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Parameterization of Vertical Cloud Distribution from C3M and MERRA Data Using ML MethodClouds play a key role in regulating the hydrological cycle and the Earth's radiative energy budget. However, global climate models (GCMs) with a horizontal grid spacing on the order of 100 km have limitations in representing sub-grid cloud dynamics with spatial scales on the order of 1 km, leading to potential uncertainties in cloud radiative feedback on the global scale. In our research, we will leverage the capabilities of Deep Machine Learning (DML) methods to construct parameterizations of sub-grid volumetric cloud fraction (VCF), which is the frequency of occurrence on a grid volume accumulated in the horizontal and vertical directions.

Our investigation delves into the intricate relationship between VCF obtained from the NASA CALIPSO-CloudSat-CERES-MODIS (CCCM) satellite observation data and 3-D MERRA-2 reanalysis meteorological profiling data (e.g., wind, relative humidity, temperature). Through a comprehensive one-year data training utilizing the Sequence to Sequence DML method, we have successfully disentangled the complicated cloud formation dynamics across diverse meteorological conditions through a day-to-day analysis framework.
Preliminary findings reveal promising statistical agreements in geographical and vertical distributions and seasonal variations of volumetric cloud fraction between ML prediction and satellite measurements. These results underscore the aptitude of our DML model to discern underlying cloud physical processes and accurately represent sub-grid cloud formation dynamics. Additionally, we have also employed trained neural network to analyze uncertainties arising from errors in meteorological data, further enhancing the robustness of our VCF parameterization.
Document ID
20240006899
Acquisition Source
Langley Research Center
Document Type
Poster
Authors
Shan Zeng
(Coherent Applications Inc. Hampton, VA, USA)
Kuan-Man Xu
(Langley Research Center Hampton, United States)
Yongxiang Hu
(Langley Research Center Hampton, United States)
Date Acquired
May 29, 2024
Subject Category
Earth Resources and Remote Sensing
Meeting Information
Meeting: CALIPSO International Symposium on Spaceborne Lidar
Location: Saint Malo
Country: FR
Start Date: June 4, 2024
End Date: June 6, 2024
Sponsors: Centre National d'Études Spatiales, National Aeronautics and Space Administration
Funding Number(s)
WBS: 967701.02.01.02.91
CONTRACT_GRANT: 80LARC23DA003
Distribution Limits
Public
Copyright
Public Use Permitted.
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