Forecasting traffic flow with spatial–temporal convolutional graph attention networks

被引:0
作者
Xiyue Zhang
Yong Xu
Yizhen Shao
机构
[1] South China University of Technology,
来源
Neural Computing and Applications | 2022年 / 34卷
关键词
Spatial–temporal data mining; Traffic flow prediction; Graph neural networks;
D O I
暂无
中图分类号
学科分类号
摘要
Traffic flow prediction is crucial for intelligent transportation system, such as traffic management, congestion alleviation and public risk assessment. Recently, attention mechanism and deep neural networks are utilized to capture traffic dependencies. However, two challenges have yet to be well addressed: (i) previous works overlook the global dependencies across different regions; (ii) how to integrate spatial and temporal information aggregation with latent channel-aware semantics. To tackle these issues, we propose a deep spatial–temporal convolutional graph attention network for citywide traffic flow prediction. We first apply the multi-resolution transformer network to capture traffic dependencies among different regions with the encoding of multi-level periodicity. Spatial dependencies are captured by the attentive graph neural networks followed by convolutional networks from local view to global view. We further propose to inject spatial contextual signals into our framework with the designed channel-aware recalibration residual network, which effectively endows model with the capability of mapping spatial–temporal data patterns into different representation subspaces of latent semantics. The extensive experiments on four real-world datasets demonstrate at least 5% performance gain of our framework by comparing with 19 state-of-the-art traffic prediction methods.
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页码:15457 / 15479
页数:22
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