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首页> 外文期刊>International journal of machine learning and cybernetics >An improved artificial bee colony algorithm for balancing local and global search behaviors in continuous optimization
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An improved artificial bee colony algorithm for balancing local and global search behaviors in continuous optimization

机译:一种改进的人工蜂殖民地算法,用于平衡局部和全球搜索行为的连续优化

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摘要

The artificial bee colony, ABC for short, algorithm is population-based iterative optimization algorithm proposed for solving the optimization problems with continuously-structured solution space. Although ABC has been equipped with powerful global search capability, this capability can cause poor intensification on found solutions and slow convergence problem. The occurrence of these issues is originated from the search equations proposed for employed and onlooker bees, which only updates one decision variable at each trial. In order to address these drawbacks of the basic ABC algorithm, we introduce six search equations for the algorithm and three of them are used by employed bees and the rest of equations are used by onlooker bees. Moreover, each onlooker agent can modify three dimensions or decision variables of a food source at each attempt, which represents a possible solution for the optimization problems. The proposed variant of ABC algorithm is applied to solve basic, CEC2005, CEC2014 and CEC2015 benchmark functions. The obtained results are compared with results of the state-of-art variants of the basic ABC algorithm, artificial algae algorithm, particle swarm optimization algorithm and its variants, gravitation search algorithm and its variants and etc. Comparisons are conducted for measurement of the solution quality, robustness and convergence characteristics of the algorithms. The obtained results and comparisons show the experimentally validation of the proposed ABC variant and success in solving the continuous optimization problems dealt with the study.
机译:人工蜂殖民地,ABC用于短,算法是基于群体的迭代优化算法,用于解决连续结构溶液空间的优化问题。虽然ABC已经配备了强大的全球搜索功能,但这种能力可能会导致对发现解决方案的良好强化和慢趋同问题。这些问题的发生源自用于雇用和旁观者蜜蜂的搜索方程,只有在每个试验中更新一个决策变量。为了解决基本ABC算法的这些缺点,我们向算法引入六个搜索方程,其中三个是使用的蜜蜂使用的,并且由旁边的等式使用旁边的等式。此外,每个旁观者代理都可以在每次尝试时修改食物源的三维或决策变量,这代表了优化问题的可能解决方案。应用ABC算法的所提出的变体求解基本,CEC2005,CEC2014和CEC2015基准函数。将得到的结果与基本ABC算法的最先进变体,人工藻类算法,粒子群优化算法及其变体,重力搜索算法及其变体等的结果进行了比较。进行比较以进行解决方案算法的质量,鲁棒性和收敛特性。获得的结果和比较显示了拟议的ABC变体和成功的实验验证,并在解决与该研究处理的连续优化问题中的成功。

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