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arxiv 2105.10880 v2 pith:33AZBFMT submitted 2021-05-23 cs.LG cs.HCcs.IR

RtFPS: An Interactive Map that Visualizes and Predicts Wildfires in the US

classification cs.LG cs.HCcs.IR
keywords wildfireschangeclimateinteractivepredictionprovidesreal-timerisk
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Climate change has largely impacted our daily lives. As one of its consequences, we are experiencing more wildfires. In the year 2020, wildfires burned a record number of 8,888,297 acres in the US. To awaken people's attention to climate change, and to visualize the current risk of wildfires, We developed RtFPS, "Real-Time Fire Prediction System". It provides a real-time prediction visualization of wildfire risk at specific locations base on a Machine Learning model. It also provides interactive map features that show the historical wildfire events with environmental info.

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