面向复杂噪声环境的变压器声纹特征提取研究

Shen Xiang, Xu Fei, Xu Long, Cai Jidong
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引用次数: 0

摘要

基于声学特征的变压器故障诊断是一种新的非接触、无损监测方法。其优点是声信号检测不受电场和磁场的干扰,监测过程不影响变压器的正常运行。针对复杂噪声环境下变压器声纹特征提取的困难,提出了一种基于变模式提取(VME)的变压器声纹特征提取方法。该方法根据变压器辐射噪声的产生机理设定本征模态函数(IMF)的中心频率,从而消除了随机分布和其他频率搜索方法对分解结果的不确定性;然后,以IMF频域能量聚集和残差信号中心频率能量最小为优化目标,采用循环迭代分解方法识别提取变压器声纹特征,降低环境噪声和其他设备噪声的影响。仿真信号和现场信号的分析结果表明,该方法可以有效降低环境噪声的影响,提取出更加清晰准确的变压器声纹特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Transformer Voiceprint Feature Extraction Oriented to Complex Noise Environment
Transformer fault diagnosis based on acoustic characteristics is a new non-contact and non-destructive monitoring method. It has the advantages that the acoustic signal detection is not disturbed by electric and magnetic fields, and the monitoring process does not affect the normal operation of the transformer. Aiming at the difficulty of extracting transformer voiceprint features in complex noise environment, a transformer voiceprint feature extraction method based on Variable Mode Extraction (VME) is proposed. In this method, the center frequency of the Intrinsic Mode Function(IMF) is set according to the generation mechanism of transformer radiated noise, thus the uncertainty of decomposition results caused by random distribution and other frequency search methods is eliminated; Then, taking the frequency-domain energy aggregation of IMF and the minimum center frequency energy of residual signal as the optimization objectives, the cyclic iterative decomposition is used to identify and extract the transformer voiceprint features, so as to reduce the impact of environmental noise and other equipment noise. The analysis results of simulation signals and field signals show that this method can effectively reduce the impact of environmental noise and extract more clear and accurate transformer voiceprint features.
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