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Extracting Compact Fuzzy Rules For Nonlinear System Modeling Using Subtractive Clustering, Ga And Unscented Filter

机译:使用减法聚类,Ga和无味滤波器提取用于非线性系统建模的紧凑模糊规则

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This paper presents a two stage procedure for building optimal fuzzy model from data for nonlinear dynamical systems. Both stages are embedded into Genetic Algorithm (GA) and in the first stage emphasis is placed on structural optimization by assigning a suitable fitness to each individual member of population in a canonical GA. These individuals represent coded information about the structure of the model (number of antecedents and rules). This information is consequently utilized by subtractive clustering to partition the input space and construct a compact fuzzy rule base. In the second stage, Unscented Filter (UF) is employed for optimization of model parameters, that is, parameters of the input-output Membership Functions (MFs).rnThe proposed hybrid approach exploits the advantages and utilizes the desirable characteristics of all three algorithms for extracting accurate and compact fuzzy models.rnCase studies are given to illustrate the efficiency of the modeling procedure. Benchmark examples are analyzed and the results are compared with those obtained by Adaptive Nero-fuzzy Inference System (ANFIS). In all cases enhanced performance and superior results are obtained from the proposed procedure.
机译:本文提出了一个从非线性动力系统数据构建最优模糊模型的两步过程。这两个阶段都嵌入到遗传算法(GA)中,并且在第一阶段中,重点是通过为规范GA中的每个个体成员分配合适的适应度来进行结构优化。这些人代表有关模型结构(前提条件和规则)的编码信息。因此,该信息被减法聚类所利用,以划分输入空间并构建紧凑的模糊规则库。在第二阶段,使用无味滤波器(UF)来优化模型参数,即输入-输出隶属函数(MFs)的参数。建议的混合方法充分利用了这三种算法的优点,并利用了这三种算法的理想特性案例研究表明了建模过程的有效性。分析基准示例,并将结果与​​通过自适应神经模糊推理系统(ANFIS)获得的结果进行比较。在所有情况下,从建议的过程中可以获得增强的性能和出色的结果。

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