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Examining the spatial-temporal dynamics of bus passenger travel behaviour using smart card data and the flow-comap

机译:使用智能卡数据和流量映射检查公共汽车乘客出行行为的时空动态

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Over the past two decades, smart card data have received increasing interest rrom transport researchers as a new source of data for travel behaviour investigation. Collected by smart card systems, smart card data surpass traditional travel survey data in providing more comprehensive spatial-temporal information about urban public transport-based (UPT) trips. However, the utility of smart card data has arguably yet to be exploited fully in terms of extracting and exploring the spatial-temporal dynamics of UPT passenger travel behaviour. To advance previous work in this area, this paper demonstrates a multi-step methodology in order to render more insightful spatial-temporal patterns of UPT passenger travel behaviour. Drawing on the Brisbane, Australia, bus network as the case study, a smart card dataset was first processed in combination with General Transit Specification Feed (GTFS) data to reconstruct travel trajectories of bus passengers at bus stop level of spatial granularity. By applying geographical information system-based (GIS) techniques, this dataset was used to create flow-comaps to visualise the aggregate flow patterns at a network level. The flow-comaps uncovered the major pathways of bus passengers and its variations over a one-day period. The differences within the flow-comaps were also quantified to produce weighted flow-comaps that highlighted the major temporal changes of passenger flow patterns along a number of stop-to-stop linkages of the bus network. The proposed methodology visually unveiled the spatial-temporal travel behaviour dynamics of UPT passengers and, in doing so, showed the potential to contribute to a new evidence base with the capacity to inform local public transport policy.
机译:在过去的二十年中,智能卡数据作为运输行为调查的新数据来源而受到交通运输研究人员的越来越多的关注。由智能卡系统收集的智能卡数据在提供有关基于城市公共交通(UPT)的旅行的更全面的时空信息方面,优于传统的旅行调查数据。但是,在提取和探索UPT乘客出行行为的时空动态方面,智能卡数据的实用性尚待充分开发。为了推进该领域的先前工作,本文演示了一种多步骤方法,以呈现出更具洞察力的UPT乘客旅行行为的时空模式。以澳大利亚布里斯班的公交车网络为例,首先将智能卡数据集与通用公交指定提要(GTFS)数据进行处理,以重建公交车站乘客在空间粒度级别上的旅行轨迹。通过应用基于地理信息系统(GIS)的技术,此数据集被用于创建流量图,以可视化网络级别的聚合流量模式。流量不足揭示了一天中巴士乘客的主要通道及其变化。流量限制内的差异也被量化,以产生加权流量限制,突显了沿着公交网络的多个站到站链接的乘客流量模式的主要时间变化。拟议的方法从视觉上揭示了UPT乘客的时空旅行行为动态,并在此过程中显示了有潜力为新的证据基础做出贡献,并具有为当地公共交通政策提供信息的能力。

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