Developing a multiview spatiotemporal model based on deep graph neural networks to predict the travel demand by bus

IF 4.3 1区 地球科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS International Journal of Geographical Information Science Pub Date : 2023-04-26 DOI:10.1080/13658816.2023.2203218
Tianhong Zhao, Zhengdong Huang, Wei Tu, F. Biljecki, Long Chen
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引用次数: 2

Abstract

Abstract The accurate prediction of travel demand by bus is crucial for effective urban mobility demand management. However, most models of travel demand prediction by bus tend to focus on the bus’s spatiotemporal dependencies, while ignoring the interactions between buses and other transportation modes, such as metros and taxis. We propose a Multiview Spatiotemporal Graph Neural Network (MSTGNN) model to predict short-term travel demand by bus. It emphasizes the ability to capture the interaction dependencies among the travel demand of buses, metros, and taxis. Firstly, a multiview graph consisting of bus, metro, and taxi views is constructed, with each view containing both a local and global graph. Secondly, a multiview attention-based temporal graph convolution module is developed to capture spatiotemporal and cross-view interaction dependencies among different transport modes. Especially, to address the uneven spatial distributions of features in multiview learning, the cross-view spatial feature consistency loss is introduced as an auxiliary loss. Finally, we conduct intensive experiments using a real-world dataset from Shenzhen, China. The results demonstrate that our proposed MSTGNN model performs better than the existing models. Ablation experiments validate the contributions of various modes of transportation to the improvement of the model’s performance.
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基于深度图神经网络的多视角时空模型预测公交出行需求
公交出行需求的准确预测是有效管理城市交通需求的关键。然而,大多数公交出行需求预测模型倾向于关注公交的时空依赖性,而忽略了公交与地铁、出租车等其他交通方式之间的相互作用。本文提出了一种多视点时空图神经网络(MSTGNN)模型来预测短期公交出行需求。它强调捕捉公共汽车、地铁和出租车出行需求之间的相互依赖关系的能力。首先,构建了由公交、地铁和出租车视图组成的多视图图,每个视图都包含一个局部图和一个全局图。其次,开发了基于多视图注意力的时间图卷积模块,以捕获不同传输模式之间的时空和跨视图交互依赖关系。特别是,为了解决多视图学习中特征空间分布不均匀的问题,引入了跨视图空间特征一致性损失作为辅助损失。最后,我们使用来自中国深圳的真实数据集进行了密集的实验。结果表明,我们提出的MSTGNN模型比现有模型性能更好。烧蚀实验验证了不同运输方式对模型性能改善的贡献。
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来源期刊
CiteScore
11.00
自引率
7.00%
发文量
81
审稿时长
9 months
期刊介绍: International Journal of Geographical Information Science provides a forum for the exchange of original ideas, approaches, methods and experiences in the rapidly growing field of geographical information science (GIScience). It is intended to interest those who research fundamental and computational issues of geographic information, as well as issues related to the design, implementation and use of geographical information for monitoring, prediction and decision making. Published research covers innovations in GIScience and novel applications of GIScience in natural resources, social systems and the built environment, as well as relevant developments in computer science, cartography, surveying, geography and engineering in both developed and developing countries.
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