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A Single-column Model Ensemble Approach Applied to the TWP-ICE ExperimentSingle-column models (SCM) are useful test beds for investigating the parameterization schemes of numerical weather prediction and climate models. The usefulness of SCM simulations are limited, however, by the accuracy of the best estimate large-scale observations prescribed. Errors estimating the observations will result in uncertainty in modeled simulations. One method to address the modeled uncertainty is to simulate an ensemble where the ensemble members span observational uncertainty. This study first derives an ensemble of large-scale data for the Tropical Warm Pool International Cloud Experiment (TWP-ICE) based on an estimate of a possible source of error in the best estimate product. These data are then used to carry out simulations with 11 SCM and two cloud-resolving models (CRM). Best estimate simulations are also performed. All models show that moisture-related variables are close to observations and there are limited differences between the best estimate and ensemble mean values. The models, however, show different sensitivities to changes in the forcing particularly when weakly forced. The ensemble simulations highlight important differences in the surface evaporation term of the moisture budget between the SCM and CRM. Differences are also apparent between the models in the ensemble mean vertical structure of cloud variables, while for each model, cloud properties are relatively insensitive to forcing. The ensemble is further used to investigate cloud variables and precipitation and identifies differences between CRM and SCM particularly for relationships involving ice. This study highlights the additional analysis that can be performed using ensemble simulations and hence enables a more complete model investigation compared to using the more traditional single best estimate simulation only.
Document ID
20140010891
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
External Source(s)
Authors
Davies, L.
(Monash Univ. Melbourne, Australia)
Jakob, C.
(Monash Univ. Melbourne, Australia)
Cheung, K.
(Bureau of Meteorology Melbourne, Australia)
DelGenio, A.
(NASA Goddard Inst. for Space Studies New York, NY, United States)
Hill, A.
(Met Office (Meteorological Office) Devon, United Kingdom)
Hume, T.
(Bureau of Meteorology Melbourne, Australia)
Keane, R. J.
(Ludwig-Maximilians-Univ. Munich, Germany)
Komori, T.
(Japan Meteorological Agency Tokyo, Japan)
Larson, V. E.
(Wisconsin Univ. Milwaukee, WI, United States)
Lin, Y.
(University Corp. for Atmospheric Research Boulder, CO, United States)
Liu, X.
(Pacific Northwest National Lab. Richland, WA, United States)
Nielsen, B. J.
(Wisconsin Univ. Milwaukee, WI, United States)
Petch, J.
(Met Office (Meteorological Office) Devon, United Kingdom)
Plant, R. S.
(Reading Univ. United Kingdom)
Singh, M. S.
(Massachusetts Inst. of Tech. Cambridge, MA, United States)
Shi, X.
(Pacific Northwest National Lab. Richland, WA, United States)
Song, X.
(California Univ. San Diego, CA, United States)
Wang, W.
(National Centers for Environmental Prediction Silver Spring, MD, United States)
Whithall, M. A.
(Reading Univ. United Kingdom)
Wolf, A.
(Columbia Univ. New York, NY, United States)
Xie, S.
(Lawrence Livermore National Lab. Livermore, CA, United States)
Zhang, G.
(California Univ. San Diego, CA, United States)
Date Acquired
August 20, 2014
Publication Date
June 27, 2013
Publication Information
Publication: Journal of Geophysical Research-Atmospheres
Publisher: Wiley
Volume: 118
Issue: 12
Subject Category
Earth Resources And Remote Sensing
Meteorology And Climatology
Report/Patent Number
GSFC-E-DAA-TN14997
Funding Number(s)
CONTRACT_GRANT: NSF AGS-0968640
CONTRACT_GRANT: DOE DESC0006927
CONTRACT_GRANT: DOE DESC0002731
CONTRACT_GRANT: DOE DE-AC52-07NA27344
CONTRACT_GRANT: DOE DE-AC06-76RLO1830
CONTRACT_GRANT: DOE DESC0008668
Distribution Limits
Public
Copyright
Public Use Permitted.
Keywords
numerical weather forecasting
parameterization
simulation
tropical regions
errors
climate models
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