Balanced estimate and uncertainty assessment of European climate change using the large EURO-CORDEX regional climate model ensemble

G. Évin, S. Somot, B. Hingray
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引用次数: 22

Abstract

Abstract. Large Multiscenarios Multimodel Ensembles (MMEs) of regional climate model (RCM) experiments driven by Global Climate Models (GCM) are made available worldwide and aim at providing robust estimates of climate changes and associated uncertainties. Due to many missing combinations of emission scenarios and climate models leading to sparse Scenario-GCM-RCM matrices, these large ensembles are however very unbalanced, which makes uncertainty analyses impossible with standard approaches. In this paper, the uncertainty assessment is carried out by applying an advanced statistical approach, called QUALYPSO, to a very large ensemble of 87 EURO-CORDEX climate projections, the largest ensemble ever produced for regional projections in Europe. This analysis provides i) the most up-to-date and balanced estimates of mean changes for near-surface temperature and precipitation in Europe, ii) the total uncertainty of projections and its partition as a function of time, and iii) the list of the most important contributors to the model uncertainty. For changes of total precipitation and mean temperature in winter (DJF) and summer (JJA), the uncertainty due to RCMs can be as large as the uncertainty due to GCMs at the end of the century (2071–2099). Both uncertainty sources are mainly due to a small number of individual models clearly identified. Due to the highly unbalanced character of the MME, mean estimated changes can drastically differ from standard average estimates based on the raw ensemble of opportunity. For the RCP4.5 emission scenario in Central-Eastern Europe for instance, the difference between balanced and direct estimates are up to 0.8 °C for summer temperature changes and up to 20 % for summer precipitation changes at the end of the century.
利用大型EURO-CORDEX区域气候模式集对欧洲气候变化的平衡估计和不确定性评估
摘要由全球气候模式(GCM)驱动的区域气候模式(RCM)试验的大型多情景多模式集成(MMEs)在全球范围内可用,旨在提供对气候变化和相关不确定性的可靠估计。由于缺乏排放情景和气候模式的组合,导致稀疏的情景- gcm - rcm矩阵,这些大集合非常不平衡,这使得不确定性分析无法用标准方法进行。在本文中,不确定性评估是通过一种称为QUALYPSO的先进统计方法,对一个由87个EURO-CORDEX气候预估组成的非常大的集合进行的,这是迄今为止为欧洲区域预估制作的最大的集合。该分析提供了i)欧洲近地表温度和降水平均变化的最新和最平衡的估计,ii)预估的总不确定性及其作为时间函数的划分,以及iii)模式不确定性的最重要贡献者列表。对于冬季(DJF)和夏季(JJA)总降水量和平均气温的变化,rcm的不确定性可与本世纪末(2071-2099)gcm的不确定性相当。这两种不确定性来源主要是由于少数明确确定的单个模式。由于MME的高度不平衡特征,估计的平均变化可能与基于原始机会集合的标准平均估计有很大不同。例如,对于中欧-东欧的RCP4.5排放情景,本世纪末夏季温度变化的平衡估计值与直接估计值之间的差异高达0.8°C,夏季降水变化的差异高达20%。
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