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A fuzzy modeling method via Enhanced Objective Cluster Analysis for designing TSK model

机译:基于增强目标聚类分析的模糊建模方法设计TSK模型

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摘要

This paper proposes a fuzzy modeling method via Enhanced Objective Cluster Analysis to obtain the compact and robust approximate TSK fuzzy model. In our approach, the Objective Cluster Analysis algorithm is introduced. In order to obtain more compact and more robust fuzzy rule prototypes, this algorithm is enhanced by introducing the Relative Dissimilarity Measure and the new consistency criterion to represent the similarity degree between the clusters. By these additional criteria, the redundant clusters caused by iterations are avoided; the subjective influence from human judgment for clustering is weakened. Moreover the clustering results including the number of clusters and the cluster centers are considered as the initial condition of the premise parameters identification. Thus the traditional iteration modeling procedure for determining the number of rules and identifying parameters is changed into one-off modeling, which significantly reduces the burden of computation. Furthermore the decomposition errors and the approximation errors resulted from premise parameters identification by Fuzzy c-Means clustering are decreased. For the consequence parameters identification, the Stable Kalman Filter algorithm is adopted. The performance of the proposed modeling method is evaluated by the example of Box-Jenkins gas furnace. The simulation results demonstrate the power of our model.
机译:提出了一种基于增强目标聚类分析的模糊建模方法,以获得紧凑,鲁棒的近似TSK模糊模型。在我们的方法中,引入了目标聚类分析算法。为了获得更紧凑和更健壮的模糊规则原型,该算法通过引入相对不相似性度量和表示聚类之间相似度的新一致性准则进行了增强。通过这些附加标准,避免了由迭代引起的冗余集群;人类判断对聚类的主观影响减弱。此外,包括聚类数量和聚类中心的聚类结果被视为前提参数识别的初始条件。因此,将用于确定规则数量和识别参数的传统迭代建模过程更改为一次性建模,从而大大减少了计算负担。此外,减少了通过模糊c均值聚类识别前提参数而导致的分解误差和近似误差。对于后果参数识别,采用了稳定卡尔曼滤波算法。以Box-Jenkins煤气炉为例评估了所提出的建模方法的性能。仿真结果证明了我们模型的强大功能。

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