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An input-output clustering approach for structure identification of T-S fuzzy neural networks

机译:基于输入-输出聚类的TS模糊神经网络结构识别

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This paper proposes a novel input-output clustering approach for structure identification of T-S fuzzy neural networks. This approach consists of two phases. Firstly, k-means clustering method is applied to the input data to provide the initial clusters of the input space. Secondly, check whether the sub-clustering is needed for each input cluster by considering the corresponding output variation and then apply the k-means method to further partition those input clusters needed sub-clustering. Applying the above process recursively leads to the structure identification of a T-S fuzzy neural network and then the parameter identification is completed by using the gradient learning algorithm. The experiments by applying the proposed method to several benchmark problems show better performance compared with many existing methods and then verify the effectiveness and usefulness of the proposed method.
机译:本文提出了一种新的输入-输出聚类方法,用于T-S模糊神经网络的结构辨识。该方法包括两个阶段。首先,将k均值聚类方法应用于输入数据,以提供输入空间的初始聚类。其次,通过考虑相应的输出变化来检查每个输入集群是否需要子集群,然后应用k-means方法进一步划分那些需要子集群的输入集群。递归地应用以上过程可以得到T-S模糊神经网络的结构辨识,然后利用梯度学习算法完成参数辨识。通过将所提出的方法应用于几个基准问题的实验显示出与许多现有方法相比更好的性能,然后验证了所提出方法的有效性和实用性。

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