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Improved fuzzy identification method based on Hough transformation and fuzzy clustering

机译:基于Hough变换和模糊聚类的改进模糊识别方法

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摘要

This paper presents an approach that is useful for the identification of a fuzzy model in SISO system. The initial values of cluster centers are identified by the Hough transformation, which considers the linearity and continuity of given input-output data, respectively. For the premise parts parameters identification, we use fuzzy-C-means clustering method. The consequent parameters are identified based on recursive least square. This method not only makes approximation more accurate, but also let computation be simpler and the procedure is realized more easily. Finally, it is shown that this method is useful for the identification of a fuzzy model by simulation.
机译:本文介绍了一种可用于识别SISO系统的模糊模型的方法。集群中心的初始值由Hough转换识别,其分别考虑给定输入输出数据的线性和连续性。对于前提零件参数识别,我们使用模糊-C均值聚类方法。基于递归最小二乘来识别后续参数。这种方法不仅使近似更准确,而且让计算更简单,并且更容易实现该过程。最后,示出该方法可用于通过模拟识别模糊模型。

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