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FD-TGCN: Fast and dynamic temporal graph convolution network for traffic flow prediction

journal contribution
posted on 2025-04-11, 09:02 authored by Lijun Sun, Mingzhi Liu, Guanfeng Liu, Xiao ChenXiao Chen, Xu Yu
The traffic flow prediction has recently been challenged due to its complicated dynamic spatial–temporal features. In terms of temporal modeling, the dilated convolution used to model the temporal relationship consumes more training time. In terms of spatial modeling, traffic flow prediction results are affected not only by the dynamic connection spatial relationship, but also by the changes of traffic road structure, which is ignored by most methods. In order to address these concerns, we propose a new traffic flow prediction method which is called Fast and Dynamic Temporal Graph Convolution Network (FD-TGCN). FD-TGCN comprises a temporal module and a spatial module. In the temporal module, we propose a Fast Time Convolution Network (FTCN) to reduce the training time. The spatial module improves prediction accuracy by separately modeling dynamic connection spatial relationship and the change in the structure of the road. A series of experiments have shown that compared with the baseline models, our proposed method achieves an average accuracy improvement of 1.3% and 1.85% on two datasets, respectively, while saving an average training time of 293.55%.

History

Author affiliation

College of Science & Engineering Comp' & Math' Sciences

Version

  • VoR (Version of Record)

Published in

Information Fusion

Volume

106

Pagination

102291 - 102291

Publisher

Elsevier BV

issn

1566-2535

eissn

1872-6305

Copyright date

2024

Language

en

Deposited by

Dr Xiao Chen

Deposit date

2025-03-24