Graph Convolutional Neural Network for Pressure Prediction in Water Distribution Network Sites

被引:0
|
作者
Dan Liu
Pei Ma
Shixuan Li
Wei Lv
Danhui Fang
机构
[1] Wuhan University of Technology,School of Safety Science and Emergency Management
来源
关键词
Empirical modal decomposition; Graph convolutional neural network; Hyperparameter search; Spatial and temporal correlation; WDNs pressure;
D O I
暂无
中图分类号
学科分类号
摘要
The safe operation of water distribution networks (WDNs) is crucial for ensuring the city dwellers’ living standards. Accurate and multi-step predictions of pressure at key sites in WDNs can prevent the occurrence of pipe bursts in the future. Therefore, this study proposes an EMD-Graph-Wavenet-HGSRS model to predict the pressure at several monitoring sites in the WDNs. The LSTC-Tubal method is proposed to repair the abnormal pressure values of the WDNs. Then, the pressure features are enriched by EMD. The predefined adjacent matrix of monitoring points is obtained through the topology of WNDs. And, the enriched pressure features and the predefined adjacent matrix of the monitoring sites are input into the Graph-Wavenet model to predict the pressure values for the next 12 h. In addition, the Graph-Wavenet model is optimized by HGSRS in this study. The results of this study show that the MAE of EMD-Graph-Wavenet decreased by 24.36%, KGE increased by 6.73% compared to Graph-Wavenet. EMD-Graph-Wavenet-HGSRS (optimized by HGSRS) prediction outperforms EMD-Graph-Wavenet model. The MAE of Graph-Wavenet decreased by 40.91% and KGE increased by 11.91% compared to Bi-LSTM. The Bi-LSTM exhibited the best performance among these temporal models, whereas the baseline LSTM had the worst performance. The method proposed in this study can better predict the pressure extremes at each stage of the monitoring sites and provide guidance for the pressure management of actual WDNs.
引用
下载
收藏
页码:2581 / 2599
页数:18
相关论文
共 50 条
  • [21] A novel graph convolutional feature based convolutional neural network for stock trend prediction
    Chen, Wei
    Jiang, Manrui
    Zhang, Wei-Guo
    Chen, Zhensong
    INFORMATION SCIENCES, 2021, 556 : 67 - 94
  • [22] WETLAND MAPPING BY JOINTLY USE OF CONVOLUTIONAL NEURAL NETWORK AND GRAPH CONVOLUTIONAL NETWORK
    Jafarzadeh, Hamid
    Mahdianpari, Masoud
    Gill, Eric
    2022 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS 2022), 2022, : 2219 - 2222
  • [23] A Convolutional Neural Network and Graph Convolutional Network Based Framework for AD Classification
    Lin, Lan
    Xiong, Min
    Zhang, Ge
    Kang, Wenjie
    Sun, Shen
    Wu, Shuicai
    SENSORS, 2023, 23 (04)
  • [24] Research on Application of Graph Neural Network in Water Quality Prediction
    Li, Lan
    Lv, Nanbin
    Li, Wenjing
    INTERNATIONAL JOURNAL ON ARTIFICIAL INTELLIGENCE TOOLS, 2022, 31 (01)
  • [25] Smart Lung Tumor Prediction Using Dual Graph Convolutional Neural Network
    Alameen, Abdalla
    INTELLIGENT AUTOMATION AND SOFT COMPUTING, 2023, 36 (01): : 369 - 383
  • [26] TARGCN: temporal attention recurrent graph convolutional neural network for traffic prediction
    Yang, He
    Jiang, Cong
    Song, Yun
    Fan, Wendong
    Deng, Zelin
    Bai, Xinke
    COMPLEX & INTELLIGENT SYSTEMS, 2024, : 8179 - 8196
  • [27] Convolutional Neural Network for Trajectory Prediction
    Nikhil, Nishant
    Morris, Brendan Tran
    COMPUTER VISION - ECCV 2018 WORKSHOPS, PT III, 2019, 11131 : 186 - 196
  • [28] Spatial-Temporal Dynamic Graph Convolutional Neural Network for Traffic Prediction
    Xiao, Wenjuan
    Wang, Xiaoming
    IEEE ACCESS, 2023, 11 : 97920 - 97929
  • [29] GCRNN: graph convolutional recurrent neural network for compound–protein interaction prediction
    Ermal Elbasani
    Soualihou Ngnamsie Njimbouom
    Tae-Jin Oh
    Eung-Hee Kim
    Hyun Lee
    Jeong-Dong Kim
    BMC Bioinformatics, 22
  • [30] Bayesian graph convolutional network for traffic prediction
    Fu, Jun
    Zhou, Wei
    Chen, Zhibo
    NEUROCOMPUTING, 2024, 582