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Seasonal-to-Interannual Prediction Skills of Near-Surface Air Temperature in the CMIP5 Decadal Hindcast Experiments

机译:CMIP5年代际隐验实验中近地表气温的季节至年际预测技巧

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This study explores the seasonal-to-interannual near-surface air temperature (TAS) prediction skills of state-of-the-art climate models that were involved in phase 5 of the Coupled Model Intercomparison Project (CMIP5) decadal hindcast/forecast experiments. The experiments are initialized in either November or January of each year and integrated for up to 10 years, providing a good opportunity for filling the gap between seasonal and decadal climate predictions. The long-lead multimodel ensemble (MME) prediction is evaluated for 1981-2007 in terms of the anomaly correlation coefficient (ACC) and mean-squared skill score (MSSS), which combines ACC and conditional bias, with respect to observations and reanalysis data, paying particular attention to the seasonal dependency of the global-mean and equatorial Pacific TAS predictions. The MME shows statistically significant ACCs and MSSSs for the annual global-mean TAS for up to two years, mainly because of long-term global warming trends. When the long-term trends are removed, the prediction skill is reduced. The prediction skills are generally lower in boreal winters than in other seasons regardless of lead times. This lack of winter prediction skill is attributed to the failure of capturing the long-term trend and interannual variability of TAS over high-latitude continents in the Northern Hemisphere. In contrast to global-mean TAS, regional TAS over the equatorial Pacific is predicted well in winter. This is mainly due to a successful prediction of the El Nino-Southern Oscillation (ENSO). In most models, the wintertime ENSO index is reasonably well predicted for at least one year in advance. The sensitivity of the prediction skill to the initialized month and method is also discussed.
机译:这项研究探索了最新的气候模型的季节到年际近地表气温(TAS)预测技巧,该模型涉及年代际后验/预报耦合模型比较项目(CMIP5)的第5阶段。该实验在每年的11月或1月进行初始化,并集成长达10年,为填补季节性和年代际气候预测之间的空白提供了一个很好的机会。根据异常相关系数(ACC)和均方技能得分(MSSS),对1981-2007年的长线索多模型合奏(MME)预测进行了评估,结合了ACC和条件偏差,用于观测和重新分析数据,尤其要注意全球平均和赤道太平洋TAS预测的季节依赖性。 MME显示最多两年的年度全球平均TAS的统计上显着的ACC和MSSS,这主要是由于长期的全球变暖趋势。当除去长期趋势后,预测技巧就会降低。不管交货时间长短,寒冬的预测能力通常都比其他季节低。缺乏冬季预报技能是由于未能捕获北半球高纬度大陆上TAS的长期趋势和年际变化。与全球平均TAS相比,冬季赤道太平洋地区的TAS预测良好。这主要是由于成功预测了厄尔尼诺-南方涛动(ENSO)。在大多数模型中,至少要提前一年对冬季ENSO指数进行合理预测。还讨论了预测技能对初始化月份和方法的敏感性。

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