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Fault detection in induction machines by using power spectral density on the wavelet decompositions

机译:利用功率谱密度对小波分解进行感应电机故障检测

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摘要

Motor Current Signature Analysis has been successfully used in induction machines for fault diagnosis. The method however does not always achieve good results when the load torque is not constant. This paper proposes a new approach to motor fault detection, by analyzing the spectrogram and further combination of Wavelet and Power Spectral Density techniques. Theoretical development and experimental results are presented to support the research.
机译:电动机电流特征分析已成功地用于感应电机的故障诊断中。但是,当负载转矩不恒定时,该方法并不总是能获得良好的结果。通过分析频谱图并进一步结合小波和功率谱密度技术,本文提出了一种新的电动机故障检测方法。提出了理论发展和实验结果以支持该研究。

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