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Application of semi-supervised fuzzy kernel clustering algorithm in recognizing transformer winding's pressed state

机译:半监督模糊核聚类算法在变压器绕组受压状态识别中的应用

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This paper applies fuzzy clustering algorithm to recognize the transformer winding's pressed state based on transformer's vibration signal. We propose a new semi-supervised fuzzy kernel clustering algorithm (SFKC) based on some modifications for the fuzzy clustering methods. The first modification is that the new algorithm uses prior knowledge to guide the clustering process. Second, it uses kernel function to map the samples to high dimensional feature space for clustering. Third, dynamic weight of the feature is carried out considering the different effects of sample features. The accuracy and reliability of the proposed algorithm are verified by the standard test data set. Then the algorithm is applied to recognize transformer winding's pressed state. According to the vibration characteristics of the transformer, we construct a sample set incorporating multi-sensors and multi-features for clustering. After clustering, we use the clustering centers and feature weights to recognize new unlabeled sample. The results show that the method is feasible.
机译:本文应用模糊聚类算法根据变压器的振动信号识别变压器绕组的受压状态。基于对模糊聚类方法的一些改进,我们提出了一种新的半监督模糊核聚类算法(SFKC)。第一个修改是新算法使用先验知识来指导聚类过程。其次,它使用核函数将样本映射到高维特征空间以进行聚类。第三,考虑样本特征的不同影响来执行特征的动态权重。标准测试数据集验证了所提算法的准确性和可靠性。然后将该算法应用于识别变压器绕组的压紧状态。根据变压器的振动特性,我们构建了一个包含多传感器和多特征的聚类样本集。聚类后​​,我们使用聚类中心和特征权重来识别新的未标记样本。结果表明该方法是可行的。

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