Probabilistic Forecasting of Localized Wildfire Spread Based on Conditional Flow Matching
Bryan Shaddy, Haitong Qin, Brianna Binder, James Haley, Riya Duddalwar, Kyle Hilburn, and Assad Oberai

TL;DR
This paper introduces a probabilistic surrogate model for localized wildfire spread using conditional flow matching, enabling efficient ensemble predictions and uncertainty quantification based on environmental inputs.
Contribution
The study develops a novel conditional flow matching approach for wildfire spread modeling, improving computational efficiency and uncertainty representation over traditional physics-based models.
Findings
Model accurately captures fire spread variability.
Enables efficient ensemble wildfire predictions.
Reduces computational cost compared to physics-based simulators.
Abstract
This study presents a probabilistic surrogate model for localized wildfire spread based on a conditional flow matching algorithm. The approach models fire progression as a stochastic process by learning the conditional distribution of fire arrival times given the current fire state along with environmental and atmospheric inputs. Model inputs include current burned area, near-surface wind components, temperature, relative humidity, terrain height, and fuel category information, all defined on a high-resolution spatial grid. The outputs are samples of arrival time within a three-hour time window, conditioned on the input variables. Training data are generated from coupled atmosphere-wildfire spread simulations using WRF-SFIRE, paired with weather fields from the North American Mesoscale model. The proposed framework enables efficient generation of ensembles of arrival times and…
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