IET Intelligent Transport Systems (Jan 2024)

MCAGCN: Multi‐component attention graph convolutional neural network for road travel time prediction

  • Zhihua Zhao,
  • Li Chao,
  • Xue Zhang,
  • Nengfu Xie,
  • Qingtian Zeng

DOI
https://doi.org/10.1049/itr2.12440
Journal volume & issue
Vol. 18, no. 1
pp. 139 – 153

Abstract

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Abstract With the development of intelligent transportation technology, road travel time prediction has become an important research direction. Owing to the complex periodic dependence and non‐linear features of road travel time series, achieving accurate and effective predictions remains a challenging task. Most existing traffic sequence prediction methods lack modelling of the dynamic correlation between multiple period information, resulting in unsatisfactory prediction results. To address this, a multi‐component attention graph convolutional network (MCAGCN) is proposed for road travel time prediction. First, the spatial‐temporal features of three historical components (hourly, daily and weekly) are modelled individually. A skip attention layer is then used to fuse multi‐scale spatial‐temporal features to enhance the model's feature extraction capabilities. Secondly, a component attention layer is proposed to calculate the correlation between different components using the temporal features of the prediction moment, to achieve dynamic modelling between different period information. The experimental results on the Tianchi, METR‐LA, and PeMS‐BAY datasets, which are real‐world traffic forecasting datasets, demonstrate the superiority of MCAGCN.

Keywords