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Inaugural Article: Identifying human influences on atmospheric temperature

机译:开幕文章:确定人类对大气温度的影响

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摘要

We perform a multimodel detection and attribution study with climate model simulation output and satellite-based measurements of tropospheric and stratospheric temperature change. We use simulation output from 20 climate models participating in phase 5 of the Coupled Model Intercomparison Project. This multimodel archive provides estimates of the signal pattern in response to combined anthropogenic and natural external forcing (the fingerprint) and the noise of internally generated variability. Using these estimates, we calculate signal-to-noise (S/N) ratios to quantify the strength of the fingerprint in the observations relative to fingerprint strength in natural climate noise. For changes in lower stratospheric temperature between 1979 and 2011, S/N ratios vary from 26 to 36, depending on the choice of observational dataset. In the lower troposphere, the fingerprint strength in observations is smaller, but S/N ratios are still significant at the 1% level or better, and range from three to eight. We find no evidence that these ratios are spuriously inflated by model variability errors. After removing all global mean signals, model fingerprints remain identifiable in 70% of the tests involving tropospheric temperature changes. Despite such agreement in the large-scale features of model and observed geographical patterns of atmospheric temperature change, most models do not replicate the size of the observed changes. On average, the models analyzed underestimate the observed cooling of the lower stratosphere and overestimate the warming of the troposphere. Although the precise causes of such differences are unclear, model biases in lower stratospheric temperature trends are likely to be reduced by more realistic treatment of stratospheric ozone depletion and volcanic aerosol forcing.
机译:我们使用气候模型模拟输出以及对流层和平流层温度变化的基于卫星的测量结果进行多模型检测和归因研究。我们使用参与耦合模型比较项目第5阶段的20个气候模型的模拟输出。这个多模型档案库提供了响应于人为和自然外部强迫(指纹)以及内部产生的可变性噪声的信号模式的估计。使用这些估计,我们计算信噪比(S / N),以量化观测中指纹的强度(相对于自然气候噪声中的指纹强度)。对于1979年至2011年之间平流层较低温度的变化,信噪比从26变至36,这取决于观测数据集的选择。在对流层较低的地方,观测的指纹强度较小,但信噪比在1%或更高的水平上仍然很显着,范围从3到8。我们没有证据表明模型可变性误差会虚假地夸大这些比率。除去所有全局均值信号后,在涉及对流层温度变化的70%的测试中,模型指纹仍可识别。尽管在模型的大规模特征和观测到的大气温度变化的地理模式方面达成了这样的共识,但大多数模型并未复制观测到的变化的大小。平均而言,所分析的模型低估了平流层下部的观测冷却,并高估了对流层的升温。尽管尚不清楚造成这种差异的确切原因,但通过对平流层臭氧耗竭和火山气溶胶强迫进行更实际的处理,可以降低平流层较低温度趋势中的模型偏差。

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