A Data-Driven Spatial-Temporal Graph Neural Network for Docked Bike Prediction

被引:8
|
作者
Li, Guanyao [1 ]
Wang, Xiaofeng [2 ]
Njoo, Gunarto Sindoro [2 ]
Zhong, Shuhan [1 ]
Chan, S-H Gary [1 ]
Hung, Chih-Chieh [3 ]
Peng, Wen-Chih [2 ]
机构
[1] Hong Kong Univ Sci & Technol, Dept Comp Sci & Engn, Hong Kong, Peoples R China
[2] Natl Yang Ming Chiao Tung Univ, Dept Comp Sci, Taipei, Taiwan
[3] Natl Chung Hsing Univ, Dept Comp Sci & Engn, Taichung, Taiwan
关键词
bike demand and supply prediction; spatial-temporal data prediction; spatial-temporal graph neural network; DEMAND;
D O I
10.1109/ICDE53745.2022.00058
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Docked bike systems have been widely deployed in many cities around the world. To the service provider, predicting the demand and supply of bikes at any station is crucial to offering the best service quality. The docked bike prediction problem is highly challenging because of the complicated joint spatial-temporal (ST) dependency as bikes are picked up and dropped off, the so-called "flows", between stations. Prior works often considered the spatial and temporal dependencies separately using sequential network models, and based on locality assumptions. Without sufficiently capturing the joint spatial and temporal features, these approaches are not optimal for attaining the best prediction accuracy. We propose STGNN-DJD, a novel data-driven Spatial-Temporal Graph Neural Network to solve the bike demand and supply prediction problem by unifiedly embedding the Dynamic and Joint ST Dependency in two novel ST graphs. Given station locations and historical rental data on bike flow over the past time slots 0 to t - 1, we seek to predict online the bike demand and supply at any station at time t. To extract joint spatial-temporal dependency, STGNN-DJD employs a graph generator to construct, at the beginning of time t, two graphs that embed the flow relationships between stations at various time slots (flow-convoluted graph) and dynamic demand-supply pattern correlation between stations (pattern correlation graph), respectively. Given the two spatial-temporal graphs, STGNN-DJD subsequently employs a graph neural network with novel flow-based and attention-based aggregators to generate embedding of each station for docked bike prediction. We have conducted extensive experiments on two large bike-sharing datasets. Our results confirm the effectiveness of STGNN-DJD as compared with other state-of-the-art approaches, with significant improvement on RMSE and MAE (by 20%-50%). We also provide a case study on dynamic dependencies between stations and demonstrate that the locality assumption does not always hold for a docked bike system.
引用
收藏
页码:713 / 726
页数:14
相关论文
共 50 条
  • [1] A Spatial-Temporal Aggregated Graph Neural Network for Docked Bike-sharing Demand Forecasting
    Feng, Jiahui
    Liu, Hefu
    Zhou, Jingmei
    Zhou, Yang
    [J]. ACM Transactions on Knowledge Discovery from Data, 2024, 18 (09)
  • [2] STAGNN: a spatial-temporal attention graph neural network for network traffic prediction
    Luo, Yonghua
    Ning, Qian
    Chen, Bingcai
    Zhou, Xinzhi
    Huang, Linyu
    [J]. INTERNATIONAL JOURNAL OF COMMUNICATION NETWORKS AND DISTRIBUTED SYSTEMS, 2024, 30 (04) : 413 - 432
  • [3] Spatial-Temporal Dynamic Graph Convolutional Neural Network for Traffic Prediction
    Xiao, Wenjuan
    Wang, Xiaoming
    [J]. IEEE ACCESS, 2023, 11 : 97920 - 97929
  • [4] A dynamical spatial-temporal graph neural network for traffic demand prediction
    Huang, Feihu
    Yi, Peiyu
    Wang, Jince
    Li, Mengshi
    Peng, Jian
    Xiong, Xi
    [J]. INFORMATION SCIENCES, 2022, 594 : 286 - 304
  • [5] Spatial-Temporal Multiscale Fusion Graph Neural Network for Traffic Flow Prediction
    Hou, Hongxin
    Ning, Nianwen
    Shi, Huaguang
    Zhou, Yi
    [J]. 2022 IEEE 7th International Conference on Intelligent Transportation Engineering, ICITE 2022, 2022, : 272 - 277
  • [6] Traffic Flow Prediction Based on Dynamic Graph Spatial-Temporal Neural Network
    Jiang, Ming
    Liu, Zhiwei
    [J]. MATHEMATICS, 2023, 11 (11)
  • [7] Spatial-Temporal Dynamic Graph Convolution Neural Network for Air Quality Prediction
    Xiaocao, Ouyang
    Yang, Yan
    Zhang, Yiling
    Zhou, Wei
    [J]. 2021 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2021,
  • [8] Multi-View Spatial-Temporal Graph Neural Network for Traffic Prediction
    Li, He
    Jin, Duo
    Li, XueJiao
    Huang, HongJie
    Yun, JinPeng
    Huang, LongJi
    [J]. COMPUTER JOURNAL, 2023, 66 (10): : 2393 - 2408
  • [9] Spatial-Temporal Multiscale Fusion Graph Neural Network for Traffic Flow Prediction
    Hou, Hongxin
    Ning, Nianwen
    Shi, Huaguang
    Zhou, Yi
    [J]. 2022 IEEE 7TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION ENGINEERING, ICITE, 2022, : 272 - 277
  • [10] Adaptive Hybrid Spatial-Temporal Graph Neural Network for Cellular Traffic Prediction
    Wang, Xing
    Yang, Kexin
    Wang, Zhendong
    Feng, Junlan
    Zhu, Lin
    Zhao, Juan
    Deng, Chao
    [J]. ICC 2023-IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS, 2023, : 4026 - 4032