Hybrid fireworks algorithm with differential evolution operator
by Jinglei Guo; Wei Liu; Ming Liu; Shijue Zheng
International Journal of Intelligent Information and Database Systems (IJIIDS), Vol. 12, No. 1/2, 2019

Abstract: As a population-based intelligence algorithm, fireworks algorithm simulates the fireworks' explosion process to solve optimisation problem. A comprehensive study on enhanced fireworks algorithm (EFWA) reveals that the explosion operator generates too much sparks for the best firework limits the exploration ability. A hybrid version of EFWA (HFWA_DE) is proposed by adding the differential evolution (DE) operator. In HFWA_DE, the population is divided into two subpopulations, then each subpopulation evolves with FWA operator and DE operator separately and exchanges the elitist individual. Experiments on 20 well-known benchmark functions are conducted to illustrate the performance of HFWA_DE. The results turn out HFWA_DE outperforms some state-of-the-art FWAs on most testing functions.

Online publication date: Wed, 18-Sep-2019

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