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Incorporating model quality information in climate change detection and attribution studies

机译:将模型质量信息纳入气候变化检测和归因研究

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摘要

In a recent multimodel detection and attribution (D&A) study using the pooled results from 22 different climate models, the simulated “fingerprint” pattern of anthropogenically caused changes in water vapor was identifiable with high statistical confidence in satellite data. Each model received equal weight in the D&A analysis, despite large differences in the skill with which they simulate key aspects of observed climate. Here, we examine whether water vapor D&A results are sensitive to model quality. The “top 10” and “bottom 10” models are selected with three different sets of skill measures and two different ranking approaches. The entire D&A analysis is then repeated with each of these different sets of more or less skillful models. Our performance metrics include the ability to simulate the mean state, the annual cycle, and the variability associated with El Niño. We find that estimates of an anthropogenic water vapor fingerprint are insensitive to current model uncertainties, and are governed by basic physical processes that are well-represented in climate models. Because the fingerprint is both robust to current model uncertainties and dissimilar to the dominant noise patterns, our ability to identify an anthropogenic influence on observed multidecadal changes in water vapor is not affected by “screening” based on model quality.
机译:在最近的一项多模型检测和归因(D&A)研究中,使用了来自22个不同气候模型的汇总结果,在卫星数据上具有很高的统计置信度,可以识别出人为引起的水蒸气变化的模拟“指纹”模式。尽管在模拟观测气候关键方面的技巧差异很大,但每个模型在D&A分析中的权重均相同。在这里,我们检查水蒸气D&A结果是否对模型质量敏感。使用三组不同的技能度量和两种不同的排名方法选择“前10名”和“后10名”模型。然后,使用这些或多或少熟练的模型的不同集合中的每一个重复整个D&A分析。我们的绩效指标包括模拟平均状态,年度周期以及与厄尔尼诺现象相关的变异性的能力。我们发现,人为水汽指纹的估计值对当前的模型不确定性不敏感,并且受气候模型中很好表示的基本物理过程的控制。由于指纹对当前模型的不确定性都具有鲁棒性,并且与主要噪声模式不同,因此我们识别人为因素对观测到的水蒸气多年代变化的影响能力不受基于模型质量的“筛选”影响。

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