PDF(2079 KB)
Intelligent Fault Section Location Method of Active Distribution Network Based on Distribution-Centralized Two-Stage Cooperation
Chaohong MAN, Tiepeng SUN, Haifeng LI, Huamin LIANG
South Power Sys Technol ›› 2025, Vol. 19 ›› Issue (11) : 72-82.
PDF(2079 KB)
PDF(2079 KB)
Intelligent Fault Section Location Method of Active Distribution Network Based on Distribution-Centralized Two-Stage Cooperation
In view of the large communication volume required by traditional centralized methods in active distribution network fault section location, as well as the challenges faced by existing artificial intelligence methods such as complex models and resource constraints when deployed in a distributed manner, a two-stage collaborative intelligent fault section location method of distributed deployment and centralized diagnosis is proposed. This method first uses variational mode decomposition to extract high-dimensional local fault features from the current signals collected by each distributed measurement unit, and then completes the preliminary diagnosis at the terminal through a lightweight multi-layer perceptron model, only uploading the low-dimensional fault section probability vector. Subsequently, at the centralized fusion end, taking these probability vectors as meta-features, meta-learning data is generated with the aid of K-Fold cross-validation, and a collaborative neural network based on Stacking is constructed to optimize and fuse multi-source information end-to-end, in order to output the final fault section discrimination result. The simulation experiments show that the proposed method can effectively integrate distributed observation information and achieve high-precision fault section location under various fault conditions. Its performance is significantly better than that of a single local model and a simple fusion strategy, providing a new and effective way for the rapid and accurate location of distribution network faults.
distribution network / fault section location / distributed sensing / variational mode decomposition / feature fusion / stacking
| [1] |
王彩强, 张青, 李晨, 等. 含有限PMU的配电网故障区域在线辨识算法[J]. 南方电网技术, 2024, 18(12):42 - 50.
|
| [2] |
詹惠瑜, 刘科研, 盛万兴, 等. 有源配电网故障诊断与定位方法综述及展望[J]. 高电压技术, 2023, 49(2):660 - 671.
|
| [3] |
吴璐子, 缪希仁, 庄胜斌, 等. 含分布式电源配电网故障检测与定位研究综述[J]. 福州大学学报(自然科学版), 2022, 50(6):751 - 759.
|
| [4] |
|
| [5] |
齐郑, 黄朝晖, 陈艳波. 基于零序分量的阻抗法配电网故障定位技术[J]. 电力系统保护与控制, 2023, 51(6):54 - 62.
|
| [6] |
黄博, 李文亮, 徐学帅, 等. 35 kV中压配电网单相接地故障行波定位方法研究[J]. 电网与清洁能源, 2023, 39(1):58 - 63.
|
| [7] |
陈中豪, 徐良德, 郭挺, 等. 基于IGG抗差的配电网多端行波故障定位方法[J]. 广东电力, 2022, 35(11):34 - 41.
|
| [8] |
梅飞, 陈子平, 裴鑫, 等. 基于矩阵算法的有源配电网故障定位容错方法[J]. 电力工程技术, 2022, 41(6):109 - 115.
|
| [9] |
梁英达, 田书, 刘明杭. 基于相量校正的多源配电网故障区段定位[J]. 电力系统保护与控制, 2023, 51(1):33 - 42.
|
| [10] |
李佳玮, 王小君, 和敬涵, 等. 基于图注意力网络的配电网故障定位方法[J]. 电网技术, 2021, 45(6):2113 - 2121.
|
| [11] |
孟子超, 杜文娟, 王海风. 基于迁移学习深度卷积神经网络的配电网故障区域定位[J]. 南方电网技术, 2019, 13(7):25 - 33.
|
| [12] |
严凤, 李双双. 基于C型行波与SVM的配电线路故障定位[J]. 电力系统及其自动化学报, 2016, 28(1):86 - 90.
YAN Feng, LI Shuangshuang, Composite fault location method based on C-traveling wave and SVM for distribution lines[J]. Proceedings of the CSU-EPSA, 2016, 28(1):86 - 90.
|
| [13] |
李舟平, 姚伟, 曾令康, 等. 基于长短期记忆网络的电网故障区域定位与故障传播路径推理[J]. 电力自动化设备, 2021, 41(6):164 - 174, 178.
|
| [14] |
徐良德, 黄馨仪, 郭挺, 等. 考虑分布式光伏不确定性的输配电系统供电能力评估[J]. 广东电力, 2024, 37(6):11 - 20.
|
| [15] |
缪希仁, 赵丹, 刘晓明, 等. 含分布式电源配电网短路保护研究综述[J]. 高电压技术, 2023, 49(7):3006 - 3019.
|
| [16] |
葛磊蛟, 李元良, 陈艳波, 等. 智能配电网态势感知关键技术及实施效果评价[J]. 高电压技术, 2021, 47(7):2269 - 2280.
|
| [17] |
刘科研, 董伟杰, 肖仕武, 等. 基于电压数据SVM分类的有源配电网故障判别及定位[J]. 电网技术, 2021, 45(6):2369 - 2379.
|
| [18] |
邓祥力, 吴高珍, 魏聪聪, 等. 基于多源数据融合的Alexnet神经网络大电网故障诊断[J]. 现代电力, 2023, 40(2):161 - 169.
|
| [19] |
黄南天, 程铎, 蔡国伟. 基于改进时空图神经网络的高渗透率有源配电网故障定位[J]. 电力系统自动化, 2025, 49 (10):112 - 122.
|
| [20] |
张勇军, 羿应棋, 李立浧, 等. 双碳目标驱动的新型低压配电系统技术展望[J]. 电力系统自动化, 2022, 46(22):1 - 12.
|
| [21] |
李振钊, 王增平, 张玉玺. 基于多源信息融合的有源配电网故障测距新方法[J]. 电网技术, 2023, 47(8):3448 - 3459.
|
| [22] |
王远川, 李泽文, 夏翊翔, 等. 基于VMD和改进聚类算法的配电网故障选线方法[J]. 电力系统及其自动化学报, 2024, 36(4):9 - 18.
|
| [23] |
陈晓华, 王志平, 吴杰康, 等. 基于VMD和IAO-SVM的电压暂降源识别方法[J]. 广东电力, 2023, 36(1):59 - 67.
|
| [24] |
何一纯, 李超顺, 杨云鹏. 基于MLP和注意力机制BiLSTM的水电机组劣化趋势预测[J]. 水电能源科学, 2025, 43(3):177 - 181, 100.
|
| [25] |
邢超, 马红升, 覃日升, 等. 基于堆叠降噪自编码网络和多源数据加权融合的发电机故障诊断方法[J]. 高压电器, 2025, 61(5):170 - 178.
|
| [26] |
游文霞, 李清清, 杨楠, 等. 基于多异学习器融合Stacking集成学习的窃电检测[J]. 电力系统自动化, 2022, 46(24):178 - 186.
|
| [27] |
邱磊鑫, 余涛, 彭秉刚. 基于异构基Stacking机制的居民负荷特征图像识别方法[J]. 电力系统保护与控制, 2022, 50(20):97 - 105.
QIU Leixin, YU Tao, PENG Binggang, Image recognition method of resident load characteristics based on heterogeneous basis Stacking mechanism[J]. Power System Protection and Control, 2022, 50(20):97 - 105.
|
| [28] |
|
/
| 〈 |
|
〉 |