Origin-destination demand prediction of public transit using graph convolutional neural network

被引:0
|
作者
Shanthappa, Nithin K. [1 ]
Mulangi, Raviraj H. [1 ,3 ]
Manjunath, Harsha M. [2 ]
机构
[1] Natl Inst Technol Karnataka, Dept Civil Engn, Surathkal, India
[2] Siddaganga Inst Technol, Dept Civil Engn, Tumkur, Karnataka, India
[3] Natl Inst Technol Karnataka, Dept Civil Engn, Surathkal 575025, India
关键词
Origin-Destination demand prediction; graph convolutional neural network (GCN); Public bus transit; Land use; Electronic Ticketing Machine (ETM); SMART CARD DATA; TIME; MOBILITY; ARCHITECTURE; OPERATION; PATTERNS; SERVICE;
D O I
10.1016/j.cstp.2024.101230
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
The insight into origin-destination (OD) demand patterns aids transport planners in making the public transit system more efficient and attractive. This may encourage individuals to shift from private vehicles to public transit, easing the burden on traffic and its negative impacts. Hence, to know how OD demand is going to vary in future, a state-of-the-art OD demand prediction model needs to be developed. Previously, studies have developed zone -based prediction models which may not be appropriate for predicting OD demand within a route of public transit. Additionally, spatial correlations between the stops of public transit must be included in the model for improved forecasting accuracy. Hence, in an effort to fulfil these gaps, a Graph Convolutional Neural Network (GCN) is developed to forecast the OD demand of public bus transit with nodes being the bus stops and links between them representing the passenger flow between the stops. Land use around the bus stops is retrieved as a node feature and included in the model to account for the spatial correlation between the stops. The model is trained using a real -life dataset from the public bus service of Davangere city located in India. Land use around the bus stops is extracted from the Davangere city master plan, procured from the urban development authority. The developed model is compared with conventional models and the findings show that the GCN model performs better in terms of prediction accuracy than the baseline models. Additionally, at the stop level, the performance of the model remained stable due to the inclusion of land use data compared to conventional models where land use data was not considered.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Clustering Shift Graph Convolutional Network for Taxi Origin-Destination Demand Prediction
    Peng, Zhilei
    Wu, Guixing
    Xia, Fengliang
    [J]. 2021 IEEE 33RD INTERNATIONAL CONFERENCE ON TOOLS WITH ARTIFICIAL INTELLIGENCE (ICTAI 2021), 2021, : 268 - 272
  • [2] Context-Aware Graph Convolutional Network for Dynamic Origin-Destination Prediction
    Nathaniel, Juan
    Zheng, Baihua
    [J]. 2021 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2021, : 1718 - 1724
  • [3] Graph Neural Network for Robust Public Transit Demand Prediction
    Li, Can
    Bai, Lei
    Liu, Wei
    Yao, Lina
    Waller, S. Travis
    [J]. IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2022, 23 (05) : 4086 - 4098
  • [4] Dynamic Auto-Structuring Graph Neural Network: A Joint Learning Framework for Origin-Destination Demand Prediction
    Zhang, Dapeng
    Xiao, Feng
    [J]. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2023, 35 (04) : 3699 - 3711
  • [5] Estimation of origin-destination matrices for a multimodal public transit network
    Wong, KI
    Wong, SC
    Tong, CO
    Lam, WHK
    Lo, HK
    Yang, H
    Lo, HP
    [J]. JOURNAL OF ADVANCED TRANSPORTATION, 2005, 39 (02) : 139 - 168
  • [6] Rapid transit network design for optimal cost and origin-destination demand capture
    Gutierrez-Jarpa, Gabriel
    Obreque, Carlos
    Laporte, Gilbert
    Marianov, Vladimir
    [J]. COMPUTERS & OPERATIONS RESEARCH, 2013, 40 (12) : 3000 - 3009
  • [7] Traffic Origin-Destination Demand Prediction via Multichannel Hypergraph Convolutional Networks
    Wang, Ming
    Zhang, Yong
    Zhao, Xia
    Hu, Yongli
    Yin, Baocai
    [J]. IEEE TRANSACTIONS ON COMPUTATIONAL SOCIAL SYSTEMS, 2024, 11 (04) : 5496 - 5509
  • [8] Spatial Origin-Destination Flow Imputation Using Graph Convolutional Networks
    Yao, Xin
    Gao, Yong
    Zhu, Di
    Manley, Ed
    Wang, Jiaoe
    Liu, Yu
    [J]. IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2021, 22 (12) : 7474 - 7484
  • [9] Short-term origin-destination demand prediction in urban rail transit systems: A channel-wise attentive split-convolutional neural network method
    Zhang, Jinlei
    Che, Hongshu
    Chen, Feng
    Ma, Wei
    He, Zhengbing
    [J]. TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2021, 124
  • [10] Short-term origin-destination demand prediction in urban rail transit systems: A channel-wise attentive split-convolutional neural network method
    Zhang, Jinlei
    Che, Hongshu
    Chen, Feng
    Ma, Wei
    He, Zhengbing
    [J]. Transportation Research Part C: Emerging Technologies, 2021, 124