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Hybridizing local search algorithms for global optimization

机译:混合本地搜索算法以进行全局优化

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In this paper, we combine two types of local search algorithms for global optimization of continuous functions. In the literature, most of the hybrid algorithms are produced by combination of a global optimization algorithm with a local search algorithm and the local search is used to improve the solution quality, not to explore the search space to find independently the global optimum. The focus of this research is on some simple and efficient hybrid algorithms by combining the Nelder-Mead simplex (NM) variants and the bidirectional random optimization (BRO) methods for optimization of continuous functions. The NM explores the whole search space to find some promising areas and then the BRO local search is entered to exploit optimal solution as accurately as possible. Also a new strategy for shrinkage stage borrowed from differential evolution (DE) is incorporated in the NM variants. To examine the efficiency of proposed algorithms, those are evaluated by 25 benchmark functions designed for the special session on real-parameter optimization of CEC2005. A comparison study between the hybrid algorithms and some DE algorithms and non-parametric analysis of obtained results demonstrate that the proposed algorithms outperform most of other algorithms and their difference in most cases is statistically considerable. In a later part of the comparative experiments, a comparison of the proposed algorithms with some other evolutionary algorithms reported in theCEC2005 confirms a better performance of our proposed algorithms.
机译:在本文中,我们结合了两种类型的局部搜索算法来对连续函数进行全局优化。在文献中,大多数混合算法是通过将全局优化算法与局部搜索算法结合而产生的,并且局部搜索用于提高求解质量,而不是探索搜索空间来独立地找到全局最优值。这项研究的重点是通过结合Nelder-Mead单形(NM)变体和双向随机优化(BRO)方法来优化连续函数的一些简单有效的混合算法。 NM探索整个搜索空间以找到一些有希望的领域,然后进入BRO本地搜索以尽可能准确地利用最佳解决方案。 NM变体还采用了一种从差异演化(DE)中借用的收缩阶段新策略。为了检查所提出算法的效率,通过针对CEC2005实参数优化特别会议设计的25个基准功能对这些算法进行了评估。对混合算法与某些DE算法进行比较研究,并对所得结果进行非参数分析,结果表明,所提出的算法优于大多数其他算法,并且在大多数情况下它们之间的差异在统计上是可观的。在比较实验的后半部分,将本文提出的算法与CEC2005中报道的其他一些进化算法进行比较,证实了我们提出的算法具有更好的性能。

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