High spatiotemporal resolution estimation of AOD from Himawari-8 using an ensemble machine learning gap-filling method

Sci Total Environ. 2023 Jan 20;857(Pt 3):159673. doi: 10.1016/j.scitotenv.2022.159673. Epub 2022 Oct 23.

Abstract

The data incompleteness of aerosol optical depth (AOD) products and their lack of availability in highly urbanized areas limit their great potential of application in air quality research. In this study, we developed an ensemble machine-learning approach that integrated random forest-based Space Interpolation Model (SIM) and deep neural network-based Time Interpolation Model (TIM) to achieve high spatiotemporal resolution dataset of AOD. The spatial interpolation model first filled the spatial gaps in the Level-2 Himawari-8 hourly AOD product in 0.05° (∼5 km) spatial resolution, while the time interpolation model further improved the temporal resolution to 10 min on its basis. A full-coverage AOD dataset of Beijing-Tianjin-Hebei (BTH), Yangtze River Delta (YRD) and Pearl River Delta (PRD) in 2020 was obtained as a practical implementation. The validation against in-situ AOD observations from AERONET and SONET indicated that this new dataset was satisfactory (R = 0.80), and especially in spring and summer. Overall, our ensemble machine-learning model provided an effective scheme for reconstruction of AOD with high spatiotemporal resolution of 0.05° and 10 min, which may further advance the near-real-time monitoring of air-quality in urban areas.

Keywords: Aerosol optical depth; Himawari-8; Machine learning; Satellite remote sensing.

MeSH terms

  • Aerosols / analysis
  • Air Pollutants* / analysis
  • Air Pollution* / analysis
  • Environmental Monitoring / methods
  • Machine Learning
  • Particulate Matter / analysis

Substances

  • Particulate Matter
  • Air Pollutants
  • Aerosols