电力科学与技术学报2023,Vol.38Issue(6) :55-66.DOI:10.19781/j.issn.1673-9140.2023.06.006

基于改进VMD去噪和优化ELM方法的变压器早期故障诊断

Transformer early fault diagnosis based on improved VMD denoising and optimized ELM method

刘建锋 刘梦琪 董倩雯 梅智聪 周海
电力科学与技术学报2023,Vol.38Issue(6) :55-66.DOI:10.19781/j.issn.1673-9140.2023.06.006

基于改进VMD去噪和优化ELM方法的变压器早期故障诊断

Transformer early fault diagnosis based on improved VMD denoising and optimized ELM method

刘建锋 1刘梦琪 1董倩雯 1梅智聪 1周海1
扫码查看

作者信息

  • 1. 上海电力大学电气工程学院,上海 200090
  • 折叠

摘要

变压器内部漏磁场是判断变压器绕组早期故障的重要依据.实际运行中噪声会对漏磁场检测产生干扰从而影响对故障状态的判断.为此,首先使用遗传算法以样本熵作为适应度函数来优化变分模态分解(VMD)参数,然后将VMD分解后的相关模态使用小波阈值法去除残余噪声;其次,选择并提取降噪漏磁场信号的特征向量,将特征向量输入到改进极限学习机(ELM)中进行训练和分类,实现变压器绕组的早期故障诊断.仿真及动模实验表明:该方法去噪效果良好,能有效地还原原漏磁场信号,最终能实现变压器绕组早期故障的准确识别.

Abstract

The internal leakage magnetic field of transformer is an important criterion for determining the early fault of transformer winding.In actual operation,noise can interfere with the detection of the leakage magnetic field,thereby affecting the judgment of the fault status.Therefore,firstly,genetic algorithms are used with sample entropy as the fitness function to optimize the parameters of variational mode decomposition(VMD).Subsequently,the relevant modes obtained from VMD are processed using wavelet thresholding to eliminate residual noise.Next,feature vectors are selected and extracted from the denoised leakage magnetic field signals.These feature vectors are then input into an improved extreme learning machine(ELM)for training and classification,achieving early fault diagnosis of transformer windings.The results of simulation and dynamic experiment show that this method exhibits a good denoising performance,effectively restoring the original leakage magnetic field signal.Ultimately,it enables accurate identification of early faults in transformer windings.

关键词

变压器早期故障/变分模态分解/遗传算法/小波阈值法/极限学习机

Key words

transformer early fault/variational mode decomposition(VMD)/genetic algorithm/wavelet threshold method/extreme learning machine

引用本文复制引用

基金项目

国家自然科学基金(61873159)

出版年

2023
电力科学与技术学报
长沙理工大学

电力科学与技术学报

CSTPCDCSCD北大核心
影响因子:0.85
ISSN:1673-9140
被引量2
参考文献量16
段落导航相关论文