基于振动的高速列车轴承故障诊断:文献综述

Wanchun Hu , Ge Xin , Jiayi Wu , Guoping An , Yilei Li , Ke Feng , Jerome Antoni
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引用次数: 0

摘要

由于舒适和安全的优势,高铁正逐渐成为中国主流的公共交通工具。随着高速列车的运行速度和里程的快速增长,确保高速列车的可靠性和安全性变得越来越迫切。轴承作为高速列车转向架的重要部件,其健康状态直接影响列车的运行安全。因此,有必要尽早诊断高速列车转向架轴承的故障。本文对高速列车轴承故障诊断方法进行了系统总结,并对其面临的挑战和前景进行了展望。首先,简要介绍了转向架轴承的结构及故障特征频率。然后,对基于振动的信号处理方法和机器学习方法的研究进行了简要综述。最后,分析了基于振动的高速列车轴承故障诊断方法面临的挑战和未来发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vibration-based bearing fault diagnosis of high-speed trains: A literature review
Due to the advantages of comfort and safety, high-speed trains are gradually becoming the mainstream public transport in China. Since the operating speed and mileage of high-speed trains have achieved rapid growth, it is more and more urgent to ensure their reliability and safety. As an important component in the bogies of high-speed trains, the health state of the bearing directly affects the operational safety of the trains. It is therefore necessary to diagnoze the faults of bearings in the bogies of high-speed trains as early as possible. In this paper, the bearing fault diagnostic methods for high-speed trains have been systematically summarized with their challenges and perspectives. First, it briefly introduces the structure of bearings in the bogies as well as the fault characteristic frequencies. Then, a brief review of the research on vibration-based signal processing methods and machine learning methods has been provided. Finally, the challenges and future developments of vibration-based bearing fault diagnostic methods for high-speed trains have been analyzed.
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