Distribution Transformer Winding Fault Detection Based on Hybrid Wavelet-CNN

IF 1.9 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Orkhan Afandi, Atabak Najafi
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引用次数: 0

Abstract

This paper presents a new decision logic approach for protecting and distinguishing internal faults in power transformers. This method uses the feature extraction technique based on wavelet transform and artificial neural network. The proposed method is designed based on the difference between the energies of the wavelet transform coefficients produced by short circuit fault currents in a certain frequency band. First, the operation of the transformer under phase-to-ground and phase-to-phase short circuit faults was examined. Then, the resulting secondary winding current was transferred to the discrete wavelet transform. This method is used to analyze components of the signal at different scales. Based on the results, it has been shown that due to the good temporal and frequency characteristics of the wavelet transform, the features extracted by the wavelet transform have more distinct features than those extracted by the fast Fourier transform. As a result, the fault detection process was improved by integrating the obtained wavelet transform values into artificial intelligence models. This step allows the analysis process to be automated and faults to be identified more quickly and accurately. The proposed method is more efficient and faster and achieves a higher success rate than the traditional method.

Abstract Image

本文介绍了一种用于保护和区分电力变压器内部故障的新决策逻辑方法。该方法使用基于小波变换和人工神经网络的特征提取技术。所提出的方法是根据短路故障电流在一定频段内产生的小波变换系数的能量差来设计的。首先,研究了变压器在相-地和相-相短路故障下的运行情况。然后,将产生的二次绕组电流转入离散小波变换。这种方法用于分析不同尺度的信号分量。结果表明,由于小波变换具有良好的时间和频率特性,小波变换提取的特征比快速傅里叶变换提取的特征更加明显。因此,通过将获得的小波变换值整合到人工智能模型中,故障检测过程得到了改进。这一步骤使分析过程自动化,并能更快更准确地识别故障。与传统方法相比,建议的方法更高效、更快速,成功率更高。
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来源期刊
International Transactions on Electrical Energy Systems
International Transactions on Electrical Energy Systems ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
6.70
自引率
8.70%
发文量
342
期刊介绍: International Transactions on Electrical Energy Systems publishes original research results on key advances in the generation, transmission, and distribution of electrical energy systems. Of particular interest are submissions concerning the modeling, analysis, optimization and control of advanced electric power systems. Manuscripts on topics of economics, finance, policies, insulation materials, low-voltage power electronics, plasmas, and magnetics will generally not be considered for review.
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