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Exploiting large ensembles for a better yet simpler climate model evaluation

机译:利用大型合奏,以获得更好但更简单的气候模型评估

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摘要

We use a methodological framework exploiting the power of large ensembles to evaluate how well ten coupled climate models represent the internal variability and response to external forcings in observed historical surface temperatures. This evaluation framework allows us to directly attribute discrepancies between models and observations to biases in the simulated internal variability or forced response, without relying on assumptions to separate these signals in observations. The largest discrepancies result from the overestimated forced warming in some models during recent decades. In contrast, models do not systematically over- or underestimate internal variability in global mean temperature. On regional scales, all models misrepresent surface temperature variability over the Southern Ocean, while overestimating variability over land-surface areas, such as the Amazon and South Asia, and high-latitude oceans. Our evaluation shows that MPI-GE, followed by GFDL-ESM2M and CESM-LE offer the best global and regional representation of both the internal variability and forced response in observed historical temperatures.
机译:我们使用一种利用大型集合能力的方法框架来评估十个耦合气候模型如何代表内部变异性和对观察到的历史表面温度的外部强迫的反应。该评估框架使我们能够直接在模拟内部变异性或强制响应中对模型和观察之间的偏差差异,而无需依赖于在观察中分离这些信号的假设。近几十年来,在某些型号中,最大的差异是由过度估计的强迫变暖。相比之下,模型在全球平均温度下没有系统地过度或低估内部变异性。在区域尺度上,所有模型在南洋上歪曲的表面温度变异,而在陆地面积(如亚马逊和南亚)和高纬度海洋上过度估量变异性。我们的评价表明,MPI-GE,其次是GFDL-ESM2M和CESM-LE在观察到的历史气温中提供了内部变异性和强迫反应的最佳全球和区域表示。

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