Physics-informed deep learning for traffic state estimation based on the traffic flow model and computational graph method

被引:24
|
作者
Zhang, Jinlei [1 ]
Mao, Shuai [2 ]
Yang, Lixing [1 ]
Ma, Wei [3 ]
Li, Shukai [1 ]
Gao, Ziyou [1 ]
机构
[1] Beijing Jiaotong Univ, Sch Syst Sci, 3 Shangyuancun Haidian Dist, Beijing 100044, Peoples R China
[2] Beijing Jiaotong Univ, Sch Traff & Transportat, 3 Shangyuancun Haidian Dist, Beijing 100044, Peoples R China
[3] Hong Kong Polytech Univ, Dept Civil & Environm Engn, Kowloon, Hong Kong 999077, Peoples R China
关键词
Traffic state estimation; Physics-informed deep learning; Computational graph; Data sparsity; LWR model; Fundamental diagram; EXTENDED KALMAN FILTER; HIGHWAY; TIME; OBSERVABILITY; FRAMEWORK; WAVES; LWR;
D O I
10.1016/j.inffus.2023.101971
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Traffic state estimation (TSE) is a critical task for intelligent transportation systems. However, it is extremely challenging because the traffic data quality is often affected by the installation position of devices, data collection frequency, interference during the transmission process, etc., thus causing the problem of data sparsity or data missing. To address the issue of traffic state estimation under the scenario of data sparsity, we propose a TSE model that combines the computational graph with physics-informed deep learning (PIDL) methods. Firstly, we apply the computational graph method to determine the parameters of the traffic fundamental diagram. These parameters are embedded into the computational graph framework, and their values are determined through the forward propagation of variables and the backward propagation of errors. Next, we employ the PIDL method to realize TSE (taking the LWR model based on the Greenshields fundamental diagram as an example). The PIDL leverages the advantages of data-driven and model-driven approaches to achieve accurate traffic state estimation. Case studies are conducted using the NGSIM dataset under two sparse data scenarios: loop detectors and probe vehicles. Experimental results demonstrate that PIDL can accurately reconstruct the traffic state of the entire road segment based on partially observed data. Furthermore, compared to pure deep learning methods and other baseline models, PIDL performs better in situations with sparse data, thereby proving the feasibility of integrating domain knowledge with deep learning frameworks. This paper fully acknowledges the issue of data sparsity in TSE and effectively addresses it by applying the PIDL method to achieve precise TSE, which holds significant implications for the control and management of real traffic flow.
引用
收藏
页数:16
相关论文
共 50 条
  • [11] PIGAT: Physics-Informed Graph Attention Transformer for Air Traffic State Prediction
    Xu, Qihang
    Pang, Yutian
    Zhou, Xuesong
    Liu, Yongming
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2024, 25 (09) : 12561 - 12577
  • [12] Physics-Informed Machine Learning for Calibrating Macroscopic Traffic Flow Models
    Tang, Yu
    Jin, Li
    Ozbay, Kaan
    TRANSPORTATION SCIENCE, 2024, 58 (06) : 1389 - 1402
  • [13] Incorporating Nonlocal Traffic Flow Model in Physics-Informed Neural Networks
    Huang, Archie J.
    Biswas, Animesh
    Agarwal, Shaurya
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2024, 25 (11) : 16249 - 16258
  • [14] Estimating motorway traffic states with data fusion and physics-informed deep learning
    Rempe, Felix
    Loder, Allister
    Bogenberger, Klaus
    2021 IEEE INTELLIGENT TRANSPORTATION SYSTEMS CONFERENCE (ITSC), 2021, : 2208 - 2214
  • [15] Incorporating Traffic Flow Model into A Deep Learning Method for Traffic State Estimation: A Hybrid Stepwise Modeling Framework
    Pan, Yuyan Annie
    Guo, Jifu
    Chen, Yanyan
    Li, Siyang
    Li, Wenhao
    JOURNAL OF ADVANCED TRANSPORTATION, 2022, 2022
  • [16] Ice-flow model emulator based on physics-informed deep learning
    Jouvet, Guillaume
    Cordonnier, Guillaume
    JOURNAL OF GLACIOLOGY, 2023,
  • [17] Road adhesion coefficient Estimation: Physics-informed deep learning method with vehicle dynamics model
    Li, Xixi
    Ren, Minglun
    EXPERT SYSTEMS WITH APPLICATIONS, 2025, 260
  • [18] Physics-informed neural networks for integrated traffic state and queue profile estimation: A differentiable programming approach on layered computational graphs
    Lu, Jiawei
    Li, Chongnan
    Wu, Xin Bruce
    Zhou, Xuesong Simon
    TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2023, 153
  • [19] Physics-informed deep learning method for the refrigerant filling mass flow metering
    Xuan, Weikun
    Lou, Haozhe
    Fu, Shenghua
    Zhang, Zhengqian
    Ding, Nanxi
    FLOW MEASUREMENT AND INSTRUMENTATION, 2023, 93
  • [20] Surface current prediction based on a physics-informed deep learning model
    Zhang, Lu
    Duan, Wenyang
    Cui, Xinmiao
    Liu, Yuliang
    Huang, Limin
    APPLIED OCEAN RESEARCH, 2024, 148