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T-S fuzzy model identification based on a novel fuzzy c-regression model clustering algorithm

机译:基于新型c-回归模型聚类算法的T-S模糊模型识别

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摘要

This paper proposes a novel approach for identification of Takagi-Sugeno (T-S) fuzzy model, which is based on a new fuzzy c-regression model (FCRM) clustering algorithm. The clustering prototype in fuzzy space partition is hyper-plane, so FCRM clustering technique is more suitable to be applied in premise parameters identification of T-S fuzzy model. A new FCRM clustering algorithm (NFCRMA) is presented, which is deduced from the fuzzy clustering objective function of FCRM with Lagrange multiplier rule, possessing integrative and concise structure. The proposed approach consists mainly of two steps: premise parameter identification and consequent parameter identification. The NFCRMA is utilized to partition the input-output data and identify the premise parameters, which can discover the real structure of the training data; on the other hand, orthogonal least square is exploited to identify the consequent parameters. Finally, some examples are given to verify the validity of the proposed modeling approach, and the results show the new approach is very efficient and of high accuracy.
机译:本文提出了一种基于新的模糊c回归模型(FCRM)聚类算法的Takagi-Sugeno(T-S)模糊模型识别方法。模糊空间划分中的聚类原型是超平面的,因此FCRM聚类技术更适用于T-S模糊模型的前提参数识别。提出了一种新的FCRM聚类算法(NFCRMA),该算法是从FCRM的模糊聚类目标函数出发,采用拉格朗日乘子规则推导出来的,具有整体简洁的结构。所提出的方法主要包括两个步骤:前提参数识别和后续参数识别。 NFCRMA用于划分输入输出数据并识别前提参数,从而可以发现训练数据的真实结构。另一方面,利用正交最小二乘来识别结果参数。最后,通过算例验证了所提建模方法的有效性,结果表明该方法是高效且高精度的。

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