Immune Multi-Direction Binary Particle Swarm
>A novel algorithm of BPSO is presented, which is named immune multi-direction binary particle swarm op- timization algorithm (IMBPSO). Operators including immune memory and clone selection of immune algorithm are introduced into BPSO in order to ensure the algorithm to find the best solution quickly and the diversity of colony. Fur- thermore, by modifying the formula of renewal of speed, the particle is translated from single direction into multi-di- rection. So it overcomes the disadvantages of BPSO algorithm, including falling into local best easily, low convergence speed as well as low quality in evolution evening. By testing and estimating with some standard functions, IMBPSO algorithm’s ability in finding the best solution is proved.
文章引用: 齐子元 , 张进秋 , 岳 杰 , 马 朝 (2013) 免疫多向二进制粒子群优化算法。 计算机科学与应用， 3， 331-335. doi: 10.12677/CSA.2013.38058
 Kennedy, J. and Eberhart, R.C. (1995) Particle swarm opti-miza- tion. IEEE International Conference on Neural Net-works, Perth, 1942-1948.
 Kennedy, J. and Eberhart, R.C. (1997) A discrete binary version of the particle swarm algorithm. Proceedings of the World Multi- conference on Systemic, Cybernetics and Informatics, IEEE Ser- vice Center, Piscataway, 4104-4109.
 Shi, Y. and Eberhart, R. (1998) A modified particle swarm opti- mizer. IEEE World Congress on Computational Intelligence, 69- 73.
 郑洪英 (2007) 基于进化算法的入侵检测技术研究. 博士论文, 重庆大学, 63-69.
 王新峰, 邱静, 刘冠军 (2005) 基于离散粒子群优化算法的直升机减速器齿轮故障特征选择. 航空动力学报, 6, 969-972.
 胡春霞 (2007) 免疫微粒群算法的研究. 硕士论文, 太原科技大学, 16-21.
 曾慧娟, 潘文斌, 朱建全 (2008) 基于改进粒子群优化算法的水质模型参数识别. 环境污染与防治, 3, 1-7.