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Cited 35 time in webofscience Cited 36 time in scopus
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Statistical Downscaling Multimodel Forecasts for Seasonal Precipitation and Surface Temperature over the Southeastern United States

Authors
Tian, DiMartinez, Christopher J.Graham, Wendy D.Hwang, Syewoon
Issue Date
Nov-2014
Publisher
American Meteorological Society
Keywords
Teleconnections; Precipitation; Hydrology; Surface temperature; Seasonal forecasting; Ensembles
Citation
Journal of Climate, v.27, no.22, pp 8384 - 8411
Pages
28
Indexed
SCI
SCIE
SCOPUS
Journal Title
Journal of Climate
Volume
27
Number
22
Start Page
8384
End Page
8411
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/18657
DOI
10.1175/JCLI-D-13-00481.1
ISSN
0894-8755
1520-0442
Abstract
This study compared two types of approaches to downscale seasonal precipitation (P) and 2-m air temperature (T2M) forecasts from the North American Multimodel Ensemble (NMME) over the states of Alabama, Georgia, and Florida in the southeastern United States (SEUS). Each NMME model forecast was evaluated. Two multimodel ensemble (MME) schemes were tested by assigning equal weight to all forecast members (SuperEns) or by assigning equal weights to each model's ensemble mean (MeanEns). One type of downscaling approach used was a model output statistics (MOS) method, which was based on direct spatial disaggregation and bias correction of the NMME P and T2M forecasts using the quantile mapping technique [spatial disaggregation with bias correction (SDBC)]. The other type of approach used was a perfect prognosis (PP) approach using nonparametric locally weighted polynomial regression (LWPR) models, which used the NMME forecasts of Nino-3.4 sea surface temperatures (SSTs) to predict local-scale P and T2M. Both SDBC and LWPR downscaled P showed skill in winter but no skill or limited skill in summer at all lead times for all NMME models. The SDBC downscaled T2M were skillful only for the Climate Forecast System, version 2 (CFSv2), model even at far lead times, whereas the LWPR downscaled T2M showed limited skill or no skill for all NMME models. In many cases, the LWPR method showed significantly higher skill than the SDBC. After bias correction, the SuperEns mostly showed higher skill than the MeanEns and most of the single models, but its skill did not outperform the best single model.
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농업생명과학대학 (지역시스템공학과)
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