Set Prediction for Next-Day Active Fire Forecasting
Yuchen Bai, Georgios Athanasiou, Xin Yu, Diogenis Antonopoulos, Ioannis Papoutsis, Stijn Hantson, Nuno Carvalhais

TL;DR
This paper introduces WISP, a novel point-set prediction model for next-day active fire forecasting, outperforming traditional grid-based methods in accuracy and localization.
Contribution
The paper presents WISP, a query-based set prediction approach for wildfire forecasting, and establishes a new global benchmark dataset for this task.
Findings
WISP achieves 38.2% average precision in fire-centre detection.
The model covers 53.4% of fire cluster mass weighted by FRP.
It localizes 54.1% of observed clusters within 5 km.
Abstract
Accurate next-day active fire forecasts can support early warning, disaster response, forest risk assessment, and downstream estimation of fire-related carbon emissions. Existing machine learning approaches to wildfire forecasting typically predict wildfire danger or fire probability on kilometre-scale daily grids, which is useful for regional warning but does not directly represent localized fire events. We propose Wildfire Ignition Set Predictor (WISP), a query-based model that reformulates next-day active fire forecasting as point-set prediction. From 48 hours of covariates including meteorology, satellite vegetation products, static land, and fire history, WISP predicts a fixed-size ranked set of future active fire cluster centres on a 375 m grid across globally distributed regions. The model is trained end-to-end with Hungarian matching; to address the conflicting roles of the…
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