E. Sánchez-García, Jose Voces-Aboy, B. Navascués, E. Rodríguez‐Camino
{"title":"Regionally improved seasonal forecast of precipitation through Best estimation of winter NAO","authors":"E. Sánchez-García, Jose Voces-Aboy, B. Navascués, E. Rodríguez‐Camino","doi":"10.5194/ASR-16-165-2019","DOIUrl":null,"url":null,"abstract":"Abstract. We describe a methodology for ensemble member's weighting\nof operational seasonal forecasting systems (SFS) based on an enhanced\nprediction of a climate driver strongly affecting meteorological parameters\nover a certain region. We have applied it to the North Atlantic Oscillation\n(NAO) influence on the Iberian Peninsula winter precipitation. The first step in the proposed approach is to find the best estimation of\nwinter NAO. Skill and error characteristics of forecasted winter NAO index\nby different Copernicus SFS are analysed in this study. Based on these\nresults, a bias correction scheme is proposed and implemented for the ECMWF\nSystem 5 ensemble mean of NAO index, and then a modified NAO index pdf based\non Gaussian errors is formulated. Finally, we apply the statistical\nestimation theory to achieve the Best linear unbiased estimate of winter NAO\nindex and its uncertainty. For this purpose, two a priori estimates are\nused: the bias corrected NAO index Gaussian pdf from ECMWF System 5, and a\nskilful winter NAO index prediction based on teleconnection with snow cover\nadvance with normal distributed errors. The second step of the proposed methodology is to employ the enhanced NAO\nindex pdf estimates for ensemble member's weighting of a SFS based on a\nsingle dynamical model. The new NAO pdfs obtained in this work have been\nused to improve the skill of the ECMWF System 5 to predict both NAO index\nand precipitation over the Iberian Peninsula. We show the improvement of NAO\nprediction, and of winter precipitation forecasts over our region of\ninterest, when members are weighted with the bias corrected NAO index\nGaussian pdf based on ECMWF System 5 compared with the usual approach based\non equiprobability of ensemble members. Forecast skill is further enhanced\nif the Best NAO index pdf based on an optimal combination of the two a\npriori NAO index estimates is used for ensemble member's weighting.\n","PeriodicalId":30081,"journal":{"name":"Advances in Science and Research","volume":"6 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2019-08-13","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"7","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Advances in Science and Research","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.5194/ASR-16-165-2019","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"Earth and Planetary Sciences","Score":null,"Total":0}
引用次数: 7
Abstract
Abstract. We describe a methodology for ensemble member's weighting
of operational seasonal forecasting systems (SFS) based on an enhanced
prediction of a climate driver strongly affecting meteorological parameters
over a certain region. We have applied it to the North Atlantic Oscillation
(NAO) influence on the Iberian Peninsula winter precipitation. The first step in the proposed approach is to find the best estimation of
winter NAO. Skill and error characteristics of forecasted winter NAO index
by different Copernicus SFS are analysed in this study. Based on these
results, a bias correction scheme is proposed and implemented for the ECMWF
System 5 ensemble mean of NAO index, and then a modified NAO index pdf based
on Gaussian errors is formulated. Finally, we apply the statistical
estimation theory to achieve the Best linear unbiased estimate of winter NAO
index and its uncertainty. For this purpose, two a priori estimates are
used: the bias corrected NAO index Gaussian pdf from ECMWF System 5, and a
skilful winter NAO index prediction based on teleconnection with snow cover
advance with normal distributed errors. The second step of the proposed methodology is to employ the enhanced NAO
index pdf estimates for ensemble member's weighting of a SFS based on a
single dynamical model. The new NAO pdfs obtained in this work have been
used to improve the skill of the ECMWF System 5 to predict both NAO index
and precipitation over the Iberian Peninsula. We show the improvement of NAO
prediction, and of winter precipitation forecasts over our region of
interest, when members are weighted with the bias corrected NAO index
Gaussian pdf based on ECMWF System 5 compared with the usual approach based
on equiprobability of ensemble members. Forecast skill is further enhanced
if the Best NAO index pdf based on an optimal combination of the two a
priori NAO index estimates is used for ensemble member's weighting.