用于生产系统监控的神经模糊遗传算法

I. Djelloul, M. Souier, Z. Sari
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引用次数: 5

摘要

在本文中,我们的兴趣集中在生产系统中的监控。这项研究背后的动机是需要提出神经模糊遗传的混合方法来实现最优学习,从而获得所需的性能指标。本文从隶属函数的角度定义了神经模糊算法对特征集的提取,提出了遗传算法对规则集进行优化,通过生成模糊的if-then规则来设计监督分类系统。学习过程基于两种算法:Levenberg-Marquardt (TRAINLM)和梯度下降(TRAINGDA)。然后,通过Batna市农业食品单位AURES乳业的工业应用验证和分析了所提出算法的性能。仿真结果表明,采用Levenberg-Marquardt作为学习算法时,所提方法的学习效果最好。
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Neuro-Fuzzy Genetic Algorithms for monitoring in a production system
In this paper, our interest is focused on monitoring in production systems. The motivation behind this investigation is the need of presenting hybrid approach of Neuro-Fuzzy Genetic for the optimal learning, which allows getting the required performance measures. The presence of Neuro- Fuzzy algorithms which may involving elegantly the set of features extraction are defined in terms of membership function, where as Genetic Algorithms are proposed to optimize the set of rules, in order to design supervised classification systems by generating fuzzy if-then rules. The learning process is based on two algorithms: Levenberg-Marquardt (TRAINLM) and Gradient Descent (TRAINGDA). Then, the proposed algorithms performances are verified and analyzed through an industrial application of agro-alimentary unit called AURES dairy for the city of Batna. The simulation results show that the proposed approach performs the best when Levenberg-Marquardt is used as a learning algorithm.
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