Projecting Large Fires in the Western US With an Interpretable and Accurate Hybrid Machine Learning Method
Fa Li,
Qing Zhu,
Kunxiaojia Yuan
et al.
Abstract:More frequent and widespread large fires are occurring in the western United States (US), yet reliable methods for predicting these fires, particularly with extended lead times and a high spatial resolution, remain challenging. In this study, we proposed an interpretable and accurate hybrid machine learning (ML) model, that explicitly represented the controls of fuel flammability, fuel availability, and human suppression effects on fires. The model demonstrated notable accuracy with a F1‐score of 0.846 ± 0.012… Show more
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