Abstract
Solving traffic assignment problem for large networks is computationally challenging when conventional optimization-based methods are used. In our research, we develop an innovative surrogate model for a traffic assignment when multi-class vehicles are involved. We do so by employing heterogeneous graph neural networks which uses a multiple-view graph attention mechanism tailored to different vehicle classes, along with additional links connecting origin-destination pairs. We also integrate the node-based flow conservation law intothe loss function. As a result, our model adheres to flow conservation while delivering highly accurate predictions for link flows and utilization ratios. Through numerical experiments conducted on urban transportation networks, we demonstrate that our model surpasses traditional neural network approaches in convergence speed and predictive accuracy in both user equilibrium and system optimal versions of traffic assignment.
Original language | English (US) |
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Article number | 128072 |
Journal | Expert Systems With Applications |
Volume | 286 |
DOIs | |
State | Published - Aug 15 2025 |
Keywords
- Flow conservation
- Graph neural network
- Heterogeneity
- Multi-class traffic assignment
- Traffic flow prediction
ASJC Scopus subject areas
- General Engineering
- Computer Science Applications
- Artificial Intelligence