INVESTIGADORES
CAYMES SCUTARI Paola Guadalupe
artículos
Título:
Evolutionary-Statistical System: a Parallel Method for Improving Forest Fire Spread Prediction
Autor/es:
BIANCHINI, GERMÁN; CAYMES SCUTARI, PAOLA; MENDEZ GARABETTI, MIGUEL
Revista:
Journal of Computational Science
Editorial:
Elsevier
Referencias:
Lugar: Amsterdam; Año: 2014
ISSN:
1877-7503
Resumen:
Fighting fires is a very risky job, where loss of life is a real possibility. Proper training is essential. Several firemen academies offer courses and programs whose goal is to enhance the ability of fire and emergency services to deal more effectively with fire. Among the tools that can be found in the training process are fire simulators, which are used both for training and for the prediction of forest fires. In many cases, the used simulators are based on models that present a series of limitations related to the need for a large number of input parameters. Moreover, such parameters often have some degree of uncertainty due to the impossibility of measuring all of them in real time. Therefore, they have to be estimated from indirect measurements, which negatively impacts on the output of the model. In this paper we present a method which combines Statistical Analysis with Parallel Evolutionary Algorithms to improve the quality of the model output.