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Spatio-temporal data prediction of multiple air pollutants in multi-cities based on 4D digraph convolutional neural network

Author

Listed:
  • Li Wang
  • Qianhui Tang
  • Xiaoyi Wang
  • Jiping Xu
  • Zhiyao Zhao
  • Huiyan Zhang
  • Jiabin Yu
  • Qian Sun
  • Yuting Bai
  • Xuebo Jin
  • Chaoran Ning

Abstract

In response to the problem that current multi-city multi-pollutant prediction methods based on one-dimensional undirected graph neural network models cannot accurately reflect the two-dimensional spatial correlations and directedness, this study proposes a four-dimensional directed graph model that can capture the two-dimensional spatial directed information and node correlation information related to multiple factors, as well as extract temporal correlation information at different times. Firstly, A four-dimensional directed GCN model with directed information graph in two-dimensional space was established based on the geographical location of the city. Secondly, Spectral decomposition and tensor operations were then applied to the two-dimensional directed information graph to obtain the graph Fourier coefficients and graph Fourier basis. Thirdly, the graph filter of the four-dimensional directed GCN model was further improved and optimized. Finally, an LSTM network architecture was introduced to construct the four-dimensional directed GCN-LSTM model for synchronous extraction of spatio-temporal information and prediction of atmospheric pollutant concentrations. The study uses the 2020 atmospheric six-parameter data of the Taihu Lake city cluster and applies canonical correlation analysis to confirm the data’s temporal, spatial, and multi-factor correlations. Through experimentation, it is verified that the proposed 4D-DGCN-LSTM model achieves a MAE reduction of 1.12%, 4.91%, 5.62%, and 11.67% compared with the 4D-DGCN, GCN-LSTM, GCN, and LSTM models, respectively, indicating the good performance of the 4D-DGCN-LSTM model in predicting multiple types of atmospheric pollutants in various cities.

Suggested Citation

  • Li Wang & Qianhui Tang & Xiaoyi Wang & Jiping Xu & Zhiyao Zhao & Huiyan Zhang & Jiabin Yu & Qian Sun & Yuting Bai & Xuebo Jin & Chaoran Ning, 2023. "Spatio-temporal data prediction of multiple air pollutants in multi-cities based on 4D digraph convolutional neural network," PLOS ONE, Public Library of Science, vol. 18(12), pages 1-27, December.
  • Handle: RePEc:plo:pone00:0287781
    DOI: 10.1371/journal.pone.0287781
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    References listed on IDEAS

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    1. Li Wang & Xiaoyi Wang & Zhiyao Zhao & Yuxi Wu & Jiping Xu & Huiyan Zhang & Jiabin Yu & Qian Sun & Yuting Bai, 2022. "Multi-Factor Status Prediction By 4d Fractal Cnn Based On Remote Sensing Images," FRACTALS (fractals), World Scientific Publishing Co. Pte. Ltd., vol. 30(02), pages 1-13, March.
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