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Lightning data assimilation in the WRF-ARW model for short-term rainfall forecasts of three severe storm cases in Italy

机译:意大利三次严重风暴病例短期降雨预测WRF-ARW模型的闪电数据同化

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摘要

This study analyses the impact of total lightning data assimilation on cloud-resolving short-term (3 and 6 h) precipitation forecasts of three heavy rainfall events that occurred recently in Italy by providing an evaluation of forecast skill using statistical scores for 3-hourly thresholds against observational data from a dense rain gauge network. The experiments are performed with two initial and boundary conditions datasets as a sensitivity test. The three rainfall events have been chosen to better represent the convective regime spectrum: from a short-lived and localised thunderstorm to a long-lived and widespread event, along with a case that had elements of both.This analysis illustrates the ability of the lightning data assimilation (LDA) to notably improve the short-term rainfall forecasts with respect to control simulations without LDA. The assimilation of lightning enhances the representation of convection in the model and translates into a better spatiotemporal positioning of the storm systems. The results of the statistical scores reveal that simulations with LDA always improve the probability of detection, particularly for rainfall thresholds exceeding 40 mm/3 h. The false alarm ratio also improves but appears to be more sensitive to the model initial and boundary conditions. Overall, these results show a systematic advantage of the LDA with a 3-h forecast range over 6-h.
机译:本研究分析了总闪电数据同化对云解决短期(3和6小时)降水预测的影响,通过提供了使用统计分数进行3小时阈值的预测技能评估针对密集的雨量标准网络的观测数据。使用两个初始和边界条件数据集进行实验,作为灵敏度测试。已选择三个降雨事件以更好地代表对流制度频谱:从短暂和局部雷暴到长寿和广泛的事件,以及具有两者的元素的情况。本分析说明了闪电的能力数据同化(LDA)在没有LDA的情况下,特别提高对控制模拟的短期降雨预测。闪电的同化增强了模型中对流的表示,并转化为风暴系统的更好时尚定位。统计分数的结果表明,使用LDA的模拟总是提高检测的概率,特别是对于超过40mm / 3h的降雨阈值。误报例也有所提高,但似乎对模型初始和边界条件更敏感。总体而言,这些结果显示了LDA的系统优势,3小时预测范围超过6小时。

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