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Am approach for initializing the random adaptive grouping algorithm for solving large-scale global optimization problems

机译:初始化随机自适应分组算法来解决大规模全局优化问题的方法

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Many real-world optimization problems deal with high dimensionality and are known as large-scale global optimization (LSGO) problems. LSGO problems, which have many optima and are not separable, can be very challenging for many heuristic search algorithms. In this study, we have proposed a novel two-stage hybrid heuristic algorithm, which incorporates the coordinate descent algorithm with the golden-section search (CDGSS) and the random adaptive grouping for cooperative coevolution of the Self-adaptive Differential Evolution with Neighborhood Search (DECC-RAG) algorithm. At the first stage, the proposed algorithm roughly scans the search space for a better initial population for the DECC-RAG algorithm. At the second stage, the algorithm uses the DECC-RAG framework for solving the given LSGO problem. We have evaluated the proposed approach (DECC-RAG 1.1) with 15 most difficult LSGO problems from the IEEE CEC2013 benchmark set. The experimental results show that DECC-RAG 1.1 outperforms the standard DECC-RAG and some the state-of-the-art LSGO algorithms.
机译:许多真实世界优化问题处理高维度,称为大规模全球优化(LSGO)问题。 LSGO问题有许多Optima且不可分离,对于许多启发式搜索算法来说可能非常具有挑战性。在这项研究中,我们提出了一种新型的两级混合启发式算法,它与金段搜索(CDGSS)和随机自适应差分演进的合作协作的随机自适应分组与邻域搜索( DECC-RAG)算法。在第一阶段,所提出的算法大致扫描搜索空间,以获得更好的DECC-RAG算法的初始群体。在第二阶段,该算法使用DECC-RAG框架来解决给定的LSGO问题。我们已经评估了所提出的方法(DECC-RAG 1.1),来自IEEE CEC2013基准集合的15个最困难的LSGO问题。实验结果表明,DECC-RAG 1.1优于标准的DECC-RAG和一些最先进的LSGO算法。

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