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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Evaluation and improvement of tail behaviour in the cumulative distribution function transform downscaling method
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Evaluation and improvement of tail behaviour in the cumulative distribution function transform downscaling method

机译:累积分布函数变换缩小方法中尾部行为的评估与改进

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>The cumulative distribution function transform (CDFt) downscaling method has been used widely to provide local‐scale information and bias correction to output from physical climate models. The CDFt approach is one from the category of statistical downscaling methods that operates via transformations between statistical distributions. Although numerous studies have demonstrated that such methods provide value overall, much less effort has focused on their performance with regard to values in the tails of distributions. We evaluate the performance of CDFt‐generated tail values based on four distinct approaches, two native to CDFt and two of our own creation, in the context of a “Perfect Model” setting in which global climate model output is used as a proxy for both observational and model data. We find that the native CDFt approaches can have sub‐optimal performance in the tails, particularly with regard to the maximum value. However, our alternative approaches provide substantial improvement.
机译: >累积分布函数变换(CDFT)缩小方法已广泛用于提供本地尺度信息和偏置校正,从物理气候模型输出。 CDFT方法是来自统计缩小方法的类别之一,通过统计分布之间的转换运行。虽然许多研究表明,这种方法提供了总体的价值,但在分布尾的价值方面,努力的努力重点少。在“完美模型”设置的背景下,我们评估基于四个不同的方法,两个原产于CDFT和两个创作的三个不同的方法和两个创作的性能。观察和模型数据。我们发现本机CDFT方法可以在尾部具有次优性能,特别是关于最大值。但是,我们的替代方法提供了大量的改进。

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