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.
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