Benoît Matet, Etienne Côme, Angelo Furno, Sebastian Hörl, Latifa Oukhellou, Nour-Eddin El Faouzi
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引用次数: 0
摘要
城市交通的动态可以通过基于活动的模型来捕捉,这种模型依赖于出行需求数据来全面了解城市交通。这些数据通常来自人口样本和家庭出行调查(HTSs),但这些调查费用昂贵,因此每 5 到 10 年才进行一次。此外,由于其覆盖范围有限,它们无法代表总人口流动的时空结构。这就需要补充数据源,用于更新旧的调查,以降低成本,并估算全球人口的空间流动行为。在本文中,我们提出了最先进的旅行需求综合方法的步骤,其中包括基于随时间变化的出发地-目的地(OD)矩阵的时间校准和位置归因方法。这些矩阵描述了城市各区之间的流量。该方法以法国里昂市为例进行说明,OD 矩阵是根据法国电信运营商 Orange 用户的移动电话活动估算得出的。我们探讨了如何使用各种概率图模型进行空间化,这些模型的参数通过 OD 矩阵进行评估。这些模型的结构确保了位置与活动链的一致性,例如两个 "家庭 "活动必须具有相同的位置。我们提出了多种模型,分别对应于 HTS 和移动数据这两种可能互不兼容的数据源之间的不同折衷方案。我们的研究表明,虽然一种非常幼稚的空间化方法可以生成完全符合 OD 矩阵描述的流量的合成旅行需求,而无需尊重地点的一致性,但其他建议的方法则提供了更为现实的议程,其代价是仅与移动数据存在微小差异。
Improving the generation of synthetic travel demand using origin–destination matrices from mobile phone data
The dynamics of urban transportation can be captured using activity-based models, which rely on travel demand data to get a comprehensive understanding of urban mobility. This data is usually derived from population samples and Household Travel Surveys (HTSs), which can be expensive and as a result, are conducted only every 5 to 10 years. Moreover, due to their limited reach, they are not adapted to represent the spatio-temporal structure of the flows of the total population. This calls for complementary data sources that could be used to update old surveys to cut costs and to estimate the global spatial mobility behavior of the population. In this paper, we propose steps in the state-of-the-art pipeline for travel demand synthesis with an approach for the temporal calibration and the location attribution based on time-dependent origin–destination (OD) matrices. These matrices describe the flows between zones of a city. This methodology is illustrated on the city of Lyon, France, with OD matrices estimated from the mobile phone activity of the subscribers of French telecom operator Orange. We explore how the spatialization can be performed using various probabilistic graph models whose parameters are evaluated via the OD matrices. The structure of the models enforces the consistency of the locations with the chains of activities, such as the fact that two “home” activities must have the same location. Multiple models are proposed, corresponding to different compromises between the two potentially incompatible sources that are HTS and mobile data. We show that while a very naive spatialization approach allows the generation of synthetic travel demand that perfectly fits the flows described by the OD matrices without respecting the consistency of the locations, the other proposed approaches offer much more realistic agendas at the expense of only small discrepancies with the mobile data.
期刊介绍:
In our first issue, published in 1972, we explained that this Journal is intended to promote the free and vigorous exchange of ideas and experience among the worldwide community actively concerned with transportation policy, planning and practice. That continues to be our mission, with a clear focus on topics concerned with research and practice in transportation policy and planning, around the world.
These four words, policy and planning, research and practice are our key words. While we have a particular focus on transportation policy analysis and travel behaviour in the context of ground transportation, we willingly consider all good quality papers that are highly relevant to transportation policy, planning and practice with a clear focus on innovation, on extending the international pool of knowledge and understanding. Our interest is not only with transportation policies - and systems and services – but also with their social, economic and environmental impacts, However, papers about the application of established procedures to, or the development of plans or policies for, specific locations are unlikely to prove acceptable unless they report experience which will be of real benefit those working elsewhere. Papers concerned with the engineering, safety and operational management of transportation systems are outside our scope.