Parameterization of Physical Processes
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چکیده
modification of the radiative fluxes in the atmosphere and at the Earth’s surface; release and consumption of latent heat related to phase changes of water either directly inside the clouds or in precipitation generated in them; transport of heat, moisture, momentum and atmospheric trace constituents over large distances in the vertical in convectively generated clouds; modification of the surface hydrology through precipitation generated in clouds.
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