Disturbance events can happen at a temporal scale much faster than wildland fire fuel data updates. When used as input for wildland fire behavior models, outdated fuel datasets can contribute to misleading forecasts, which have implications for operational firefighting, mitigation, and wildland fire research. Remote sensing and machine learning methods can provide a solution for on-demand fuel estimation. Here, we show a proof of concept using C-band synthetic aperture radar and multispectral imagery, land cover classes, and tree mortality surveys to train a random forest classifier to estimate wildland fire fuel data in the East Troublesome Fire (Colorado) domain. The algorithm classified over 80% of the test dataset correctly, and the res...
Climate change causes more extreme droughts and heat waves in Central Europe, affecting vegetative f...
Computational models of wildfires are necessary for operational prediction and risk assessment. Thes...
Effective wildfire management and prevention strategies depend on accurate forecasts of fire occurre...
Wildfires in Alaska have been increasing in frequency, size, and intensity putting a strain on commu...
Across the globe, the frequency and size of wildfire events are increasing. Research focused on mini...
Accurate estimation of fuels is essential for wildland fire simulations as well as decision-making r...
In recent decades, wildfires in the United States have increased in frequency and intensity. As glob...
This dissertation presents the potential of small unmanned aircrafts systems (sUAS) to provide affor...
The impact of wildfires, even following the fire's extinguishment, continues to affect harmfully pub...
As the ecosystem science community learns more about tundra ecosystems and disturbance in tundra, a ...
Using Machine Learning and Aggregated Remote Sensing Data for Wildfire Occurrence Prediction and Fea...
With the increasing threat of wildfires globally, improving the availability of accurate, spatially ...
Every year, millions of acres of forest and rangeland are burned in prescribed burns as well as wild...
Wildfires present a great danger to human lives and their environments. Early detection and rapid sp...
Modeling the spread of wildland fires is essential for assessing and managing fire risks. However, t...
Climate change causes more extreme droughts and heat waves in Central Europe, affecting vegetative f...
Computational models of wildfires are necessary for operational prediction and risk assessment. Thes...
Effective wildfire management and prevention strategies depend on accurate forecasts of fire occurre...
Wildfires in Alaska have been increasing in frequency, size, and intensity putting a strain on commu...
Across the globe, the frequency and size of wildfire events are increasing. Research focused on mini...
Accurate estimation of fuels is essential for wildland fire simulations as well as decision-making r...
In recent decades, wildfires in the United States have increased in frequency and intensity. As glob...
This dissertation presents the potential of small unmanned aircrafts systems (sUAS) to provide affor...
The impact of wildfires, even following the fire's extinguishment, continues to affect harmfully pub...
As the ecosystem science community learns more about tundra ecosystems and disturbance in tundra, a ...
Using Machine Learning and Aggregated Remote Sensing Data for Wildfire Occurrence Prediction and Fea...
With the increasing threat of wildfires globally, improving the availability of accurate, spatially ...
Every year, millions of acres of forest and rangeland are burned in prescribed burns as well as wild...
Wildfires present a great danger to human lives and their environments. Early detection and rapid sp...
Modeling the spread of wildland fires is essential for assessing and managing fire risks. However, t...
Climate change causes more extreme droughts and heat waves in Central Europe, affecting vegetative f...
Computational models of wildfires are necessary for operational prediction and risk assessment. Thes...
Effective wildfire management and prevention strategies depend on accurate forecasts of fire occurre...