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Artificial Bee Colony Using Opposition-Based Learning

机译:使用基于反对派的学习的人造蜜蜂殖民地

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To overcome the drawbacks of artificial bee colony(ABC) algorithm that converges slowly in the process of searching and easily suffers from premature, this paper presents an effective approach, called ABC using opposition-based learning(OBL-ABC). It generates opposite solution by the employed bee and onlooker bee, and chooses the better solution as the new locations of employed bee and onlooker bee according to the greedy selection strategy in order to enlarge the search areas; the new approach proposes a new update rule which can retain the advantages of employed bee and onlooker bee and improve the exploration of OBL-ABC. Experiments are conducted on a set of test functions to verify the performance of OBL-ABC, the results demonstrate promising performance of our method OBL-ABC on convergence and it is suitable for solving the optimization of complex functions.
机译:为了克服人造群菌落(ABC)算法的缺点,该算法缓慢收敛在搜索和容易遭受早熟的过程中,本文提出了一种有效的方法,称为ABC使用基于反对派的学习(OBC)。它由采用的蜜蜂和旁观者蜜蜂产生相反的解决方案,并根据贪婪的选择策略选择更好的解决方案,作为贪婪的选择策略,以扩大搜索领域;新方法提出了一种新的更新规则,可以保留蜜蜂和旁观者蜜蜂的优势,并改善欧盟的探索。实验在一组测试功能上进行以验证屈服的性能,结果表明我们的方法屈服对收敛性的有希望的性能,并且适用于解决复杂功能的优化。

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