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Probabilistic downscaling approaches: Application to wind cumulative distribution functions

机译:概率降尺度方法:应用于风力累积分布函数

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A statistical method is developed to generate local cumulative distribution functions (CDFs) of surface climate variables from large-scale fields. Contrary to most downscaling methods producing continuous time series,our "probabilistic downscaling methods" (PDMs), named " CDF-transform", is designed to deal with and provide localscale CDFs through a transformation applied to large-scale CDFs. First, our PDM is compared to a reference method (Quantile-matching), and validated on a historical time period by downscaling CDFs of wind intensity anomalies over France, for reanalyses and simulations from a general circulation model (GCM). Then, CDF-transform is applied to GCM output fields to project changes in wind intensity anomalies for the 21st century under A2 scenario.Results show a decrease in wind anomalies for most weather stations, ranging from less than 1% (in the South) to nearly 9% (in the North), with a maximum in the Brittany region.
机译:开发了一种统计方法以从大型田地生成地表气候变量的局部累积分布函数(CDF)。与大多数产生连续时间序列的缩减方法相反,我们的“概率缩减方法”(PDM)称为“ CDF变换”,旨在通过应用于大型CDF的转换来处理并提供局部规模的CDF。首先,将我们的PDM与参考方法(分位数匹配)进行比较,并在历史时期内通过对法国风强度异常的CDF进行按比例缩小来进行验证,以进行一般循环模型(GCM)的重新分析和模拟。然后,将CDF变换应用于GCM输出场,以预测A2情景下21世纪风强度异常的变化,结果表明大多数气象站的风距异常有所减少,范围从南部的不到1%到近9%(在北部),布列塔尼地区最多。

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