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IMPROVED CUCKOO SEARCH ALGORITHM FOR NUMERICAL FUNCTION OPTIMIZATION

机译:改进的杜鹃搜索算法用于数值函数优化

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摘要

Cuckoo Search (CS) is a recently proposed metaheuristic algorithm to solve optimization problems. For improving its performance both on the efficiency of searching and the speed of convergence, we proposed an improved Cuckoo Search algorithm based on the teaching-learning strategy (TLCS). For a better balance between intensification and diversification, both a dynamic weight factor and an out-of-bound project strategies are also introduced into TLCS. The results of numerical experiment demonstrate that our improved TLCS performs better than the basic CS and other two improved CS methods appearing in literatures.
机译:Cuckoo Search(CS)是最近提出的求解优化问题的成群质算法。为了提高其对搜索效率和收敛速度的性能,我们提出了一种基于教学学习策略(TLC)的改进的Cuckoo搜索算法。在强化和多样化之间进行更好的平衡,也将引入动态权重因因素和余额外的项目策略。数值实验的结果表明,我们的改进的TLCS比在文献中出现的基本CS和其他两种改进的CS方法表现更好。

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