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首页> 外文期刊>Tellus. A >Exploiting An Ensemble Of Regional Climate Modelsto Provide Robust Estimates Of Projected Changes in Monthly Temperature And Precipitation Probability distribution Functions
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Exploiting An Ensemble Of Regional Climate Modelsto Provide Robust Estimates Of Projected Changes in Monthly Temperature And Precipitation Probability distribution Functions

机译:利用区域气候模型集合来提供月度温度和降水概率分布函数的预计变化的可靠估计

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摘要

Regional climate models (RCMs) are dynamical downscaling tools aimed to improve the modelling of local physical processes. Ensembles of RCMs are widely used to improve the coarse-grain estimates of global climate models (GCMs) since the use of several RCMs helps to palliate uncertainties arising from different dynamical cores and numerical schemes methods. In this paper, we analyse the differences and similarities in the climate change response for an ensemble of heterogeneous RCMs forced by one GCM (HadAM3H), and one emissions scenario (IPCC's SRES-A2 scenario). As a difference with previous approaches using PRUDENCE database, the statistical description of climate characteristics is made through the spatial and temporal aggregation of the RCMs outputs into probability distribution functions (PDF) of monthly values. This procedure is a complementary approach to conventional seasonal analyses. Our results provide new, stronger evidence on expected marked regional differences in Europe in the A2 scenario in terms of precipitation and temperature changes. While we found an overall increase in the mean temperature and extreme values, we also found mixed regional differences for precipitation.
机译:区域气候模型(RCM)是动态缩小规模的工具,旨在改善本地物理过程的建模。 RCM的集合被广泛用于改进全球气候模型(GCM)的粗粒度估计,因为使用多个RCM有助于缓解由不同动力核心和数值方案方法引起的不确定性。在本文中,我们分析了由一个GCM(HadAM3H)和一个排放情景(IPCC的SRES-A2情景)迫使的一整套异质RCM对气候变化响应的异同。与以前使用PRUDENCE数据库的方法不同,通过将RCM的输出在空间和时间上聚合为月度值的概率分布函数(PDF),对气候特征进行统计描述。此过程是常规季节性分析的补充方法。我们的结果提供了新的更有力的证据,表明在降水和温度变化方面,A2情景下欧洲的预期区域差异显着。虽然我们发现平均温度和极值总体上有所增加,但我们也发现降水的区域差异混合。

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