Physics-Informed ML Simulator for Wildfire Propagation
Francesco Calisto, Simone Azeglio, Valerio Pagliarino, Luca Bottero
The aim of this work is to evaluate the feasibility of re-implementing some key parts of the widely used Weather Research and Forecasting WRF-SFIRE simulator by replacing its core differential equations numerical solvers with state-of-the-art physics-informed machine learning techniques to solve ODEs and PDEs implemented in Julia, in order to transform it into a real-time simulator for wildfire spread prediction.