Reinforcement Learning-Guided Dynamic Multi-Graph Fusion for Evacuation Traffic Prediction
Md Nafees Fuad Rafi, Samiul Hasan

TL;DR
This paper introduces a reinforcement learning-guided framework that dynamically fuses multiple graphs to improve real-time evacuation traffic prediction, enhancing accuracy and interpretability during hurricane evacuations.
Contribution
It proposes a novel RL-guided multi-graph fusion model with feature selection for interpretable, accurate evacuation traffic forecasting using heterogeneous spatiotemporal data.
Findings
Achieves 95% accuracy (RMSE=293.9) for 1-hour ahead prediction during hurricanes.
Forecasts up to 6 hours ahead with 90% accuracy (RMSE=426.4).
Outperforms existing state-of-the-art traffic prediction models.
Abstract
Real-time traffic prediction is critical for managing transportation systems during hurricane evacuations. Although data-driven graph-learning models have demonstrated strong capabilities in capturing the complex spatiotemporal dynamics of evacuation traffic at a network level, they mostly consider a single dimension (e.g., travel-time or distance) to construct the underlying graph. Furthermore, these models often lack interpretability, offering little insight into which input variables contribute most to their predictive performance. To overcome these limitations, we develop a novel Reinforcement Learning-guided Dynamic Multi-Graph Fusion (RL-DMF) framework for evacuation traffic prediction. We construct multiple dynamic graphs at each time step to represent heterogeneous spatiotemporal relationships between traffic detectors. A dynamic multi-graph fusion (DMF) module is employed to…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Traffic control and management · Evacuation and Crowd Dynamics
