Spatial-temporal gated graph convolutional network: a new deep learning framework for long-term traffic speed forecasting

Author:

Zhang Dongping1,Lan Hao1,Ma Zhennan2,Yang Zhixiong3,Wu Xin4,Huang Xiaoling5

Affiliation:

1. College of Information Engineering, China Jiliang University, Hangzhou, China

2. Books and Information Center, Zhejiang Institute of Communications, Hangzhou, China

3. Jiaxing Sudoku Bridge Technology Co., Ltd., Jiaxing, China

4. China Academy of Financial Research, Zhejiang University of Finance and Economics, Hangzhou, China

5. Library, Zhejiang University of Finance and Economics, Hangzhou, China

Abstract

The key to solving traffic congestion is the accurate traffic speed forecasting. However, this is difficult owing to the intricate spatial-temporal correlation of traffic networks. Most existing studies either ignore the correlations among distant sensors, or ignore the time-varying spatial features, resulting in the inability to extract accurate and reliable spatial-temporal features. To overcome these shortcomings, this study proposes a new deep learning framework named spatial-temporal gated graph convolutional network for long-term traffic speed forecasting. Firstly, a new spatial graph generation method is proposed, which uses the adjacency matrix to generate a global spatial graph with more comprehensive spatial features. Then, a new spatial-temporal gated recurrent unit is proposed to extract the comprehensive spatial-temporal features from traffic data by embedding a new graph convolution operation into gated recurrent unit. Finally, a new self-attention block is proposed to extract global features from the traffic data. The evaluation on two real-world traffic speed datasets demonstrates the proposed model can accurately forecast the long-term traffic speed, and outperforms the baseline models in most evaluation metrics.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference23 articles.

1. Predicting short-term traffic flow in urban based on multivariate linear regression model;Li;Journal of Intelligent & Fuzzy Systems,2020

2. Short-term traffic speed forecasting hybrid model based on Chaos-Wavelet Analysis-Support Vector Machine theory;Wang;Transportation Research Part C: Emerging Technologies,2013

3. Evaluation of network performance under provision of short predictive traffic information;Phusittrakool;Walailak Journal of Science and Technology,2015

4. Short-term prediction of traffic volume in urban arterials;Mohammad;Journal of Transportation Engineering,1995

5. Travel time prediction with support vector regression;Wu;IEEE Transactions on Intelligent Transportation Systems,2004

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