DGFormer: a physics-guided station level weather forecasting model with dynamic spatial-temporal graph neural network

被引:4
|
作者
Xu, Zhewen [1 ]
Wei, Xiaohui [1 ,2 ]
Hao, Jieyun [1 ]
Han, Junze [1 ]
Li, Hongliang [1 ,2 ]
Liu, Changzheng [3 ]
Li, Zijian [1 ]
Tian, Dongyuan [1 ]
Zhang, Nong [1 ]
机构
[1] Jilin Univ, Coll Comp Sci & Technol, Qianjin St, Changchun 130012, Jilin, Peoples R China
[2] Jilin Univ, Minist Educ, Key Lab Symbol Computat & Knowledge Engn, Qianjin St, Changchun 130012, Jilin, Peoples R China
[3] China Meteorol Adm, Natl Climate Ctr, Key Lab Weather Predict Studies, South Zhongguancun St, Beijing 100081, Peoples R China
关键词
Weather forecasting; Spatial-temporal network; Physics-guided model; Dynamic graph neural network; HUMAN MOBILITY; PREDICTION;
D O I
10.1007/s10707-024-00511-1
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In recent years, there has been an increased interest in understanding and predicting the weather using weather station data with Spatial-Temporal Graph Neural Networks (STGNN). However, it has large prediction errors as a result of the inherent non-linearities and the influence of dynamic spatio-temporal auto-correlation. Using a continuously-varying graph topology chronologically, while embedding domain knowledge to enforce validity, can effectively resolve the issue, but the implementation of such concept constitutes an interdisciplinary challenge for researchers. A Dynamic Graph Former (DGFormer) model is proposed to address this challenge. It combines a topology learner through a deep generative layer with domain knowledge enhancement inserted into the STGNN structure, where the derived physics-guided method allows for an efficient integration with the earth system. For capture of the optimal topology, we merge a node-embedding-based similarity metric learning and the superposition principle as physical assistants into the dynamic graph module. We evaluate our model with a real-world weather dataset on short-term (12 hours) and medium-range (360 hours) prediction tasks. DGFormer achieves outstanding performance with obvious improvements by up to 34.84% at short-term prediction and by up to 23.25% at medium-range prediction compared with the state-of-the-art methods. We also conducted detailed analyses for cities in three regions and visualized the dynamic graph, revealing the characteristics, advantages, and graph visualization of our model.
引用
收藏
页码:499 / 533
页数:35
相关论文
共 50 条
  • [31] Traffic forecasting with graph spatial-temporal position recurrent network
    Chen, Yibi
    Li, Kenli
    Yeo, Chai Kiat
    Li, Keqin
    NEURAL NETWORKS, 2023, 162 : 340 - 349
  • [32] Traffic Flow Forecasting with Spatial-Temporal Graph Diffusion Network
    Zhang, Xiyue
    Huang, Chao
    Xu, Yong
    Xia, Lianghao
    Dai, Peng
    Bo, Liefeng
    Zhang, Junbo
    Zheng, Yu
    THIRTY-FIFTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, THIRTY-THIRD CONFERENCE ON INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE AND THE ELEVENTH SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2021, 35 : 15008 - 15015
  • [33] Adaptive Graph Spatial-Temporal Transformer Network for Traffic Forecasting
    Feng, Aosong
    Tassiulas, Leandros
    PROCEEDINGS OF THE 31ST ACM INTERNATIONAL CONFERENCE ON INFORMATION AND KNOWLEDGE MANAGEMENT, CIKM 2022, 2022, : 3933 - 3937
  • [34] Optimization of spatial-temporal graph: A taxi demand forecasting model based on spatial-temporal tree
    Li, Jianbo
    Lv, Zhiqiang
    Ma, Zhaobin
    Wang, Xiaotong
    Xu, Zhihao
    INFORMATION FUSION, 2024, 104
  • [35] Spatial-Temporal Synchronous Graph Convolutional Networks: A New Framework for Spatial-Temporal Network Data Forecasting
    Song, Chao
    Lin, Youfang
    Guo, Shengnan
    Wan, Huaiyu
    THIRTY-FOURTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, THE THIRTY-SECOND INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE CONFERENCE AND THE TENTH AAAI SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2020, 34 : 914 - 921
  • [36] Short-term load forecasting using spatial-temporal embedding graph neural network
    Wei, Chuyuan
    Pi, Dechang
    Ping, Mingtian
    Zhang, Haopeng
    ELECTRIC POWER SYSTEMS RESEARCH, 2023, 225
  • [37] Spatial-temporal load forecasting of electric vehicle charging stations based on graph neural network
    Zhang, Yanyu
    Liu, Chunyang
    Rao, Xinpeng
    Zhang, Xibeng
    Zhou, Yi
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2024, 46 (01) : 821 - 836
  • [38] Multi-view Cascading Spatial-Temporal Graph Neural Network for Traffic Flow Forecasting
    Liu, Zibo
    Fu, Kaiqun
    Liu, Xiaotong
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2022, PT II, 2022, 13530 : 605 - 616
  • [39] A Spatial-Temporal Aggregated Graph Neural Network for Docked Bike-sharing Demand Forecasting
    Feng, Jiahui
    Liu, Hefu
    Zhou, Jingmei
    Zhou, Yang
    ACM TRANSACTIONS ON KNOWLEDGE DISCOVERY FROM DATA, 2024, 18 (09)
  • [40] Dynamic spatial-temporal model for carbon emission forecasting
    Gong, Mingze
    Zhang, Yongqi
    Li, Jia
    Chen, Lei
    JOURNAL OF CLEANER PRODUCTION, 2024, 463