AbstractNatural hazards are significant problems that every year cause important loses around the world. A good prediction of the behavior of the hazards is a crucial issue to fight against them and to minimize the damages. The models that represent these phenomena need several input parameters and in many cases, such parameters are diffcult to know or even to estimate in a real scenario. So, a methodology based on the DDDAS paradigm was developed to calibrate the input parameters according to real observations of the behavior and evolution of the hazard. Such calibrated parameters are then used to provide an improved prediction for the next time interval. This methodology was tested on Forest Fire Propagation Prediction with significant re...
AbstractForests fires are a significant problem especially in countries of the Mediterranean basin. ...
Southern European countries are severally affected by forest fires every year, which lead to very la...
AbstractSouthern European countries are severally affected by forest fires every year, which lead to...
AbstractNatural hazards are significant problems that every year cause important loses around the wo...
Natural hazards are significant problems that every year cause important loses around the world. A g...
AbstractForest fires cause important losses around the world every year. A good prediction of fire p...
Forest fires cause important losses around the world every year. A good prediction of fire propagati...
AbstractForest fire devastate every year thousand of hectares of forest around the world. Fire behav...
AbstractThis work faces the problem of quality and prediction time assessment in a Dynamic Data Driv...
International Conference on Computational Science, ICCS 2015 – Computational Science at the Gates of...
Abstract. This work presents a novel idea for forest fire prediction, based on Dynamic Data Driven A...
Abstract. This work represents the first step toward a DDDAS for Wildland Fire Prediction where our ...
This work faces the problem of quality and prediction time assessment in a Dynamic Data Driven Appli...
AbstractThe accurate prediction of forest fire propagation is a crucial issue to minimize its effect...
AbstractA quick response becomes crucial in natural hazard management. When an emergency occurs, haz...
AbstractForests fires are a significant problem especially in countries of the Mediterranean basin. ...
Southern European countries are severally affected by forest fires every year, which lead to very la...
AbstractSouthern European countries are severally affected by forest fires every year, which lead to...
AbstractNatural hazards are significant problems that every year cause important loses around the wo...
Natural hazards are significant problems that every year cause important loses around the world. A g...
AbstractForest fires cause important losses around the world every year. A good prediction of fire p...
Forest fires cause important losses around the world every year. A good prediction of fire propagati...
AbstractForest fire devastate every year thousand of hectares of forest around the world. Fire behav...
AbstractThis work faces the problem of quality and prediction time assessment in a Dynamic Data Driv...
International Conference on Computational Science, ICCS 2015 – Computational Science at the Gates of...
Abstract. This work presents a novel idea for forest fire prediction, based on Dynamic Data Driven A...
Abstract. This work represents the first step toward a DDDAS for Wildland Fire Prediction where our ...
This work faces the problem of quality and prediction time assessment in a Dynamic Data Driven Appli...
AbstractThe accurate prediction of forest fire propagation is a crucial issue to minimize its effect...
AbstractA quick response becomes crucial in natural hazard management. When an emergency occurs, haz...
AbstractForests fires are a significant problem especially in countries of the Mediterranean basin. ...
Southern European countries are severally affected by forest fires every year, which lead to very la...
AbstractSouthern European countries are severally affected by forest fires every year, which lead to...