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A HYBRID GENETIC ALGORITHM AND GRAVITATIONAL SEARCH ALGORITHM FOR GLOBAL OPTIMIZATION

机译:全局优化的混合遗传算法和重力搜索算法

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摘要

The laws of gravity and mass interactions inspire the gravitational search algorithm (GSA), which finds optimal regions of complex search spaces through the interaction of individuals in a population of particles. Although GSA has proven effective in both science and engineering, it is still easy to suffer from premature convergence especially facing complex problems. In this paper, we proposed a new hybrid algorithm by integrating genetic algorithm (GA) and GSA (GA-GSA) to avoid premature convergence and to improve the search ability of GSA. In GA-GSA, crossover and mutation operators are introduced from GA to GSA for jumping out of the local optima. To demonstrate the search ability of the proposed GA-GSA, 23 complex benchmark test functions were employed, including unimodal and multimodal high-dimensional test functions as well as multimodal ' test functions with fixed dimensions. Wilcoxon signed-rank tests were also utilized to execute statistical analysis of the results obtained by PSO, GSA, and GA-GSA. Experimental results demonstrated that the proposed algorithm is both efficient and effective.
机译:重力和质量相互作用定律启发了重力搜索算法(GSA),该算法通过粒子群中个体的相互作用来找到复杂搜索空间的最佳区域。尽管已证明GSA在科学和工程上均有效,但仍很容易遭受过早的收敛,尤其是面对复杂的问题。本文提出了一种融合遗传算法(GA)和GSA(GA-GSA)的新混合算法,以避免过早收敛,提高了GSA的搜索能力。在GA-GSA中,交叉和变异算子从GA引入到GSA,以跳出局部最优值。为了证明所提出的GA-GSA的搜索能力,使用了23种复杂的基准测试函数,包括单峰和多峰高维测试函数以及固定尺寸的多峰'测试函数。 Wilcoxon符号秩检验还用于对PSO,GSA和GA-GSA获得的结果进行统计分析。实验结果表明,该算法是有效的。

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