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GIS-based identification and visualization of multimodal freight transportation catchment areas

机译:基于GIS的多模式货运集水区的识别与可视化

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To estimate impacts, support cost-benefit analyses, and enable project prioritization, it is necessary to identify the area of influence of a transportation infrastructure project. For freight related projects, like ports, state-of-the-practice methods to estimate such areas ignore complex interactions among multimodal supply chains and can be improved by examining the multimodal trips made to and from the facility. While travel demand models estimate multimodal trips, they may not contain robust depictions of water and rail, and do not provide direct observation. Project-specific data including local traffic counts and surveys can be expensive and subjective. This work develops a systematic, objective methodology to identify multimodal "freight-shed" (or "catchment" areas) for a facility from vehicle tracking data and demonstrates application with a case study involving diverse freight port terminals. Observed truck Global Positioning System and maritime Automatic Identification System data are subjected to robust pre-processing algorithms to handle noise, cluster stops, assign data points to the network (map-matching), and address spatial and temporal conflation. The method is applied to 43 port terminals on the Arkansas River to estimate vehicle miles and hours travelled, origin, destination, and pass-through zones, and areas of modal overlap within the catchment areas. Case studies show that the state-of-the-practice 100-mile diameter influence areas include between 15 and 34% of the multimodal freight-shed areas mined from vehicle tracking data, demonstrating that adoption of an arbitrary radial area for different ports would lead to inaccurate estimates of project benefits.
机译:为了估算影响,支持成本效益分析,并实现项目优先级,有必要确定运输基础设施项目的影响领域。对于货运相关项目,像港口,练习状态的方法,以估计这些区域忽略多式联运供应链之间的复杂交互,并且可以通过检查设施和从设施中的多模式跳闸来改进。虽然旅行需求模型估计多模式旅行,但它们可能不包含水和轨的强大描绘,并且不提供直接观察。特定于项目的特定数据包括本地交通计数和调查可能是昂贵的和主观的。这项工作开发了一种系统,客观方法,用于识别车辆跟踪数据的设施的多模式“货运棚”(或“集水区”区域,并通过涉及不同货运端口终端的案例研究表明应用。观察到的卡车全球定位系统和海上自动识别系统数据经受稳健的预处理算法来处理噪声,群集停止,将数据指向到网络(MAP匹配),以及地址空间和时间混淆。该方法应用于阿肯色州河上的43个端口终端,以估计车辆里程,起源,目的地和通过区域,以及集水区内的模态重叠区域。案例研究表明,实践状态100英里的径向影响区域包括从车辆跟踪数据中开采的15至34%的多式联运区域,表明采用不同港口的任意径向区域会导致不准确的项目福利估计。

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