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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Observational uncertainty and regional climate model evaluation: A pan‐European perspective
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Observational uncertainty and regional climate model evaluation: A pan‐European perspective

机译:观察性不确定性与区域气候模型评估:泛欧透视

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摘要

>The influence of uncertainties in gridded observational reference data on regional climate model (RCM) evaluation is quantified on a pan‐European scale. Three different reference data sets are considered: the coarse‐resolved E‐OBS data set, a compilation of regional high‐resolution gridded products (HR) and the European‐scale MESAN reanalysis. Five high‐resolution ERA‐Interim‐driven RCM experiments of the EURO‐CORDEX initiative are evaluated against each of these references over eight European sub‐regions and considering a range of performance metrics for mean daily temperature and daily precipitation. The spatial scale of the evaluation is 0.22°, that is, the grid spacing of the coarsest data set in the exercise (E‐OBS). While the three reference grids agree on the overall mean climatology, differences can be pronounced over individual regions. These differences partly translate into RCM evaluation uncertainty. For most cases observational uncertainty is smaller than RCM uncertainty. Nevertheless, for individual sub‐regions and performance metrics observational uncertainty can dominate. This is especially true for precipitation and for metrics targeting the wet‐day frequency, the pattern correlation and the distributional similarity. In some cases the spatially averaged mean bias can also be considerably affected. An illustrative ranking exercise highlights the overall effect of observational uncertainty on RCM ranking. Over individual sub‐domains, the choice of a specific reference can modify RCM ranks by up to four levels (out of five RCMs). For most cases, however, RCM ranks are stable irrespective of the reference. These results provide a twofold picture: model uncertainty dominates for most regions and for most performance metrics considered, and observational uncertainty plays a minor role. For individual cases, however, observational uncertainty can be pronounced and needs to be definitely taken
机译: >在泛欧规模上量化了关于区域气候模型(RCM)评估的网格化观察参考数据中不确定性的影响。考虑了三种不同的参考数据集:粗分辨的E-OB数据集,汇编区域高分辨率网格产品(HR)和欧洲规模的Mesan Reanaly分析。五个高分辨率ERA-Interim驱动的RCM实验欧洲驯型倡议进行了八个欧洲地区的每一参考,并考虑了一系列性能指标,用于平均每日温度和每日降水。评估的空间尺度为0.22°,即,练习中最粗糙的数据的网格间距(E-OBS)。虽然三个参考网格对整体平均气候学同意,但各个地区的差异可以发音。这些差异部分转化为RCM评估不确定性。对于大多数情况,观测性不确定性小于RCM不确定性。尽管如此,对于个体子区域和性能指标观察不确定性可以占主导地位。诸如降水和针对潮湿的频率的度量,模式相关性和分布相似度尤其如此。在某些情况下,空间平均平均偏差也可以显着影响。说明性排名运动突出了观察性不确定性对RCM排名的总体影响。在单个子域上,特定参考的选择可以通过多达四个级别修改RCM等级(五个RCMS)。然而,对于大多数情况,无论参考如何,RCM等级都是稳定的。这些结果提供了一个双重图片:模型不确定性为大多数地区主导,对于大多数绩效指标考虑,并且观测的不确定性起着小的作用。然而,对于个体案例,观察性不确定性可以明确,需要肯定被采取

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