info:eu-repo/semantics/article
Optimization for an Uncertainty Reduction Method Applied to Forest Fires Spread Prediction
Registro en:
Computer Science
10.1007/978-3-319-75214-3_2
Autor
Tardivo, María
Caymes Scutari, Paola
Méndez Garabetti, Miguel
Bianchini, Germán
Institución
Resumen
Forest fires prediction represents a great computational and
mathematical challenge. The complexity lies both in the definition of
mathematical models for describing the physical phenomenon and in the
impossibility of measuring in real time all the parameters that determine
the fire behaviour. ESSIM (Evolutionary Statistical System with
Island Model) is an uncertainty reduction method that uses Statistic,
High Performance Computing and Evolutionary Strategies in order to
guide the search towards better solutions. ESSIM has been implemented
with two different search strategies: the method ESSIM-EA uses Evolutionary
Algorithms as optimization engine, whilst ESSIM-DE uses the
Differential Evolution algorithm. ESSIM-EA has shown to obtain good
quality of predictions, while ESSIM-DE obtains better response times.
This article presents an alternative to improve the quality of solutions
reached by ESSIM-DE, based on the analysis of the relationship between
the evolutionary strategy convergence speed and the population distribution
at the beginning of each prediction step. Universidad Tecnológica Nacional. Facultad Regional Mendoza; Argentina Peer Reviewed