|
基于二维灰度图与CNN-GRU的单相接地故障选线方法
|
Abstract:
针对配电网单相接地故障特征提取困难和现有检测方法精度低的问题,本文提出一种基于原始数据生成的二维灰度图和CNN-GRU的故障选线方法。首先,获取原始的电流波形进行截取并生成二维灰度图,以有效地保留明显而全面的故障特征原始信息;然后,CNN自适应提取时频灰度图像的局部特征,GRU从CNN层学习到的局部特征中学习上下文依赖关系。最后,通过SoftMax层实现故障选线。仿真结果表明,本文所提方法的选线准确率为99.41%,与现有方法相比准确率更高。
Aiming at the difficulty of single-phase grounding fault feature extraction in distribution network and the low accuracy of existing detection methods, this paper proposes a fault line selection method based on two-dimensional grayscale generated by original data and CNN-GRU. Firstly, the original current waveform is obtained and intercepted to generate a two-dimensional grayscale image, so as to effectively retain the obvious and comprehensive original information of fault characteristics. Then, CNN adaptively extracts the local features of the time-frequency grayscale image, and GRU learns the context dependency from the local features learned by the CNN layer. Finally, the fault line selection is realized through the SoftMax layer. The simulation results show that the accuracy of the proposed method is 99.41%, which is higher than that of the existing methods.
[1] | Hao, B. (2022) Single-Phase Grounding Fault Line Selection Method Based on Zero-Sequence Current Increment. Energy Reports, 8, 305-312. https://doi.org/10.1016/j.egyr.2021.11.196 |
[2] | Guo, M., Chen, D.Y. and Gao, J. (2021) Fault Line Detection Using Waveform Fusion and One-Dimensional Convolutional Neural Network in Resonant Grounding Distribution Systems. CSEE Journal of Power and Energy Systems, 7, 250-260. |
[3] | Yuan, J. and Jiao, Z. (2022) Faulty Feeder Detection Based on Image Recognition of Current Waveform Superposition in Distribution Networks. Applied Soft Computing, 130, Article ID: 109663. https://doi.org/10.1016/j.asoc.2022.109663 |
[4] | Gao, J., Guo, M. and Chen, D.Y. (2021) Fault Line Detection Using Waveform Fusion and One-dimensional Convolutional Neural Network in Resonant Grounding Distribution Systems. CSEE Journal of Power and Energy Systems, 7, 11. |
[5] | Wang, X., Zhou, P., Peng, X., et al. (2022) Fault Location of Transmission Line Based on CNN-LSTM Double-Ended Combined Model. Energy Reports, 8, 781-791. https://doi.org/10.1016/j.egyr.2022.02.275 |
[6] | Ullah, A., Muhammad, K., Ding, W., et al. (2021) Efficient Activity Recognition using Lightweight CNN and DS-GRU Network for Surveillance Applications. Applied Soft Computing, 103, Article ID: 107102. https://doi.org/10.1016/j.asoc.2021.107102 |
[7] | Principi, E., Rossetti, D., Squartini, S., et al. (2019) Unsupervised Electric Motor Fault Detection by Using Deep Autoencoders. IEEE/CAA Journal of Automatica Sinica, 6, 441-451. https://doi.org/10.1109/JAS.2019.1911393 |
[8] | Chung, J., Gulcehre, C., Cho, K.H., et al. (2014) Empirical Evaluation of Gated Recurrent Neural Networks on Sequence Modeling. arXiv: 1412.3555v1. |
[9] | Taheri, B., Salehimehr, S. and Sedighizadeh, M. (2021) A Fault-Location Algorithm for Parallel Line Based on the Long Short-Term Memory Model Using the Distributed Parameter Line Model. International Transactions on Electrical Energy Systems, 31, e13032. https://doi.org/10.1002/2050-7038.13032 |
[10] | Gupta, D., Lenka, P., Bedi, H., et al. (2017) Auto Analysis of Customer Feedback using CNN and GRU Network. arXiv: 1710.04600. |