globalchange  > 气候变化事实与影响
DOI: 10.1175/JCLI-D-15-0903.1
Scopus记录号: 2-s2.0-85010868664
论文题名:
ENSO precipitation and temperature forecasts in the North American multimodel ensemble: Composite analysis and validation
作者: Chen L.-C.; van den Dool H.; Becker E.; Zhang Q.
刊名: Journal of Climate
ISSN: 8948755
出版年: 2017
卷: 30, 期:3
起始页码: 1103
结束页码: 1125
语种: 英语
Scopus关键词: Aggregates ; Atmospheric pressure ; Climatology ; Mean square error ; Nickel ; Probability ; Weather forecasting ; Climate prediction ; Ensembles ; ENSO ; Forecast verification/skill ; Hindcasts ; Numerical weather prediction/forecasting ; Forecasting ; air temperature ; climate prediction ; El Nino-Southern Oscillation ; ensemble forecasting ; hindcasting ; numerical model ; precipitation (climatology) ; weather forecasting ; North America
英文摘要: In this study, precipitation and temperature forecasts during El Niño-Southern Oscillation (ENSO) events are examined in six models in the North American Multimodel Ensemble (NMME), including the CFSv2, CanCM3, CanCM4, the Forecast-Oriented Low Ocean Resolution (FLOR) version of GFDL CM2.5, GEOS-5, and CCSM4 models, by comparing the model-based ENSO composites to the observed. The composite analysis is conducted using the 1982-2010 hindcasts for each of the six models with selected ENSO episodes based on the seasonal oceanic Niño index just prior to the date the forecasts were initiated. Two types of composites are constructed over the North American continent: one based on mean precipitation and temperature anomalies and the other based on their probability of occurrence in a tercile-based system. The composites apply to monthly mean conditions in November, December, January, February, and March as well as to the 5-month aggregates representing the winter conditions. For anomaly composites, the anomaly correlation coefficient and root-mean-square error against the observed composites are used for the evaluation. For probability composites, a new probability anomaly correlation measure and a root-mean probability score are developed for the assessment. All NMME models predict ENSO precipitation patterns well during wintertime; however, some models have large discrepancies between the model temperature composites and the observed. The fidelity is greater for the multimodel ensemble as well as for the 5-month aggregates. February tends to have higher scores than other winter months. For anomaly composites, most models perform slightly better in predicting El Niño patterns than La Niña patterns. For probability composites, all models have superior performance in predicting ENSO precipitation patterns than temperature patterns.
资助项目: NASA, National Aeronautics and Space Administration ; NOAA, National Oceanic and Atmospheric Administration ; NSF, Norsk Sykepleierforbund
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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/49855
Appears in Collections:气候变化事实与影响

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作者单位: Earth System Science Interdisciplinary Center/Cooperative Institute for Climate and Satellites, University of Maryland, College Park, MD, United States; Climate Prediction Center, NOAA/NWS/NCEP, College Park, MD, United States; Innovim LLC, Greenbelt, MD, United States

Recommended Citation:
Chen L.-C.,van den Dool H.,Becker E.,et al. ENSO precipitation and temperature forecasts in the North American multimodel ensemble: Composite analysis and validation[J]. Journal of Climate,2017-01-01,30(3)
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