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Rolling bearing fault diagnosis based empirical wavelet transform using vibration signal

机译:基于振动信号的滚动轴承故障诊断基于实证小波变换

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Owing to the relevance and severity of damages caused by rolling bearing faults, the development and application of a robust fault detection methods that offer a high reliable diagnosis in terms of processing and performance are still demanding tasks. In this paper, an application of the empirical wavelet transform (EWT) method is proposed for the vibration signal analysis and fault diagnosis of rolling bearing. This method first detects the Fourier supports of the analyzed signal, build the corresponding wavelet accordingly to those supports, and then filter the signal with the obtained filter bank. The effectiveness of the method is validated using practical vibration signals. The results show that the EWT provides a good performance in the detection of outer and inner race faults.
机译:由于滚动轴承故障引起的损坏的相关性和严重性,在加工和性能方面提供了高可靠诊断的强大故障检测方法的开发和应用仍然需要苛刻的任务。本文提出了经验小波变换(EWT)方法的应用,用于振动信号分析和滚动轴承故障诊断。该方法首先检测分析信号的傅立叶支持,相应地构建相应的小波,然后用所获得的滤波器滤波。使用实用振动信号验证该方法的有效性。结果表明,EWT在检测外部和内部竞争故障方面提供了良好的性能。

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