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Evaluation of the skill of North-American multi-model ensemble (NMME) global climate models in predicting average and extreme precipitation and temperature over the continental USA

This paper examines the forecasting skill of eight Global Climate Models (GCMs) from the North-American Multi-Model Ensemble (NMME) project (CCSM3, CCSM4, CanCM3, CanCM4, GFDL2.1, FLORb01, GEOS5, and CFSv2) over seven major regions of the continental United States. The skill of the monthly forecasts...

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Main Authors: Louise Slater, Gabriele Villarini, Allen Bradley
Format: Default Article
Published: 2016
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Online Access:https://hdl.handle.net/2134/23996
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author Louise Slater
Gabriele Villarini
Allen Bradley
author_facet Louise Slater
Gabriele Villarini
Allen Bradley
author_sort Louise Slater (3363527)
collection Figshare
description This paper examines the forecasting skill of eight Global Climate Models (GCMs) from the North-American Multi-Model Ensemble (NMME) project (CCSM3, CCSM4, CanCM3, CanCM4, GFDL2.1, FLORb01, GEOS5, and CFSv2) over seven major regions of the continental United States. The skill of the monthly forecasts is quantified using the mean square error skill score. This score is decomposed to assess the accuracy of the forecast in the absence of biases (potential skill) and in the presence of conditional (slope reliability) and unconditional (standardized mean error) biases. We summarize the forecasting skill of each model according to the initialization month of the forecast and lead time, and test the models’ ability to predict extended periods of extreme climate conducive to eight ‘billion-dollar’ historical flood and drought events. Results indicate that the most skillful predictions occur at the shortest lead times and decline rapidly thereafter. Spatially, potential skill varies little, while actual model skill scores exhibit strong spatial and seasonal patterns primarily due to the unconditional biases in the models. The conditional biases vary little by model, lead time, month, or region. Overall, we find that the skill of the ensemble mean is equal to or greater than that of any of the individual models. At the seasonal scale, the drought events are better forecasted than the flood events, and are predicted equally well in terms of high temperature and low precipitation. Overall, our findings provide a systematic diagnosis of the strengths and weaknesses of the eight models over a wide range of temporal and spatial scales.
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spelling rr-article-94846162016-08-04T00:00:00Z Evaluation of the skill of North-American multi-model ensemble (NMME) global climate models in predicting average and extreme precipitation and temperature over the continental USA Louise Slater (3363527) Gabriele Villarini (557015) Allen Bradley (7190492) Atmospheric sciences not elsewhere classified Oceanography not elsewhere classified Other earth sciences not elsewhere classified Seasonal forecasting NMME Flood Drought Multi-model ensemble Model biases Earth Sciences not elsewhere classified Oceanography Atmospheric Sciences This paper examines the forecasting skill of eight Global Climate Models (GCMs) from the North-American Multi-Model Ensemble (NMME) project (CCSM3, CCSM4, CanCM3, CanCM4, GFDL2.1, FLORb01, GEOS5, and CFSv2) over seven major regions of the continental United States. The skill of the monthly forecasts is quantified using the mean square error skill score. This score is decomposed to assess the accuracy of the forecast in the absence of biases (potential skill) and in the presence of conditional (slope reliability) and unconditional (standardized mean error) biases. We summarize the forecasting skill of each model according to the initialization month of the forecast and lead time, and test the models’ ability to predict extended periods of extreme climate conducive to eight ‘billion-dollar’ historical flood and drought events. Results indicate that the most skillful predictions occur at the shortest lead times and decline rapidly thereafter. Spatially, potential skill varies little, while actual model skill scores exhibit strong spatial and seasonal patterns primarily due to the unconditional biases in the models. The conditional biases vary little by model, lead time, month, or region. Overall, we find that the skill of the ensemble mean is equal to or greater than that of any of the individual models. At the seasonal scale, the drought events are better forecasted than the flood events, and are predicted equally well in terms of high temperature and low precipitation. Overall, our findings provide a systematic diagnosis of the strengths and weaknesses of the eight models over a wide range of temporal and spatial scales. 2016-08-04T00:00:00Z Text Journal contribution 2134/23996 https://figshare.com/articles/journal_contribution/Evaluation_of_the_skill_of_North-American_multi-model_ensemble_NMME_global_climate_models_in_predicting_average_and_extreme_precipitation_and_temperature_over_the_continental_USA/9484616 CC BY-NC-ND 4.0
spellingShingle Atmospheric sciences not elsewhere classified
Oceanography not elsewhere classified
Other earth sciences not elsewhere classified
Seasonal forecasting
NMME
Flood
Drought
Multi-model ensemble
Model biases
Earth Sciences not elsewhere classified
Oceanography
Atmospheric Sciences
Louise Slater
Gabriele Villarini
Allen Bradley
Evaluation of the skill of North-American multi-model ensemble (NMME) global climate models in predicting average and extreme precipitation and temperature over the continental USA
title Evaluation of the skill of North-American multi-model ensemble (NMME) global climate models in predicting average and extreme precipitation and temperature over the continental USA
title_full Evaluation of the skill of North-American multi-model ensemble (NMME) global climate models in predicting average and extreme precipitation and temperature over the continental USA
title_fullStr Evaluation of the skill of North-American multi-model ensemble (NMME) global climate models in predicting average and extreme precipitation and temperature over the continental USA
title_full_unstemmed Evaluation of the skill of North-American multi-model ensemble (NMME) global climate models in predicting average and extreme precipitation and temperature over the continental USA
title_short Evaluation of the skill of North-American multi-model ensemble (NMME) global climate models in predicting average and extreme precipitation and temperature over the continental USA
title_sort evaluation of the skill of north-american multi-model ensemble (nmme) global climate models in predicting average and extreme precipitation and temperature over the continental usa
topic Atmospheric sciences not elsewhere classified
Oceanography not elsewhere classified
Other earth sciences not elsewhere classified
Seasonal forecasting
NMME
Flood
Drought
Multi-model ensemble
Model biases
Earth Sciences not elsewhere classified
Oceanography
Atmospheric Sciences
url https://hdl.handle.net/2134/23996