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Investigating physical encounters of individuals in urban metro systems with large-scale smart card data

机译:用大型智能卡数据调查城市地铁系统中个人的身体遇到

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Investigating physical encounters among individuals is important for various applications such as infectious disease modeling and friend recommendation. As enclosed spaces, public transit systems (e.g., buses and metros) in densely populated areas are locations where physical encounters occur numerously. Currently, encounter networks in bus systems have been investigated with the help of smart card data (SCD); however, no attempt has been made toward the metro systems, which is more challenging as the travel behaviors of metro passengers are complex but not recorded in the SCD in detail. This study proposed a novel framework for investigating physical encounters of individuals in urban metro systems with SCD. First, we developed a method to match passengers to specific trains, which can allow the segmentation of individual trips inside a metro system. Second, we proposed an approach to measuring the encounter frequencies and durations of each passenger pair by synthesizing their encounter behaviors in not only the train space, but also the entering/exiting space and the transfer space. Finally, using the SCD of Shenzhen, China, we analyzed the physical encounter patterns at a population scale, and demonstrated the potential of applying the encounter network to trace the spread of infectious diseases. Overall, this study provided a framework for evaluating physical encounters in metro systems with SCD, and revealed the underlying physical encounter patterns in the metro system of a metropolitan city, which is of considerable application value. (C) 2019 Elsevier B.V. All rights reserved.
机译:对个人之间的物理遭遇对于传染病建模和朋友推荐等各种应用很重要。作为封闭的空间,在密集的地区的公共交通系统(例如,总线和地标)是物理遭遇大量发生的位置。目前,在智能卡数据(SCD)的帮助下,已经调查了总线系统中的遇到网络;然而,由于地铁乘客的旅行行为复杂但未在SCD中详细记录,因此没有对地铁系统进行的。本研究提出了一种研究与SCD城市地铁系统中个人的身体遭遇的新框架。首先,我们开发了一种将乘客匹配到特定列车的方法,这可以允许在地铁系统内部进行各个旅行。其次,我们提出了一种方法来测量每个乘客对的遇到频率和持续时间,不仅在火车空间中合成它们的遭遇行为,还可以通过进入/退出空间和传输空间来合成它们的遭遇行为。最后,使用中国深圳的SCD,我们分析了人口规模的物理遭遇模式,并证明了应用遭遇网络追踪传染病传播的可能性。总体而言,本研究提供了一种评估具有SCD的地铁系统的物理遭遇的框架,并揭示了大都市城市地铁系统中的潜在物理遭遇模式,这具有相当大的应用价值。 (c)2019 Elsevier B.v.保留所有权利。

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