A Bayesian Machine Learning Approach for Online Wheel Condition Detection Using Track-side Monitoring

Y. Ni, Qiu-Hu Zhang
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引用次数: 4

Abstract

Online wheel condition monitoring can suffer from the stochastic wheel/rail dynamics and measurement noises. This paper aims to develop a Bayesian statistical approach for probabilistic assessment of wheel conditions using track-side monitoring. In this approach, the wheel quality-related components are first extracted from monitoring data and their Fourier amplitude spectra are normalized to obtain a set of cumulative distribution functions that characterize wheel quality information. Then a data-driven reference model is established by means of sparse Bayesian learning for modelling these characteristic functions for healthy wheels. Bayes factor is finally employed to discriminate the new observations from the reference model, with which a quantitative evaluation of wheel qualities is achieved in real time. To validate the feasibility and effectiveness, the proposed approach is examined by using strain monitoring data of rail bending acquired from a track-side monitoring system based on optical fiber sensors.
基于贝叶斯机器学习的车轮状态在线检测方法
轮轨在线监测存在轮轨动态随机性和测量噪声等问题。本文旨在开发一种贝叶斯统计方法,用于利用轨道侧监测对车轮状况进行概率评估。该方法首先从监测数据中提取与车轮质量相关的分量,并对其傅立叶振幅谱进行归一化处理,得到一组表征车轮质量信息的累积分布函数。然后利用稀疏贝叶斯学习方法建立数据驱动的参考模型,对健康车轮的这些特征函数进行建模。最后利用贝叶斯因子对新观测值与参考模型进行判别,实现对车轮质量的实时定量评价。为了验证该方法的可行性和有效性,利用基于光纤传感器的轨侧监测系统获取的钢轨弯曲应变监测数据对该方法进行了验证。
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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