Graph neural network surrogate for strategic transport planning
As the complexities of urban environments continue to grow, the modelling of transportation systems become increasingly challenging. This paper explores the application of advanced Graph Neural Network (GNN) architectures as surrogate models for strategic transport planning. Building upon a prior wo...
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Zusammenfassung: | As the complexities of urban environments continue to grow, the modelling of
transportation systems become increasingly challenging. This paper explores the
application of advanced Graph Neural Network (GNN) architectures as surrogate
models for strategic transport planning. Building upon a prior work that laid
the foundation with graph convolution networks (GCN), our study delves into the
comparative analysis of established GCN with the more expressive Graph
Attention Network (GAT). Additionally, we propose a novel GAT variant (namely
GATv3) to address over-smoothing issues in graph-based models. Our
investigation also includes the exploration of a hybrid model combining both
GCN and GAT architectures, aiming to investigate the performance of the
mixture. The three models are applied to various experiments to understand
their limits. We analyse hierarchical regression setups, combining
classification and regression tasks, and introduce fine-grained classification
with a proposal of a method to convert outputs to precise values. Results
reveal the superior performance of the new GAT in classification tasks. To the
best of the authors' knowledge, this is the first GAT model in literature to
achieve larger depths. Surprisingly, the fine-grained classification task
demonstrates the GCN's unexpected dominance with additional training data. This
shows that synthetic data generators can increase the training data, without
overfitting issues whilst improving model performance. In conclusion, this
research advances GNN based surrogate modelling, providing insights for
refining GNN architectures. The findings open avenues for investigating the
potential of the newly proposed GAT architecture and the modelling setups for
other transportation problems. |
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DOI: | 10.48550/arxiv.2408.07726 |