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GA-fuzzy modeling and classification: complexity and performance

机译:GA模糊建模和分类:复杂性和性能

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摘要

The use of genetic algorithms (GAs) and other evolutionary optimization methods to design fuzzy rules for systems modeling and data classification have received much attention in recent literature. Authors have focused on various aspects of these randomized techniques, and a whole scale of algorithms have been proposed. We comment on some recent work and describe a new and efficient two-step approach that leads to good results for function approximation, dynamic systems modeling and data classification problems. First, fuzzy clustering is applied to obtain a compact initial rule-based model. Then this model is optimized by a real-coded GA subjected to constraints that maintain the semantic properties of the rules. We consider four examples from the literature: a synthetic nonlinear dynamic systems model, the iris data classification problem, the wine data classification problem, and the dynamic modeling of a diesel engine turbocharger. The obtained results are compared to other recently proposed methods.
机译:在最近的文献中,使用遗传算法(GA)和其他进化优化方法来设计用于系统建模和数据分类的模糊规则。作者已经集中于这些随机技术的各个方面,并且已经提出了整个算法的规模。我们对最近的一些工作进行评论,并描述一种新的高效的两步方法,该方法可为函数逼近,动态系统建模和数据分类问题带来良好的结果。首先,应用模糊聚类以获得紧凑的基于初始规则的模型。然后,通过实数编码GA对该模型进行优化,该GA受到保持规则语义属性的约束。我们考虑文献中的四个示例:一个合成的非线性动力学系统模型,虹膜数据分类问题,葡萄酒数据分类问题以及柴油机涡轮增压器的动力学建模。将获得的结果与其他最近提出的方法进行比较。

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