Combining weather factors to predict traffic flow: A spatial‐temporal fusion graph convolutional network‐based deep learning approach

Accurate traffic flow forecasting is a critical component in intelligent transportation systems. However, most of the existing traffic flow prediction algorithms only consider the prediction under normal conditions, but not the influence of weather attributes on the prediction results. This study ap...

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Veröffentlicht in:IET Intelligent Transport Systems 2024-03, Vol.18 (3), p.528-539
Hauptverfasser: Qi, Xudong, Yao, Junfeng, Wang, Ping, Shi, Tongtong, Zhang, Yajie, Zhao, Xiangmo
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Sprache:eng
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Zusammenfassung:Accurate traffic flow forecasting is a critical component in intelligent transportation systems. However, most of the existing traffic flow prediction algorithms only consider the prediction under normal conditions, but not the influence of weather attributes on the prediction results. This study applies a hybrid deep learning model based on multi feature fusion to predict traffic flow considering weather conditions. A comparison with other representative models validates that the proposed spatial‐temporal fusion graph convolutional network (STFGCN) can achieve better performance. This study applies a hybrid deep learning model based on multi feature fusion to predict traffic flow considering weather conditions.
ISSN:1751-956X
1751-9578
DOI:10.1049/itr2.12401