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首页> 外文期刊>Weather and forecasting >Calibrated Forecasts of Extreme Windstorms Using the Extreme Forecast Index (EFI) and Shift of Tails (SOT)
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Calibrated Forecasts of Extreme Windstorms Using the Extreme Forecast Index (EFI) and Shift of Tails (SOT)

机译:使用极端预报指数(EFI)和尾部平移(SOT)校准的极端暴风雨预报

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摘要

This study presents a method that improves extreme windstorm early warning in regards to past events that hit France during the last 30 years. From a 21-member ensemble forecast, the extreme forecast index (EFI) and the shift of tails (SOT) are used to produce calibrated forecasts for a selection of 59 windstorm cases. The EFI and SOT forecasts are evaluated for windstorms of different levels of severity and for various forecast index thresholds using the Heidke skill score (HSS), hit rate (HR), and false alarm rate (FA). The HR and FA show that a zero misses level always goes conjointly with a high level of false alarms. The HSS shows maxima that are associated with EFI (or SOT) thresholds that could be used as a rationale for decision-makers to issue warnings. For most extreme events, it is found that a higher level of HR can be achieved using the SOT rather than the EFI. Overall, most of the windstorms are well anticipated 3-4 days ahead. To facilitate the use of EFI or SOT forecasts, it is suggested that extra information in the form of conditional probabilities be added, hence linking the EFI (or SOT) values to a risk of occurrence of a severe event. Finally, this anticipation of extreme events is illustrated by maps of EFI and SOT for four historical windstorms.
机译:这项研究提出了一种方法,可以针对过去30年来袭击法国的过去事件改善极端风暴预警。从21个成员的整体预报中,使用极端预报指数(EFI)和尾巴偏移(SOT)生成了针对59个暴风雪案例的精选预报。使用Heidke技能评分(HSS),命中率(HR)和错误警报率(FA)对EFI和SOT预报进行评估,以评估不同严重程度的暴风雨以及各种预报指标阈值。 HR和FA表明,未命中级别为零总是伴随着高级别的错误警报。 HSS显示与EFI(或SOT)阈值相关的最大值,可以用作决策者发出警告的依据。对于大多数极端事件,发现使用SOT而不是EFI可以实现更高水平的HR。总体而言,大多数暴风雨都可以提前3-4天到达。为了便于使用EFI或SOT预测,建议以条件概率的形式添加额外的信息,从而将EFI(或SOT)值与发生严重事件的风险联系起来。最后,对于四次历史性暴风雨,EFI和SOT的地图说明了对极端事件的这种预期。

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