Air quality forecasting using a spatiotemporal hybrid deep learning model based on VMD-GAT-BiLSTM.

Xiaohu Wang, Suo Zhang, Yi Chen, Longying He, Yongmei Ren, Zhen Zhang, Juan Li, Shiqing Zhang
Author Information
  1. Xiaohu Wang: School of Intelligent Manufacturing and Mechanical Engineering, Hunan Institute of Technology, Hengyang, 421002, Hunan, China.
  2. Suo Zhang: School of Intelligent Manufacturing and Mechanical Engineering, Hunan Institute of Technology, Hengyang, 421002, Hunan, China.
  3. Yi Chen: School of Intelligent Manufacturing and Mechanical Engineering, Hunan Institute of Technology, Hengyang, 421002, Hunan, China.
  4. Longying He: School of Intelligent Manufacturing and Mechanical Engineering, Hunan Institute of Technology, Hengyang, 421002, Hunan, China.
  5. Yongmei Ren: School of Electrical and Information Engineering, Hunan Institute of Technology, Hengyang, 421002, Hunan, China.
  6. Zhen Zhang: School of Civil Engineering and Architecture, Taizhou University, Taizhou, 318000, Zhejiang, China.
  7. Juan Li: Taizhou Vocational College of Science and Technology, Taizhou, 318000, Zhejiang, China.
  8. Shiqing Zhang: Institute of Intelligent Information Processing, Taizhou University, Taizhou, 318000, Zhejiang, China. tzczsq@163.com.

Abstract

The precise forecasting of air quality is of great significance as an integral component of early warning systems. This remains a formidable challenge owing to the limited information of emission source and the considerable uncertainties inherent in dynamic processes. To improve the accuracy of air quality forecasting, this work proposes a new spatiotemporal hybrid deep learning model based on variational mode decomposition (VMD), graph attention networks (GAT) and bi-directional long short-term memory (BiLSTM), referred to as VMD-GAT-BiLSTM, for air quality forecasting. The proposed model initially employ a VMD to decompose original PM data into a series of relatively stable sub-sequences, thus reducing the influence of unknown factors on model prediction capabilities. For each sub-sequence, a GAT is then designed to explore deep spatial relationships among different monitoring stations. Next, a BiLSTM is utilized to learn the temporal features of each decomposed sub-sequence. Finally, the forecasting results of each decomposed sub-sequence are aggregated and summed as the final air quality prediction results. Experiment results on the collected Beijing air quality dataset show that the proposed model presents superior performance to other used methods on both short-term and long-term air quality forecasting tasks.

Keywords

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Grants

  1. 2022JJ50148/Natural Science Foundation of Hunan Province
  2. S202311528003X/National College Students Innovation and Entrepreneurship Training Program
  3. S202311528025/National College Students Innovation and Entrepreneurship Training Program
  4. 22A0625/Hunan Provincial Department of Education Science Research Fund Project
  5. 62276180/National Natural Science Foundation of China

Word Cloud

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