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首页> 外文期刊>Journal of Climate >Regional interdependency of precipitation indices across Denmark in two ensembles of high-resolution RCMs.
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Regional interdependency of precipitation indices across Denmark in two ensembles of high-resolution RCMs.

机译:在两个高分辨率RCM中,整个丹麦的降水指数在区域上相互依存。

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Outputs from climate models are the primary data source in climate change impact studies. However, their interpretation is not straightforward. In recent years, several methods have been developed in order to quantify the uncertainty in climate projections. One of the common assumptions in almost all these methods is that the climate models are independent. This study addresses the validity of this assumption for two ensembles of regional climate models (RCMs) from the Ensemble-Based Predictions of Climate Changes and their Impacts (ENSEMBLES) project based on the land cells covering Denmark. Daily precipitation indices from an ensemble of RCMs driven by the 40-yr ECMWF Re-Analysis (ERA-40) and an ensemble of the same RCMs driven by different general circulation models (GCMs) are analyzed. Two different methods are used to estimate the amount of independent information in the ensembles. These are based on different statistical properties of a measure of climate model error. Additionally, a hierarchical cluster analysis is carried out. Regardless of the method used, the effective number of RCMs is smaller than the total number of RCMs. The estimated effective number of RCMs varies depending on the method and precipitation index considered. The results also show that the main cause of interdependency in the ensemble is the use of the same RCM driven by different GCMs. This study shows that the precipitation outputs from the RCMs in the ENSEMBLES project cannot be considered independent. If the interdependency between RCMs is not taken into account, the uncertainty in the RCM simulations of current regional climate may be underestimated. This will in turn lead to an underestimation of the uncertainty in future precipitation projections.Digital Object Identifier http://dx.doi.org/10.1175/JCLI-D-12-00707.1
机译:气候模型的输出是气候变化影响研究的主要数据来源。但是,它们的解释并不简单。近年来,已经开发了几种方法来量化气候预测中的不确定性。几乎所有这些方法的共同假设之一是气候模型是独立的。这项研究基于基于覆盖丹麦的陆地细胞的基于集合的气候变化及其影响预测(ENSEMBLES)项目,针对两个集合的区域气候模型(RCM)解决了该假设的有效性。分析了由40年ECMWF重新分析(ERA-40)驱动的RCM集合和由不同的通用循环模型(GCM)驱动的同一RCM集合的每日降水指数。使用两种不同的方法来估计集合中独立信息的数量。这些基于气候模型误差度量的不同统计属性。另外,进行层次聚类分析。无论使用哪种方法,RCM的有效数量都小于RCM的总数。 RCM的估计有效数量取决于所考虑的方法和降水指数。结果还表明,集成中相互依赖的主要原因是使用由不同GCM驱动的同一RCM。这项研究表明,在ENSEMBLES项目中RCM的降水输出不能被认为是独立的。如果不考虑RCM之间的相互依赖性,则可能会低估RCM模拟当前区域气候的不确定性。反过来,这将导致对未来降水预测的不确定性的低估。数字对象标识符http://dx.doi.org/10.1175/JCLI-D-12-00707.1

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