核心概念
The author proposes a physics-guided deep learning model named STDEN to bridge the gap between data-driven and physics-driven approaches in traffic flow prediction, achieving improved performance with interpretability.
要約
The content introduces the STDEN model, which combines physical principles with deep learning for traffic flow prediction. It addresses the limitations of purely data-driven or physics-based models by integrating potential energy fields into a neural network framework. The model outperforms existing baselines on real-world traffic datasets, showcasing its effectiveness in capturing urban traffic dynamics.
統計
"Experiments on three real-world traffic datasets in Beijing show that our model outperforms state-of-the-art baselines by a significant margin."
"A case study further verifies that STDEN can capture the mechanism of urban traffic and generate accurate predictions with physical meaning."