Extraction of multi-scale features enhances the deep learning-based daily PM2.5 forecasting in cities

Chemosphere. 2022 Dec;308(Pt 2):136252. doi: 10.1016/j.chemosphere.2022.136252. Epub 2022 Aug 30.

Abstract

Characterising the daily PM2.5 concentration is crucial for air quality control. To govern the status of the atmospheric environment, a novel hybrid model for PM2.5 forecasting was proposed by introducing a two-stage decomposition technology of complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) and variational mode decomposition (VMD); subsequently, a deep learning approach of long short-term memory (LSTM) was proposed. Five cities with unique meteorological and economic characteristics were selected to assess the predictive ability of the proposed model. The results revealed that PM2.5 pollution was generally more severe in inland cities (66.98 ± 0.76 μg m-3) than in coastal cities (40.46 ± 0.40 μg m-3). The modelling comparison showed that in each city, the secondary decomposition algorithm improved the accuracy and prediction stability of the prediction models. When compared with other prediction models, LSTM effectively extracted featured information and achieved relatively accurate time-series prediction. The hybrid model of CEEMDAN-VMD-LSTM achieved a better prediction in the five cities (R2 = 0.9803 ± 0.01) compared with the benchmark models (R2 = 0.7537 ± 0.03). The results indicate that the proposed approach can identify the inherent correlations and patterns among complex datasets, particularly in time-series analysis.

Keywords: Deep learning; Hybrid modelling; Multi-scale features extractions; PM(2.5); Two-stage decomposition.

MeSH terms

  • Air Pollution* / analysis
  • Cities
  • Deep Learning*
  • Environmental Monitoring / methods
  • Particulate Matter / analysis

Substances

  • Particulate Matter