Scalable & explainable ML for wildfire risk modeling in Southern Europe: A case-study in Portugal (Papers Track) Spotlight

Ophélie Meuriot (Denmark Technical University); Jorge Soto Martin (Denmark Technical University); Beichen Zhang (Lawrence Berkeley National Laboratory); Francisco Camara Pereira (Denmark Technical University); Martin Drews (Denmark Technical University)

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Climate Science & Modeling Disaster Management and Relief Interpretable ML

Abstract

Wildfires constitute one of the most devastating natural disasters, with wide impacts across economic sectors and society in Europe. The study shows how data-driven models can be used to combine human, topographic, land cover and climate data to quantify wildfire risk. Four machine learning models are trained on a historical record of fires (from June to October between 2008 and 2023) in Southern Europe excluding Portugal. The Random Forest (RF) model (AUC = 0.91 and F1 = 0.85) is then run daily in Portugal (12 x 12 km grid) during October 2017, a month during which devastating wildfires were the cause of 51 casualties. The model is found to represent high-risk areas more accurately than the widely used Fire Weather Index (FWI). Key features influencing the high fire risk during the period are identified using explainable AI. This study provides a scalable and lightweight model, which can be used to support climate impact assessments by (1) quantifying high-risk areas and (2) identifying key drivers to inform adaptation strategies.