将经典一维搜索与ABC混合,提高搜索能力

Pranav Dass, S. Jadon, Harish Sharma, Jagdish Chand Bansal, K. Nygard
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引用次数: 1

摘要

人工蜂群ABC优化算法是一种较新的、快速且易于实现的基于种群的元启发式优化算法。ABC算法已被证明是与一些流行的基于群体智能的算法(如粒子群算法、萤火虫算法和蚁群算法)相竞争的算法。然而,ABC算法在探索方面较好,而在开发方面较差。由于步长较大,ABC的解搜索方程有足够的机会跳过最优解。为了平衡这一点,ABC与局部搜索混合,称为经典一维搜索CUS。该算法被命名为混合ABC HABC。在HABC中,每次迭代的最优解在预定义范围内的正反两个方向上都得到进一步的利用,从而增强了ABC的利用能力。为了验证算法的有效性,在15个不同复杂度和维度的测试问题上进行了实验,并与ABC进行了比较。结果表明,CUS与ABC杂交可提高ABC的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybridisation of classical unidimensional search with ABC to improve exploitation capability
Artificial bee colony ABC optimisation algorithm is relatively a recent, fast and easy to implement population-based meta heuristic for optimisation. ABC has been proved a competitive algorithm with some popular swarm intelligence-based algorithms such as particle swarm optimisation, firefly algorithm and ant colony optimisation. However, it is observed that ABC algorithm is better at exploration but poor at exploitation. Due to large step size, the solution search equation of ABC has enough chance to skip the optimum. In order to balance this, ABC is hybridised with a local search called as classical unidimensional search CUS. The proposed algorithm is named as hybridised ABC HABC. In HABC, best solution of each iteration is further exploited in both its positive and negative direction in a predefined range which enhances the exploitation in ABC. The experiments are carried out on 15 test problems of different complexities and dimensions in order to prove the efficiency of proposed algorithm and compared with ABC. The results shows that hybridisation of CUS with ABC improves the performance of ABC.
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