Fault Pattern Recognition of Axle Box Bearings for High-speed EMU Based on Onboard Real-time Temperature Data

Lei Liu, D. Song, Weihua Zhang
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引用次数: 1

Abstract

Axle box bearing a very vulnerable mechanical component because of its heavy load and unpleasant working environment. Once a fault occurs, it will develop rapidly and seriously threaten the safety of train operation. Therefore, fault pattern recognition of axle box bearing is of great significance. The traditional diagnosis method of axle box bearing is based on vibration signal processing technology and trackside acoustic diagnosis, while the axle box bearing of high-speed EMU in China has not been equipped with acceleration sensors and not every line has been equipped with trackside acoustic diagnosis equipment. Therefore, this paper establishes a fault pattern recognition method based on onboard real-time temperature data of axle box bearing, which can effectively recognize the abnormal condition of a high-speed EMU axle box bearing or an axle box bearing sensor failure.
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基于车载实时温度数据的高速动车组轴箱轴承故障模式识别
轴箱轴承是一种非常脆弱的机械部件,因为它的负荷很大,工作环境也不愉快。故障一旦发生,将迅速发展,严重威胁列车运行安全。因此,对轴箱轴承进行故障模式识别具有重要意义。传统的轴箱轴承诊断方法是基于振动信号处理技术和轨旁声学诊断,而国内高速动车组轴箱轴承并没有配备加速度传感器,也不是每条线路都配备了轨旁声学诊断设备。因此,本文建立了一种基于车载轴箱轴承实时温度数据的故障模式识别方法,可有效识别高速动车组轴箱轴承异常状态或轴箱轴承传感器故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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