论文标题
概率预测的顺序聚集 - 应用于风速合奏预测
Sequential Aggregation of Probabilistic Forecasts -- Applicaton to Wind Speed Ensemble Forecasts
论文作者
论文摘要
在数值天气预测领域(NWP),大气未来状态的概率分布被蒙特卡洛样模拟采样,称为合奏。这些集合具有缺陷(例如条件偏差),可以通过统计后处理方法来纠正。存在几个合奏,可以通过不同的统计方法来纠正。另一个步骤是结合这些原始或后处理的合奏。通过专家建议的预测理论使我们能够在预测绩效的理论保证中构建组合算法。本文将该理论适应为逐步累积分布函数(CDF)发出的概率预测的情况。该理论通过将几种原始或后处理的合奏(被认为是CDF)结合在一起,将其应用于风速预测。这项研究的第二个目标是探索两个预测性能标准的使用:连续排名的概率得分(CRP)和Jolliffe-Primo测试。将获得的结果与两个标准进行比较,都会基于CRP的最小化,重新考虑通常的方法来构建熟练的概率预测。根据Jolliffe-Primo测试,最小化CRP并不一定会产生可靠的预测。 Jolliffe-Primo测试通常选择可靠的预测,但可能会导致根据CRPS发布次优的预测。建议使用这两个标准来实现可靠且熟练的概率预测。
In the field of numerical weather prediction (NWP), the probabilistic distribution of the future state of the atmosphere is sampled with Monte-Carlo-like simulations, called ensembles. These ensembles have deficiencies (such as conditional biases) that can be corrected thanks to statistical post-processing methods. Several ensembles exist and may be corrected with different statistiscal methods. A further step is to combine these raw or post-processed ensembles. The theory of prediction with expert advice allows us to build combination algorithms with theoretical guarantees on the forecast performance. This article adapts this theory to the case of probabilistic forecasts issued as step-wise cumulative distribution functions (CDF). The theory is applied to wind speed forecasting, by combining several raw or post-processed ensembles, considered as CDFs. The second goal of this study is to explore the use of two forecast performance criteria: the Continous ranked probability score (CRPS) and the Jolliffe-Primo test. Comparing the results obtained with both criteria leads to reconsidering the usual way to build skillful probabilistic forecasts, based on the minimization of the CRPS. Minimizing the CRPS does not necessarily produce reliable forecasts according to the Jolliffe-Primo test. The Jolliffe-Primo test generally selects reliable forecasts, but could lead to issuing suboptimal forecasts in terms of CRPS. It is proposed to use both criterion to achieve reliable and skillful probabilistic forecasts.