Partial discharge fault identification method for GIS equipment based on improved deep learning

Weitao Hu, Jianpeng Li, Xiaofei Liu, Guang Li
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Abstract

Aiming at the problems of large consumption of computational resources and insufficient data feature extraction in the current partial discharge fault identification process of GIS equipment, a partial discharge fault identification method of GIS equipment based on improved deep learning is proposed. Firstly, the audio information of GIS equipment is filtered by a simple power normalised cepstral coefficient (SPNCC). Secondly, the spatial correlation between audio data streams is obtained by a convolutional neural network, the temporal correlation of audio is obtained and the next time slice data stream is predicted by using bi‐directional long short‐term memory (BiLSTM) network, and the attention mechanism is designed to extract deeper data features. Finally, the partial discharge fault identification model of GIS equipment based on improved SPNCC‐CNN‐BiLSTM‐Multi‐att is established, which improves the accuracy of the partial discharge identification method of GIS equipment. Experiments show that when the number of iterations is 100, the accuracy, recall, and F1 value of the proposed GIS equipment partial discharge fault recognition method on the dataset are 0.876, 0.812, and 0.843, respectively.
基于改进型深度学习的 GIS 设备局部放电故障识别方法
针对目前 GIS 设备局部放电故障识别过程中存在的计算资源消耗大、数据特征提取不足等问题,提出了一种基于改进的深度学习的 GIS 设备局部放电故障识别方法。首先,利用简单功率归一化共振频率系数(SPNCC)对 GIS 设备的音频信息进行滤波。其次,利用卷积神经网络获取音频数据流之间的空间相关性,利用双向长短时记忆(BiLSTM)网络获取音频的时间相关性并预测下一个时间片数据流,并设计注意力机制以提取更深层次的数据特征。最后,建立了基于改进型 SPNCC-CNN-BiLSTM-Multi-att 的 GIS 设备局部放电故障识别模型,提高了 GIS 设备局部放电识别方法的准确性。实验表明,当迭代次数为 100 次时,所提出的 GIS 设备局部放电故障识别方法在数据集上的准确率、召回率和 F1 值分别为 0.876、0.812 和 0.843。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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