Hybrid Artificial Immune System-Genetic Algorithm optimization based on mathematical test functions

M. O. Ali, S. P. Koh, K. H. Chong, D. Yap
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引用次数: 13

Abstract

This paper demonstrates a hybrid between two optimization methods that are Artificial Immune System (AIS) and Genetic Algorithm (GA). The capability of overcoming the shortcomings of individual algorithms without losing their advantages makes the hybrid techniques superior to the stand-alone ones based on the dominant purpose of hybridization. The improvement of the results that enable to get it if GA and AIS work separately is the main objective of this hybrid. The hybrid includes two processes; firstly, AIS is the attraction among the researchers as the algorithm. This enables it to develop local searching ability and efficiency yet the convergence rate for AIS is preferably not precise compared to the GA. Secondly, a Genetic Algorithm is typically initializing population randomly. The last generation of AIS will be the input to the next process of the hybrid which is the GA in this hybrid AIS-GA. Hybrid makes GA enters the stage of standard solutions more rapidly and more accurate compared with GA initialized population at random. To differentiate between the results in terms of achieving the minimum value for these functions, eight mathematical test functions are being used to make comparison.
基于数学测试函数的混合人工免疫系统-遗传算法优化
本文介绍了人工免疫系统(AIS)和遗传算法(GA)两种优化方法的混合。由于能够克服单个算法的缺点而又不丧失其优点,因此混合技术优于以杂交为主要目的的独立算法。这种混合算法的主要目标是改进遗传算法和AIS系统分开工作的结果。混合过程包括两个过程;首先,AIS作为一种算法受到研究者的关注。这使得AIS具有较强的局部搜索能力和效率,但收敛速度不如遗传算法精确。其次,遗传算法通常是随机初始化种群。最后一代AIS将是下一个混合过程的输入下一个混合过程就是混合AIS-GA中的遗传算法。与遗传算法随机初始化种群相比,混合算法使遗传算法更快、更准确地进入标准解阶段。为了在实现这些函数的最小值方面区分结果,使用了八个数学测试函数进行比较。
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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