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Fuzzy dynamic model identification by fuzzy c-regressoin models clustering

机译:基于模糊c回归模型聚类的模糊动态模型辨识

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This paper presents an algorithm to identify fuzzy dynamic (FD) model for a class of nonlinear plant. Firstly, the fuzzy c-regression models (FCRM) clustering technique is applied to partition the product space of the given input-output data into regression functional clusters. A novel cluster validity criterion with fuzzy hypervolume is set up to determine the appropriate number of clusters which has hyper-plane-shaped representatives. Furthermore, the fine-tuning procedures are included to adjust the antecedent and consequent parameters precisely. Finally, a FD model with compact number of IF-THEN rules could be generated systematically. A simulation example is provided to demonstrate the accuracy and effectiveness of the proposed algorithm.
机译:本文提出了一种用于识别一类非线性植物的模糊动态(FD)模型的算法。首先,应用模糊c回归模型(FCRM)聚类技术将给定输入输出数据的乘积空间划分为回归函数聚类。建立了一种新的具有模糊超量的聚类有效性判据,以确定具有超平面形代表的聚类的适当数量。此外,还包括微调程序,以精确地调整先行参数和后续参数。最后,可以系统地生成具有少量IF-THEN规则的FD模型。提供了一个仿真示例,以证明所提出算法的准确性和有效性。

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