基于格拉曼角差场和卷积神经网络的变压器绕组故障识别方法

IF 0.6 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Recent Advances in Electrical & Electronic Engineering Pub Date : 2023-10-18 DOI:10.2174/0123520965272942231009050206
Shihao Yang, Zhenhua Li, Xinqiang Yang, Hairong Wu
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引用次数: 0

摘要

背景:随着变压器绕组故障发生的频率越来越高,用于检测绕组状态的频率响应分析越来越受到人们的关注。目前,在该领域还缺乏可靠、智能的变压器绕组状态检测技术。目的:研究一种简便、有效地应用于日常生活的高精度变压器故障诊断方法。方法:通过改变检测方法,改变了传统检测方法在识别头尾对称点同一故障时无法区分检测数据高度重叠的问题,改变了相位过于相似的问题。为了解决变压器频响曲线故障样本稀缺、一维数据无法用局部深度学习方法读取的问题,首先将频响曲线一维数据转化为特征指标,然后通过移动窗计算方法和Gramian角差分场变换转化为三维图像。采用卷积神经网络实现故障分类。结果:最终模型的切片分类准确率达到100%。结论:实例表明,该方法对不同类型的故障具有较好的识别能力。传统方法只利用频响曲线的幅值,而该方法在图像中同时显示幅相两个特征。与传统方法相比,增加了更多的特征和样本,进一步提高了方法的准确性。诊断结果的准确率达到100%,表明了该方法的可行性。
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Fault Identification Method of Transformer Winding based on Gramian Angular Difference Field and Convolutional Neural Network
Background: As the frequency of transformer winding faults becomes higher and higher, the frequency response analysis used to detect the winding status has attracted more and more attention. At present, there is still a lack of reliable and intelligent technologies for detecting the state of transformer windings in this field. Objective: This paper focuses on studying a high-precision method for transformer fault diagnosis, which can be easily and effectively applied to daily life. Methods: By changing the detection method, the traditional detection method can not distinguish the problem that the detection data are highly overlapping when identifying the same fault of the head and tail symmetric points, and the problem that the phase is too similar is changed. In order to solve the problem that the fault samples of transformer frequency response curve are scarce and the one-dimensional data cannot be read by partial deep learning method, the one-dimensional data of frequency response curve is first converted into characteristic index and then into a three-dimensional image by moving window calculation method and Gramian Angular difference field transformation. The fault classification is realized by a convolutional neural network. Results: The accuracy of the final model for slice classification reached 100%. Conclusion: Illustrative examples show that the method is distinguishable from different fault types. The traditional method only uses the amplitude of the frequency response curve, but this method displays the two features of the amplitude-phase together in the image. Compared with the traditional method, more features and samples are added to further improve the accuracy of the method. The accuracy of diagnosis results reached 100%, which showed the feasibility of the method.
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来源期刊
Recent Advances in Electrical & Electronic Engineering
Recent Advances in Electrical & Electronic Engineering ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.70
自引率
16.70%
发文量
101
期刊介绍: Recent Advances in Electrical & Electronic Engineering publishes full-length/mini reviews and research articles, guest edited thematic issues on electrical and electronic engineering and applications. The journal also covers research in fast emerging applications of electrical power supply, electrical systems, power transmission, electromagnetism, motor control process and technologies involved and related to electrical and electronic engineering. The journal is essential reading for all researchers in electrical and electronic engineering science.
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