Regionally improved seasonal forecast of precipitation through Best estimation of winter NAO

Q2 Earth and Planetary Sciences
E. Sánchez-García, Jose Voces-Aboy, B. Navascués, E. Rodríguez‐Camino
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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.
利用冬季NAO最佳估计改进区域降水季节预报
摘要我们描述了一种基于对某一地区强烈影响气象参数的气候驱动因素的增强预测的操作性季节预报系统(SFS)的集合成员加权方法。将其应用于北大西洋涛动(NAO)对伊比利亚半岛冬季降水的影响。该方法的第一步是找到冬季NAO的最佳估计。分析了不同哥白尼SFS预测冬季NAO指数的技巧和误差特征。在此基础上,提出并实现了ECMWFSystem 5系统NAO指数集合均值的偏差校正方案,并在此基础上建立了基于高斯误差的修正NAO指数pdf。最后,应用统计估计理论对冬季NAOindex及其不确定性进行了最佳线性无偏估计。为此,使用了两个先验估计:ECMWF系统5的偏差校正后的NAO指数高斯pdf,以及基于积雪覆盖的遥相关正态分布误差的冬季NAO指数预测。该方法的第二步是采用改进的NAOindex pdf估计基于单个动态模型的SFS集成成员的权重。这项工作获得的新的NAO pdf格式已用于提高ECMWF系统5预测NAO指数和伊比利亚半岛降水的技能。与基于集合成员等概率的通常方法相比,当使用基于ECMWF System 5的偏差校正后的NAO指数高斯pdf对成员进行加权时,我们展示了naao预测的改进,以及我们感兴趣区域的冬季降水预报。基于两个先验NAO指数估计最优组合的最佳NAO指数pdf用于集合成员的加权,进一步提高了预测技能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advances in Science and Research
Advances in Science and Research Earth and Planetary Sciences-Geophysics
CiteScore
4.10
自引率
0.00%
发文量
13
审稿时长
22 weeks
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