Suzhou Electric Appliance Research Institute
期刊号: CN32-1800/TM| ISSN1007-3175

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基于MFCC和CNN的变压器声学特征提取及故障识别

来源:电工电气发布时间:2023-06-30 12:30 浏览次数:240

基于MFCC和CNN的变压器声学特征提取及故障识别

宋诚1,夏翔1,王鑫一2,杨文星2,姚平2
(1 国网湖北省电力有限公司孝感供电公司,湖北 孝感 432000;
2 长江大学 物理与光电工程学院,湖北 荆州 434023)
 
    摘 要:在变压器故障诊断中,为解决使用传统分类器方法存在的泛化能力弱、识别率不高等问题,提出了一种基于梅尔频率倒谱系数 (MFCC) 和卷积神经网络 (CNN) 的变压器声学特征提取及故障识别方法。利用数字麦克风采集变压器在不同工作状态下的声音信号,经预处理后计算其 MFCC 特征作为静态特征,并进一步处理得到 ΔMFCC 特征以及 ΔΔMFCC 特征作为动态特征;引入卷积神经网络模型作为分类器,分别使用静态特征与三者的融合特征作为数据集进行了训练;对两个模型的训练结果进行了分析,并在其他配电室对系统进行了验证实验。实验结果表明,该方法能够有效地根据变压器工作声音识别变压器的正常工作状态、过载状态以及放电故障,且动态特征的引入能够在一定程度上提高模型的识别效果。
    关键词: 变压器;声音信号;故障诊断;梅尔频率倒谱系数;卷积神经网络;动态特征
    中图分类号:TM407     文献标识码:A     文章编号:1007-3175(2023)06-0049-06
 
Transformer Acoustic Feature Extraction and Fault
Identification Based on MFCC and CNN
 
SONG Cheng1, XIA Xiang1, WANG Xin-yi2, YANG Wen-xing2, YAO Ping2
(1 State Grid Hubei Electric Power Co., Ltd. Xiaogan Power Supply Company, Xiaogan 432000, China;
2 School of Physics and Optoelectronic Engineering, Yangtze University, Jingzhou 434023, China)
 
    Abstract: The traditional classifier method has problems of weak generalization ability and low recognition rate when diagnosing transformer faults, so the paper proposes a transformer acoustic feature extraction and fault identification method based on Mel Frequency Cepstral Coefficient(MFCC)and Convolutional Neural Networks(CNN). First, acoustic signals of transformers in different operating states are collected by digital microphones, and after the preprocess their MFCC features are calculated as static features and then further processed to obtain ΔMFCC features as well as ΔΔMFCC features as dynamic features. Second, the convolutional neural network model is introduced as the classifier, and static features and the fused features of the three are used respectively as the data set for training. Third, training results of the two models are analyzed, and the system is validated with experiments in other distribution rooms. The experimental results show that this method can effectively identify the normal working state, the overload state and the discharge fault of transformers based on their working sound. Besides, the introduction of dynamic features can increase the identification of the model to a certain extent.
    Key words: transformer; acoustic signals; fault diagnosis; Mel frequency cepstral coefficient; convolutional neural network; dynamic feature
 
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