Framework to Classify Railway Track Areas According to Local GNSS Threats

Daniel Gerbeth, Omar García Crespillo, Fabio Pognante, A. Vennarini, A. Coluccia
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引用次数: 2

Abstract

In this paper we present a modular framework to classify railway track areas regarding the expected presence of local GNSS threats. This information might be critical for a safe signalling operation, for example to determine where virtual balises could be placed safely. We show first how different GNSS threats can be detected using dedicated detection algorithms and how these individual detection results can be then transformed from time to the track domain. An overall decision logic is subsequently used to identify an area as suitable or unsuitable for GNSS usage by combining all available GNSS data collected over the same track area. Finally, the framework implementation is evaluated with railway data obtained during a measurement campaign in Sardinia, Italy in 2019. Even though developed in the railway context, the presented framework architecture and methodology may be also considered to perform similar classification tasks for other means of transport.
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基于局部GNSS威胁的铁路轨道区域分类框架
在本文中,我们提出了一个模块化框架,用于根据本地GNSS威胁的预期存在对铁路轨道区域进行分类。这些信息对于安全的信号操作可能是至关重要的,例如,确定虚拟包可以安全地放置在哪里。我们首先展示了如何使用专用检测算法检测不同的GNSS威胁,以及如何将这些单个检测结果从时间转换到跟踪域。随后,通过结合在同一轨道区域收集的所有可用GNSS数据,使用总体决策逻辑来确定适合或不适合GNSS使用的区域。最后,利用2019年意大利撒丁岛测量活动中获得的铁路数据对框架实施情况进行评估。即使是在铁路环境中开发的,所提出的框架架构和方法也可以被认为对其他运输工具执行类似的分类任务。
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