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A Bayesian hierarchical approach for spatial analysis of climate model bias in multi-model ensembles

机译:多模型合奏中气候模型偏差空间分析的贝叶斯分层方法

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摘要

Coupled atmosphere-ocean general circulation models are key tools to investigate climate dynamics and the climatic response to external forcings, to predict climate evolution and to generate future climate projections. Current general circulation models are, however, undisputedly affected by substantial systematic errors in their outputs compared to observations. The assessment of these so-called biases, both individually and collectively, is crucial for the models' evaluation prior to their predictive use. We present a Bayesian hierarchical model for a unified assessment of spatially referenced climate model biases in a multi-model framework. A key feature of our approach is that the model quantifies an overall common bias that is obtained by synthesizing bias across the different climate models in the ensemble, further determining the contribution of each model to the overall bias. Moreover, we determine model-specific individual bias components by characterizing them as non-stationary spatial fields. The approach is illustrated based on the case of near-surface air temperature bias in the tropical Atlantic and bordering regions from a multi-model ensemble of historical simulations from the fifth phase of the Coupled Model Intercomparison Project. The results demonstrate the improved quantification of the bias and interpretative advantages allowed by the posterior distributions derived from the proposed Bayesian hierarchical framework, whose generality favors its broader application within climate model assessment.
机译:大气海洋耦合环流模型是研究气候动态和气候对外部强迫的响应,预测气候变化并生成未来气候预测的关键工具。然而,与观测相比,当前的一般循环模型无疑受到其输出中重大系统误差的影响。这些所谓的偏见的评估,无论是单独的还是集体的,对于模型的预测性使用之前的评估都是至关重要的。我们提出了一种贝叶斯分层模型,用于在多模型框架中对空间参考的气候模型偏差进行统一评估。我们方法的一个关键特征是该模型量化了总体共同偏差,该总体共同偏差是通过综合整个集合体中不同气候模型的偏差而获得的,并进一步确定每个模型对总体偏差的贡献。此外,我们通过将模型特定的个体偏差成分表征为非平稳空间场来确定它们。该方法基于热带大西洋和临近地区近地表空气温度偏差的情况进行了说明,该情况来自耦合模型比较项目第五阶段的历史模拟的多模型合奏。结果表明,从拟议的贝叶斯层次框架派生的后验分布所带来的偏倚和解释优势的量化得到了改进,其贝叶斯框架的普遍性有利于其在气候模型评估中的广泛应用。

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