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Fault Diagnosis and Trend Forecast of Transformer Based on Acoustic Recognition

机译:基于声音识别的变压器故障诊断与趋势预测

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After discussed the difficulty of monitoring transformer fault online, this paper proposes a fault diagnosis scheme based on acoustic wave analysis. The time and frequency domain signal processing is utilized to analyze acoustic signal so that equipments' running status can be identified and the trend of development be predicted. Firstly, a new scheme of transformer fault diagnosis and trend forecast is designed. Transformer acoustic signal acquisition, noise elimination method in diagnosis system is represented. Secondly, the new algorithm of the signal strangeness detection and trend-based forecasting based on wavelet analysis is put forward. Lastly, the wavelet packet algorithm is utilized to analyze acoustic signal and extract frequency & time-domain features which relative with its development trend, and then the predicting consequence can be use to assess the fault type. The actual measurement test demonstrated that the serial wavelet packet transformation ( WPT) algorithms have high availability and feasibility to diagnosis and forecast the transformer faults accuracy.
机译:在讨论了在线监测变压器故障的难点之后,提出了一种基于声波分析的故障诊断方案。利用时域和频域信号处理来分析声信号,从而可以识别设备的运行状态并预测其发展趋势。首先,设计了一种变压器故障诊断和趋势预测的新方案。提出了诊断系统中变压器声信号的采集,消除方法。其次,提出了基于小波分析的信号奇异检测和趋势预测新算法。最后,利用小波包算法对声信号进行分析,提取与其发展趋势相关的频域和时域特征,然后将预测结果用于评估故障类型。实际测试表明,串行小波包变换(WPT)算法具有较高的实用性,对诊断和预测变压器故障的准确性具有可行性。

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