Estimation Of Fuel Moisture Content By Integrating Surface And Satellite Observations Using Machine Learning

IGARSS 2020 - 2020 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM(2020)

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摘要
Fuel moisture content (FMC) is an important fuel property and an important parameter controlling the rate spread of a wildland fire. Currently the dead FMC is estimated based on relatively sparse observations over Conterminous United States while the live FMC is sampled manually and infrequently. An effective operational wildland fire prediction requires real-time, high-resolution fuel moisture content data set. We have therefore developed a fuel moisture content data set by combining satellite and surface observations as well as National Water Model output using a machine learning model. The new FMC data set is integrated in the Colorado Fire Prediction System (CO-FPS) for operational wildland fire prediction.
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关键词
Fuel moisture content, MODIS satellite observations, machine learning model, National Water Model, random forest algorithm
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