Short-term lightning prediction in the Amazon region using ground-based weather station data and machine learning techniques

A. Leal, Wendler L. N. Matos
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Abstract

Lightning occurrence is a real threat to human beings and animals over the Amazon region. Lightning is also responsible for economic losses in electric, telecommunication, and other sectors, but its prediction remains a challenging task. Lightning prediction can contribute to minimizing the risks and losses caused by this natural phenomenon. In this work, we have used data from ground-based weather stations, including air temperature, humidity, pressure, and wind speed to predict lightning occurrence within one hour. Forecasts are made for a region up to about 30 km from each of the nine capital cities of the nine states of the Legal Amazon region in Brazil. We use GLD360 data to validate predictions and train the machine learning algorithm. We used a database of 6 years of observation (2015 to 2020) to test and validate the prediction models. The model for Belém - Pará showed the highest F1-Score, 0.34, and the highest Area Under the ROC Curve, 0.836. Overall, the accuracy of the models for each city is higher than 71%. This approach can be used in regions of the Amazon in which only ground-based weather station data is available.
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利用地面气象站数据和机器学习技术对亚马逊地区的短期闪电进行预测
闪电的发生对亚马逊地区的人类和动物构成了真正的威胁。闪电也造成电力、电信和其他部门的经济损失,但对其进行预测仍然是一项具有挑战性的任务。闪电预测有助于将这种自然现象造成的风险和损失降至最低。在这项工作中,我们使用了地面气象站的数据,包括气温、湿度、压力和风速,来预测一小时内的闪电发生。预测的范围是距离巴西亚马孙地区9个州的9个首府城市各30公里的地区。我们使用GLD360数据来验证预测并训练机器学习算法。我们使用了一个6年的观测数据库(2015 - 2020)来检验和验证预测模型。bel - par模型的f1得分最高,为0.34,ROC曲线下面积最高,为0.836。总体而言,每个城市的模型准确率都高于71%。这种方法可以用于只有地面气象站数据可用的亚马逊地区。
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