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Air Pollution Prediction Based on Discrete Wavelets and Deep Learning

Author

Listed:
  • Ying Shu

    (School of Information Science and Technology, Zhejiang Sci-Tech University, Hangzhou 310018, China
    These authors contributed equally to this work.)

  • Chengfu Ding

    (Focused Photonics (Hangzhou) Inc., Hangzhou 310052, China
    These authors contributed equally to this work.)

  • Lingbing Tao

    (School of Computer Science and Technology, Zhejiang Sci-Tech University, Hangzhou 310018, China)

  • Chentao Hu

    (School of Information Science and Technology, Zhejiang Sci-Tech University, Hangzhou 310018, China)

  • Zhixin Tie

    (School of Computer Science and Technology, Zhejiang Sci-Tech University, Hangzhou 310018, China
    Keyi College, Zhejiang Sci-Tech University, Shaoxing 312369, China)

Abstract

Air pollution directly affects people’s life and work and is an important factor affecting public health. An accurate prediction of air pollution can provide a credible foundation for determining the social activities of individuals. Scholars have, thus, proposed a variety of models and techniques for predicting air pollution. However, most of these studies are focused on the prediction of individual pollution factors and perform poorly when multiple pollutants need to be predicted. This paper offers a DW-CAE model that may strike a balance between overall accuracy and local univariate prediction accuracy in order to observe the trend of air pollution more comprehensively. The model combines deep learning and signal processing techniques by employing discrete wavelet transform to obtain the high and low-frequency features of the target sequence, designing a feature extraction module to capture the relationship between the variables, and feeding the resulting feature matrix to an LSTM-based autoencoder for prediction. The DW-CAE model was used to make predictions on the Beijing PM 2.5 dataset and the Yining air pollution dataset, and its prediction accuracy was compared to that of eight baseline models, such as LSTM, IMV-Full, and DARNN. The evaluation results indicate that the proposed DW-CAE model is more accurate than other baseline models at predicting single and multiple pollution factors, and the R 2 of each variable is all higher than 93% for the overall prediction of the six air pollutants. This demonstrates the efficacy of the DW-CAE model, which can give technical and theoretical assistance for the forecast, prevention, and control of overall air pollution.

Suggested Citation

  • Ying Shu & Chengfu Ding & Lingbing Tao & Chentao Hu & Zhixin Tie, 2023. "Air Pollution Prediction Based on Discrete Wavelets and Deep Learning," Sustainability, MDPI, vol. 15(9), pages 1-19, April.
  • Handle: RePEc:gam:jsusta:v:15:y:2023:i:9:p:7367-:d:1135696
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    References listed on IDEAS

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