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Predictive verification for the design of partially exchangeable multi-model ensembles

机译:适用于部分可交换多模型集合设计的预测验证

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摘要

The performance of an ensemble forecast, as measured by scoring rules, depends on its number of members. Under the assumption of ensemble member exchangeability, ensemble-adjusted scores provide unbiased estimates of the ensemble-size effect. In this study, the concept of ensemble-adjusted scores is revisited and exploited in the general context of multi-model ensemble forecasting. In particular, an ensemble-size adjustment is proposed for the continuous ranked probability score in a multi-model ensemble setting. The method requires that the ensemble forecasts satisfy generalised multi-model exchangeability conditions. These conditions do not require the models themselves to be exchangeable. The adjusted scores are tested here on a dual-resolution ensemble, an ensemble which combines members drawn from the same numerical model but run at two different grid resolutions. It is shown that performance of different ensemble combinations can be robustly estimated based on a small subset of members from each model. At no additional cost, the ensemble-size effect is investigated not only considering the pooling of potential extra-members but also including the impact of optimal weighting strategies. With simple and efficient tools, the proposed methodology paves the way for predictive verification of multi-model ensemble forecasts; the derived statistics can provide guidance for the design of future operational ensemble configurations without having to run additional ensemble forecast experiments for all the potential configurations.
机译:通过评分规则来衡量的集合预测的表现取决于其成员数量。在集合成员交换性的假设下,合并调整的分数提供了对合成尺寸效应的无偏估计。在这项研究中,在多模型集合预测的一般背景下重新审视并利用了集合调整分数的概念。特别地,提出了一种用于多模型集合设置中的连续排名概率得分的集合尺寸调整。该方法要求集合预测满足广义的多模型交换性条件。这些条件不要求模型自己可兑换。调整后的分数在此处测试了双分辨率集合,该集合组合了从相同数值模型中汲取的构件,但以两个不同的网格分辨率运行。结果表明,可以基于来自每个模型的小子集来强大地估计不同集合组合的性能。无需额外成本,因此不仅考虑潜在的额外成员汇集而且还包括最佳加权策略的影响,因此研究了集合尺寸效应。通过简单高效的工具,所提出的方法铺平了多模型集合预测的预测验证方式的方式;派生统计信息可以为未来的运营集合配置的设计提供指导,而无需为所有潜在配置运行其他集合预测实验。

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