史鸿飞, 邓丰, 钟航, 钟逸涵, 蒋素霞, 李鑫瑜, 陈依林. 基于暂态时-频特征差异的配电网高阻接地故障识别方法[J]. 中国电机工程学报, 2024, 44(16): 6455-6469. DOI: 10.13334/j.0258-8013.pcsee.230159
引用本文: 史鸿飞, 邓丰, 钟航, 钟逸涵, 蒋素霞, 李鑫瑜, 陈依林. 基于暂态时-频特征差异的配电网高阻接地故障识别方法[J]. 中国电机工程学报, 2024, 44(16): 6455-6469. DOI: 10.13334/j.0258-8013.pcsee.230159
SHI Hongfei, DENG Feng, ZHONG Hang, ZHONG Yihan, JIANG Suxia, LI Xinyu, CHEN Yilin. Identification Method of High Impedance Fault in Distribution Network Based on Transient Time-frequency Characteristic Difference[J]. Proceedings of the CSEE, 2024, 44(16): 6455-6469. DOI: 10.13334/j.0258-8013.pcsee.230159
Citation: SHI Hongfei, DENG Feng, ZHONG Hang, ZHONG Yihan, JIANG Suxia, LI Xinyu, CHEN Yilin. Identification Method of High Impedance Fault in Distribution Network Based on Transient Time-frequency Characteristic Difference[J]. Proceedings of the CSEE, 2024, 44(16): 6455-6469. DOI: 10.13334/j.0258-8013.pcsee.230159

基于暂态时-频特征差异的配电网高阻接地故障识别方法

Identification Method of High Impedance Fault in Distribution Network Based on Transient Time-frequency Characteristic Difference

  • 摘要: 高阻接地故障发生时,故障特征微弱,传统故障识别方法存在特征提取困难、阈值选取灵活性较差的技术瓶颈,导致极端故障场景下出现漏判。为此,提出基于暂态时-频特征差异的配电网高阻接地故障识别方法。首先,结合小波包香农熵量化分析高阻接地故障与正常扰动工况暂态信号的时频分布,发现二者存在显著差异:频域上,扰动工况信号的能量集中于低频,而高阻故障信号能量分布相对均匀;时域上,扰动工况信号能量集中于时间窗的前半段,高阻故障信号能量在整个时间窗内均匀分布。在此基础上,以暂态信号时-频域波形作为输入样本,将传统卷积神经网络(convolutional neural networks,CNN)模型中的softmax分类器改进为支持向量机(support vector machine,SVM)分类器,构建适应配电网高阻接地故障识别小样本场景下的CNN-SVM复合分类模型,以卷积层作为特征提取器,以SVM作为分类器,实现高阻接地故障识别。最后,为论证所提方法具有强适应性的内在原因,利用LIME可解释性分析算法可视化展现模型训练过程中的高关注度区域,从模型分类原理层面证明所提方法不受各种故障条件的影响,克服了传统故障识别方法在极端故障场景下出现漏判的缺陷,能准确识别配电线路末端10 kΩ高阻接地故障。

     

    Abstract: When the high impedance fault (HIF) occurs, traditional fault identification methods have technical bottlenecks such as difficulty in feature extraction and poor flexibility in threshold selection, which leads to misjudgment in extreme fault scenarios. Therefore, an HIF identification method in distribution network based on transient time-frequency characteristics difference is proposed. First, the time-frequency distribution of transient signals of HIF and normal disturbance condition is analyzed by using Shannon entropy quantization of wavelet packet. It is found that there are significant differences between them: in frequency domain, the energy of disturbance condition signal is concentrated in low frequency, while the energy distribution of HIF signal is relatively uniform. In time domain, the signal energy of disturbance condition is concentrated in the first half of the time window, and the signal energy of HIF is evenly distributed throughout the time window. On this basis, the time-frequency domain waveform of transient signal is taken as the input sample, and the softmax classifier in the traditional convolutional neural networks (CNN) model is replaced by the support vector machine (SVM) classifier, so as to construct a CNN-SVM composite classification model which is suitable for the small sample scenario of HIF identification of distribution network. The convolution layer is used as the characteristics extractor and SVM is used as the classifier to realize HIF identification. Finally, in order to demonstrate the inherent reason of the strong adaptability of the proposed method, the LIME interpretable analysis algorithm is used to visually show the high attention area in the model training process. The model classification principle proves that the proposed method is not affected by various fault conditions; it overcomes the defect of misjudgment of traditional methods in extreme fault scenarios, and can accurately identify the 10 kΩ HIF at the end of distribution lines.

     

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