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Generalization of the Discrete Brier and Ranked Probability Skill Scores for Weighted Multimodel Ensemble Forecasts

机译:加权多模型集合预报的离散Brier和排名概率技能评分的一般化

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This note describes how the widely used Brier and ranked probability skill scores (BSS and RPSS, respectively) can be correctly applied to quantify the potential skill of probabilistic multimodel ensemble forecasts. It builds upon the study of Weigel et al. where a revised RPSS, the so-called discrete ranked probability skill score (RPSS_D)was derived, circumventing the known negative bias of the RPSS for small ensemble sizes. Since the BSS is a special case of the RPSS, a debiased discrete Brier skill score (BSS_C) could be formulated in the same way. Here, the approach of Weigel et al., which so far was only applicable to single model ensembles, is generalized to weighted multimodel ensemble forecasts. By introducing an "effective ensemble size" characterizing the multimodel, the new generalized RPSS_D can be expressed such that its structure becomes equivalent to the single model case. This is of practical importance for multimodel assessment studies, where the consequences of varying effective ensemble size need to be clearly distinguished from the true benefits of multimodel combination. The performance of the new generalized RPSS_D formulation is illustrated in examples of weighted multimodel ensemble forecasts, both in a synthetic random forecasting context, and with real seasonal forecasts of operational models. A central conclusion of this study is that, for small ensemble sizes, multimodel assessment studies should not only be carried out on the basis of the classical RPSS, since true changes in predictability may be hidden by bias effects—a deficiency that can be overcome with the new generalized RPSS_D.
机译:本说明描述了如何正确使用广泛使用的Brier和排名概率技能评分(分别为BSS和RPSS)来量化概率性多模型集合预报的潜在技能。它基于Weigel等人的研究。在这种情况下,可以得出修订后的RPSS,即所谓的离散排名概率技能得分(RPSS_D),从而避免了针对小型整体的RPSS的已知负偏差。由于BSS是RPSS的特例,因此可以用相同的方式来制定无偏差的离散Brier技能得分(BSS_C)。在这里,Weigel等人的方法(迄今为止仅适用于单模型合奏)被推广到加权多模型合奏预测。通过引入表征多模型的“有效集合大小”,可以表示新的广义RPSS_D,以使其结构变得等同于单个模型的情况。这对于多模型评估研究具有实际重要性,在这种研究中,需要有效区分不同有效合奏大小的结果与多模型组合的真正好处。新的广义RPSS_D公式的性能在加权的多模型总体预报示例中得到了说明,无论是在合成随机预报环境中,还是在实际运行模型的季节性预报中。这项研究的主要结论是,对于较小的合奏,不应仅在经典RPSS的基础上进行多模型评估研究,因为可预测性的真正变化可能会被偏差效应所掩盖,而这种缺陷可以通过克服新的广义RPSS_D。

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