AbstractForest fire devastate every year thousand of hectares of forest around the world. Fire behavior prediction is a useful tool to aid coordination and management of human and mitigation resources when fighting against these kind of hazards. Any fire spread forecast system requires to be fitted with different kind of data with a high degree of uncertainty, such as for example, me- teorological data and vegetation map among others. The dynamics of this kind of phenomena requires to develop a forecast system with the ability to adapt to changing conditions. In this work two different fire spread forecast systems based on the Dynamic Data Driven Application paradigm are applied and an alternative approach based on the combination of both p...
AbstractThis work faces the problem of quality and prediction time assessment in a Dynamic Data Driv...
AbstractThe most important aspect that affects the reliability of environmental simulations is the u...
This work faces the problem of quality and prediction time assessment in a Dynamic Data Driven Appli...
International Conference on Computational Science, ICCS 2015 – Computational Science at the Gates of...
AbstractForest fire devastate every year thousand of hectares of forest around the world. Fire behav...
AbstractForest fires cause important losses around the world every year. A good prediction of fire p...
AbstractNatural hazards are significant problems that every year cause important loses around the wo...
AbstractSouthern European countries are severally affected by forest fires every year, which lead to...
AbstractWe have applied the Dynamic Data Driven Application System (DDDAS) methodology to predict wi...
Abstract. This work represents the first step toward a DDDAS for Wildland Fire Prediction where our ...
AbstractThe European Forest Fire Information System (EFFIS) has been established by the Joint Resear...
Forest fires cause important losses around the world every year. A good prediction of fire propagati...
This work describes a two stages prediction method for wildland fire growth prediction. Proposed meth...
AbstractThe accurate prediction of forest fire propagation is a crucial issue to minimize its effect...
AbstractForests fires are a significant problem especially in countries of the Mediterranean basin. ...
AbstractThis work faces the problem of quality and prediction time assessment in a Dynamic Data Driv...
AbstractThe most important aspect that affects the reliability of environmental simulations is the u...
This work faces the problem of quality and prediction time assessment in a Dynamic Data Driven Appli...
International Conference on Computational Science, ICCS 2015 – Computational Science at the Gates of...
AbstractForest fire devastate every year thousand of hectares of forest around the world. Fire behav...
AbstractForest fires cause important losses around the world every year. A good prediction of fire p...
AbstractNatural hazards are significant problems that every year cause important loses around the wo...
AbstractSouthern European countries are severally affected by forest fires every year, which lead to...
AbstractWe have applied the Dynamic Data Driven Application System (DDDAS) methodology to predict wi...
Abstract. This work represents the first step toward a DDDAS for Wildland Fire Prediction where our ...
AbstractThe European Forest Fire Information System (EFFIS) has been established by the Joint Resear...
Forest fires cause important losses around the world every year. A good prediction of fire propagati...
This work describes a two stages prediction method for wildland fire growth prediction. Proposed meth...
AbstractThe accurate prediction of forest fire propagation is a crucial issue to minimize its effect...
AbstractForests fires are a significant problem especially in countries of the Mediterranean basin. ...
AbstractThis work faces the problem of quality and prediction time assessment in a Dynamic Data Driv...
AbstractThe most important aspect that affects the reliability of environmental simulations is the u...
This work faces the problem of quality and prediction time assessment in a Dynamic Data Driven Appli...