TL;DR
This paper introduces STDEN, a physics-guided neural network for traffic flow prediction that combines physical principles with deep learning, achieving high accuracy and interpretability on real-world datasets.
Contribution
The paper proposes a novel differential equation network model that integrates physical traffic flow mechanisms into deep learning, enhancing both performance and interpretability.
Findings
Outperforms state-of-the-art baselines on real-world datasets
Captures physical traffic flow mechanisms accurately
Provides interpretable predictions with physical meaning
Abstract
High-performance traffic flow prediction model designing, a core technology of Intelligent Transportation System, is a long-standing but still challenging task for industrial and academic communities. The lack of integration between physical principles and data-driven models is an important reason for limiting the development of this field. In the literature, physics-based methods can usually provide a clear interpretation of the dynamic process of traffic flow systems but are with limited accuracy, while data-driven methods, especially deep learning with black-box structures, can achieve improved performance but can not be fully trusted due to lack of a reasonable physical basis. To bridge the gap between purely data-driven and physics-driven approaches, we propose a physics-guided deep learning model named Spatio-Temporal Differential Equation Network (STDEN), which casts the physical…
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