2023
DOI: 10.5194/acp-23-375-2023
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Capturing synoptic-scale variations in surface aerosol pollution using deep learning with meteorological data

Abstract: Abstract. The estimation of daily variations in aerosol concentrations using meteorological data is meaningful and challenging, given the need for accurate air quality forecasts and assessments. In this study, a 3×50-layer spatiotemporal deep learning (DL) model is proposed to link synoptic variations in aerosol concentrations and meteorology, thereby building a “deep” Weather Index for Aerosols (deepWIA). The model was trained and validated using 7 years of data and tested in January–April 2022. The index suc… Show more

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