A global land aerosol fine-mode fraction dataset (2001–2020) retrieved from MODIS using hybrid physical and deep learning approaches
<p>The aerosol fine-mode fraction (FMF) is valuable for discriminating natural aerosols from anthropogenic ones. However, most current satellite-based FMF products are highly unreliable over land. Here, we developed a new satellite-based global land daily FMF dataset (Phy-DL FMF) by synergizin...
Main Authors: | X. Yan, Z. Zang, Z. Li, N. Luo, C. Zuo, Y. Jiang, D. Li, Y. Guo, W. Zhao, W. Shi, M. Cribb |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2022-03-01
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Series: | Earth System Science Data |
Online Access: | https://essd.copernicus.org/articles/14/1193/2022/essd-14-1193-2022.pdf |
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