City-scale traffic simulation from digital footprints

G. Mcardle, A. Lawlor, Eoghan Furey, A. Pozdnoukhov
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引用次数: 20

Abstract

This paper introduces a micro-simulation of urban traffic flows within a large scale scenario implemented for the Greater Dublin region in Ireland. Traditionally, the data available for traffic simulations come from a population census and dedicated road surveys which only partly cover shopping, leisure or recreational trips. To account for the latter, the presented traffic modelling framework exploits the digital footprints of city inhabitants on services such as Twitter and Foursquare. We enriched the model with findings from our previous studies on geographical layout of communities in a country-wide mobile phone network to account for socially related journeys. These datasets were used to calibrate a variant of a radiation model of spatial choice, which we introduced in order to drive individuals' decisions on trip destinations within an assigned daily activity plan. We observed that given the distribution of population, the workplace locations, a comprehensive set of urban facilities and a list of typical activity sequences of city dwellers collected within a national road survey, the developed micro-simulation reproduces not only the journey statistics but also the traffic volumes at main road segments with surprising accuracy.
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基于数字足迹的城市规模交通模拟
本文介绍了在爱尔兰大都柏林地区实施的大规模场景中城市交通流的微观模拟。传统上,可用于交通模拟的数据来自人口普查和专门的道路调查,其中仅部分涵盖购物、休闲或娱乐旅行。为了解释后者,本文提出的交通建模框架利用了城市居民在Twitter和Foursquare等服务上的数字足迹。我们利用之前对全国移动电话网络中社区地理布局的研究结果丰富了模型,以解释与社会相关的旅行。这些数据集用于校准空间选择辐射模型的变体,我们引入该模型是为了在指定的日常活动计划中驱动个人对旅行目的地的决定。我们观察到,考虑到人口分布、工作地点、一套全面的城市设施和在国家道路调查中收集的城市居民的典型活动序列列表,开发的微观模拟不仅再现了旅程统计数据,还以惊人的准确性再现了主要路段的交通量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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