Wildfire forecasting is of paramount importance for disaster risk reduction and environmental sustainability. We approach daily fire danger prediction as a machine learning task, using historical Earth observation data from the last decade to predict next-day's fire danger. To that end, we collect, pre-process and harmonize an open-access datacube, featuring a set of covariates that jointly affect the fire occurrence and spread, such as weather conditions, satellite-derived products, topography features and variables related to human activity. We implement a variety of Deep Learning (DL) models to capture the spatial, temporal or spatio-temporal context and compare them against a Random Forest (RF) baseline. We find that either spatial or temporal context is enough to surpass the RF, while a ConvLSTM that exploits the spatio-temporal context performs best with a test Area Under the Receiver Operating Characteristic of 0.926. Our DL-based proof-of-concept provides national-scale daily fire danger maps at a much higher spatial resolution than existing operational solutions.
翻译:野火预报对于减少灾害风险和环境可持续性至关重要。我们把每日火灾危险预测作为一种机器学习任务,利用过去十年来的历史地球观测数据预测下天的火灾危险。为此,我们收集、预处理和协调一个开放存取数据库,其特点是一组共同变量,共同影响火灾的发生和蔓延,如天气条件、卫星衍生产品、地形特征以及与人类活动有关的变量。我们采用各种深层学习模型,以捕捉空间、时间或时空环境,并将其与随机森林基线进行比较。我们发现,空间或时空环境足以超过RF,而利用spatio-时空环境的ConvLSTM则在0.926接收器操作特征下的试验区中最出色地运行。我们基于DL的校准概念提供了比现有操作解决方案更高的空间分辨率的全国性每日火灾危险地图。