Quantitative network analysis for passenger pattern recognition: An analysis of railway stations

M. Zsifkovits, M. S. Nistor, Silja Meyer-Nieberg
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Abstract

As recent attacks in trains and train stations show, the protections of such critical infrastructure plays a major role for public decision makers. Thereby, security installations in the railway network are a frequently discussed topic. Especially the need for an open system demands for technologies that do not influence or delay passenger flows. This also leads to the question of optimal placement of security installations such as smart camera systems or stand-off detectors. For answering this question we observed passenger flows in the Munich central station. The observation data was transferred into a quantitative network and analyzed using various measures. With its help, critical parameter constellations can be identified and investigated in detail. Furthermore we are able to identify special groups of passengers and the differences in their behavior.
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客流模式识别的定量网络分析:以火车站为例
最近发生在火车和火车站的袭击表明,保护这些关键基础设施对公共决策者起着重要作用。因此,铁路网中的安全装置是一个经常讨论的话题。特别是对开放系统的需求,要求不影响或延迟客流的技术。这也导致了诸如智能摄像头系统或对峙探测器等安全装置的最佳放置问题。为了回答这个问题,我们观察了慕尼黑中央车站的客流。将观测数据传输到定量网络中,并采用各种措施进行分析。在它的帮助下,可以识别和详细研究关键参数星座。此外,我们能够识别特殊的乘客群体和他们的行为差异。
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