Takagi-Sugeno型混合分段仿射或非线性模型混合系统辨识方法

M. Wagner, A. Kroll
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引用次数: 1

摘要

提出了一种基于聚类的分段仿射或Takagi-Sugeno型模型识别方法。由于基于原型的聚类算法非常适合分区,但常常收敛到不需要的局部解,因此采用基于密度的噪声聚类对其进行初始化。聚类在混合参数位置特征空间中进行,将数据划分为独立的集,用于识别局部模型和分区边界,并假设其为分段平面。对得到的分区进行线性测试,否则用从各自数据中识别的TS模型替换每个分区。对一个包含切换、局部多项式非线性和非凸划分边界的测试问题进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A method to identify hybrid systems with mixed piecewise affine or nonlinear models of Takagi-Sugeno type
A clustering-based method to identify models that are piecewise affine or of Takagi-Sugeno type is presented. As prototype-based clustering algorithms, which are well suited for partitioning, frequently converge to unwanted local solutions, density-based noise clustering is used to initialize them. The clustering acts in a mixed parameter-position feature space and divides the data into separate sets for identifying local models and partition boundaries, which are assumed to be piecewise planar. The obtained partitions are tested on linearity and otherwise replaced each by a TS model that is identified from the respective data. The method is demonstrated for a test problem that includes switching, local polynomial nonlinearity as well as non-convex partition boundaries.
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