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Modified fuzzy min-max neural network for clustering and its application on the pipeline internal inspection data

机译:用于聚类的修改模糊MIN-MAX神经网络及其在管道内部检查数据上的应用

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In this paper, an unsupervised learning algorithm called the modified fuzzy min-max neural network for clustering on the application of the pipeline internal inspection data (MFNNC) is proposed. As the original fuzzy min-max clustering algorithm, each cluster of the MFNNC is a hyperbox. And the hyperbox is decided by its membership function. The size of the cluster is determined by its minimum point and maximum point. Compared with FMNN by Simpson(1993), the MFNNC has stronger robustness and higher accuracy, which has proposed an boundary rule and also taken the noise into account. Through the MFNNC, the problem of the points on the contraction boundary has been solved. And the influence of noise on the whole algorithm is reduced. The performance of the MFNNC is checked by the IRIS data set. The simulation result shows that the MFNNC has better performance than the FMNN. At last, the application on the oil pipeline is given. The result shows that our modified algorithm scheme can be regarded as a method to preprocess for the classification of the pipeline internal inspection data.
机译:在本文中,提出了一种称为修改模糊MIN-MAX神经网络的无监督学习算法,用于对流水线内部检查数据(MFNNC)的应用进行聚类。作为原始模糊MIN-MAX聚类算法,MFNNC的每个群集都是超高框。 Hyperbox由其成员函数决定。集群的大小由其最小点和最大点确定。与SIMPSON(1993)的FMNN相比,MFNNC具有更强的鲁棒性和更高的准确性,这提出了边界规则,并考虑了噪音。通过MFNNC,解决了收缩边界的点数。并且减少了噪声对整个算法的影响。通过IRIS数据集检查MFNNC的性能。仿真结果表明,MFNNC具有比FMNN更好的性能。最后,给出了石油管道上的申请。结果表明,我们的修改算法方案可以被视为预处理流水线内部检查数据的预处理的方法。

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