Long-Term Urban Traffic Speed Prediction With Deep Learning on Graphs

  • James J.Q. Yu
  • , Christos Markos
  • , Shiyao Zhang*
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Traffic speed prediction is among the foundations of advanced traffic management and the gradual deployment of internet of things sensors is empowering data-driven approaches for the prediction. Nonetheless, existing research studies mainly focus on short-term traffic prediction that covers up to one hour forecast into the future. Previous long-term prediction approaches experience error accumulation, exposure bias, or generate future data of low granularity. In this paper, a novel data-driven, long-term, high-granularity traffic speed prediction approach is proposed based on recent development of graph deep learning techniques. The proposed model utilizes a predictor-regularizer architecture to embed the spatial-temporal data correlation of traffic dynamics in the prediction process. Graph convolutions are widely adopted in both sub-networks for geometrical latent information extraction and reconstruction. To assess the performance of the proposed approach, comprehensive case studies are conducted on real-world datasets and consistent improvements can be observed over baselines. This work is among the pioneering efforts on network-wide long-term traffic speed prediction. The design principles of the proposed approach can serve as a reference point for future transportation research leveraging deep learning.

Original languageEnglish
Pages (from-to)7359-7370
Number of pages12
JournalIEEE Transactions on Intelligent Transportation Systems
Volume23
Issue number7
DOIs
StatePublished - 1 Jul 2022
Externally publishedYes

Keywords

  • Traffic speed prediction
  • data mining
  • deep learning
  • intelligent transportation systems
  • long-term forecast

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