Application of a new copmact optimized T-S fuzzy model to nonlinear system identification

M. Askari, A. Davaie‐Markazi
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引用次数: 7

Abstract

A new encoding scheme is presented for learning the Takagi-Sugeno (T-S) fuzzy model from data by non-dominated sorting genetic algorithm (NSGAII). The proposed encoding scheme consists of two parts. First part is related to input selection and the second one is related to antecedent structure of T-S fuzzy model (selection of rules, number of rules and parameters of MFs). The main aim of proposed scheme is to reduce both modelpsilas complexity and error. The subtractive clustering method with least square estimator has been used for determining the initial structure of fuzzy model. So the centerpsilas range of influence for each of the data dimensions is considered as an adjustable parameter in order to obtain better clusters. The input structure and centerpsilas ranges of influence are all represented in one chromosome and evolved together through a well-known multi objective optimization method namely NSGAII, such that the optimization of rule structure, input structure, and MF parameters can be achieved simultaneously. The performance of the developed evolving T-S fuzzy model is first validated by studying the benchmark Box-Jenkins nonlinear system identification problem. Then, it is applied to approximate the forward and inverse dynamic behaviors of a magneto-rheological (MR) damper of which identification problem is significantly difficult due to its inherently hysteretic and highly nonlinear dynamics. It is shown by the validation applications that the developed evolving T-S fuzzy model can identify the nonlinear system satisfactorily with acceptable number of rules and inputs.
一种新的紧凑优化T-S模糊模型在非线性系统辨识中的应用
提出了一种利用非支配排序遗传算法(NSGAII)从数据中学习Takagi-Sugeno (T-S)模糊模型的编码方案。所提出的编码方案由两部分组成。第一部分是关于输入的选择,第二部分是关于T-S模糊模型的先行结构(规则的选择、规则的个数和模糊模型的参数)。该方案的主要目的是降低模型的复杂度和误差。采用最小二乘估计的减法聚类方法确定模糊模型的初始结构。因此,为了获得更好的聚类,每个数据维度的中心点影响范围被认为是一个可调整的参数。输入结构和中心影响范围都表示在一条染色体上,并通过著名的NSGAII多目标优化方法共同进化,从而同时实现规则结构、输入结构和MF参数的优化。首先通过研究基准的Box-Jenkins非线性系统辨识问题,验证了所开发的进化T-S模糊模型的性能。然后,将其应用于磁流变阻尼器的正、逆动态特性的近似分析。磁流变阻尼器由于其固有的滞回性和高度非线性,辨识问题非常困难。验证应用表明,所建立的演化T-S模糊模型在规则数和输入数可接受的情况下,能较好地识别非线性系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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