A multi-year short-range hindcast experiment with CESM1 for evaluating climate model moist processes from diurnal to interannual timescales
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Published:2021-01-07
Issue:1
Volume:14
Page:73-90
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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:
Ma Hsi-YenORCID, Zhou Chen, Zhang Yunyan, Klein Stephen A., Zelinka Mark D.ORCID, Zheng Xue, Xie Shaocheng, Chen Wei-TingORCID, Wu Chien-MingORCID
Abstract
Abstract. We present a multi-year short-range hindcast experiment
and its experimental design for better evaluation of both the mean state and
variability of atmospheric moist processes in climate models from diurnal to
interannual timescales and facilitate model development. We used the
Community Earth System Model version 1 as the base model and performed a
suite of 3 d hindcasts initialized every day starting at 00:00 Z from 1997 to
2012. Three processes – the diurnal cycle of clouds during different cloud
regimes over the central US, precipitation and diabatic heating associated
with the Madden–Julian Oscillation (MJO), and the response of precipitation,
surface radiative and heat fluxes, as well as zonal wind stress to sea
surface temperature anomalies associated with the El Niño–Southern
Oscillation – are evaluated as examples to demonstrate how one can better
utilize simulations from this experiment to gain insights into model errors
and their connection to physical parameterizations or large-scale state.
This is achieved by comparing the hindcasts with corresponding long-term
observations for periods based on different phenomena. These analyses can
only be done through this multi-year hindcast approach to establish robust
statistics of the processes under well-controlled large-scale environment
because these phenomena are either a result of interannual climate variability or only
happen a few times in a given year (e.g., MJO, or cloud regime types).
Furthermore, comparison of hindcasts to the typical simulations in climate
mode with the same model allows one to infer what portion of a model's
climate error directly comes from fast errors in the parameterizations of
moist processes. As demonstrated here, model biases in the mean state and
variability associated with parameterized moist processes usually develop
within a few days and manifest within weeks to affect the simulations of
large-scale circulation and ultimately the climate mean state and
variability. Therefore, model developers can achieve additional useful
understanding of the underlying problems in model physics by conducting a
multi-year hindcast experiment.
Publisher
Copernicus GmbH
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