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Assessing the 20th Century Performance of Global Climate Models and Application to Climate Change Adaptation Planning

机译:评估20世纪全球气候模式的绩效及其在气候变化适应规划中的应用

摘要

Rapid environmental changes linked to human-induced increases in atmospheric greenhouse gas concentrations have been observed on a global scale over recent decades. Given the relative certainty of continued change across many earth systems, the information output from climate models is an essential resource for adaptation planning. But in the face of many known modeling deficiencies, how confident can we be in model projections of future climate? It stands to reason that a realistic simulation of the present climate is at least a necessary (but likely not sufficient) requirement for a model’s ability to realistically simulate the climate of the future. Here, I present the results of three studies that evaluate the 20th century performance of global climate models from phase 5 of the Coupled Model Intercomparison Project (CMIP5). The first study examines precipitation, geopotential height, and wind fields from 21 CMIP5 models to determine how well the North American monsoon system (NAMS) is simulated. Models that best capture large-scale circulation patterns at low levels usually have realistic representations of the NAMS, but even the best models poorly represent monsoon retreat. Difficulty in reproducing monsoon retreat results from an inaccurate representation of gradients in low-level geopotential height across the larger region, which causes an unrealistic flux of low-level moisture from the tropics into the NAMS region that extends well into the post-monsoon season. The second study examines the presence and severity of spurious Gibbs-type numerical oscillations across the CMIP5 suite of climate models. The oscillations can appear as unrealistic spatial waves near discontinuities or sharp gradients in global model fields (e.g., orography) and have been a known problem for decades. Multiple methods of oscillation reduction exist; consequently, the oscillations are presumed small in modern climate models and hence are rarely addressed in recent literature. Here we quantify the oscillations in 13 variables from 48 global climate models along a Pacific ocean transect near the Andes. Results show that 48% of nonspectral models and 95% of spectral models have at least one variable with oscillation amplitude as large as, or greater than, atmospheric interannual variability. The third study is an in-depth assessment model simulations of 20th century monthly minimum and maximum surface air temperature over eight US regions, using mean state, trend, and variability bias metrics. Transparent model performance information is provided in the form of model rankings for each bias type. A wide range in model skill is at the regional scale, but no strong relationships are seen between any of the three bias types or between 20th century bias and 21st century projected change. Using our model rankings, two smaller ensembles of models with better performance over the southwestern U.S. are selected, but they result in negligible differences from the all-model ensemble in the average 21st century projected temperature change and model spread. In other words, models of varied quality (and complexity) are projecting very similar changes in temperature, implying that the models are simulating warming for different physical reasons. Despite this result, we suggest that models with smaller 20th century biases have a greater likelihood of being more physically realistic and therefore, more confidence can be placed in their 21st century projections as compared to projections from models that have demonstrably poor skill over the observational period. This type of analysis is essential for responsibly informing climate resilience efforts.
机译:近几十年来,在全球范围内已观察到与人类引起的大气温室气体浓度增加相关的快速环境变化。考虑到许多地球系统持续变化的相对确定性,气候模型的信息输出是适应规划的重要资源。但是面对许多已知的建模缺陷,我们如何对未来气候的模型预测充满信心?可以合理地认为,对当前气候进行逼真的模拟至少是模型逼真的模拟未来气候的能力的必要(但可能不够)。在这里,我介绍了三项研究的结果,这些研究从耦合模型比较项目(CMIP5)的第五阶段评估了20世纪全球气候模型的性能。第一项研究从21个CMIP5模型中检查了降水,地势高度和风场,以确定北美季风系统(NAMS)的模拟效果如何。能够最好地捕获低水平大规模环流模式的模型通常具有NAMS的真实表现,但即使是最好的模型也很难代表季风退缩。季风退缩的困难在于较大区域低水平地势高度梯度的不准确表示,这导致低水平水分从热带进入NAMS区域的不切实际的流动,并一直延伸到季风后季节。第二项研究检查了整个气候模型CMIP5套件中虚假吉布斯型数值振荡的存在和严重性。在整体模型场(例如,地形学)中,振荡可能以不连续的空间波或不规则的陡峭梯度出现,并且数十年来一直是已知的问题。存在多种降低振荡的方法。因此,在现代气候模型中,振荡被假定为很小,因此在最近的文献中很少涉及。在这里,我们对安第斯山脉附近太平洋横断面的48个全球气候模型中13个变量的振荡进行了量化。结果表明,有48%的非光谱模型和95%的光谱模型具有至少一个变量,其振荡幅度与大气年际变异性相同或更大。第三项研究是使用平均状态,趋势和变异性偏差指标对美国八个地区20世纪每月最低和最高地表温度进行的深入评估模型模拟。透明的模型性能信息以每种偏差类型的模型等级的形式提供。在区域范围内,模型技能的范围很广,但是在这三种偏见类型之间,或者在20世纪偏见与21世纪预测的变化之间,没有发现强的联系。使用我们的模型排名,选择了两个在美国西南部具有较好性能的较小模型集合,但它们与21世纪平均预测温度变化和模型传播的全模型集合的差异可以忽略不计。换句话说,质量(和复杂性)不同的模型预测的温度变化非常相似,这表明这些模型出于不同的物理原因在模拟变暖。尽管有这个结果,我们建议具有较小20世纪偏差的模型更有可能在物理上更真实,因此,与在观察期内技能明显较差的模型的投影相比,可以将更多的信心放在其21世纪的投影上。此类分析对于以负责任的方式告知气候抗灾能力至关重要。

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    Geil Kerrie L.;

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  • 年度 2017
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