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Deep Learning Models for Predicting Wildfires from Historical Remote-Sensing Data

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arxiv 2010.07445 v3 pith:3RVJRVLI submitted 2020-10-15 cs.CV cs.LG

Deep Learning Models for Predicting Wildfires from Historical Remote-Sensing Data

classification cs.CV cs.LG
keywords datalearningdeeplikelihoodmodelswildfiresfirehigh
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Identifying regions that have high likelihood for wildfires is a key component of land and forestry management and disaster preparedness. We create a data set by aggregating nearly a decade of remote-sensing data and historical fire records to predict wildfires. This prediction problem is framed as three machine learning tasks. Results are compared and analyzed for four different deep learning models to estimate wildfire likelihood. The results demonstrate that deep learning models can successfully identify areas of high fire likelihood using aggregated data about vegetation, weather, and topography with an AUC of 83%.

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