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Machine vision condition monitoring of heavy-axle load railcar structural underframe components

机译:重载铁路轨道车结构底架组件的机器视觉状态监控

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摘要

To ensure the safe and efficient operation of the approximately 1.6 million freight cars (wagons) in the North American railroad network, the United States Department of Transportation (USDOT), Federal Railroad Administration (FRA) requires periodic inspection of railcars to detect structural damage and defects. Railcar structural underframe components, including the centre sill, sidesills, and crossbearers, are subject to fatigue cracking due to periodic and/or cyclic loading during service and other forms of damage. The current railcar inspection process is time-consuming and relies heavily on the acuity, knowledge, skill, and endurance of qualified inspection personnel to detect these defects. Consequently, technologies are under development to automate critical inspection tasks to improve their efficiency and effectiveness. Research was conducted to determine the feasibility of inspecting railcar underframe components using machine vision technology. A digital video system was developed to record images of railcar underframes and computer software was developed to identify components and assess their condition. Tests of the image recording system were conducted at several railroad maintenance facilities. The images collected there were used to develop several types of machine vision algorithms to analyse images of railcar underframes and assess the condition of certain structural components. The results suggest that machine vision technology, in conjunction with other automated systems and preventive maintenance strategies, has the potential to provide comprehensive and objective information pertaining to railcar underframe component condition, thereby improving utilization of inspection and repair resources and increasing safety and network efficiency.
机译:为确保北美铁路网中约160万辆货运车(货车)的安全有效运行,美国运输部(USDOT),联邦铁路管理局(FRA)要求定期检查铁路车以发现结构损坏和缺陷。铁路车辆的底架组件,包括中央门槛,侧梁和横梁,由于在使用期间的周期性和/或周期性载荷以及其他形式的损坏而容易疲劳破裂。当前的轨道车检查过程非常耗时,并且严重依赖于合格的检查人员的敏锐度,知识,技能和耐力来检测这些缺陷。因此,正在开发使关键检查任务自动化的技术,以提高其效率和有效性。进行了研究以确定使用机器视觉技术检查铁路车辆底架部件的可行性。开发了数字视频系统来记录铁路车辆底架的图像,并开发了计算机软件来识别组件并评估其状况。图像记录系统的测试是在几个铁路维护机构进行的。在那里收集的图像用于开发几种类型的机器视觉算法,以分析铁路车辆底架的图像并评估某些结构部件的状况。结果表明,机器视觉技术与其他自动化系统和预防性维护策略相结合,有可能提供与轨道车底架部件状况有关的全​​面客观的信息,从而提高检查和维修资源的利用率并提高安全性和网络效率。

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  • 作者单位

    Railroad Engineering Program, Department of Civil and Environmental Engineering, University of Illinois, 205 N. MathewsAve., B-118 NCEL, Urbana, IL 61801, USA;

    School of EECS, Oregon State University, Kelly Engineering Center, Corvallis, Oregon, USA;

    Railroad Engineering Program, Department of Civil and Environmental Engineering, University of Illinois at Urbana-Champaign, Newmark Civil Engineering Laboratory, Urbana, Illinois, USA;

    Department of Electrical and Computer Engineering, Computer Vision and Robotics Laboratory, University of Illinois at Urbana-Champaign, Beckman Institute for Advanced Science and Technology, Urbana, Illinois, USA;

    Department of Electrical and Computer Engineering, Computer Vision and Robotics Laboratory, University of Illinois at Urbana-Champaign, Beckman Institute for Advanced Science and Technology, Urbana, Illinois, USA;

    Railroad Engineering Program, Department of Civil and Environmental Engineering, University of Illinois at Urbana-Champaign, Newmark Civil Engineering Laboratory, Urbana, Illinois, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    centre sill; computer vision; freight wagon; multi-scale segmentation; automated inspection; condition-based maintenance;

    机译:中央门槛计算机视觉;货车;多尺度分割自动检查;基于状态的维护;
  • 入库时间 2022-08-17 13:54:15

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