BMOA: Binary Magnetic Optimization Algorithm

View/ Open
Author(s)
Mirjalili, SeyedAli
Mohd Hashim, Siti Zaiton
Griffith University Author(s)
Year published
2012
Metadata
Show full item recordAbstract
Recently, the behavior of natural phenomena has become one the most popular sources for researchers in to design optimization algorithms. One of the recent heuristic optimization algorithms is Magnetic Optimization Algorithm (MOA) which has been inspired by magnetic field theory. It has been shown that this algorithm is useful for solving complex optimization problems. The original version of MOA has been introduced in order to solve the problems with continuous search space, while there are many problems owning discrete search spaces. In this paper, the binary version of MOA named BMOA is proposed. In order to investigate ...
View more >Recently, the behavior of natural phenomena has become one the most popular sources for researchers in to design optimization algorithms. One of the recent heuristic optimization algorithms is Magnetic Optimization Algorithm (MOA) which has been inspired by magnetic field theory. It has been shown that this algorithm is useful for solving complex optimization problems. The original version of MOA has been introduced in order to solve the problems with continuous search space, while there are many problems owning discrete search spaces. In this paper, the binary version of MOA named BMOA is proposed. In order to investigate the performance of BMOA, four benchmark functions are employed, and a comparative study with Particle Swarm Optimization (PSO) and Genetic Algorithm (GA) is provided. The results indicate that BMOA is capable of finding global minima more accurate and faster than PSO and GA.
View less >
View more >Recently, the behavior of natural phenomena has become one the most popular sources for researchers in to design optimization algorithms. One of the recent heuristic optimization algorithms is Magnetic Optimization Algorithm (MOA) which has been inspired by magnetic field theory. It has been shown that this algorithm is useful for solving complex optimization problems. The original version of MOA has been introduced in order to solve the problems with continuous search space, while there are many problems owning discrete search spaces. In this paper, the binary version of MOA named BMOA is proposed. In order to investigate the performance of BMOA, four benchmark functions are employed, and a comparative study with Particle Swarm Optimization (PSO) and Genetic Algorithm (GA) is provided. The results indicate that BMOA is capable of finding global minima more accurate and faster than PSO and GA.
View less >
Journal Title
International Journal of Machine Learning and Computing
Volume
2
Issue
3
Publisher URI
Copyright Statement
© 2012 IJMLC. The attached file is reproduced here in accordance with the copyright policy of the publisher. Please refer to the journal's website for access to the definitive, published version.
Subject
Neural, Evolutionary and Fuzzy Computation
Artificial Intelligence and Image Processing