A wildfire forecasting tool capable of estimating the fire perimeter position sufficiently in advance of the actual fire arrival will assist firefighting operations and optimise available resources. However, owing to limited knowledge of fire event characteristics (e.g. fuel distribution and characteristics, weather variability) and the short time available to deliver a forecast, most of the current models only provide a rough approximation of the forthcoming fire positions and dynamics. The problem can be tackled by coupling data assimilation and inverse modelling techniques. We present an inverse modelling-based algorithm that uses infrared airborne images to forecast short-term wildfire dynamics with a positive lead time. The algorithm i...
Because wildfires feature complex multi-physics occurring at multiple scales, our ability to accurat...
AbstractThis paper extends FARSITE (a software used for wildfire modeling and simulation) to incorpo...
International audienceThis paper is the first part in a series of two articles and presents a data-d...
A wildfire forecasting tool capable of estimating the fire perimeter position sufficiently in advanc...
A key factor in decision-making process during a wildfire incident is counting on the forecast of ho...
Current wildfire spread simulators lack the ability to provide accurate prediction of the active fla...
Despite advances in the understanding of fire dynamics over the past decades and despite the advanc...
In recent times there have been increasing efforts to integrate technology into wildfire management,...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
Parameter identification for wildfire forecasting models often relies on case-by-case tuning or post...
International audienceThis paper is the second part in a series of two articles, which aims at prese...
While full-physics fire models continue to be unsuitable for wildfire emergency situations, the so-c...
A new methodology to effectively forecast fire dynamics based on assimilation of sensor observations...
A Data-Driven Fire Spread Simulator: Validation in Vall-llobrega’s Fire Oriol Rios, Mario Miguel Val...
This thesis extends FARSITE (a software used for wildfire modeling and simulation) to incorporate da...
Because wildfires feature complex multi-physics occurring at multiple scales, our ability to accurat...
AbstractThis paper extends FARSITE (a software used for wildfire modeling and simulation) to incorpo...
International audienceThis paper is the first part in a series of two articles and presents a data-d...
A wildfire forecasting tool capable of estimating the fire perimeter position sufficiently in advanc...
A key factor in decision-making process during a wildfire incident is counting on the forecast of ho...
Current wildfire spread simulators lack the ability to provide accurate prediction of the active fla...
Despite advances in the understanding of fire dynamics over the past decades and despite the advanc...
In recent times there have been increasing efforts to integrate technology into wildfire management,...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
Parameter identification for wildfire forecasting models often relies on case-by-case tuning or post...
International audienceThis paper is the second part in a series of two articles, which aims at prese...
While full-physics fire models continue to be unsuitable for wildfire emergency situations, the so-c...
A new methodology to effectively forecast fire dynamics based on assimilation of sensor observations...
A Data-Driven Fire Spread Simulator: Validation in Vall-llobrega’s Fire Oriol Rios, Mario Miguel Val...
This thesis extends FARSITE (a software used for wildfire modeling and simulation) to incorporate da...
Because wildfires feature complex multi-physics occurring at multiple scales, our ability to accurat...
AbstractThis paper extends FARSITE (a software used for wildfire modeling and simulation) to incorpo...
International audienceThis paper is the first part in a series of two articles and presents a data-d...