Nonlinear system identification by Gustafson-Kessel fuzzy clustering and supervised local model network learning for the drug absorption spectra process.

IEEE transactions on neural networks Pub Date : 2011-12-01 Epub Date: 2011-10-25 DOI:10.1109/TNN.2011.2170093
Luka Teslic, Benjamin Hartmann, Oliver Nelles, Igor Skrjanc
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引用次数: 50

Abstract

This paper deals with the problem of fuzzy nonlinear model identification in the framework of a local model network (LMN). A new iterative identification approach is proposed, where supervised and unsupervised learning are combined to optimize the structure of the LMN. For the purpose of fitting the cluster-centers to the process nonlinearity, the Gustafsson-Kessel (GK) fuzzy clustering, i.e., unsupervised learning, is applied. In combination with the LMN learning procedure, a new incremental method to define the number and the initial locations of the cluster centers for the GK clustering algorithm is proposed. Each data cluster corresponds to a local region of the process and is modeled with a local linear model. Since the validity functions are calculated from the fuzzy covariance matrices of the clusters, they are highly adaptable and thus the process can be described with a very sparse amount of local models, i.e., with a parsimonious LMN model. The proposed method for constructing the LMN is finally tested on a drug absorption spectral process and compared to two other methods, namely, Lolimot and Hilomot. The comparison between the experimental results when using each method shows the usefulness of the proposed identification algorithm.

基于Gustafson-Kessel模糊聚类和监督局部模型网络学习的药物吸收光谱非线性系统辨识。
本文研究了局部模型网络框架下的模糊非线性模型辨识问题。提出了一种新的迭代识别方法,将监督学习和无监督学习相结合,对LMN的结构进行优化。为了将聚类中心拟合到过程非线性中,应用了Gustafsson-Kessel (GK)模糊聚类,即无监督学习。结合LMN学习过程,提出了一种新的增量方法来定义GK聚类算法的聚类中心个数和初始位置。每个数据簇对应于流程的一个局部区域,并使用局部线性模型进行建模。由于有效性函数是从聚类的模糊协方差矩阵中计算出来的,因此它们具有很强的适应性,因此可以用非常稀疏的局部模型来描述过程,即使用简约的LMN模型。最后在药物吸收光谱过程中对所提出的构建LMN的方法进行了测试,并与Lolimot和Hilomot两种方法进行了比较。通过对各方法的实验结果进行比较,验证了所提识别算法的有效性。
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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
自引率
0.00%
发文量
2
审稿时长
8.7 months
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