Faculty of Transport, Warsaw University of Technology, Koszykowa 75, 00-662 Warsaw, Poland.
Air Force Institute of Technology, Księcia Bolesława 6, 01-494 Warsaw, Poland.
Sensors (Basel). 2021 May 31;21(11):3819. doi: 10.3390/s21113819.
The safety and reliability of railway transport requires new solutions for monitoring and quick identification of faults in the railway infrastructure. Electric heating devices (EORs) are the crucial element of turnouts. EORs ensure heating during low temperature periods when ice or snow can lock the turnout device. Thermal imaging is a response to the need for an EOR inspection tool. After processing, a thermogram is a great support for the manual inspection of an EOR, or the thermogram can be the input for a machine learning algorithm. In this article, the authors review the literature in terms of thermographic analysis and its applications for detecting railroad damage, analysing images through machine learning, and improving railway traffic safety. The EOR device, its components, and technical parameters are discussed, as well as inspection and maintenance requirements. On this base, the authors present the concept of using thermographic imaging to detect EOR failures and malfunctions using a practical example, as well as the concept of using machine learning mechanisms to automatically analyse thermograms. The authors show that the proposed method of analysis can be an effective tool for examining EOR status and that it can be included in the official EOR inspection calendar.
铁路运输的安全性和可靠性需要新的解决方案来监测和快速识别铁路基础设施的故障。电加热装置(EOR)是道岔的关键元件。EOR 可确保在低温时期(当冰或雪可能锁定道岔装置时)进行加热。热成像技术是对 EOR 检查工具需求的响应。经过处理,热图像是手动检查 EOR 的重要支持,或者热图像可以作为机器学习算法的输入。在本文中,作者从热成像分析及其在检测铁路损坏、通过机器学习分析图像以及提高铁路交通安全方面的应用方面回顾了文献。讨论了 EOR 装置、其组件和技术参数,以及检查和维护要求。在此基础上,作者提出了使用热成像技术通过实际示例检测 EOR 故障和故障的概念,以及使用机器学习机制自动分析热图像的概念。作者表明,所提出的分析方法可以成为检查 EOR 状态的有效工具,并可以包含在 EOR 正式检查日程中。