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首页> 外文期刊>Geophysical Research Letters >A Bayesian approach to climate model evaluation and multi-model averaging with an application to global mean surface temperatures from IPCC AR4 coupled climate models
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A Bayesian approach to climate model evaluation and multi-model averaging with an application to global mean surface temperatures from IPCC AR4 coupled climate models

机译:一种贝叶斯途径,气候模型评估和多模型平均值与IPCC AR4耦合气候模型的全局平均表面温度

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摘要

A Bayesian approach is introduced to model evaluation and multi-model averaging with a systematic consideration of model uncertainty, and its application to global mean surface air temperature (SAT) changes is shown from multi-AOGCM ensembles of IPCC AR4 simulations. The Bayes factor or likelihood ratio of each model to the reference model (where mean is identical to the observation) provides a skill ranging from 0 to 1. Four categories of model skill are derived on the basis of the previous studies. Legendre series expansions are used to get a temporally refined model evaluation, which allow efficient analyses of time mean (scale) and linear trend. Application results show that all AOGCMs with natural plus anthropogenic forcing can simulate well the scale and trend of observed global mean SAT changes over the 20th century and its first and second halves. However, more than 50% of the models with anthropogenic-only forcing cannot reproduce the observed warming reasonably. This indicates the important role of natural forcing although other factors like different climate sensitivity, forcing uncertainty, and a climate drift might be responsible for the discrepancy in anthropogenic-only models. Besides, Bayesian and conventional skill comparisons demonstrate that a skill-weighted average with the Bayes factors (Bayesian model averaging, BMA) overwhelms the arithmetic ensemble mean and three other weighted averages based on conventional statistics, illuminating future applicability of BMA to climate predictions.
机译:引入贝叶斯方法以模拟评估和多模型平均值,并对模型不确定性进行系统考虑,并且其在全局平均表面空气温度(SAT)变化的应用是从IPCC AR4模拟的多AOGCM集合中所示的。每个模型到参考模型的贝叶因子或似然比(意思是与观察相同)提供从0到1的技能提供了四种类别的模型技能,以基于先前的研究得出。 Legendre系列扩展用于获得时间上精制的模型评估,从而允许有效地分析时间(比例)和线性趋势。应用结果表明,所有具有天然的AOGCMS的AOGCMS都可以模拟观察到的全球平均六个变化的规模和趋势及其第一半部分。然而,超过50%的具有人为迫使迫使的模型不能合理地再现观察到的热身。这表明了自然迫使的重要作用,尽管不同的气候敏感性,迫使不确定性和气候漂移等其他因素可能是唯一的人为模型中的差异。此外,贝叶斯和常规技能比较表明,与贝叶斯因子(Bayesian模型平均,BMA)的技能加权平均值压倒了基于传统统计的算术集合均值和三个其他加权平均值,照明BMA对气候预测的未来适用性。

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