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New AI-Powered Method Maps Aerosol Vertical Distribution Using Hyperspectral Satellite Data

Mar 25, 2025 | By WANG Yuxuan; ZHAO Weiwei

Recently, researchers from Anhui Institute of Optics and Fine Mechanics, the Hefei Institutes of Physical Science of the Chinese Academy of Sciences, has developed a new deep learning–based algorithm that can accurately retrieve the vertical distribution of atmospheric aerosols using hyperspectral satellite data. 

By integrating Long Short-Term Memory and Transformer neural network architectures, their model significantly improves the accuracy of detecting aerosol optical depth (AOD) and aerosol layer height (ALH) from OCO-2 satellite observations.

Their findings were published in the Journal of Selected Topics in Applied Earth Observations and Remote Sensing.

Traditional methods often struggle with retrieving vertical aerosol information due to the high variability of aerosols in both time and space, as well as the complexity of atmospheric interactions.

To address this, the researchers use the high-resolution oxygen A-band data from the OCO-2 satellite, which is especially sensitive to changes in aerosol vertical structure.

To handle the complexity of the spectral data, they introduced a band selection strategy based on physical information content, reducing data dimensionality without sacrificing retrieval accuracy. The model was tested over the African continent and nearby oceans, where aerosol conditions are complex and diverse.

Compared to conventional techniques, the new method demonstrated remarkable improvements. Validation against CALIOP lidar data showed a reduction in RMSE for AOD to just 0.0284 and for ALH to 0.952, which reflected much higher reliability and consistency in aerosol detection.

This research not only improves the quantitative accuracy of aerosol vertical distribution retrieval, but also provides more reliable data support for atmospheric radiative transfer modeling, according to the team.

Band Selection Process Based on Information Content (Image by WANG yuxuan) 

Retrieval Results for AOD and ALH (Image by WANG yuxuan)

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