一种求解组合优化问题的贪心遗传算法

M. A. Basmassi, L. Benameur, J. Chentoufi
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引用次数: 7

摘要

摘要本文提出了一种基于贪心序列算法的改进遗传算法来解决组合优化问题。本文提出的算法是一种启发式算法和计算智能算法的混合算法,在交叉和变异等遗传算法中使用贪婪序列算法作为算子。利用贪心序列函数对交叉和突变后的不可实现解进行校正,提高了种群的收敛速度,并通过向色数方向改善染色体的质量来实现种群的升级。在6个著名的DIMACS图着色问题的基准实例上进行的实验表明,与现有的三种算法相比,本文提出的算法在成功率和解质量方面都取得了相当的成绩。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A NOVEL GREEDY GENETIC ALGORITHM TO SOLVE COMBINATORIAL OPTIMIZATION PROBLEM
Abstract. In this paper, a modified genetic algorithm based on greedy sequential algorithm is presented to solve combinatorial optimization problem. The algorithm proposed here is a hybrid of heuristic and computational intelligence algorithm where greedy sequential algorithm is used as operator inside genetic algorithm like crossover and mutation. The greedy sequential function is used to correct non realizable solution after crossover and mutation which contribute to increase the rate of convergence and upgrade the population by improving the quality of chromosomes toward the chromatic number. Experiments on a set of 6 well-known DIMACS benchmark instances of graph coloring problem to test this approach show that the proposed algorithm achieves competitive results in comparison with three states of art algorithms in terms of either success rate and solution quality.
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