An effective spatial-temporal attention based neural network for traffic flow prediction

被引:188
作者
Do, Loan N. N. [1 ]
Vu, Hai L. [2 ]
Vo, Bao Q. [1 ]
Liu, Zhiyuan [3 ]
Dinh Phung [4 ]
机构
[1] Swinburne Univ Technol, Fac Sci Engn & Technol, Hawthorn, Vic, Australia
[2] Monash Univ, Dept Civil Engn, Clayton, Vic, Australia
[3] Southeast Univ, Jiangsu Key Lab Urban ITS, Jiangsu Prov Collaborat Innovat Ctr Modern Urban, Nanjing, Jiangsu, Peoples R China
[4] Monash Univ, Fac Informat Technol, Clayton, Vic, Australia
关键词
Traffic flow prediction; Traffic flow forecasting; Deep learning; Neural network; Attention; SPEED PREDICTION; OPTIMIZATION; MODEL;
D O I
10.1016/j.trc.2019.09.008
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
Due to its importance in Intelligent Transport Systems (ITS), traffic flow prediction has been the focus of many studies in the last few decades. Existing traffic flow prediction models mainly extract static spatial-temporal correlations, although these correlations are known to be dynamic in traffic networks. Attention-based models have emerged in recent years, mostly in the field of natural language processing, and have resulted in major progresses in terms of both accuracy and interpretability. This inspires us to introduce the application of attentions for traffic flow prediction. In this study, a deep learning based traffic flow predictor with spatial and temporal attentions (STANN) is proposed. The spatial and temporal attentions are used to exploit the spatial dependencies between road segments and temporal dependencies between time steps respectively. Experiment results with a real-world traffic dataset demonstrate the superior performance of the proposed model. The results also show that the utilization of multiple data resolutions could help improve prediction accuracy. Furthermore, the proposed model is demonstrated to have potential for improving the understanding of spatial-temporal correlations in a traffic network.
引用
收藏
页码:12 / 28
页数:17
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