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A new identification method for a fuzzy model

机译:一种新的模糊模型辨识方法

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摘要

This paper presents an approach which is useful for the identification of a fuzzy model. The identification of a fuzzy model using input-output data consists of two parts: Structure identification and parameter identification. In this paper an algorithm to identify those parameters and structures are suggested to solve the problems of the conventional methods. Given a set of input-output data, the consequent parameters are identified by the Hough transform and clustering method, each of which considers the linearity and continuity respectively. The gradient descent algorithm is used to fine-tune parameters of a fuzzy model. Finally, it is shown that this method is useful for the identification of a fuzzy model by simulation, where we only consider a single input and single output system.
机译:本文提出了一种对模糊模型识别有用的方法。使用输入-输出数据进行的模糊模型识别包括两部分:结构识别和参数识别。在本文中,提出了一种识别那些参数和结构的算法,以解决传统方法的问题。给定一组输入输出数据,通过霍夫变换和聚类方法确定相应的参数,每个参数分别考虑线性和连续性。梯度下降算法用于微调模糊模型的参数。最后,表明该方法对于通过仿真识别模糊模型非常有用,在仿真中我们仅考虑单个输入和单个输出系统。

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