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An Enhanced Objective Cluster Analysis-Based Fuzzy Iterative Learning Approach for T-S Fuzzy Modeling

机译:基于增强目标聚类分析的模糊迭代学习方法

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This work presents an Enhanced Objective Cluster Analysis-based fuzzy iterative learning approach for T-S fuzzy modeling. In this method, the Enhanced Objective Cluster Analysis including the Dipole Partition, the Relative Dissimilarity Measure and the Enhanced Consistency Criterion are incorporated with the Fuzzy - Means algorithm for the robust and compact fuzzy partition in the input space. For improving accuracy of the model, iterative learning strategy with Covering Measure is adopted to repartition the dissatisfying fuzzy subspaces according to the user's requirement. By the Stable Kalman Filter algorithm, the consequent parameters are efficiently estimated. The Box-Jenkins example demonstrates the power of our method.
机译:这项工作为T-S模糊建模提出了一种基于增强目标聚类分析的模糊迭代学习方法。在这种方法中,将包括偶极子分区,相对相异性度量和增强一致性准则的增强目标聚类分析与模糊均值算法相结合,以实现输入空间中鲁棒且紧凑的模糊分区。为了提高模型的准确性,采用覆盖测度的迭代学习策略,根据用户需求对不满意的模糊子空间进行重新划分。通过稳定卡尔曼滤波算法,可以有效地估计相应的参数。 Box-Jenkins示例演示了我们方法的强大功能。

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