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Recalibrating decadal climate predictions – what is an adequate model for the drift?

机译:重新校准二道气候预测 - 漂移的适当模型是什么?

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Near-term climate predictions such as multi-year to decadal forecasts are increasingly being used to guide adaptation measures and building of resilience. To ensure the utility of multi-member probabilistic predictions, inherent systematic errors of the prediction system must be corrected or at least reduced. In this context, decadal climate predictions have further characteristic features, such as the long-term horizon, the lead-time-dependent systematic errors (drift) and the errors in the representation of long-term changes and variability. These features are compounded by small ensemble sizes to describe forecast uncertainty and a relatively short period for which typical pairs of hindcasts and observations are available to estimate calibration parameters. With DeFoReSt (Decadal Climate Forecast Recalibration Strategy), Pasternack et?al. ( 2018 ) proposed a parametric post-processing approach to tackle these problems. The original approach of DeFoReSt assumes third-order polynomials in lead time to capture conditional and unconditional biases, second order for dispersion and first order for start time dependency. In this study, we propose not to restrict orders a priori but use a systematic model selection strategy to obtain model orders from the data based on non-homogeneous boosting. The introduced boosted recalibration estimates the coefficients of the statistical model, while the most relevant predictors are selected automatically by keeping the coefficients of the less important predictors to zero. Through toy model simulations with differently constructed systematic errors, we show the advantages of boosted recalibration over DeFoReSt. Finally, we apply boosted recalibration and DeFoReSt to decadal surface temperature forecasts from the German initiative Mittelfristige Klimaprognosen (MiKlip) prototype system. We show that boosted recalibration performs equally as well as DeFoReSt and yet offers a greater flexibility.
机译:近期气候预测,如多年来的截止预测越来越多地用于指导适应措施和建立弹性。为了确保多成员概率预测的效用,必须纠正预测系统的固有系统误差或至少减少。在这种情况下,Decadal Climate预测具有进一步的特征特征,例如长期地平线,递减时间依赖的系统误差(漂移)以及表示长期变化和变异性的误差。这些特征通过小型集合尺寸复合,以描述预测不确定性和相对较短的时段,典型的HindCasts和观察可以估算校准参数。凭借最森林(Decadal气候预测重新校准),Pasternack et?al。 (2018)提出了一个参数处理方法来解决这些问题。 Deforest的原始方法在提前期间假设三阶多项式以捕获条件和无条件偏置,用于色散的第二顺序和开始时间依赖的第一顺序。在这项研究中,我们建议不要限制命令先验,但使用系统的模型选择策略来从基于非均匀提升的数据获得模型订单。介绍的升高重新校准估计统计模型的系数,而通过将较重要的预测器的系数保持为零,自动选择最相关的预测器。通过具有不同构造的系统错误的玩具模型模拟,我们展示了升高的抗议校准的优势。最后,我们从德国倡议MittelfRistige KlimapRognosen(Miklip)原型系统中申请提升重新校准和砍伐落地对Decadal表面温度预测。我们表明提升重新校准同样地表现出并且最偏离最大,但具有更大的灵活性。

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