Speeding Up the Genetic Algorithm Convergence Using Sequential Mutation and Circular Gene Methods

M. B. Nia, Y. Alipouri
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引用次数: 16

Abstract

Genetic Algorithms (GAs) are intelligent computational tools which their simplicity, accuracy and adaptable topology cause them to be used in globally minimum or maximum finding problems. Developing the GAs to increase their speed in finding the global minimum or maximum of a cost function has been a big challenge until now and many variants of GA has been evolved to accomplish this goal. This paper presents two new Sequential Mutation Method and Circular Gene Method to increase the speed of the GA. These methods attain a better final answer accompanied by lesser use of cost function evaluations in comparison with the original GA and some other known complementary methods. In addition, it speeds up reaching the minimum or maximum point regarding the number of generations. A number of common test functions with known minimum values and points are tested and the results are compared with some other algorithms such as original GA, Bacterial Evolutionary Algorithm, Jumping Gene and PSO. Simulation results show that the presented methods in this paper can reach the global minimum point through lesser generations and evaluations of the cost function in comparison with the traditional methods.
利用序列突变和循环基因加速遗传算法收敛
遗传算法是一种智能的计算工具,它具有简单、准确和适应性强的拓扑结构,可用于求解全局最小值或最大值问题。到目前为止,开发遗传算法以提高其寻找成本函数的全局最小或最大值的速度一直是一个很大的挑战,许多遗传算法的变体已经发展到实现这一目标。为了提高遗传算法的速度,本文提出了两种新的序列突变法和循环基因法。与原始遗传算法和其他一些已知的互补方法相比,这些方法获得了更好的最终答案,同时较少使用成本函数评估。此外,它还加快了在代数方面达到最小或最大点的速度。对已知最小值和最小点的常用测试函数进行了测试,并与原始遗传算法、细菌进化算法、跳跃基因算法和粒子群算法等进行了比较。仿真结果表明,与传统方法相比,本文方法可以通过更少的代价函数生成和评估来达到全局最小值点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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