The railpad is a key element in railway infrastructures that plays an essential role in the train-track dynamics. Presence of worn or defective railpads along railway track may lead to large wheel/rail interaction forces, and a high rate of deterioration for track components. Despite the importance of railpad, the track infrastructure managers use no inspection tool for monitoring in-service railpads over time. In this paper, a novel data-driven monitoring tool for long-term performance analysis of in-service railpads is developed based on train-induced vibration data collected by a track-side measurement system. The monitoring tool consists of a method for track resonance frequencies estimation, a temperature-frequency model for describing railpad behavior with respect to ambient temperature, and a generalized likelihood ratio test based on the generalized extreme value distribution for detecting changes in the railpad status over time. To evaluate the performance of the proposed monitoring system, the status of railpads at four different locations along a railway turnout is monitored over a period of 18 months. It is shown that the monitoring system can successfully detect changes in railpad properties over the considered period.
翻译:铁路是铁路基础设施中一个关键要素,在火车轨动态中起着关键作用。铁路轨道沿线的破旧或有缺陷的铁路板的存在可能导致大型轮/铁路互动力量,轨道部件的退化率很高。尽管铁路板很重要,但铁路基础设施管理人员没有使用任何检查工具来监测长期使用铁路板的情况。在本文中,根据火车引发的振动数据,开发了一个新的数据驱动监测工具,用于长期分析在职铁路板的状况。监测工具包括轨迹共振频率估计方法、描述轨道在环境温度方面的行为的温度-频率模型,以及基于普遍极端价值分布的通用概率比测试,以发现铁路状况随时间的变化。为了评估拟议的监测系统的运作情况,在18个月期间监测铁路板沿铁路路段四个不同地点的铁路站状况。该工具显示,监测系统能够成功检测到所审议期间铁路板特性的变化。