A novel semi-supervised learning method for power transformer fault diagnosis with limited labeled data

Guolin Zhou, Dazhi Wang, Yuqian Tian, Jiaxing Wang, Shuo Cao
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Abstract

Identifying power transformer faults accurately is critical to maintaining the stable operation of power system. Intelligent fault diagnosis algorithms based on dissolved gases have been extensively researched and implemented. However, in practice, collecting labeled data is time-consuming and costly. Therefore, it is necessary to establish a valid diagnostic model with limited labeled data. To solve this problem, a novel semi-supervised learning method for power transformer fault diagnosis is proposed in this paper. First, all the dissolved gas samples are constructed as a weighted K-nearest neighbor (KNN) graph to initially describe association among all samples. Then, a semi-supervised random multireceptive field propagation graph convolutional network (SSRMFPGCN) is designed for fault feature extraction and classification. Finally, the collected power transformer fault data are used to validate the proposed method. The experimental results show that the method proposed in this paper can still achieve 94.06% accuracy with only 20% of labeled training samples, which is significantly superior to the traditional intelligent diagnosis methods.
基于有限标记数据的电力变压器故障诊断半监督学习方法
准确识别电力变压器故障对维持电力系统的稳定运行至关重要。基于溶解气体的智能故障诊断算法得到了广泛的研究和实现。然而,在实践中,收集标记数据既耗时又昂贵。因此,有必要在有限的标记数据下建立有效的诊断模型。为了解决这一问题,本文提出了一种新的电力变压器故障诊断的半监督学习方法。首先,将所有溶解气体样本构建为加权k近邻(KNN)图,初步描述所有样本之间的关联关系。然后,设计了一种用于故障特征提取和分类的半监督随机多接受场传播图卷积网络(SSRMFPGCN)。最后,利用采集到的电力变压器故障数据对所提方法进行验证。实验结果表明,本文提出的方法在仅使用20%标记训练样本的情况下仍能达到94.06%的准确率,明显优于传统的智能诊断方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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