4.7 Article

Graph Neural Network-Driven Traffic Forecasting for the Connected Internet of Vehicles

期刊

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TNSE.2021.3126830

关键词

Roads; Training; Stacking; Data models; Convolution; Correlation; Feature extraction; graph neural networks; Internet of vehicles; traffic forecasting; deep learning

资金

  1. King Saud University, Riyadh, Saudi Arabia through the Researchers Supporting Project [RSP-2021/18]
  2. FCT/MCTES
  3. EU [UIDB/50008/2020]
  4. Brazilian National Council for Scientific and Technological Development -CNPq [313036/2020-9]

向作者/读者索取更多资源

This work proposes a graph neural network-driven traffic forecasting model for the connected Internet of vehicles (CIoVs), named Gra-TF. By utilizing ensemble learning and three typical graph-level prediction methods, an integrated and enhanced forecasting model is constructed to minimize uncertainty in CIoVs. Numerical results show that Gra-TF improves prediction accuracy by 30% to 40% compared to baseline methods.
Due to great advances in wireless communication, the connected Internet of vehicles (CIoVs) has become prevalent. Naturally, internal connections among active vehicles are an indispensable factor in traffic forecasting. Although many related research studies have been conducted in the past few years, they mainly designed and/or developed single forecasting models for traffic forecasting. Such models may show ideal performance in some scenarios but lack satisfactory robustness to dynamic scenario changes. To address this challenge, a graph neural network-driven traffic forecasting model for CIoVs is proposed in this work, which is denoted as Gra-TF. In this paper, we regard the dynamics of traffic data as a temporal evolution scenario. With the assistance of ensemble learning, three typical graph-level prediction methods are employed to construct an integrated and enhanced forecasting model. This design utilizes several methods to minimize uncertainty in CIoVs. Finally, we use a real-world dataset to build an experimental scenario for further assessment. Numerical results indicate that the proposed Gra-TF improves the prediction accuracy by 30% to 40% compared with several baseline methods.

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