动态多种群人工蜂群算法

Xinyu Zhou, Yiwen Ling, M. Zhong, Mingwen Wang
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摘要

人工蜂群算法(artificial bee colony, ABC)作为一种较新的仿生优化技术,因其简单、有效而备受关注。然而,在解决一些复杂的优化问题时,ABC算法的性能并不令人满意。为了提高ABC算法的性能,我们通过设计动态多种群方案(DMPS)提出了一种新的ABC变体。在DMPS中,将种群划分为若干个子种群,并通过检查全局最优解的质量来动态调整子种群的大小。此外,为了使DMPS的有效性最大化,我们设计了两个新的解搜索方程,其中每个子种群的局部最优解和整个种群的全局最优解同时被利用。在实验中,使用了32个广泛使用的基准函数,并涉及4个完善的ABC变体进行比较。对比结果表明,我们的方法在大多数基准函数上表现更好。
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Dynamic Multi-population Artificial Bee Colony Algorithm
As a relatively new paradigm of bio-inspired optimization techniques, artificial bee colony (ABC) algorithm has attracted much attention for its simplicity and effectiveness. However, the performance of ABC is not satisfactory when solving some complex optimization problems. To improve its performance, we propose a novel ABC variant by designing a dynamic multi-population scheme (DMPS). In DMPS, the population is divided into several subpopulations, and the size of subpopulation is adjusted dynamically by checking the quality of the global best solution. Moreover, we design two novel solution search equations to maximize the effectiveness of DMPS, in which the local best solution of each subpopulation and the global best solution of the whole population are utilized simultaneously. In the experiments, 32 widely used benchmark functions are used, and four well-established ABC variants are involved in the comparison. The comparative results show that our approach performs better on the majority of benchmark functions.
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