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Measurement of GCM skill in predicting variables relevant for hydroclimatological assessments.

机译:测量GCM在预测与水文气候评估有关的变量方面的技能。

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Simulations from general circulation models are now being used for a variety of studies and purposes. With up to 23 different GCMs now available, it is desirable to determine whether a specific variable from a particular model is representative of the ensemble mean, which is often assumed to indicate the likely state of that variable in the future. The answers are important for decision makers and researchers using selective model outputs for follow-on studies such as statistical downscaling, which currently assume all model outputs are simulated with equal reliability. A skill score, termed the variable convergence score (VCS), has been derived that can be used to rank variables based on the coefficient of variation of the ensemble. The key benefit is the development of a simple methodology that allows for a quantitative assessment between different hydroclimatic variables. The VCS methodology has been applied to the outputs of nine GCMs for eight different variables and two emission scenarios to provide a relative ranking of the variables averaged across Australia and over different climatic regions of the country. The methodology, however, would be applicable for any region or any variable of interest from GCMs. It was found that the surface variables with the highest scores are pressure, temperature, and humidity. Regionally in Australia, models again show the best agreement in the surface pressure projections. The tropical and southwestern temperate zones show the overall highest variable convergence when all variables are considered. The desert zone shows relatively low model agreement, particularly in the projections of precipitation and specific humidity.
机译:来自一般循环模型的模拟现在被用于各种研究和目的。现在有多达23种不同的GCM,因此希望确定来自特定模型的特定变量是否代表整体平均值,通常会假设该平均值表示该变量将来的可能状态。对于决策者和研究人员来说,答案是重要的,他们使用选择性模型输出进行后续研究(例如统计缩减),目前假设所有模型输出均以相同的可靠性进行仿真。已经得出了一种技能得分,称为变量收敛得分(VCS),可用于根据整体变化系数对变量进行排名。主要好处是开发了一种简单的方法,可以对不同的水文气候变量之间进行定量评估。 VCS方法已应用于九个GCM的八个不同变量和两种排放情景的输出,以提供整个澳大利亚和该国不同气候区域的平均变量的相对排名。但是,该方法将适用于GCM的任何区域或任何感兴趣的变量。发现得分最高的表面变量是压力,温度和湿度。在澳大利亚的局部地区,模型再次显示出表面压力预测的最佳一致性。当考虑所有变量时,热带和西南温带地区表现出总体最高的收敛性。沙漠地区显示出相对较低的模型一致性,特别是在降水和比湿度的预测中。

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