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基于BMF-GADF与改进Swin Transformer的配电网故障选线方法

吴小欢, 沈景贵, 张欣, 胡裕民, 徐烨玲, 石明玉   

  1. 杭州电力设备制造有限公司, 浙江 310000 中国
    东北电力大学, 吉林 132000 中国
  • 收稿日期:2025-08-04 修回日期:2025-10-24
  • 基金资助:
    吉林省科技发展计划项目(20220508014RC)

Distribution network fault line selection method based on BMF-GADF and improved Swin Transformer

  1. , 310000, China
    , 132000, China
  • Received:2025-08-04 Revised:2025-10-24

摘要: 由于配电网小电流系统发生单相接地故障时故障特征比较微弱,现有故障选线方法往往存在准确率低、鲁棒性弱等问题,为此本研究提出一种基于BMF-GADF与改进Swin Transformer的配电网故障选线方法。首先,利用巴特沃斯均值滤波与格拉姆角差场相结合的方式,将零序电流转换为特征增强的格拉姆角差场图像;然后,将图像样本送入改进的Swin Transformer模型中进行特征提取,改进的Swin Transformer在原架构的基础上创新性的引入了模块并行的卷积注意力机制,实现了更准确的特征自适应选择,有效提升模型精度;最后,通过Softmax输出选线结果。实验结果表明:本研究提出的方法选线准确率达到98.96%,相比于其他故障选线方法,所提方法具有更高的选线精度与噪声鲁棒性,并为配电网故障选线提供了一种新方案。

关键词: 故障选线, 格拉姆角差场:卷积注意力机制, Swin Transformer

Abstract: Due to the weak fault characteristics of single-phase grounding fault in the small current system of distribution network, the existing fault line selection methods often have problems such as low accuracy and weak robustness. Therefore, this study proposes a fault line selection method for distribution network based on BMF-GADF and improved Swin Transformer. Firstly, the zero-sequence current is converted into a feature-enhanced Gram angle difference field image by using the combination of Butterworth Mean Filtering and Gramian Angle Difference Field. Then, the image samples are sent to the improved Swin Transformer model for feature extraction. The improved Swin Transformer innovatively introduces the module parallel Convolution Block Attention Module on the basis of the original architecture, which realizes more accurate feature adaptive selection and effectively improves the accuracy of the model. Finally, the line selection results are output by Softmax. The experimental results show that the accuracy of the proposed method is 98.75 %. Compared with other fault line selection methods, the proposed method has higher line selection accuracy and noise robustness, and provides a new scheme for fault line selection in distribution network.

Key words: Fault line selection, GADF, CBAM, Swin Transformer