Integrated Intelligent Energy ›› 2026, Vol. 48 ›› Issue (2): 27-36.doi: 10.3969/j.issn.2097-0706.2026.02.003
• Maintanence and Inspection based on AI • Previous Articles Next Articles
CUI Xianghu1(
), XU Yuefei1(
), QI Jiajin1(
), ZHANG Jing1(
), CHEN Shizhe1(
), LI Jinnuo2,*(
)
Received:2025-09-22
Revised:2025-10-24
Published:2026-02-25
Contact:
LI Jinnuo
E-mail:99522570@qq.com;xu13868011898@163.com;qijiajin@126.com;331029160@qq.com;370469588@qq.com;lijinnuo12@163.com
CLC Number:
CUI Xianghu, XU Yuefei, QI Jiajin, ZHANG Jing, CHEN Shizhe, LI Jinnuo. Research on distribution network fault identification method based on multi-source feature fusion denoising network[J]. Integrated Intelligent Energy, 2026, 48(2): 27-36.
Add to citation manager EndNote|Ris|BibTeX
URL: https://www.hdpower.net/EN/10.3969/j.issn.2097-0706.2026.02.003
| [1] | 李泽文, 葛俊辰, 陈思旭, 等. 基于VMD-MWPE和PNN的配电网故障分类辨识方法[J]. 江西电力, 2025, 49(3): 28-37. |
| LI Zewen, GE Junchen, CHEN Sixu, et al. Fault classification and identification method of distribution network based on VMD-MWPE and PNN[J]. Jiangxi Electric Power, 2025, 49(3): 28-37. | |
| [2] | 王建, 吴昊, 张博, 等. 不平衡样本下基于迁移学习- AlexNet的输电线路故障辨识方法[J]. 电力系统自动化, 2022, 46(22): 182-191. |
| WANG Jian, WU Hao, ZHANG Bo, et al. Fault identification method for transmission line based on transfer learning-AlexNet with imbalanced samples[J]. Automation of Electric Power Systems, 2022, 46(22): 182-191. | |
| [3] |
WANG J, ZHANG B, YIN D, et al. Distribution network fault comprehensive identification method based on voltage-ampere curves and deep ensemble learning[J]. International Journal of Electrical Power & Energy Systems, 2025, 164: 110403.
doi: 10.1016/j.ijepes.2024.110403 |
| [4] |
RIZEAKOS V, BACHOUMIS A, ANDRIOPOULOS N, et al. Deep learning-based application for fault location identification and type classification in active distribution grids[J]. Applied Energy, 2023, 338: 120932.
doi: 10.1016/j.apenergy.2023.120932 |
| [5] | 李靖鑫, 李旭锋, 杨金东, 等. 非线性负载配电网异常时频电流行波辨识方法[J]. 电子设计工程, 2024, 32(24): 143-146, 151. |
| LI Jingxin, LI Xufeng, YANG Jindong, et al. Nonlinear load distribution network abnormal time-frequency current wave identification method[J]. Electronic Design Engineering, 2024, 32(24): 143-146, 151. | |
| [6] | 庄小艇, 孙蒙恩, 赖天德, 等. 基于负荷波动特征量提取和稳健估计的低压配电网回路阻抗辨识方法[J]. 供用电, 2025, 42(2): 29-37. |
| ZHUANG Xiaoting, SUN Meng'en, LAI Tiande, et al. A low voltage distribution network loop impedance identification method based on load fluctuation feature extraction and robust estimation[J]. Distribution & Utilization, 2025, 42(2): 29-37. | |
| [7] |
GUO M F, YANG N C, YOU L X. Wavelet-transform based early detection method for short-circuit faults in power distribution networks[J]. International Journal of Electrical Power & Energy Systems, 2018, 99: 706-721.
doi: 10.1016/j.ijepes.2018.01.013 |
| [8] |
JI L P, TIAN X L, WEI Z H, et al. Intelligent fault diagnosis in power distribution networks using LSTM-DenseNet network[J]. Electric Power Systems Research, 2025, 239: 111202.
doi: 10.1016/j.epsr.2024.111202 |
| [9] |
SAAD M, KIM C H, MUNIR N. Single-phase auto-reclosing scheme using particle filter and convolutional neural network[J]. IEEE Transactions on Power Delivery, 2022, 37(6): 4775-4785.
doi: 10.1109/TPWRD.2022.3159256 |
| [10] | 叶远波, 王吉文, 邵庆祝, 等. 配电网故障识别Transformer-联邦迁移学习算法设计[J]. 电力系统及其自动化学报, 2025, 37(10): 120-128. |
| YE Yuanbo, WANG Jiwen, SHAO Qingzhu, et al. Design of Transformer-based federated transfer learning algorithm for distribution network fault recognition[J]. Proceedings of the CSU-EPSA, 2025, 37(10): 120-128. | |
| [11] | 梁栋, 赵月梓, 贺国润, 等. 基于图半监督与多任务学习的配电网故障区段与类型统一辨识[J]. 电力系统保护与控制, 2024, 52(12): 25-32. |
| LIANG Dong, ZHAO Yuezi, HE Guorun, et al. Unified identification of fault section and type for distribution networks based on graph semi-supervised and multi-task learning[J]. Power System Protection and Control, 2024, 52(12): 25-32. | |
| [12] |
任一鸣, 杜董生, 邓祥帅, 等. 基于GRU和GWO-KELM的电力线路故障诊断[J]. 综合智慧能源, 2024, 46(3): 54-62.
doi: 10.3969/j.issn.2097-0706.2024.03.007 |
|
REN Yiming, DU Dongsheng, DENG Xiangshuai, et al. Power line fault diagnosis based on GRU and GWO-KELM[J]. Integrated Intelligent Energy, 2024, 46(3): 54-62.
doi: 10.3969/j.issn.2097-0706.2024.03.007 |
|
| [13] |
陈昊蓝, 靳冰莹, 刘亚东, 等. 基于门控循环注意力网络的配电网故障识别方法[J]. 上海交通大学学报, 2024, 58(3): 295-303.
doi: 10.16183/j.cnki.jsjtu.2022.091 |
| CHEN Haolan, JIN Bingying, LIU Yadong, et al. Fault detection in power distribution systems based on gated recurrent attention network[J]. Journal of Shanghai Jiao Tong University, 2024, 58(3): 295-303. | |
| [14] |
IBRAHIM A H M, SADANANDAN S K, GHAOUD T, et al. Incipient fault detection in power distribution networks: Review, analysis, challenges and future directions[J]. IEEE Access, 2024, 12: 112822-112838.
doi: 10.1109/ACCESS.2024.3443252 |
| [15] |
SHALBY E M, ABDELAZIZ A Y, AHMED E S, et al. A comprehensive guide to selecting suitable wavelet decomposition level and functions in discrete wavelet transform for fault detection in distribution networks[J]. Scientific Reports, 2025, 15(1): 1160.
doi: 10.1038/s41598-024-82025-2 |
| [16] |
FAHIM S R, SARKER S K, MUYEEN S M, et al. A deep learning based intelligent approach in detection and classification of transmission line faults[J]. International Journal of Electrical Power & Energy Systems, 2021, 133: 107102.
doi: 10.1016/j.ijepes.2021.107102 |
| [17] |
HAO S, FAN S A, MA X, et al. MKDNet: A fault detection method based on multi-scale entropy mode denoising and collaborative knowledge distillation for distribution networks[J]. Electric Power Systems Research, 2025, 249: 112003.
doi: 10.1016/j.epsr.2025.112003 |
| [18] | 卢晓强, 李刚, 周万竣, 等. 基于最小二乘双支持向量机的配电网短路故障辨识方法研究[J]. 武汉大学学报(工学版), 2022, 55(4): 401-408. |
| LU Xiaoqiang, LI Gang, ZHOU Wanjun, et al. Research on identification method of short-circuit fault in distribution network based on least squares twin support vector machine[J]. Engineering Journal of Wuhan University, 2022, 55(4): 401-408. | |
| [19] | 李政洋, 曹一家, 陈春, 等. 配电网相电压不对称动态变化下的高阻接地故障辨识[J]. 中国电机工程学报, 2024, 44(22): 8744-8759. |
| LI Zhengyang, CAO Yijia, CHEN Chun, et al. Identification of high-impedance ground faults under dynamic variations of voltage unbalance in distribution networks[J]. Proceedings of the CSEE, 2024, 44(22): 8744-8759. | |
| [20] | HU J, SHEN L, SUN G. Squeeze-and-excitation networks[C]// Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. 2018: 7132-7141. |
| [21] |
冯骥, 杨国华, 史磊, 等. 基于并行融合深度残差收缩网络的有源配电网故障诊断[J]. 综合智慧能源, 2024, 46(6): 8-15.
doi: 10.3969/j.issn.2097-0706.2024.06.002 |
|
FENG Ji, YANG Guohua, SHI Lei, et al. Research on fault diagnosis of active distribution network based on parallel fusion deep residual shrinkage network[J]. Integrated Intelligent Energy, 2024, 46(6): 8-15.
doi: 10.3969/j.issn.2097-0706.2024.06.002 |
|
| [22] | 刘宝稳, 崔露瑶, 曾祥君, 等. 配电网两相接地零序电压空间轨迹区域特征与故障相识别[J/OL]. 电网技术, 2025: 1-15(2025-08-04) [2025-09-22]. https://kns.cnki.net/KCMS/detail/detail.aspx?filename=DWJS20250801007&dbname=CJFD&dbcode=CJFQ. |
| LIU Baowen, CUI Luyao, ZENG Xiangjun, et al. Spatial trajectory characteristics of zero-sequence voltage for two-phase grounding fault and fault phase identification in distribution networks[J/OL]. Power System Technology, 2025: 1-15(2025-08-04) [2025-09-22]. https://kns.cnki.net/KCMS/detail/detail.aspx?filename=DWJS20250801007&dbname=CJFD&dbcode=CJFQ. | |
| [23] | 缪欣, 黄海悦. 基于Δi-PCA原理的分布式小电流接地选线保护方法研究[J]. 机电信息, 2023(4): 76-81. |
| MIAO Xin, HUANG Haiyue. Research on distributed protection method of small current grounding line selection based on Δi-PCA principle[J]. Mechanical and Electrical Information, 2023(4): 76-81. | |
| [24] | 甘捷, 姚孝庭, 于景国, 等. 变频器10 kV断路器柜速断保护动作故障分析及处理[J]. 东北电力技术, 2021, 42(1): 41-43. |
| GAN Jie, YAO Xiaoting, YU Jingguo, et al. Analysis and treatment of Quick-B reak protection fault for 10 kV switchgear in frequency converter[J]. Northeast Electric Power Technology, 2021, 42(1): 41-43. | |
| [25] | CHI L, JIANG B, MU Y. Fast Fourier convolution[J]. Advances in Neural Information Processing Systems, 2020, 33: 4479-4488. |
| [26] |
ATTAR M S, MIVEH M R. High‐impedance fault detection in distribution networks based on support vector machine and wavelet transform approach (Case study: Markazi Province of Iran)[J]. Energy Science & Engineering, 2025, 13(3): 1171-1183.
doi: 10.1002/ese3.v13.3 |
| [27] | 张灵芝, 王杨帆, 刘基典, 等. 电网故障行波传感器研究及测试[J]. 电力科学与技术学报, 2020, 35(2): 142-149. |
| ZHANG Lingzhi, WANG Yangfan, LIU Jidian, et al. Research and experiments on the transmission characteristics of traveling wave sensor for power fault[J]. Journal of Electric Power Science and Technology, 2020, 35(2): 142-149. | |
| [28] |
SIDDIQUE M N I, SHAFIULLAH M, MEKHILEF S, et al. Fault classification and location of a PMU-equipped active distribution network using deep convolution neural network(CNN)[J]. Electric Power Systems Research, 2024, 229: 110178.
doi: 10.1016/j.epsr.2024.110178 |
| [29] |
ZHAO M H, ZHONG S, FU X, et al. Deep residual shrinkage networks for fault diagnosis[J]. IEEE Transactions on Industrial Informatics, 2019, 16(7): 4681-4690.
doi: 10.1109/TII.9424 |
| [30] | VASWANI A, SHAZEER N, PARMAR N, et al. Attention is all you need[J]. Advances in Neural Information Processing Systems, 2017, 30: 03762. |
| [31] |
LI T F, ZHAO Z B, SUN C, et al. WaveletKernelNet: An interpretable deep neural network for industrial intelligent diagnosis[J]. IEEE Transactions on Systems, Man, and Cybernetics: Systems, 2022, 52(4): 2302-2312.
doi: 10.1109/TSMC.2020.3048950 |
| [32] | WANG Q L, WU B G, ZHU P F, et al. ECA-Net: Efficient channel attention for deep convolutional neural networks[C]// Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, 2020: 11534-11542. |
| [33] | ZHOU B L, KHOSLA A, LAPEDRIZA A, et al. Learning deep features for discriminative localization[C]// Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, 2016: 2921-2929. |
| [34] | PRATT H, WILLIAMS B, COENEN F, et al. FCNN: Fourier convolutional neural networks[C]// Joint European Conference on Machine Learning and Knowledge Discovery in Databases. Cham: Springer International Publishing, 2017: 786-798. |
| [1] | LIANG Beining, YIN Linfei. ADC-YOLO:A lightweight dynamic attention detector for insulator inspection [J]. Integrated Intelligent Energy, 2026, 48(2): 1-14. |
| [2] | XU Jiahao, XU Junjun. Bad data recovery of smart substation remote terminal units based on spatio-temporal multi-view learning [J]. Integrated Intelligent Energy, 2026, 48(2): 15-26. |
| [3] | XU Changfu, ZHAO Xindong, LIANG Wei, HE Xing, BU Yikang. Study on diffusion characteristics of SF6 gas in GIL pipe gallery under multiple leakage scenarios based on digital twin [J]. Integrated Intelligent Energy, 2026, 48(2): 37-46. |
| [4] | JI Fangxu, SU Ying, DING Kun, WU Haifei, CHEN Xiang, HE Yaoxi, ZHANG Jingwei. Review of mathematical modeling and health status evaluation methods for PV arrays [J]. Integrated Intelligent Energy, 2026, 48(2): 68-85. |
| [5] | WU Xiaohuan, SHEN Jinggui, ZHANG Xin, HU Yumin, XU Yeling, SHI Mingyu. Fault line selection method for distribution networks based on BMF-GADF and improved Swin Transformer [J]. Integrated Intelligent Energy, 2026, 48(2): 86-95. |
| [6] | ZHENG Yang, SHI Long, LU Ye, HAO Guangdong. Post-disaster restoration scheduling of distribution networks coordinating fault repair and topology reconfiguration [J]. Integrated Intelligent Energy, 2026, 48(2): 96-105. |
| [7] | XU Cong, XU Jingjing, JIANG Ting, XUE Dong, YAN Lichen. Research on data-driven operation optimization of integrated energy systems [J]. Integrated Intelligent Energy, 2026, 48(1): 34-42. |
| [8] | PAN Lei, DING Yunfei, PANG Yi, WANG Yuxuan, CHEN Jianwei, GAO Rui, ZHANG Liyang. Optimal scheduling strategy for REHMIS-IES based on SC-SAC algorithm [J]. Integrated Intelligent Energy, 2026, 48(1): 43-58. |
| [9] | XUE Dong, XU Jingjing, JIANG Ting, WANG Xiaohai, XU Cong. Research on heat load prediction of integrated energy systems in parks based on dual feature processing [J]. Integrated Intelligent Energy, 2026, 48(1): 59-66. |
| [10] | LONG Yu, LIU Xiaofeng, LIU Huai, LIU Guobao, LI Feng, YU Zixiang. Active-reactive power robust control for distribution network voltage under high-proportion distributed photovoltaic integration [J]. Integrated Intelligent Energy, 2026, 48(1): 67-77. |
| [11] | LIU Chaoran, LIU Lingling, WANG Feng. Power quality analysis of distributed generation based on big data technology [J]. Integrated Intelligent Energy, 2026, 48(1): 78-84. |
| [12] | LIANG Fuguang, MA Zhongqiang. Load prediction for island microgrids based on evaluation factor reconstruction and DECN-BiGRU [J]. Integrated Intelligent Energy, 2026, 48(1): 85-97. |
| [13] | GENG Bochen, SHI Xin, XIONG Yaxuan, JIANG Zeling. Research progress on modification methods for calcium looping thermochemical heat storage [J]. Integrated Intelligent Energy, 2025, 47(12): 1-13. |
| [14] | WANG Qianrui, RUAN Jingxin, WANG Yueshe. Economic optimal scheduling of electricity-hydrogen coordinated energy storage system considering spatiotemporal correlation of wind and photovoltaic power outputs [J]. Integrated Intelligent Energy, 2025, 47(12): 34-45. |
| [15] | YAN Jing, LI Meng, GUAN Baoliang, MENG Siyu, FAN Yanbo, WANG Fenglong, YANG Shangfeng, YANG Zhongyang, XIONG Yaxuan. Multi-objective optimization of multi-energy supply for residential buildings in cold regions based on energy storage [J]. Integrated Intelligent Energy, 2025, 47(12): 46-56. |
| Viewed | ||||||
|
Full text |
|
|||||
|
Abstract |
|
|||||

