Repository logo
 
No Thumbnail Available
Publication

An improvement of genetic algorithm based on dynamic operators rates controlled by the population performance

Use this identifier to reference this record.

Advisor(s)

Abstract(s)

This work presents a hybrid approach of genetic algorithm with dynamic operators rates that adapt to the phases of the evolutionary process. The operator’s rates are controlled by the amplitude variation and standard deviation of the objective function. Besides, a new stopping criterion is presented to be used in conjunction with the proposed algorithm. The developed approach is tested with six optimization benchmark functions from the literature. The results are compared to the genetic algorithm with constant rates in terms of the number of function evaluations, the number of iterations, execution time and optimum solution analysis.

Description

Keywords

Genetic algorithm Genetic operators Dynamic rates Hybrid approach

Citation

Azevedo, Beatriz Flamia; Pereira, Ana I.; Bressan, Glaucia (2020). An improvement of genetic algorithm based on dynamic operators rates controlled by the population performance. In 9th International Conference on Operations Research and Enterprise Systems, ICORES 2020. Valleta

Research Projects

Organizational Units

Journal Issue