A GIS Partial Discharge Pattern Recognition Method Based on Improved CBAM-ResNet

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Electrical and Computer Engineering Pub Date : 2023-12-12 DOI:10.1155/2023/9948438
Di Hu, Zhong Chen, Wei Yang, Taiyun Zhu, Y. Ke, Kaiyang Yin
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Abstract

Different types of partial discharge (PD) cause different damages to gas-insulated substation (GIS), so it is very important to correctly identify the type of PD for evaluating the GIS insulation condition. The traditional PD pattern recognition algorithm has the limitations of low recognition accuracy and slow recognition speed in engineering applications. To effectively diagnose the GIS PD type and safeguard the safe and reliable operation of the distribution network, a GIS PD method based on improved CBAM-ResNet was proposed in this paper. And the improved CBAM-ResNet takes advantage of the residual neural network and attention mechanism. In particular, the channel attention module and the spatial attention module are connected in parallel in the improved CBAM. The experimental results showed that the GIS PD pattern recognition method proposed herein has a recognition rate of 93.58%, 95.00%, 93.55%, and 93.88% against the four PD types. Compared with the traditional PD pattern recognition algorithm, the algorithm has the advantages of a lightweight model and more accurate recognition results, which carry better engineering application values.
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基于改进型 CBAM-ResNet 的地理信息系统局部放电模式识别方法
不同类型的局部放电(PD)会对气体绝缘变电站(GIS)造成不同程度的损坏,因此正确识别 PD 类型对于评估 GIS 绝缘状况非常重要。传统的 PD 模式识别算法在工程应用中存在识别精度低、识别速度慢等局限性。为有效诊断 GIS PD 类型,保障配电网安全可靠运行,本文提出了一种基于改进型 CBAM-ResNet 的 GIS PD 方法。改进的 CBAM-ResNet 利用了残差神经网络和注意机制。其中,改进的 CBAM 中并行连接了通道注意模块和空间注意模块。实验结果表明,本文提出的 GIS PD 模式识别方法对四种 PD 类型的识别率分别为 93.58%、95.00%、93.55% 和 93.88%。与传统的PD模式识别算法相比,该算法具有模型轻便、识别结果更准确等优点,具有更好的工程应用价值。
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来源期刊
Journal of Electrical and Computer Engineering
Journal of Electrical and Computer Engineering COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.20
自引率
0.00%
发文量
152
审稿时长
19 weeks
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