Probabilistic Forecasting of Lightning Strikes over the Continental USA and Alaska: Model Development and Verification

Fire Pub Date : 2024-03-28 DOI:10.3390/fire7040111
Ned Nikolov, Phillip Bothwell, John Snook
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Abstract

Lightning is responsible for the most area annually burned by wildfires in the extratropical region of the Northern Hemisphere. Hence, predicting the occurrence of wildfires requires reliable forecasting of the chance of cloud-to-ground lightning strikes during storms. Here, we describe the development and verification of a probabilistic lightning-strike algorithm running on a uniform 20 km grid over the continental USA and Alaska. This is the first and only high-resolution lightning forecasting model for North America derived from 29-year-long data records. The algorithm consists of a large set of regional logistic equations parameterized on the long-term data records of observed lightning strikes and meteorological reanalysis fields from NOAA. Principal Component Analysis was employed to extract 13 principal components from a list of 611 potential predictors. Our analysis revealed that the occurrence of cloud-to-ground lightning strikes primarily depends on three factors: the temperature and geopotential heights across vertical pressure levels, the amount of low-level atmospheric moisture, and wind vectors. These physical variables isolate the conditions that are favorable for the development of thunderstorms and impact the vertical separation of electric charges in the lower troposphere during storms, which causes the voltage potential between the ground and the cloud deck to increase to a level that triggers electrical discharges. The results from a forecast verification using independent data showed excellent model performance, thus making this algorithm suitable for incorporation into models designed to forecast the chance of wildfire ignitions.
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美国大陆和阿拉斯加雷击概率预报:模型开发与验证
在北半球的外热带地区,每年野火燃烧面积最大的原因是闪电。因此,要预测野火的发生,就必须可靠地预测风暴期间云对地雷击的几率。在此,我们介绍了在美国大陆和阿拉斯加 20 千米统一网格上运行的概率雷击算法的开发和验证情况。这是第一个也是唯一一个根据长达 29 年的数据记录得出的北美高分辨率闪电预报模型。该算法由一大套区域逻辑方程组组成,其参数化依据的是观测到的雷击长期数据记录和来自 NOAA 的气象再分析场。采用主成分分析法从 611 个潜在预测因子中提取了 13 个主成分。我们的分析表明,云对地雷击的发生主要取决于三个因素:各垂直气压层的温度和位势高度、低层大气湿度和风矢量。这些物理变量隔离了有利于雷暴发展的条件,并影响风暴期间对流层低层电荷的垂直分离,从而导致地面和云层之间的电压电位上升到引发放电的水平。使用独立数据进行预测验证的结果表明,模型性能极佳,因此该算法适合纳入旨在预测野火点燃几率的模型中。
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