纺织制造系统调度的系统模糊建模

M. Zarandi, M. Esmaeilian
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引用次数: 6

摘要

本文采用模糊聚类分析的方法,建立了纺织制造系统的模糊专家系统。建议的方法包括两个阶段。第一阶段采用无监督学习的方法,通过基线设计有效地识别原型模糊系统。在此阶段,实现了聚类分析方法。为了确定聚类参数的最优值,即权重指数(m)和聚类数量(c),使用遗传算法。在第二阶段,进行微调过程以调整基线设计中确定的参数,并服从监督学习。该阶段通过近似推理模块实现。近似推理参数也进行了优化,使用GAs。最后,将该方法应用于某纺织工业调度系统,并与在结构识别阶段使用减法聚类的sugeno型模糊系统建模结果进行了比较。结果表明,所提出的模糊系统能较好地反映纺织工业等复杂系统的行为。
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A systematic fuzzy modeling for scheduling of textile manufacturing system
This paper presents a fuzzy expert system for Textile manufacturing system using fuzzy cluster analysis. The proposed approach consists of two phases. The first phase is developed with an unsupervised learning and involves a baseline design to effectively identify a prototype fuzzy system. At this phase, a cluster analysis approach is implemented. For the aim of determination of the optimal values of clustering parameters, i.e., weighting exponent (m), and the number of clusters (c), Genetic Algorithms are used. At the second phase, fine tuning process is done to adjust the parameters identified in the baseline design, subject to supervised learning. This phase is realized by using approximate reasoning module. Approximate reasoning parameters are also optimized, using GAs. Finally, the proposed approach is validated by applying it to scheduling system of a Textile industry and comparing the results with a Sugeno-type fuzzy system modeling that uses subtractive clustering in its structure identification stage. The results show that the proposed fuzzy system better represents the behaviour of the complex systems, such as Textile industries.
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