Development of an empirical model for seasonal forecasting over the Mediterranean

Q2 Earth and Planetary Sciences Advances in Science and Research Pub Date : 2019-08-26 DOI:10.5194/asr-16-191-2019
Esteban Rodríguez-Guisado, Antonio Ángel Serrano-de la Torre, E. Sánchez-García, Marta Domínguez-Alonso, E. Rodríguez‐Camino
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引用次数: 1

Abstract

Abstract. In the frame of MEDSCOPE project, which mainly aims at improving predictability on seasonal timescales over the Mediterranean area, a seasonal forecast empirical model making use of new predictors based on a collection of targeted sensitivity experiments is being developed. Here, a first version of the model is presented. This version is based on multiple linear regression, using global climate indices (mainly global teleconnection patterns and indices based on sea surface temperatures, as well as sea-ice and snow cover) as predictors. The model is implemented in a way that allows easy modifications to include new information from other predictors that will come as result of the ongoing sensitivity experiments within the project. Given the big extension of the region under study, its high complexity (both in terms of orography and land-sea distribution) and its location, different sub regions are affected by different drivers at different times. The empirical model makes use of different sets of predictors for every season and every sub region. Starting from a collection of 25 global climate indices, a few predictors are selected for every season and every sub region, checking linear correlation between predictands (temperature and precipitation) and global indices up to one year in advance and using moving averages from two to six months. Special attention has also been payed to the selection of predictors in order to guaranty smooth transitions between neighbor sub regions and consecutive seasons. The model runs a three-month forecast every month with a one-month lead time.
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地中海季节性预报经验模式的发展
摘要在MEDSCOPE项目的框架内,主要目的是提高地中海地区季节性时间尺度的可预测性,利用基于目标敏感性实验收集的新预测因子,正在开发一个季节性预测经验模型。这里给出了模型的第一个版本。该版本基于多元线性回归,使用全球气候指数(主要是全球遥相关模式和基于海面温度以及海冰和积雪的指数)作为预测因子。该模型以一种易于修改的方式实现,以包含来自其他预测器的新信息,这些信息将作为项目中正在进行的敏感性实验的结果。由于研究区域幅员辽阔、地形地貌和海陆分布复杂、地理位置优越,不同子区域在不同时间受到不同驱动因素的影响。该经验模型对每个季节和每个子区域使用不同的预测因子集。从25个全球气候指数的集合开始,为每个季节和每个次区域选择一些预测因子,提前一年检查预测因子(温度和降水)与全球指数之间的线性相关性,并使用2至6个月的移动平均值。还特别注意预测因子的选择,以保证相邻次区域和连续季节之间的平稳过渡。该模型每月运行一个为期三个月的预测,提前一个月。
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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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