Advancement of data-driven SHM: A research paradigm on AE-based switch rail condition monitoring

Lu Zhou , Si-Xin Chen , Yi-Qing Ni , Xiao-Zhou Liu
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引用次数: 0

Abstract

The past ten years have witnessed the tremendous progress of structural health monitoring applications in civil infrastructures. This is particularly embodied in railway engineering. The increasing train speed brings greater challenges to safety and ride comfort, and the primary theme of maintenance has been gradually altered from offline inspection to online monitoring. Rail operators must get an in-time warning of potential structural defects before critical failure takes place. It is more favourable that the rail operators can take hold of the real-time status of the key components and infrastructures in railway systems. This paper summarizes a long-term research series by the authors’ research team on online monitoring of rail tracks at turnout areas utilizing acoustic emission-based sensing technique, and more importantly, successively advancing signal processing methods and data-driven analysing frameworks, covering Bayesian inference, convolutional neural networks, transfer learning and task similarity analysis. The proposed algorithms tackle noise interference brought by wheel-rail impacts, great uncertainties in an open environment, and insufficiency of monitoring data, and realize comprehensive monitoring of rail tracks in turnout areas from basic crack detection to regressive condition assessment step-by-step.

推进数据驱动的 SHM:基于 AE 的道岔轨道状态监测研究范例
过去十年间,结构健康监测在民用基础设施中的应用取得了巨大进步。这一点在铁路工程中体现得尤为明显。列车速度的不断提高给安全性和乘坐舒适性带来了更大的挑战,维护的首要主题也逐渐从离线检测转变为在线监测。铁路运营商必须在关键故障发生之前及时预警潜在的结构缺陷。铁路运营商能够掌握铁路系统中关键部件和基础设施的实时状态将更为有利。本文总结了作者研究团队利用声发射传感技术对道岔区域铁轨进行在线监测的长期系列研究,更重要的是,该研究先后推进了贝叶斯推理、卷积神经网络、迁移学习和任务相似性分析等信号处理方法和数据驱动分析框架。所提出的算法解决了轮轨撞击带来的噪声干扰、开放环境中的巨大不确定性以及监测数据不足等问题,逐步实现了从基本裂缝检测到回归状态评估的道岔区轨道综合监测。
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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