Probabilistic Forecasting of Localized Wildfire Spread Based on Conditional Flow Matching

arXiv cs.LG / 3/31/2026

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Key Points

  • The paper introduces a probabilistic surrogate model for localized wildfire spread that uses a conditional flow matching algorithm to learn the distribution of fire arrival times given the current fire and environmental state.
  • Inputs to the model include high-resolution grid features such as burned area, near-surface wind components, temperature, relative humidity, terrain height, and fuel category, while outputs are ensembles of arrival-time samples within a three-hour forecast window.
  • Training data are generated from coupled atmosphere–wildfire simulations using WRF-SFIRE and paired weather fields from the North American Mesoscale model, enabling the approach to capture uncertainty in the coupled fire–atmosphere system.
  • The framework supports both single-step (3-hour) and recursive multi-step (24-hour) forecasts, showing it can reproduce variability in fire evolution and produce accurate ensemble predictions compared with WRF-SFIRE.
  • By generating probabilistic ensembles much faster than physics-based simulators and remaining sensitive to key drivers, the method is positioned as a scalable ML component for operational forecasting and potential integration with data assimilation.

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 explicitly represents uncertainty arising from incomplete knowledge of the fire-atmosphere system and unresolved variables. The model supports localized prediction over subdomains, reducing computational cost relative to physics-based simulators while retaining sensitivity to key drivers of fire spread. Model performance is evaluated against WRF-SFIRE simulations for both single-step (3-hour) and recursive multi-step (24-hour) forecasts. Results demonstrate that the method captures variability in fire evolution and produces accurate ensemble predictions. The framework provides a scalable approach for probabilistic wildfire forecasting and offers a pathway for integrating machine learning models with operational fire prediction systems and data assimilation.