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An improved double-population artificial bee colony algorithm based on heterogeneous comprehensive learning

机译:一种改进的基于异质综合学习的双人群人造群殖民地算法

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The artificial bee colony (ABC) algorithm is one of the popular swarm intelligence algorithms that is inspired by the forging behavior of honeybee colonies. To improve the convergence precision of the ABC algorithm, accelerate the search speed of finding the best solution and control the balance between exploration and exploitation, we propose an improved double-population ABC algorithm based on heterogeneous comprehensive learning (HCLIABC). In this algorithm, the swarm is divided into exploration-subpopulation named group 1 and exploitation-subpopulation named group 2. Illuminated by particle swarm optimization (PSO), the food source will be updated on all dimensions rather than on a randomly selected dimension. Meanwhile HCL strategy is used to generate the exemplars for two subpopulations. In addition, opposition-based learning is used to improve the quality of initial swarm, and multiplicative weight update method is used to update the selection probability of the double-population in employed bees phase. To evaluate the remarkable performance of the improved algorithm, we conduct comparative experiments of 18 unimodal, multimodal, and rotated benchmark functions on dimensions 30 and 100. Computational results demonstrate that HCLIABC can effectively prevent premature convergence and produce competitive optimization precision and convergence speed compared with several popular and classic DE, PSO and ABC variants.
机译:人造蜜蜂殖民地(ABC)算法是受蜜蜂殖民地锻造行为的启发的流行群智能算法之一。为了提高ABC算法的收敛精度,加速寻找最佳解决方案的搜索速度并控制勘探和开发之间的平衡,我们提出了一种基于异构综合学习(HCLIBC)的双群ABC算法。在该算法中,群体分为探索 - 亚群命名为第1组1和开发 - 子归类名为第2组。通过粒子群优化(PSO)照射,将在所有维度上更新,而不是随机选择的维度。同时,HCl策略用于产生两个亚群的示例。此外,基于反对派的学习用于改善初始群体的质量,乘法权重更新方法用于更新所采用的蜜蜂阶段中双人口的选择概率。为了评估改进的算法的显着性能,我们对维度30和100的旋转基准功能进行了比较实验。计算结果表明,HCLIBC可以有效地防止与之相比过早的收敛性并产生竞争优化精度和收敛速度。几个流行和经典的de,pso和abc变体。

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