综合智慧能源 ›› 2026, Vol. 48 ›› Issue (2): 86-95.doi: 10.3969/j.issn.2097-0706.2026.02.008

• 电力系统智能控制与数据分析 • 上一篇    下一篇

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

吴小欢1(), 沈景贵1, 张欣1, 胡裕民1, 徐烨玲1, 石明玉2,*()   

  1. 1.杭州电力设备制造有限公司杭州 310020
    2.东北电力大学 机械工程学院吉林 吉林 132012
  • 收稿日期:2025-08-04 修回日期:2025-10-28 出版日期:2026-02-25
  • 通讯作者: *石明玉(1999),男,硕士生,从事输配电设备智能化、机电设备故障诊断等方面的研究,15734330003@163.com
  • 作者简介:吴小欢(1982),男,高级工程师,硕士,从事新能源并网主动支撑、电力系统保护等方面的研究,597224188@qq.com
  • 基金资助:
    吉林省科技发展计划项目(20220508014RC)

Fault line selection method for distribution networks based on BMF-GADF and improved Swin Transformer

WU Xiaohuan1(), SHEN Jinggui1, ZHANG Xin1, HU Yumin1, XU Yeling1, SHI Mingyu2,*()   

  1. 1. Hangzhou Electric Power Equipment Manufacturing Company LimitedHangzhou 310020, China
    2. School of Mechanical EngineeringNortheast Electric Power UniversityJilin 132012, China
  • Received:2025-08-04 Revised:2025-10-28 Published:2026-02-25
  • Supported by:
    Science and Technology Development Program of Jilin Province(20220508014RC)

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,现有故障选线方法存在准确率低、鲁棒性弱等问题。为此,提出了一种基于巴特沃斯均值滤波-格拉姆角差场(BMF-GADF)与改进Swin Transformer的配电网故障选线方法。该方法将BMF与GADF相结合,把零序电流转换为特征增强的GADF图像;将图像样本输入改进的Swin Transformer模型中进行特征提取;改进的Swin Transformer在原架构基础上引入模块并行的卷积注意力机制可实现更准确的特征自适应选择,有效提升模型精度;利用Softmax分类器实现故障线路的选取,试验结果表明,该方法选线准确率达98.96%,相较于其他故障选线方法,具有更高的选线精度与噪声鲁棒性,为配电网故障选线提供了新方案。

关键词: 故障选线, 格拉姆角差场, 卷积注意力机制, 滑动窗口变换器, 特征提取

Abstract:

Due to the weak fault characteristics when a single-phase-to-ground fault occurs in the small current system of distribution networks,existing fault line selection methods often suffer from low accuracy and weak robustness. Therefore,a fault line selection method for distribution networks based on BMF-GADF and an improved Swin Transformer was proposed. The zero-sequence current was converted into a feature-enhanced Gramian angular difference field image by combining Butterworth mean filtering and Gramian angular difference field. The image samples were then input into the improved Swin Transformer model for feature extraction. Building upon the original architecture,the improved Swin Transformer innovatively introduced a parallel convolution block attention module,enabling more accurate adaptive feature selection and effectively enhancing model accuracy. The line selection results were output through Softmax. The experimental results showed that the fault line selection accuracy of the proposed method reached 98.96%. Compared with other fault line selection methods,the proposed method demonstrated higher line selection accuracy and better noise robustness,offering a new solution for fault line selection in distribution networks.

Key words: fault line selection, Gramian angular difference field, convolution block attention module, Swin Transformer, feature extraction

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