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Selecting global climate models for regional climate change studies

机译:选择全球气候模式进行区域气候变化研究

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Regional or local climate change modeling studies currently require starting with a global climate model, then downscaling to the region of interest. How should global models be chosen for such studies, and what effect do such choices have? This question is addressed in the context of a regional climate detection and attribution (D&A) study of January-February-March (JFM) temperature over the western U.S. Models are often selected for a regional D&A analysis based on the quality of the simulated regional climate. Accordingly, 42 performance metrics based on seasonal temperature and precipitation, the El Nino/Southern Oscillation (ENSO), and the Pacific Decadal Oscillation are constructed and applied to 21 global models. However, no strong relationship is found between the score of the models on the metrics and results of the D&A analysis. Instead, the importance of having ensembles of runs with enough realizations to reduce the effects of natural internal climate variability is emphasized. Also, the superiority of the multimodel ensemble average (MM) to any 1 individual model, already found in global studies examining the mean climate, is true in this regional study that includes measures of variability as well. Evidence is shown that this superiority is largely caused by the cancellation of offsetting errors in the individual global models. Results with both the MM and models picked randomly confirm the original D&A results of anthropo-genically forced JFM temperature changes in the western U.S. Future projections of temperature do not depend on model performance until the 2080s, after which the better performing models show warmer temperatures.
机译:目前,区域或局部气候变化模型研究需要从全球气候模型开始,然后缩小到感兴趣的区域。如何为此类研究选择全局模型,以及这种选择有什么作用?在美国西部一月至二月至三月(JFM)温度的区域气候检测和归因(D&A)研究中解决了该问题,通常会基于模拟的区域气候的质量来选择模型进行区域D&A分析。 。因此,构建了基于季节温度和降水,厄尔尼诺/南方涛动(ENSO)和太平洋年代际涛动的42个性能指标,并将其应用于21个全球模型。但是,在度量标准上的模型得分与D&A分析结果之间没有发现强烈的关系。取而代之的是,强调具有足够的认识的运行集合以减少自然内部气候变化的影响的重要性。同样,在研究平均气候的全球研究中已经发现,多模型综合平均数(MM)优于任何一种单独模型的优势,在该区域研究中也是如此,该研究还包括可变性度量。有证据表明,这种优势主要是由于消除了各个全局模型中的抵消误差所致。随机选取的MM和模型结果均证实了美国西部人为强迫JFM温度变化的原始D&A结果。对温度的未来预测直到2080年代才取决于模型性能,此后性能更好的模型显示温度更高。

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