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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Process‐based evaluation of the VALUE perfect predictor experiment of statistical downscaling methods
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Process‐based evaluation of the VALUE perfect predictor experiment of statistical downscaling methods

机译:基于过程的统计缩小方法的完美预测器实验的基于过程的评估

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>Statistical downscaling methods (SDMs) are techniques used to downscale and/or bias‐correct climate model results to regional or local scales. The European network VALUE developed a framework to evaluate and inter‐compare SDMs. One of VALUE's experiments is the perfect predictor experiment that uses reanalysis predictors to isolate downscaling skill. Most evaluation papers for SDMs employ simple statistical diagnostics and do not follow a process‐based rationale. Thus, in this paper, a process‐based evaluation has been conducted for the more than 40 participating model output statistics (MOS, mostly bias correction) and perfect prognosis (PP) methods, for temperature and precipitation at 86 weather stations across Europe. >The SDMs are analysed following the so‐called “regime‐oriented” technique, focussing on relevant features of the atmospheric circulation at large to local scales. These features comprise the North Atlantic Oscillation, blocking and selected Lamb weather types and at local scales the bora wind and the western Iberian coastal‐low level jet. >The representation of the local weather response to the selected features depends strongly on the method class. As expected, MOS is unable to generate process sensitivity when it is not simulated by the predictors (ERA‐Interim). Moreover, MOS often suffers from an inflation effect when a predictor is used for more than one station. The PP performance is very diverse and depends strongly on the implementation. Although conditioned on predictors that typically describe the large‐scale circulation, PP often fails in capturing the process sensitivity correctly. Stochastic generalized linear models supported by well‐chosen predictors show improved skill to represent the sensitivities.
机译: >统计缩小方法(SDMS)是用于降低和/或偏置的气候模型结果的技术,以及区域或本地尺度。欧洲网络价值开发了一种评估和比较SDMS的框架。价值的实验之一是使用重新分析预测因子来隔离缩小技能的完美预测实验。对于SDMS的大多数评估文件采用简单的统计诊断,并不遵循基于过程的理由。因此,在本文中,已经为超过40个参与的模型输出统计(MOS,大多数偏压校正)和完全预后(PP)方法进行了基于过程的评估,用于欧洲86个气象站的温度和降水。< / p> >在所谓的“面向”的“方面的”技术之后分析SDM,侧重于大气循环的相关特征,大到局部尺度。这些功能包括北大西洋振荡,阻塞和选定的羊羔天气类型,在本地秤上的博拉风和西部伊比利亚沿海低级射流。 >对所选功能的当地天气响应的表示取决于强烈地在方法类上。正如预期的那样,MOS不能在预测器(ERA-INSTIM)模拟时产生过程敏感性。此外,当预测器用于多个站时,MOS经常遭受充气效果。 PP性能非常多样化,并依赖于实施。虽然在通常描述大规模循环的预测器上有调节,但PP经常在正确捕获过程敏感度时失败。由良好选择的预测器支持的随机广义线性模型显示出代表敏感性的改进技能。

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