Title of article :
EMPSACO: AN IMPROVED HYBRID OPTIMIZATION ALGORITHM BASED ON PARTICLE SWARM, ANT COLONY AND ELITIST MUTATION ALGORITHMS
Author/Authors :
KHASHEI- SIUKI, A. university of birjand - Department of Water Engineering, بيرجند, ايران , TADAYONI NAVAEI, I. islamic azad university - Department of Mechanical Engineering, ايران , GHAHRAMAN, B. ferdowsi university of mashhad - Department of Irrigating, مشهد, ايران , KOUCHAKZADEH, M. tarbiat modares university - Department of Irrigating and Drainage Eng, تهران, ايران
Abstract :
This research presents an efficient and reliable swarm intelligence-based approach, ant colony optimization and elitist-mutated particle swarm optimization. Methods of particle swarm optimization (PSO) and ant colony optimization (ACO) and elitist mutation particle swarm optimization (EMPSO) are co-operative, population-based global search swarm intelligence metaheuristics. PSO is inspired by social behavior of bird flocking or fish schooling, while ACO imitates foraging behavior of real life ants and Elitist mutation taken from genetic mutation from genetic algorithm techniques. In this study, we explore a simple approach to improve the performance of the PSO method for optimization of multimodal continuous functions. The proposed EMPSACO algorithm is tested on several test functions from the usual literature and compared with PSO, PSACO and GA (Genetic Algorithm). Results showed that the effectiveness and efficiency of the proposed EMPSACO method had suitable accuracy to optimize multimodal functions.
Keywords :
Particle swarm optimization , ant colony , elitist mutation , metaheuristics , EMPSACO
Journal title :
Iranian Journal of Science and Technology: Transactions of Civil Engineering
Journal title :
Iranian Journal of Science and Technology: Transactions of Civil Engineering