Sistemas Fuzzy genéticos baseados em regras: um operador de seleção com foco na diversidade das soluções
Fecha
2017-02-17Autor
Prado, Eduardo Fernando Velludo
Metadatos
Mostrar el registro completo del ítemResumen
The automatic generation and optimization of Fuzzy Systems is an important area
because the manually generation and optimization is very hard and may require
one or more specialists. Even with the help of specialists the work may be
impossible according to the variables involved and the complexity of the problem.
One of many possibilities to help solve this problem is the use of Inteligent Systems.
The Multiobjective Genetic Fuzzy Systems are one example of Intelligent Systems
that use Multiobjetive Genetic Algorithm. The propose of the Multiobjetives
Genetics Algorithms is generate solutions that satisfies more than one objective at
once. The selection of the individuals that will generate the next offspring depends
on the Multiobjetive Genetic Algorithm used, each one of them uses a different
method. The propose of this work is to implement an alternative selection method
for the Multiobjective Genetic Algorithm (2+2) M-PAES. This method aimed to
improve the dispersion of the solutions but it has improved the accuracy of the
results and has keeped the interpretability of the Fuzzy System.