An improved artificial bee colony algorithm based on the ranking selection and the elite guidance

被引:0
作者
Kong D.-P. [1 ]
Chang T.-Q. [1 ]
Dai W.-J. [1 ]
Wang Q.-D. [1 ]
Sun H.-Z. [1 ]
机构
[1] Department of Control Engineering, Academy of Army Armored Forces, Beijing
来源
Kongzhi yu Juece/Control and Decision | 2019年 / 34卷 / 04期
关键词
Artificial bee colony algorithm; Elite guidance; Ranking selection; Search equation;
D O I
10.13195/j.kzyjc.2017.1334
中图分类号
学科分类号
摘要
In order to solve the problem of low convergence speed and low convergence accuracy of an artificial bee colony algorithm, an improved artificial bee colony algorithm based on ranking selection and elite guidance is proposed. The probability selection method of onlooker bees is weak to select the elite individual when the fitness value is changing, therefore, a ranking selection method is proposed to replace that of probability selection for improving the convergence speed of the algorithm. To improve the search efficiency, two new neighborhood search equations for emplyed bees and onlooker bees respectively are proposed by using the elite guidance. Compared with other artificial bee colony algorithms, the results show that the proposed algorithm can effectively improve the convergence speed and convergence accuracy. © 2019, Editorial Office of Control and Decision. All right reserved.
引用
收藏
页码:781 / 786
页数:5
相关论文
共 19 条
  • [1] Rajasekhar A., Lynn N., Das S., Et al., Computing with the collective intelligence of honey bees-A survey, Swarm and Evolutionary Computation, 32, 2, pp. 25-48, (2017)
  • [2] Karaboga D., Basturk B., A powerful and efficient algorithm for numerical function optimization: Artificial bee colony(ABC) algorithm, J of Global Optimization, 39, 3, pp. 459-471, (2007)
  • [3] Yu K., Wang X., Wang Z., Multiple learning particle swarm optimization with space transformation perturbation and its application in ethylene cracking furnace optimization, Knowledge-Based Systems, 96, 3, pp. 156-170, (2016)
  • [4] Chuang Y.C., Chen C.T., Hwang C., A real-coded genetic algorithm with a direction-based crossover operator, Information Sciences, 305, 6, pp. 320-348, (2015)
  • [5] Yang Q., Chen W.N., Yu Z.T., Et al., Adaptive multimodal continuous ant colony optimization, IEEE Trans on Evolutionary Computation, 21, 2, pp. 191-205, (2017)
  • [6] Cheng J., Zhang G., Caraffini F., Et al., Multicriteria adaptive differential evolution for global numerical optimization, Integrated Computer-Aided Engineering, 22, 2, pp. 103-107, (2015)
  • [7] Karaboga D., Gorkemli B., Ozturk C., Et al., A comprehensive survey: Artificial bee colony(ABC) algorithm and applications, Artificial Intelligence Review, 42, 1, pp. 21-57, (2012)
  • [8] Huo Y., Zhuang Y., Gu J., Et al., Discrete gbest-guided artificial bee colony algorithm for cloud service composition, Applied Intelligence, 42, 4, pp. 661-678, (2014)
  • [9] Bai W., Eke I., Lee K.Y., An improved artificial bee colony optimization algorithm based on orthogonal learning for optimal power flow problem, Control Engineering Practice, 61, 4, pp. 163-172, (2017)
  • [10] Tran D.H., Cheng M.Y., Cao M.T., Hybrid multiple objective artificial bee colony with differential evolution for the time-cost-quality tradeoff problem, Knowledge-Based Systems, 74, 1, pp. 176-186, (2015)