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Extracting Acoustical Impulse Signal of Faulty Bearing Using Blind Deconvolution Method

机译:盲反褶积法提取故障轴承的声脉冲信号

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Machine fault diagnosis, based on acoustic signals, is frequently made difficult by noisy environments at a production site. In this paper, an improved timedomain blind deconvolution algorithm, based on envelope spectrum and normalized kurtosis, was proposed to recover acoustic signals of defective bearings. A newly defined distance measure based on envelope spectrum was employed to improve the classification accuracy of independent components in the cluster analysis process, and a kurtosis-based criterion was applied to select optimum components. With the help of these enhancements, reliable estimated results can be obtained with low computational complexity, even when the timedelay or the reverberation time is sufficiently large. Both numerical and experimental studies were carried out. The results show that this algorithm can be efficiently applied to rolling element bearing defect detection in real-world situations, and is very promising in acoustic-based machine diagnosis.
机译:生产现场的嘈杂环境经常使基于声音信号的机器故障诊断变得困难。本文提出了一种基于包络谱和归一化峰度的改进时域盲去卷积算法,以恢复轴承故障的声信号。使用新定义的基于包络谱的距离度量来提高聚类分析过程中独立成分的分类精度,并应用基于峰度的标准来选择最佳成分。借助这些增强功能,即使时间延迟或混响时间足够长,也可以以较低的计算复杂度获得可靠的估计结果。进行了数值和实验研究。结果表明,该算法可以有效地应用于现实世界中滚动轴承的缺陷检测,在基于声学的机器诊断中非常有前途。

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