A Machine Learning Parameterization of Clouds in a Coarse‐Resolution Climate Model for Unbiased Radiation
Brian Henn,
Yakelyn R. Jauregui,
Spencer K. Clark
et al.
Abstract:Coarse‐grid weather and climate models rely particularly on parameterizations of cloud fields, and coarse‐grained cloud fields from a fine‐grid reference model are a natural target for a machine‐learned parameterization. We machine‐learn the coarsened‐fine cloud properties as a function of coarse‐grid model state in each grid cell of NOAA's FV3GFS global atmosphere model with 200 km grid spacing, trained using a 3 km fine‐grid reference simulation with a modified version of FV3GFS. The ML outputs are coarsened… Show more
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