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Classified Early Warning and Forecast of Severe Convective Weather Based on LightGBM Algorithm

机译:基于LightGBM算法的严重对流天气分类预警及预测

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Severe convective weather can lead to a variety of disasters, but they are still difficult to be pre-warned and forecasted in the meteorological operation. This study generates a model based on the light gradient boosting machine (LightGBM) algorithm using C-band radar echo products and ground observations, to identify and classify three major types of severe convective weather ( i.e. , hail, short-term heavy rain (STHR), convective gust (CG)). The model evaluations show the LightGBM model performs well in the training set (2011-2017) and the testing set (2018) with the overall false identification ratio (FIR) of only 4.9% and 7.0%, respectively. Furthermore, the average probability of detection (POD), critical success index (CSI) and false alarm ratio (FAR) for the three types of severe convective weather in two sample sets are over 85%, 65% and lower than 30%, respectively. The LightGBM model and the storm cell identification and tracking (SCIT) product are then used to forecast the severe convective weather 15 - 60 minutes in advance. The average POD, CSI and FAR for the forecasts of the three types of severe convective weather are 57.4%, 54.7% and 38.4%, respectively, which are significantly higher than those of the manual work. Among the three types of severe convective weather, the STHR has the highest POD and CSI and the lowest FAR, while the skill scores for the hail and CG are similar. Therefore, the LightGBM model constructed in this paper is able to identify, classify and forecast the three major types of severe convective weather automatically with relatively high accuracy, and has a broad application prospect in the future automatic meteorological operation.
机译:严重的对流天气可能导致各种灾难,但它们仍然难以在气象操作中预先警告和预测。本研究基于光梯度升压机(LightGBM)算法使用C波段雷达回波产品和地面观测来产生模型,以识别和分类三种主要的严重对流天气(即,冰雹,短期重雨(STHR),对流阵风(CG))。模型评估显示LightGBM模型在训练集(2011-2017)中表现良好,以及具有仅4.9%和7.0%的整体假识别比(FIR)的测试集(2018)。此外,两个样本集中的三种严重对流天气的检测(POD),临界成功指数(CSI)和误报例(CSI)和误报例(FAR)分别分别超过85%,65%和低于30% 。然后使用LightGBM模型和风暴电池识别和跟踪(SCIT)产品预测预先预测15-60分钟的严重对流天气。平均POD,CSI和远程预测的三种严重对流天气的预测分别为57.4%,54.7%和38.4%,显着高于手工工作。在三种类型的严重对流天气中,STHR具有最高的POD和CSI,而且最重要的是,冰雹和CG的技能分数是相似的。因此,本文构建的灯泡模型能够以相对高的准确度自动识别,分类和预测三种主要的对流天气,并且在未来的自动气象操作中具有广泛的应用前景。

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