A multi-perspective fusion model for operating speed prediction on highways using knowledge-enhanced graph neural networks
Artikel i vetenskaplig tidskrift, 2025

This study proposes a multi-perspective fusion model for operating speed prediction based on knowledge-enhanced graph neural networks, named RoadGNN-S. By utilizing message passing and multi-head self-attention mechanisms, RoadGNN-S can effectively capture the coupling impacts of multi-perspective alignment elements (i.e., two-dimensional design, 2.5-dimensional driving, and three-dimensional spatial perspectives). The results of driving simulation data show that root mean squared error, mean absolute error, mean absolute percentage error, and R-squared values of RoadGNN-S are superior to those of other classic deep learning algorithms. Then, prior knowledge (i.e., highway geometry supply, driver expectations, and vehicle dynamics) is introduced into RoadGNN-S, and the models' prediction accuracy and transferability are verified by field observation experiments. Compared to the above data-driven models, knowledge-enhanced RoadGNN-S effectively avoids the fundamental errors, improving the R-squared value in predicting passenger cars' and trucks' operating speed by 7.9% and 10.7%, respectively. The findings of this study facilitate the intelligent highway geometric design with multi-perspective fusion and knowledge enhancement techniques.

Författare

Jianqiang Gao

Tongji Univ

Bo Yu

Tongji Univ

Yuren Chen

Tongji Univ

Kun Gao

Chalmers, Arkitektur och samhällsbyggnadsteknik, Geologi och geoteknik

Shan Bao

Univ Michigan, Ind & Mfg Syst Engn Dept

Univ Michigan, Transportat Res Inst, Human Factors Grp

Computer-Aided Civil and Infrastructure Engineering

1093-9687 (ISSN) 1467-8667 (eISSN)

Vol. 40 8 1004-1027

Ämneskategorier (SSIF 2011)

Maskinteknik

Data- och informationsvetenskap

Samhällsbyggnadsteknik

DOI

10.1111/mice.13382

Mer information

Senast uppdaterat

2025-11-28