Wildfire propagation is a highly stochastic process where small changes in environmental conditions (such as wind speed and direction) can lead to large changes in observed behaviour. A traditional approach to quantify uncertainty in fire-front progression is to generate probability maps via ensembles of simulations. However, use of ensembles is typically computationally expensive, which can limit the scope of uncertainty analysis. To address this, we explore the use of a spatio-temporal neural-based modelling approach to directly estimate the likelihood of fire propagation given uncertainty in input parameters. The uncertainty is represented by deliberately perturbing the input weather forecast during model training. The computational load...
Wildfires are a major concern in Argentinian northwestern Patagonia and in many ecosystems and human...
International audienceThis paper is the first part in a series of two articles and presents a data-d...
International audienceThe large and catastrophic wildfires have been increasing across the globe in ...
This work addresses the quantification of wildfire risk by relying on simulations of fire spread. Th...
International audienceSimulation is used to predict the spread of a wildland fire across land in rea...
Fire modelling is used by engineers and scientists to understand and to predict possible fire behavi...
International audienceNumerical simulations of wildfire spread can provide support in deciding firef...
This work presents a framework for assessing how the existing constraints at the time of attending a...
In many scientific areas, the use of models to represent physical systems has become a common strate...
With emerging research on the dynamics of extreme fire behavior, it is increasingly important for wi...
AbstractForests fires are a significant problem especially in countries of the Mediterranean basin. ...
Across the globe, the frequency and size of wildfire events are increasing. Research focused on mini...
Wildfire behavior predictions typically suffer from significant uncertainty. However, wildfire model...
The estimation of model parameters with uncertainties from observed data is an ubiquitous inverse pr...
Predicting wildfire spread is a challenging task fraught with uncertainties. ‘Perfect’ predictions a...
Wildfires are a major concern in Argentinian northwestern Patagonia and in many ecosystems and human...
International audienceThis paper is the first part in a series of two articles and presents a data-d...
International audienceThe large and catastrophic wildfires have been increasing across the globe in ...
This work addresses the quantification of wildfire risk by relying on simulations of fire spread. Th...
International audienceSimulation is used to predict the spread of a wildland fire across land in rea...
Fire modelling is used by engineers and scientists to understand and to predict possible fire behavi...
International audienceNumerical simulations of wildfire spread can provide support in deciding firef...
This work presents a framework for assessing how the existing constraints at the time of attending a...
In many scientific areas, the use of models to represent physical systems has become a common strate...
With emerging research on the dynamics of extreme fire behavior, it is increasingly important for wi...
AbstractForests fires are a significant problem especially in countries of the Mediterranean basin. ...
Across the globe, the frequency and size of wildfire events are increasing. Research focused on mini...
Wildfire behavior predictions typically suffer from significant uncertainty. However, wildfire model...
The estimation of model parameters with uncertainties from observed data is an ubiquitous inverse pr...
Predicting wildfire spread is a challenging task fraught with uncertainties. ‘Perfect’ predictions a...
Wildfires are a major concern in Argentinian northwestern Patagonia and in many ecosystems and human...
International audienceThis paper is the first part in a series of two articles and presents a data-d...
International audienceThe large and catastrophic wildfires have been increasing across the globe in ...