[1] 耿建昭,王宾,董新洲,等. 中性点有效接地配电网高阻接地故障特征分析及检测[J]. 电力系统自动化,2013,37(16):85-91. [2] 汪光远,杨德先,林湘宁,等. 基于深度置信网络的柔性直流配电网高灵敏故障辨识策略[J]. 电力系统自动化,2021,45(17):180-188. [3] 王晓卫,田书,李玉东,等. 基于S变换特征频率序列的小电流接地系统故障区段定位方法[J]. 电力系统保护与控制,2012,40(14):109-115. [4] 杨赛昭,向往,张峻榤,等. 基于人工神经网络的架空柔性直流电网故障检测方法[J]. 中国电机工程学报,2019,39(15):4416-4430. [5] 李岩. 基于决策树支持向量机的风电机组齿轮箱故障诊断[D]. 北京:华北电力大学,2018. [6] 吕丽君. 基于小波分析和支持向量机的建筑电气系统故障诊断研究[J]. 光源与照明,2025(2):109-111. [7] 黄天恩,郭庆来,孙宏斌,等. 模型-数据混合驱动的电网安全特征选择和知识发现关键技术与工程应用[J]. 电力系统自动化,2019,43(1):95-101,208. [8] 魏东,龚庆武,来文青,等. 基于卷积神经网络的输电线路区内外故障判断及故障选相方法研究[J]. 中国电机工程学报,2016,36(增刊1):21-28. [9] 单斌斌. 基于卷积自编码器与长短期记忆网络的电气实验数据异常检测方法[J]. 信息记录材料,2025,26(9):58-60. [10] 郑彦文. 基于人工智能的配电网弱特征故障辨识方法研究[D]. 北京:北京交通大学,2021. [11] MORTAZAVi S H,MORAVEJ Z,SHAHRTASH S M.A hybrid method for arcing faults detection in large distribution networks[J]. International Journal of Electrical Power&Energy Systems,2018,94:141-150. [12] 李宇,杨柳林. 基于卷积神经网络的配电网单相接地故障识别[J]. 电气工程学报,2020,15(3):22-30. [13] 林万里,杨耿杰,郭谋发. 基于零休偏移现象的弧光高阻接地故障类型辨识[J/OL]. 电网技术,1-14.(2025-08-04)[2025-12-04]. https://link.cnki.net/urlid/11.2410.TM.20250804.0915.002. [14] HUAQUiSACA PAYE J C,ViEiRA J P A,TABORA J M,et al. High impedance fault models for overhead distribution networks: a review and comparison with MV lab experiments[J]. Energies,2024,17(5):1125. [15] 杨皓涵,王政,曾毅,等. 10 kV配电线路树线故障树木阻抗变化曲线研究[J]. 供用电,2024,41(11):31-42,59. [16] 尚博阳,罗国敏,刘畅宇,等. 小样本条件下基于深度特征融合的配电网高阻接地故障识别方法[J]. 电力系统保护与控制,2025,53(6):101-112. [17] 韦明杰,张恒旭,石访,等. 基于谐波能量和波形畸变的配电网弧光接地故障辨识[J]. 电力系统自动化,2019,43(16):148-154. [18] 张永宏,王逸飞,赵晓平,等. 基于深度度量学习的电机故障诊断[J]. 测控技术,2020,39(7):30-37. [19] SAMANTARAY S R.Ensemble decision trees for high impedance fault detection in power distribution network(Article)[J]. International Journal of Electrical Power and Energy Systems,2012,43(1):1048-1055. [20] KAVASKAR S,NALiN K M,ASHWiN K S.High impedance fault detection using wavelet transform[C]//2018 Technologies for Smart-City Energy Security and Power(iCSESP). Bhubaneswar,india. IEEE,2018:1-6. [21] RAi K,HOJATPANAH f,AJAEi f B,et al.Deep learning for high-impedance fault detection:convolutional autoencoders.[J]. Energies,2021,14(12):3623. [22] NiNG K Q,YE L,SONG W,et al.A dual-path neural network for high-impedance fault detection[J]. Mathematics,2025,13(2):225. [23] TUNiO N A,ALi TUNiO M,RAZA M A,et al.Performance comparison between deep learning models for fault classification in transmission lines using time series data[J]. Energy Science & Engineering,2025,13(5):2330-2351. |