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.
На другой язык
из исходного контента
arxiv.org
Дополнительные вопросы