詹惠瑜, 刘科研, 盛万兴, 孟晓丽. 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. DOI: 10.13336/j.1003-6520.hve.20211604
引用本文: 詹惠瑜, 刘科研, 盛万兴, 孟晓丽. 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. DOI: 10.13336/j.1003-6520.hve.20211604
ZHAN Huiyu, LIU Keyan, SHENG Wanxing, MENG Xiaoli. Review and Prospects of Fault Diagnosis and Location Method in Active Distribution Network[J]. High Voltage Engineering, 2023, 49(2): 660-671. DOI: 10.13336/j.1003-6520.hve.20211604
Citation: ZHAN Huiyu, LIU Keyan, SHENG Wanxing, MENG Xiaoli. Review and Prospects of Fault Diagnosis and Location Method in Active Distribution Network[J]. High Voltage Engineering, 2023, 49(2): 660-671. DOI: 10.13336/j.1003-6520.hve.20211604

有源配电网故障诊断与定位方法综述及展望

Review and Prospects of Fault Diagnosis and Location Method in Active Distribution Network

  • 摘要: 随着分布式电源和多元化负荷的接入,配电网由无源网络变为有源网络,潮流由“单向”变为“双向”,配电网结构、设备环境、运行工况日益复杂,有源配电网的故障诊断与定位难度增大。从配电网故障诊断与定位面临的挑战、现有故障诊断与定位方法、基于人工智能的故障诊断等方面进行了阐述,对国内外的研究现状进行了总结和分析。针对配电网故障数据的小样本问题,提出了基于时序仿真的样本补全方法;针对故障诊断难以直接学习和精准训练的问题,提出可以通过最优特征提取、多层次模型训练和迁移学习更新优化,实现故障的在线处理。最后针对目前故障诊断与定位研究方法中存在的问题和未来研究方向进行了总结和展望。

     

    Abstract: With the integration of distributed generations and diverse loads, distribution network has changed from passive network to active network, while the power flow has changed from 'unidirectional' to 'bi-directional'. The structure of distribution network, the environment of equipment and the condition of operation are becoming increasingly complex. It is becoming difficult to achieve accurate analysis, identification and location by traditional fault handling methods. Therefore, we discuss the technology challenge of fault diagnosis and location in power distribution network, existing approaches of fault processing, new processing methods based on artificial intelligence. Moreover, we summarize and analyze the domestic and international research status on the issues. Especially, a sample completion method based on time series simulation is proposed to solve the small sample problem. In order to improve the accuracy of training model in fault diagnosis, online fault processing is proposed and discussed through optimal feature extraction, multi-level model training and migration learning optimization. Finally, the problems existing in the current methods and the future research direction are summarized.

     

/

返回文章
返回