2024
DOI: 10.1029/2023jd040514
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Forecasting Daily Fire Radiative Energy Using Data Driven Methods and Machine Learning Techniques

Laura H. Thapa,
Pablo E. Saide,
Jacob Bortnik
et al.

Abstract: Increasing impacts of wildfires on Western US air quality highlights the need for forecasts of smoke emissions based on dynamic modeled wildfires. This work utilizes knowledge of weather, fuels, topography, and firefighting, combined with machine learning and other statistical methods, to generate 1‐ and 2‐day forecasts of fire radiative energy (FRE). The models are trained on data covering 2019 and 2021 and evaluated on data for 2020. For the 1‐day (2‐day) forecasts, the random forest model shows the most ski… Show more

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