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A New Modified Artificial Bee Colony Algorithm with Exponential Function Adaptive Steps

机译:具有指数函数自适应步长的改进人工蜂群算法

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摘要

As one of the most recent popular swarm intelligence techniques, artificial bee colony algorithm is poor at exploitation and has some defects such as slow search speed, poor population diversity, the stagnation in the working process, and being trapped into the local optimal solution. The purpose of this paper is to develop a new modified artificial bee colony algorithm in view of the initial population structure, subpopulation groups, step updating, and population elimination. Further, depending on opposition-based learning theory and the new modified algorithms, an improved S-type grouping method is proposed and the original way of roulette wheel selection is substituted through sensitivity-pheromone way. Then, an adaptive step with exponential functions is designed for replacing the original random step. Finally, based on the new test function versions CEC13, six benchmark functions with the dimensions D = 20 and D = 40 are chosen and applied in the experiments for analyzing and comparing the iteration speed and accuracy of the new modified algorithms. The experimental results show that the new modified algorithm has faster and more stable searching and can quickly increase poor population diversity and bring out the global optimal solutions.
机译:人工蜂群算法作为一种最新的群体智能技术,利用不力,存在搜索速度慢,种群多样性差,工作过程停滞,陷入局部最优解等缺陷。本文的目的是针对初始种群结构,亚种群,步骤更新和种群消除,开发一种新的改良人工蜂群算法。此外,根据基于对立面的学习理论和新的改进算法,提出了一种改进的S型分组方法,并通过灵敏度-信息素方法代替了轮盘赌选择的原始方法。然后,设计了具有指数函数的自适应步长来代替原始的随机步长。最后,基于新的测试功能版本CEC13,选择了尺寸为D = 20和D = 40的六个基准功能,并将其应用于实验中,以分析和比较新改进算法的迭代速度和准确性。实验结果表明,改进算法具有更快,更稳定的搜索效果,可以迅速增加较差的种群多样性,并给出全局最优解。

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