Network macroscopic fundamental diagram-informed graph learning for traffic state imputation

被引:0
|
作者
Xue, Jiawei [1 ]
Ka, Eunhan [1 ]
Feng, Yiheng [1 ]
Ukkusuri, Satish V. [1 ]
机构
[1] Purdue Univ, Lyles Sch Civil Engn, W Lafayette, IN 47907 USA
关键词
Traffic state imputation; Physics-informed machine learning; Network macroscopic fundamental diagram; Graph neural networks; CELL TRANSMISSION MODEL; URBAN ROAD NETWORKS; ANALYTICAL APPROXIMATION; NEURAL-NETWORK; FLOW; VARIABILITY; CONGESTION; PREDICTION; MFDS;
D O I
10.1016/j.trb.2024.102996
中图分类号
F [经济];
学科分类号
02 ;
摘要
Traffic state imputation refers to the estimation of missing values of traffic variables, such as flow rate and traffic density, using available data. It furnishes comprehensive traffic context for various operation tasks such as vehicle routing, and enables us to augment existing datasets (e.g., PeMS, UTD19, Uber Movement) for diverse theoretical and practical investigations. Despite the superior performance achieved by purely data-driven methods, they are subject to two limitations. One limitation is the absence of a traffic engineering-level interpretation in the model architecture, as it fails to elucidate the methodology behind deriving imputation results from a traffic engineering standpoint. The other limitation is the possibility that imputation results may violate traffic flow theories, thereby yielding unreliable outcomes for transportation engineers. In this study, we introduce NMFD-GNN, a physics-informed machine learning method that fuses the network macroscopic fundamental diagram (NMFD) with the graph neural network (GNN), to perform traffic state imputation. Specifically, we construct the graph learning module that captures the spatio-temporal dependency of traffic congestion. Besides, we develop the physics-informed module based on the lambda-trapezoidal MFD, which presents a functional form of NMFD and was formulated by transportation researchers in 2020. The primary contribution of NMFD-GNN lies in being the first physics-informed machine learning model specifically designed for real-world traffic networks with multiple roads, while existing studies have primarily focused on individual road corridors. We evaluate the performance of NMFD-GNN by conducting experiments on real-world traffic networks located in Zurich and London, utilizing the UTD19 dataset 1 . The results indicate that our NMFD-GNN outperforms six baseline models in terms of performance in traffic state imputation.
引用
收藏
页数:26
相关论文
共 50 条
  • [1] A Physics-Informed Deep Learning Paradigm for Traffic State and Fundamental Diagram Estimation
    Shi, Rongye
    Mo, Zhaobin
    Huang, Kuang
    Di, Xuan
    Du, Qiang
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2022, 23 (08) : 11688 - 11698
  • [2] Effects of traffic control regulation on Network Macroscopic Fundamental Diagram: A statistical analysis of real data
    Alonso, Borja
    Ibeas, Angel
    Musolino, Giuseppe
    Rindone, Corrado
    Vitetta, Antonino
    TRANSPORTATION RESEARCH PART A-POLICY AND PRACTICE, 2019, 126 : 136 - 151
  • [3] Traffic dynamics: Its impact on the Macroscopic Fundamental Diagram
    Knoop, Victor L.
    van Lint, Hans
    Hoogendoorn, Serge P.
    PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2015, 438 : 236 - 250
  • [4] Boundary conditions and behavior of the macroscopic fundamental diagram based network traffic dynamics: A control systems perspective
    Zhong, R. X.
    Huang, Y. P.
    Chen, C.
    Lam, W. H. K.
    Xu, D. B.
    Sumalee, A.
    TRANSPORTATION RESEARCH PART B-METHODOLOGICAL, 2018, 111 : 327 - 355
  • [5] Recent developments in traffic flow modelling using macroscopic fundamental diagram
    Zhang, Lele
    Yuan, Zhongqi
    Yang, Li
    Liu, Zhiyuan
    TRANSPORT REVIEWS, 2020, 40 (06) : 689 - 710
  • [6] Recent developments in traffic flow modeling using macroscopic fundamental diagram
    Zhang, Lele
    Yuan, Zhongqi
    Yang, Li
    Liu, Zhiyuan
    TRANSPORT REVIEWS, 2020, 40 (04) : 529 - 550
  • [7] Network topological effects on the macroscopic fundamental diagram
    Wong, Wai
    Wong, S. C.
    Liu, Henry X.
    TRANSPORTMETRICA B-TRANSPORT DYNAMICS, 2021, 9 (01) : 376 - 398
  • [8] An Influence Analytical Model of Dedicated Bus Lane on Network Traffic by Macroscopic Fundamental Diagram
    Ma, Yingying
    Xie, Yuanqi
    Lin, Yongjie
    JOURNAL OF ADVANCED TRANSPORTATION, 2021, 2021
  • [9] Integration of a cell transmission model and macroscopic fundamental diagram: Network aggregation for dynamic traffic models
    Zhang, Zhao
    Wolshon, Brian
    Dixit, Vinayak V.
    TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2015, 55 : 298 - 309
  • [10] Properties of a well-defined macroscopic fundamental diagram for urban traffic
    Geroliminis, Nikolas
    Sun, Jie
    TRANSPORTATION RESEARCH PART B-METHODOLOGICAL, 2011, 45 (03) : 605 - 617