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Horizontal grid spacing comparison among Random Forest algorithms to nowcast Cloud-to-Ground lightning occurrence

机译:随机森林算法与临近预报云对地闪电发生的水平网格间距比较

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摘要

Abstract The relation between the increase in the frequency and the effects of extreme events with climate change has been widely demonstrated and the related consequences are a global concern. In this framework, the strong correlation between significant lightning occurrence and intense precipitation events has been also documented. Consequently, the possibility of having a short-term forecasting tool of the lightning activity may help in identifying and monitoring the evolution of severe weather events on very short time ranges. The present paper proposes an application of Random Forest (RF), a popular Machine Learning (ML) algorithm, to perform a nowcasting of Cloud-to-Ground (CG) lightning occurrence over the Italian territory and the surrounding seas during the months of August, September, and October from 2017 to 2019. Results obtained with three different spatial resolutions have been compared, suggesting that, to enhance the skills of the model in identifying the presence or absence of strokes, all the data selected as input should be commonly gridded on the finest available spatial resolution. Moreover, the features’ importance analysis performed confirms that meteorological features describing the state of the atmosphere, especially at higher altitudes, have a stronger impact on the final result than topology data, such as Latitude or Digital Elevation Model (DEM).
机译:摘要 极端事件频率的增加与气候变化的影响之间的关系已得到广泛证明,其后果是全球关注的问题。在这个框架中,还记录了重大闪电发生与强降水事件之间的强相关性。因此,拥有闪电活动短期预报工具的可能性可能有助于在很短的时间内识别和监测恶劣天气事件的演变。本文提出了一种应用随机森林(RF)算法,对2017-2019年8月、9月和10月在意大利领土和周边海域发生的云对地(CG)闪电进行临近预报。比较了使用三种不同空间分辨率获得的结果,表明为了提高模型识别是否存在笔画的技能,所有选择作为输入的数据通常都应在最精细的可用空间分辨率上网格化。此外,所进行的要素重要性分析证实,描述大气状态的气象要素,特别是在高海拔地区,对最终结果的影响比拓扑数据(如纬度或数字高程模型(DEM))更大。

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