A Novel Single Parent Mating Technique in Genetic Algorithm for Discrete – Time System Identification

Farah Ayiesya Zainuddin, Md Fahmi Abd Samad, Hishamuddin Jamaluddin, Abul K. M. Azad
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引用次数: 0

Abstract

System identification is concerned with the construction of a mathematical model based on given input and output data to represent the dynamical behaviour of a system. As a step-in system identification, model structure selection is a step where a model perceived as adequate system representation is selected. A typical rule is that the model must have a good balance between parsimony and accuracy in estimating a dynamic system. As a popular search method, genetic algorithm (GA) is used for selecting a model structure. However, the optimality of the final model depends much on the optimality of GA. This paper introduces a novel mating technique in GA based on the chromosome structure of the parents such that a single parent is sufficient in achieving mating that demonstrates high exploration capability. In investigating this, four systems of linear and nonlinear classes were simulated to generate discrete-time sets of data i.e. later used for identification. The outcome shows that GA incorporated with the mating technique within 10% - 20% of the population size is able to find optimal models quicker than the traditional GA.
离散时间系统识别遗传算法中的新型单亲交配技术
系统识别是根据给定的输入和输出数据构建数学模型,以表示系统的动态行为。作为系统识别的一个步骤,模型结构选择是指选择一个能充分代表系统的模型。一个典型的规则是,在估计动态系统时,模型必须在简洁性和准确性之间取得良好的平衡。遗传算法(GA)是一种常用的搜索方法,用于选择模型结构。然而,最终模型的最优性在很大程度上取决于遗传算法的最优性。本文在遗传算法中引入了一种基于亲本染色体结构的新型交配技术,即只需一个亲本就能实现交配,从而体现出较高的探索能力。在研究过程中,模拟了四个线性和非线性系统,以生成离散时间数据集,即后来用于识别的数据集。结果表明,在种群规模的 10%-20%范围内采用交配技术的遗传算法能够比传统的遗传算法更快地找到最佳模型。
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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CiteScore
1.30
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