Assessment of subseasonal-to-seasonal (S2S) ensemble extreme precipitation forecast skill over Europe

IF 4.2 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
P. Rivoire, O. Martius, P. Naveau, A. Tuel
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Abstract

Abstract. Heavy precipitation can lead to floods and landslides, resulting in widespread damage and significant casualties. Some of its impacts can be mitigated if reliable forecasts and warnings are available. Of particular interest is the subseasonal-to-seasonal (S2S) prediction timescale. The S2S prediction timescale has received increasing attention in the research community because of its importance for many sectors. However, very few forecast skill assessments of precipitation extremes in S2S forecast data have been conducted. The goal of this article is to assess the forecast skill of rare events, here extreme precipitation, in S2S forecasts, using a metric specifically designed for extremes. We verify extreme precipitation events over Europe in the S2S forecast model from the European Centre for Medium-Range Weather Forecasts. The verification is conducted against ERA5 reanalysis precipitation. Extreme precipitation is defined as daily precipitation accumulations exceeding the seasonal 95th percentile. In addition to the classical Brier score, we use a binary loss index to assess skill. The binary loss index is tailored to assess the skill of rare events. We analyze daily events that are locally and spatially aggregated, as well as 7 d extreme-event counts. Results consistently show a higher skill in winter compared to summer. The regions showing the highest skill are Norway, Portugal and the south of the Alps. Skill increases when aggregating the extremes spatially or temporally. The verification methodology can be adapted and applied to other variables, e.g., temperature extremes or river discharge.
欧洲亚季节到季节(S2S)集合极端降水预报技巧的评估
摘要强降水可能导致洪水和山体滑坡,造成大面积破坏和重大伤亡。如果有可靠的预测和警告,它的一些影响可以减轻。特别令人感兴趣的是季节性(S2S)预测时间尺度。S2S预测时间尺度因其对许多部门的重要性而在研究界受到越来越多的关注。然而,很少对S2S预测数据中的极端降水量进行预测技能评估。本文的目标是使用专门为极端情况设计的指标,评估S2S预测中罕见事件(此处为极端降水)的预测技巧。我们在欧洲中期天气预报中心的S2S预报模型中验证了欧洲上空的极端降水事件。验证是针对ERA5再分析降水进行的。极端降水量是指日降水量累积超过季节性百分之95。除了经典的Brier评分外,我们还使用二元损失指数来评估技能。二元损失指数是为评估罕见事件的技能而定制的。我们分析了本地和空间聚集的日常事件,以及7 d极端事件计数。结果一致表明,与夏季相比,冬季的技能更高。技能最高的地区是挪威、葡萄牙和阿尔卑斯山以南。当在空间或时间上聚集极端时,技能会增加。验证方法可以适用于其他变量,例如极端温度或河流流量。
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来源期刊
Natural Hazards and Earth System Sciences
Natural Hazards and Earth System Sciences 地学-地球科学综合
CiteScore
7.60
自引率
6.50%
发文量
192
审稿时长
3.8 months
期刊介绍: Natural Hazards and Earth System Sciences (NHESS) is an interdisciplinary and international journal dedicated to the public discussion and open-access publication of high-quality studies and original research on natural hazards and their consequences. Embracing a holistic Earth system science approach, NHESS serves a wide and diverse community of research scientists, practitioners, and decision makers concerned with detection of natural hazards, monitoring and modelling, vulnerability and risk assessment, and the design and implementation of mitigation and adaptation strategies, including economical, societal, and educational aspects.
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