Ian Germoglio Barbosa, A. Lima, J. Edwards, M. Dersch
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As a result, and the desire to collect objective data to improve both safety and maintenance planning, railroads are pursuing new means and methods to assess track condition and evaluate track component health. This paper presents a numerical method to define track component health using field data collected on the High Tonnage Loop (HTL) at the Transportation Technology Center (TTC) in Pueblo, Colorado, USA. Line scan laser and image data of the track were captured using a 3D Laser Triangulation system and were subsequently processed using Deep Convolutional Neural Networks (DCNNs). The track heath quantification method proposed establishes benchmarks that were developed based on the understanding of railway track mechanics, high axle load (HAL) railroad engineering instructions, and FRA regulations. The novel metrics presented are referred to as Track Component Heath Indices (TCHIs) and are quantitative values that objectively assess track condition and provide a means to monitor condition change with time and tonnage. These data can be used in conjunction with traditional track geometry and other forms of track heath data (e.g. GPR and rail profile) to more holistically assess the condition of the track structure and its components and ultimately predict its future state.","PeriodicalId":515695,"journal":{"name":"Proceedings of the Institution of Mechanical Engineers, Part F: Journal of Rail and Rapid Transit","volume":" 51","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-01-10","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Development of track component health indices using image-based railway track inspection data\",\"authors\":\"Ian Germoglio Barbosa, A. Lima, J. 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引用次数: 0
摘要
美国运输部(USDOT)联邦铁路管理局(FRA)的主要职责是通过监管确保铁路机车车辆和基础设施的安全运行。FRA 法规要求美国铁路公司根据特定轨道区段的 FRA 轨道等级每周进行两次目视轨道检查,该等级还规定了列车的最高运行速度。由于人类视觉检查和认知的固有局限性,这种检查往往是主观的。此外,由于检查人员需要在轨道上进行检查,同时还要消耗宝贵的网络容量,因此人工目视检查需要承担一定程度的风险。因此,为了收集客观数据以改善安全和维护规划,铁路公司正在寻求新的手段和方法来评估轨道状况和评价轨道部件的健康状况。本文介绍了一种数值方法,利用在美国科罗拉多州普韦布洛运输技术中心(TTC)的高吨位环线(HTL)上收集的现场数据来确定轨道部件的健康状况。使用三维激光三角测量系统采集了轨道的激光线扫描数据和图像数据,随后使用深度卷积神经网络 (DCNN) 进行了处理。所提出的轨道健康量化方法建立了一些基准,这些基准是基于对铁路轨道力学、高轴荷载(HAL)铁路工程说明和美国联邦铁路局(FRA)法规的理解而开发的。所提出的新指标被称为轨道健康指数 (TCHI),是客观评估轨道状况的量化值,并提供了一种监测轨道状况随时间和吨位变化的方法。这些数据可与传统的轨道几何和其他形式的轨道健康数据(如 GPR 和轨道剖面)结合使用,以更全面地评估轨道结构及其部件的状况,并最终预测其未来状态。
Development of track component health indices using image-based railway track inspection data
The primary role of the US Department of Transportation (USDOT) Federal Railroad Administration (FRA) is ensuring the safe operation of railway rolling stock and infrastructure by way of regulatory oversight. FRA regulations require US railroads to conduct visual track inspections as often as twice per week depending on a specific track segment’s FRA track class, which also governs maximum train operating speed. Such inspections are often subjective due to the inherent limitations of human visual inspection and cognition. Additionally, human visual inspections require some level of risk given the need for inspectors to be on track while also consuming valuable network capacity. As a result, and the desire to collect objective data to improve both safety and maintenance planning, railroads are pursuing new means and methods to assess track condition and evaluate track component health. This paper presents a numerical method to define track component health using field data collected on the High Tonnage Loop (HTL) at the Transportation Technology Center (TTC) in Pueblo, Colorado, USA. Line scan laser and image data of the track were captured using a 3D Laser Triangulation system and were subsequently processed using Deep Convolutional Neural Networks (DCNNs). The track heath quantification method proposed establishes benchmarks that were developed based on the understanding of railway track mechanics, high axle load (HAL) railroad engineering instructions, and FRA regulations. The novel metrics presented are referred to as Track Component Heath Indices (TCHIs) and are quantitative values that objectively assess track condition and provide a means to monitor condition change with time and tonnage. These data can be used in conjunction with traditional track geometry and other forms of track heath data (e.g. GPR and rail profile) to more holistically assess the condition of the track structure and its components and ultimately predict its future state.