Effects of coupling a stochastic convective parameterization with the Zhang–McFarlane scheme on precipitation simulation in the DOE E3SMv1.0 atmosphere model
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Published:2021-03-18
Issue:3
Volume:14
Page:1575-1593
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
Wang Yong, Zhang Guang J., Xie Shaocheng, Lin Wuyin, Craig George C., Tang QiORCID, Ma Hsi-YenORCID
Abstract
Abstract. A stochastic deep convection parameterization is implemented into
the US Department of Energy (DOE) Energy Exascale Earth System Model
(E3SM) Atmosphere Model version 1.0 (EAMv1). This study evaluates its
performance in simulating precipitation. Compared to the default model,
the probability distribution function (PDF) of rainfall intensity in the new
simulation is greatly improved. The well-known problem of “too
much light rain and too little heavy rain” is alleviated, especially over the tropics.
As a result, the contribution from different rain rates to the total
precipitation amount is shifted toward heavier rain. The less frequent
occurrence of convection contributes to suppressed light rain, while
more intense large-scale and convective precipitation contributes to
enhanced heavy total rain. The synoptic and intraseasonal variabilities
of precipitation are enhanced as well to be closer to observations. The
sensitivity of the rainfall intensity PDF to the model vertical resolution
is examined. The relationship between precipitation and dilute convective
available potential energy in the stochastic simulation agrees better with
that in the Atmospheric Radiation Measurement (ARM) observations compared
with the standard model simulation. The annual mean precipitation is largely
unchanged with the use of the stochastic scheme except over the tropical
western Pacific, where a moderate increase in precipitation represents a
slight improvement. The responses of precipitation and its extremes to
climate warming are similar with or without the stochastic deep convection
scheme.
Funder
National Natural Science Foundation of China Deutsche Forschungsgemeinschaft Office of Science
Publisher
Copernicus GmbH
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