Design and Operational Assessment of a Railroad Track Robot for Railcar Undercarriage Condition Inspection

Q2 Engineering
Designs Pub Date : 2024-07-10 DOI:10.3390/designs8040070
James Kasch, Mehdi Ahmadian
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引用次数: 0

Abstract

The operational effectiveness of a railroad track robot that is designed for railcar undercarriage inspection is provided. Beyond describing the robot’s design details and onboard imaging system, the paper analyzes the recorded video images and offers design improvements to increase their clarity. The robot is designed to be deployed trackside, traverse over the rails, and then maneuver in between the rails beneath a stopped train in a siding or a railyard. The under-carriage conditions are documented by onboard video cameras for automated or manual postprocessing. The intent is to inspect the components that are not visible to the conductor or train inspector during a walk-along inspection of a stationary train. An assessment of the existing design, followed by modification and validation, is presented. The results from a prototype unit developed by the Railway Technologies Laboratory at Virginia Tech (RTL) indicate that with proper positioning of off-the-shelf imaging systems such as cameras manufactured by GoPro® in San Mateo, CA, USA and appropriate lighting, it is possible to capture videos that are sufficiently clear for manual (by a railroad engineer), semi-automated, or fully automated (using Artificial Intelligence or Machine Learning methods) inspections of rolling stock undercarriages. Additionally, improvements to the control, mobility, and reliability of the system are documented, although reliability throughout operation and the ability to consistently climb out of the track bed remain points of future investigation.
用于轨道车底盘状态检测的铁路轨道机器人的设计与运行评估
本文介绍了专为轨道车底盘检查而设计的轨道机器人的运行效果。除了介绍机器人的设计细节和机载成像系统外,本文还对录制的视频图像进行了分析,并提出了改进设计以提高图像清晰度的建议。该机器人设计用于部署在轨道旁,在钢轨上移动,然后在侧线或货场中停靠的列车下方的钢轨之间移动。车底情况由机载摄像机记录下来,以便自动或手动进行后期处理。目的是检查列车长或列车检查员在对静止列车进行步行检查时看不到的部件。本文介绍了对现有设计的评估、修改和验证。弗吉尼亚理工大学铁路技术实验室(RTL)开发的原型设备得出的结果表明,只要对现成的成像系统(如美国加利福尼亚州圣马特奥的 GoPro® 公司生产的相机)进行适当定位,并使用适当的照明,就有可能捕捉到足够清晰的视频,用于对机车车辆车底进行人工(铁路工程师)、半自动或全自动(使用人工智能或机器学习方法)检查。此外,该系统在控制、移动性和可靠性方面的改进也已记录在案,但整个运行过程中的可靠性以及持续爬出轨枕的能力仍是未来研究的重点。
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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来源期刊
Designs
Designs Engineering-Engineering (miscellaneous)
CiteScore
3.90
自引率
0.00%
发文量
0
审稿时长
11 weeks
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