2020
DOI: 10.1029/2019ms001982
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Improving Time Step Convergence in an Atmosphere Model With Simplified Physics: The Impacts of Closure Assumption and Process Coupling

Abstract: Convergence testing is a common practice in the development of dynamical cores of atmospheric models but is not as often exercised for the parameterization of subgrid physics. An earlier study revealed that the stratiform cloud parameterizations in several predecessors of the Energy Exascale Earth System Model (E3SM) showed strong time step sensitivity and slower-than-expected convergence when the model's time step was systematically refined. In this work, a simplified atmosphere model is configured that consi… Show more

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Cited by 5 publications
(56 citation statements)
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“…Despite the fact that the rate of time step convergence has not been used as a standard metric in the evaluation of physics parameterizations, especially in the context of global simulations, achieving the expected convergence can help to build confidence that the simulations correspond to a correct implementation of the numerical methods. In addition, as is shown here and in Wan et al (2020), poor convergence can be an indicator of nonphysical behavior, and addressing convergence issues can lead to changes in the long-term climate of an AGCM that are sizable and nonnegligible to atmospheric model developers. Finally, proper convergence rates allow global atmospheric models to achieve the expected accuracy gain from time step and grid refinement opportunities provided by upcoming increases in computational power.…”
Section: Introductionmentioning
confidence: 72%
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“…Despite the fact that the rate of time step convergence has not been used as a standard metric in the evaluation of physics parameterizations, especially in the context of global simulations, achieving the expected convergence can help to build confidence that the simulations correspond to a correct implementation of the numerical methods. In addition, as is shown here and in Wan et al (2020), poor convergence can be an indicator of nonphysical behavior, and addressing convergence issues can lead to changes in the long-term climate of an AGCM that are sizable and nonnegligible to atmospheric model developers. Finally, proper convergence rates allow global atmospheric models to achieve the expected accuracy gain from time step and grid refinement opportunities provided by upcoming increases in computational power.…”
Section: Introductionmentioning
confidence: 72%
“…As in the companion paper by Wan et al (2020), this work demonstrates the key methodology using a simplified global AGCM that considers only the fluid dynamics (dynamical core) and its interaction with the large-scale condensation of water vapor (or reversely, the evaporation of cloud liquid). Other physical processes typically included in an AGCM, such as radiation and cloud microphysics, are not present.…”
Section: Overview Of Methodologymentioning
confidence: 92%
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