利用空间交互模型和神经网络从城市特征中学习移动流动**将出现在2020年IEEE智能计算国际会议论文集(SMARTCOMP 2020)

Gevorg Yeghikyan, Felix L. Opolka, M. Nanni, B. Lepri, P. Lio’
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引用次数: 8

摘要

政策制定者、城市规划者和参与城市发展的其他利益相关者感兴趣的一个基本问题是评估规划和建设活动对流动流量的影响。由于影响城市交通流量的空间、时间、社会和经济因素不同,这是一项具有挑战性的任务。这些流动以及影响因素可以建模为具有节点和边缘特征的属性图,这些特征描述了城市中的位置及其之间的各种类型的关系。在本文中,我们解决了评估城市中感兴趣的位置和每个其他位置之间的始发目的地(OD)汽车流量的问题,给出了它们的特征和图的结构特征。我们提出了三种神经网络架构,包括图神经网络(GNN),并对所提出的方法与最先进的空间交互模型、它们的修改和机器学习方法进行了系统的比较。本文的目的是解决估算城市项目位置与城市中其他位置之间潜在流量的实际问题,其中项目位置的特征是已知的。我们使用伦敦的属性汽车OD流的自定义数据集来评估模型在回归任务中的性能。我们还通过显示整个伦敦的流量残差的空间分布来可视化模型的性能。
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Learning Mobility Flows from Urban Features with Spatial Interaction Models and Neural Networks**To appear in the Proceedings of 2020 IEEE International Conference on Smart Computing (SMARTCOMP 2020)
A fundamental problem of interest to policy makers, urban planners, and other stakeholders involved in urban development is assessing the impact of planning and construction activities on mobility flows. This is a challenging task due to the different spatial, temporal, social, and economic factors influencing urban mobility flows. These flows, along with the influencing factors, can be modelled as attributed graphs with both node and edge features characterising locations in a city and the various types of relationships between them. In this paper, we address the problem of assessing origin-destination (OD) car flows between a location of interest and every other location in a city, given their features and the structural characteristics of the graph. We propose three neural network architectures, including graph neural networks (GNN), and conduct a systematic comparison between the proposed methods and state-of-the-art spatial interaction models, their modifications, and machine learning approaches. The objective of the paper is to address the practical problem of estimating potential flow between an urban project location and other locations in the city, where the features of the project location are known in advance. We evaluate the performance of the models on a regression task using a custom data set of attributed car OD flows in London. We also visualise the model performance by showing the spatial distribution of flow residuals across London.
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