Automatic Detection of Track Length Defects

J. Kanis, Vladislav Zitrický
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引用次数: 1

Abstract

Abstract Ensuring the safety of railway transport operation requires constant monitoring of the technical condition of individual elements of railway infrastructure. The necessary activities that contribute to maintaining good operational condition of the railway transport line also include the diagnostics of track length. Diagnostics of railway tracks is most often performed by means of regular visual inspection (in the conditions of the infrastructure manager – ŽSR). The objective of the article is to provide information on the application of a new approach to diagnostics of the technical condition of railway infrastructure. The new approach to defect identification on railway infrastructure uses non-invasive diagnostic methods based on the latest knowledge in the field of information and communication technologies. These facts resulted in investigating the possibilities of automatic detection of the technical condition of the track length using neural networks. The article is part of the following scientific research task: ‘Research into new knowledge and observational experience of a new generation of diagnostic systems in industrial production and transport industry – research into the physical nature of an automated track length video inspection system’, supported by the Ministry of Education, Science, Research and Sport of the Slovak Republic.
轨道长度缺陷自动检测
保障铁路运输运营安全,需要对铁路基础设施各组成部分的技术状况进行持续监测。维持铁路运输线良好运行状态的必要活动还包括轨道长度的诊断。铁路轨道的诊断通常是通过定期目视检查来进行的(在基础设施管理人员的条件下- ŽSR)。本文的目的是提供一种诊断铁路基础设施技术状况的新方法的应用信息。基于信息通信技术领域的最新知识,采用无创诊断方法对铁路基础设施进行缺陷识别。这些事实导致研究利用神经网络自动检测轨道长度技术条件的可能性。本文是以下科研任务的一部分:“对工业生产和运输行业新一代诊断系统的新知识和观察经验的研究——对自动轨道长度视频检测系统的物理性质的研究”,由斯洛伐克共和国教育、科学、研究和体育部支持。
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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