Computer Science and Information Systems 2016 Volume 13, Issue 1, Pages: 259-285
https://doi.org/10.2298/CSIS141229041L
Full text ( 1156 KB)
Cited by
A novel animal migration algorithm for global numerical optimization
Luo Qifang (Guangxi University for Nationalities, College of Information Science and Engineering, Nanning, China)
Ma Mingzhi (Guangxi High School Key Laboratory of Complex System and Computational Intelligence, Nanning, China)
Zhou Yongquan (Guangxi University for Nationalities, College of Information Science and Engineering, Nanning, China + Guangxi High School Key Laboratory of Complex System and Computational Intelligence, Nanning, China)
Animal migration optimization (AMO) searches optimization solutions by
migration process and updating process. In this paper, a novel migration
process has been proposed to improve the exploration and exploitation ability
of the animal migration optimization. Twenty-three typical benchmark test
functions are applied to verify the effects of these improvements. The
results show that the improved algorithm has faster convergence speed and
higher convergence precision than the original animal migration optimization
and other some intelligent optimization algorithms such as particle swarm
optimization (PSO), cuckoo search (CS), firefly algorithm (FA), bat-inspired
algorithm (BA) and artificial bee colony (ABC).
Keywords: animal migration optimization algorithms, exploration and exploitation, functions optimization