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Embedding Fluid Dynamics Into Neural Networks: Toward Interpretable Traffic Flow Prediction via Physics-Informed Learning

  • Xi'an Jiaotong University

科研成果: 期刊稿件文章同行评审

3 引用 (Scopus)

摘要

Traffic flow prediction plays a crucial role in intelligent transportation systems. The development of deep learning techniques has significantly improved the accuracy of traffic flow prediction; however, their limited generalization ability and lack of interpretability hinder their application in critical scenarios. Integrating physical knowledge into neural networks offers an effective solution to enhance both model generalization and interpretability, but embedding physical laws into complex traffic networks remains a challenge. Inspired by fluid dynamics principles, this article proposes a novel framework for traffic flow prediction. Specifically, we first derive the physical constraints governing traffic flow based on the continuity equation of fluid mechanics. We then design a new feature extraction method to convert the derived physical constraints into spatiotemporal features that can be learned by neural networks. Finally, we introduce a deep learning framework that incorporates these physical features. Experiments on two real-world datasets, PEMS04 and PEMS08, demonstrate the effectiveness of the proposed method. The baseline model using our approach achieves MAE values of 16.69 and 12.34 on the two datasets, respectively, surpassing the current state-of-the-art models. Furthermore, ablation studies conducted with neural networks of varying parameter sizes further validate the robustness of the method in improving model performance. This article offers a new perspective on integrating physical laws with data-driven approaches, enhancing both prediction accuracy and model interpretability.

源语言英语
页(从-至)34528-34547
页数20
期刊IEEE Internet of Things Journal
12
16
DOI
出版状态已出版 - 2025

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