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Measuring the potential predictability of ensemble climate predictions

机译:测量整体气候预测的潜在可预测性

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In this study, ensemble predictions of the El Ni?o Southern Oscillation (ENSO) and the Arctic Oscillation (AO) were conducted using two coupled models and two atmospheric circulation models, respectively, as well as various ensemble schemes. Several measures of potential predictability including ensemble mean square (EM 2), ensemble spread and the ratio of signal-to-noise were explored in terms of their ability of estimating a priori the predictive skill of the ENSO and AO ensemble predictions. The emphasis was put on examining the relationship between the measures of predictability that do not use observations and the model prediction skill of correlation and mean square error (MSE) that make use of observations. The relationship identified here offers a practical means of estimating the potential predictability and the confidence level of an individual prediction. It was found that the EM 2 is a better indicator of the actual skill of ensemble ENSO and AO prediction than the ratio of signal-to-noise. When correlation-based metrics are used, the prediction skill is likely to be a linear function of EM 2, i.e., the larger the EM 2 the higher skill the prediction; whereas when MSE-based metrics are used, a “triangular relationship” is suggested between them, namely, that when EM 2 is large, the prediction is likely to be reliable whereas when EM 2 is small the prediction skill is highly variable. In contrast with ensemble weather prediction (NWP), the ensemble spread is not a good predictor in quantifying climate prediction skill in the models used in this study because the forced response may be much larger than the noise in the climate timescales compared to the NWP. A statistical framework was proposed to explain why EM 2 is a good indicator of actual prediction skill in the ensemble climate predictions.
机译:在这项研究中,分别使用两个耦合模型和两个大气环流模型以及各种集成方案对厄尔尼诺南方涛动(ENSO)和北极涛动(AO)进行了总体预报。根据先验估计ENSO和AO集成预测的能力,探讨了潜在的可预测性的几种度量,包括集成均方(EM 2),集成扩展和信噪比。重点放在检查不使用观测值的可预测性度量与利用观测值的相关性和均方误差(MSE)的模型预测技能之间的关系上。此处确定的关系提供了一种实用的方法,用于估计潜在的可预测性和单个预测的置信度。已经发现,与信噪比相比,EM 2是更好的ENSO和AO集成预测实际技能指标。当使用基于相关性的度量时,预测技能可能是EM 2的线性函数,即EM 2越大,预测技能就越高;反之,当使用基于MSE的度量时,建议在它们之间建立“三角关系”,即,当EM 2大时,预测可能是可靠的,而当EM 2小时,预测技能则高度可变。与整体天气预报(NWP)相比,在本研究使用的模型中,整体传播不是量化气候预测技能的良好预测指标,因为与NWP相比,强迫响应可能要比气候时间尺度上的噪声大得多。提出了一个统计框架来解释为什么EM 2是整体气候预报中实际预报技能的良好指标。

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