论文标题

揭示在短天气预测数据中隐藏的极端事件的统计数据

Revealing the statistics of extreme events hidden in short weather forecast data

论文作者

Finkel, Justin, Gerber, Edwin P., Abbot, Dorian S., Weare, Jonathan

论文摘要

极端天气事件会产生重大后果,主导着气候对社会的影响。尽管高分辨率的天气模型可以预测天气时间表的许多类型的极端事件,但长期气候风险评估是一个完全不同的问题。一个世纪曾经的事件平均需要100年的模拟时间出现一次,远远超出了天气预报模型的典型整合长度。因此,此任务要便宜,但不准确,低分辨率或统计模型。但是天气模型的产量尚未开发:尽管持续时间短,但天气预报每周生产多次。集成是通过独立的扰动来启动的,导致它们随着时间的流逝而分开,并广泛采样相位空间。总的来说,这些集成总结了数千年的数据。我们建立了从这些短天气模拟中提取气候信息的方法。我们使用欧洲中期天气预报中心(ECMWF)在季节到季节到季节(S2S)数据库中的合奏后广播,我们表征了具有多年返回时间的突然平流层变暖(SSW)事件。在替代方法之间找到一致的结果,包括基本计数策略和马尔可夫州建模。通过仔细将轨迹组合在一起,我们获得了SSW频率及其季节性分布的估计值,这些频率与中等罕见事件的再分析衍生的估计值一致,但不确定性范围更严格,并且可以扩展到尚未尚未悠久的前所未有的严重性事件。这些方法具有在整个气候系统中评估极端事件的潜力,除了平流层极端的例子外。

Extreme weather events have significant consequences, dominating the impact of climate on society. While high-resolution weather models can forecast many types of extreme events on synoptic timescales, long-term climatological risk assessment is an altogether different problem. A once-in-a-century event takes, on average, 100 years of simulation time to appear just once, far beyond the typical integration length of a weather forecast model. Therefore, this task is left to cheaper, but less accurate, low-resolution or statistical models. But there is untapped potential in weather model output: despite being short in duration, weather forecast ensembles are produced multiple times a week. Integrations are launched with independent perturbations, causing them to spread apart over time and broadly sample phase space. Collectively, these integrations add up to thousands of years of data. We establish methods to extract climatological information from these short weather simulations. Using ensemble hindcasts by the European Center for Medium-range Weather Forecasting (ECMWF) archived in the subseasonal-to-seasonal (S2S) database, we characterize sudden stratospheric warming (SSW) events with multi-centennial return times. Consistent results are found between alternative methods, including basic counting strategies and Markov state modeling. By carefully combining trajectories together, we obtain estimates of SSW frequencies and their seasonal distributions that are consistent with reanalysis-derived estimates for moderately rare events, but with much tighter uncertainty bounds, and which can be extended to events of unprecedented severity that have not yet been observed historically. These methods hold potential for assessing extreme events throughout the climate system, beyond this example of stratospheric extremes.

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