Predicting wildfire spread is a challenging task fraught with uncertainties. ‘Perfect’ predictions are unfeasible since uncertainties will always be present. Improving fire spread predictions is important to reduce its negative environmental impacts. Here, we propose to understand, characterize, and quantify the impact of uncertainty in the accuracy of fire spread predictions for very large wildfires. We frame this work from the perspective of the major problems commonly faced by fire model users, namely the necessity of accounting for uncertainty in input data to produce reliable and useful fire spread predictions. Uncertainty in input variables was propagated throughout the modeling framework and its impact was evaluated by estimati...
With emerging research on the dynamics of extreme fire behavior, it is increasingly important for wi...
Current wildfire spread simulators lack the ability to provide accurate prediction of the active fla...
Thesis (Ph.D.)--University of Washington, 2021Gauging the magnitude of model uncertainty and incorpo...
Doutoramento em Engenharia Florestal e dos Recursos Naturais - Instituto Superior de AgronomiaWildfi...
Background: An approach to predict fire growth in an operational setting, with the potential to be ...
Wildfire behavior predictions typically suffer from significant uncertainty. However, wildfire model...
International audienceNumerical simulations of wildfire spread can provide support in deciding firef...
As the climate changes, it is important to understand the effects on the environment. Changes in wil...
While full-physics fire models continue to be unsuitable for wildfire emergency situations, the so-c...
International audienceSimulation is used to predict the spread of a wildland fire across land in rea...
Wildland fires have become a major research subject among the national and international research co...
A Data-Driven Fire Spread Simulator: Validation in Vall-llobrega’s Fire Oriol Rios, Mario Miguel Val...
AbstractForests fires are a significant problem especially in countries of the Mediterranean basin. ...
Models of wildfire threat are often used in the management of fire-prone areas for purposes such as ...
Computational models of wildfires are necessary for operational prediction and risk assessment. Thes...
With emerging research on the dynamics of extreme fire behavior, it is increasingly important for wi...
Current wildfire spread simulators lack the ability to provide accurate prediction of the active fla...
Thesis (Ph.D.)--University of Washington, 2021Gauging the magnitude of model uncertainty and incorpo...
Doutoramento em Engenharia Florestal e dos Recursos Naturais - Instituto Superior de AgronomiaWildfi...
Background: An approach to predict fire growth in an operational setting, with the potential to be ...
Wildfire behavior predictions typically suffer from significant uncertainty. However, wildfire model...
International audienceNumerical simulations of wildfire spread can provide support in deciding firef...
As the climate changes, it is important to understand the effects on the environment. Changes in wil...
While full-physics fire models continue to be unsuitable for wildfire emergency situations, the so-c...
International audienceSimulation is used to predict the spread of a wildland fire across land in rea...
Wildland fires have become a major research subject among the national and international research co...
A Data-Driven Fire Spread Simulator: Validation in Vall-llobrega’s Fire Oriol Rios, Mario Miguel Val...
AbstractForests fires are a significant problem especially in countries of the Mediterranean basin. ...
Models of wildfire threat are often used in the management of fire-prone areas for purposes such as ...
Computational models of wildfires are necessary for operational prediction and risk assessment. Thes...
With emerging research on the dynamics of extreme fire behavior, it is increasingly important for wi...
Current wildfire spread simulators lack the ability to provide accurate prediction of the active fla...
Thesis (Ph.D.)--University of Washington, 2021Gauging the magnitude of model uncertainty and incorpo...