Pyrocumulonimbus (pyroCb) clouds are storm clouds generated by extreme wildfires. PyroCbs are associated with unpredictable, and therefore dangerous, wildfire spread. They can also inject smoke particles and trace gases into the upper troposphere and lower stratosphere, affecting the Earth's climate. As global temperatures increase, these previously rare events are becoming more common. Being able to predict which fires are likely to generate pyroCb is therefore key to climate adaptation in wildfire-prone areas. This paper introduces Pyrocast, a pipeline for pyroCb analysis and forecasting. The pipeline's first two components, a pyroCb database and a pyroCb forecast model, are presented. The database brings together geostationary imagery and environmental data for over 148 pyroCb events across North America, Australia, and Russia between 2018 and 2022. Random Forests, Convolutional Neural Networks (CNNs), and CNNs pretrained with Auto-Encoders were tested to predict the generation of pyroCb for a given fire six hours in advance. The best model predicted pyroCb with an AUC of $0.90 \pm 0.04$.
翻译:Pyrocumulonimbus (pyroCb) 云是极端野火引发的风暴云。 PyroCb 与不可预测的野火相关,因此是危险的野火扩散。 它们也可以向上对流层和低平流层注入烟雾颗粒和痕量气体,影响地球气候。 随着全球气温升高,这些以前罕见的事件越来越常见。 因此,能够预测哪些火灾有可能产生热气球是野火易发地区的气候适应的关键。 本文介绍了Pyrocast, 这是热气分析和预报的管道。 管道的前两个组成部分, 一个热气球数据库和一个热气球预测模型。 数据库汇集了2018年至2022年间北美、澳大利亚和俄罗斯各地超过148个热气球事件的地球静止图像和环境数据。 随机森林、 革命神经网络(CNNNN) 和预先训练的CNNS 与自动- Ecorder 进行了测试,以预测给定火的pyroCb的生成情况。 预言的A04+0.90美元模型预估测。