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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Validation of spatial variability in downscaling results from the VALUE perfect predictor experiment
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Validation of spatial variability in downscaling results from the VALUE perfect predictor experiment

机译:验证价值完美预测器实验的缩小结果中的空间变异性

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摘要

>The spatial dependence of meteorological variables is crucial for many impacts, for example, droughts, floods, river flows, energy demand, and crop yield. There is thus a need to understand how well it is represented in downscaling (DS) products. Within the COST Action VALUE, we have conducted a comprehensive analysis of spatial variability in the output of over 40 different DS methods in a perfect predictor setup. The DS output is evaluated against daily precipitation and temperature observations for the period 1979–2008 at 86 sites across Europe and 53 sites across Germany. We have analysed the dependency of correlations of daily temperature and precipitation series at station pairs on the distance between the stations. For the European data set, we have also investigated the complexity of the downscaled data by calculating the number of independent spatial degrees of freedom. For daily precipitation at the German network, we have additionally evaluated the dependency of the joint exceedance of the wet day threshold and of the local 90th percentile on the distance between the stations. Finally, we have investigated regional patterns of European monthly precipitation obtained from rotated principal component analysis. >We analysed Perfect Prog (PP) methods, which are based on statistical relationships derived from observations, as well as Model Output Statistics (MOS) approaches, which attempt to correct simulated variables. In summary, we found that most PP DS methods, with the exception of multisite analog methods and a method that explicitly models spatial dependence yield unrealistic spatial characteristics. Regional climate model‐based MOS methods showed good performance with respect to correlation lengths and the joint occurrence of wet days, but a substantial overestimation of the joint occurrence of heavy precipitation events. These findings apply to the spatial scales that are resolved by our o
机译: >气象变量的空间依赖性对于许多影响,例如干旱,洪水,河流,能源需求和作物产量至关重要。因此,需要了解它在缩小(DS)产品中所代表的程度。在成本行动价值中,我们在完美的预测器设置中对输出量的空间变异进行了全面的分析。 DS输出在欧洲跨越86个站点的86个地点,评估DS输出。我们已经分析了在站对在车站之间的距离上的日常温度和降水系列的相关性的依赖性。对于欧洲数据集,我们还通过计算独立的空间自由度的数量来调查次要数据的复杂性。对于德国网络的日降水,我们还在评估了关节超越湿日阈值和局部90百分位数的依赖性在站之间的距离。最后,我们研究了从旋转的主要成分分析中获得的欧洲月度降水的区域模式。 >我们分析了完美的PROG(PP)方法,该方法基于从观察结果的统计关系,以及模型输出统计数据(MOS)方法,试图纠正模拟变量。总之,我们发现大多数PP DS方法,除了多路模拟方法和一种明确模型空间依赖性产生不切实际的空间特征的方法之外。基于区域气候模型的MOS方法表现出具有良好的性能,涉及相关长度和潮湿的日子的关节发生,而是大大高估了重度降水事件的关节发生。这些调查结果适用于我们的o解决的空间尺度

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