Du, Lei Zhu, Xiukun Wei
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引用次数: 3

Abstract

Abstract A risk monitoring method based on normal region estimation (NRE) is systematically proposed for the actual situation of the lack of fault data in the condition identification and monitoring of railway vehicle bearings. First, the basic concept of normal domain theory is expounded, and the formal expression of normal domain is given. Secondly, the academic thoughts and implementation steps of risk monitoring based on NRE are summarized. Then, two algorithms based on convex hull and support vector data description (SVDD) are proposed respectively to solve the core problem of boundary estimation. Finally, the rolling-bearing vibration acceleration data was used for the experiment, and the performance of the two algorithms is compared. The results show that both algorithms are effective. In contrast, the convex hull algorithm is faster, and the SVDD algorithm is smoother and more flexible. In practical applications, the two algorithms can be selected according to different requirements of real time and accuracy.
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无故障数据情况下基于正态区域估计的轨道车辆轴承风险监测
摘要针对铁路车辆轴承状态识别与监测中故障数据缺乏的实际情况,系统地提出了一种基于正态区域估计(NRE)的风险监测方法。首先,阐述了正态域理论的基本概念,给出了正态域的形式化表达。其次,总结了基于NRE的风险监测的学术思想和实施步骤。然后,分别提出了基于凸包和支持向量数据描述(SVDD)的两种算法来解决边界估计的核心问题。最后利用滚动轴承振动加速度数据进行实验,比较了两种算法的性能。结果表明,两种算法都是有效的。相比之下,凸包算法速度更快,而SVDD算法更平滑、更灵活。在实际应用中,可以根据实时性和精度的不同要求选择这两种算法。
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来源期刊
CiteScore
6.00
自引率
15.40%
发文量
38
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