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An Optimized Kurtogram Method for Early Fault Detection of Rolling Element Bearings Using Acoustic Emission

机译:声发射法在滚动轴承早期故障检测中的优化K线图方法

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摘要

Bearings are the basic components of rotating machinery and their integrity is the key to ensuring the operational stability and work reliability of machines. Compared with traditional vibration analysis, acoustic emission (AE) has some unique advantages, such as higher sensitivity to low-speed rotating mechanical defect detection and more potential for early fault detection. However, the AE signals collected from bearing with incipient fault always include heavy noise levels, reducing the capability of early defect detection. Therefore, this paper proposes an optimized Kurtogram method for incipient defect detection of bearings, which combines autocorrelation function, Shannon entropy and Kurtogram to identify early localized defects in AE signals. The major innovations are as follows: (i) The autocorrelation function (ACF) is adopted to process the envelope of all wavelet packet node signals to highlight the periodic pattern in the AE signal, (ii) kurtosis-to-Shannon entropy ratio (KSR) is introduced to improve the capability to detect bearing fault characteristics in low signal-to-noise ratio (SNR) signals. Simulated AE signals and real bearing fault signals were used to evaluate the effectiveness of the proposed method. The results show that the proposed method can detect early defects of bearings and is superior to other Kurtogram-based approaches.
机译:轴承是旋转机械的基本部件,其完整性是确保机械运行稳定性和工作可靠性的关键。与传统的振动分析相比,声发射(AE)具有一些独特的优势,例如,对低速旋转机械缺陷检测的灵敏度更高,并且更有可能进行早期故障检测。但是,从具有早期故障的轴承收集的AE信号始终包含较大的噪声水平,从而降低了早期缺陷检测的能力。因此,本文提出了一种用于轴承初始缺陷检测的优化Kurtogram方法,该方法结合了自相关函数,Shannon熵和Kurtogram以识别AE信号中的早期局部缺陷。主要创新如下:(i)采用自相关函数(ACF)处理所有小波包节点信号的包络,以突出显示AE信号中的周期性模式;(ii)峰度与香农熵之比(KSR)引入)是为了提高在低信噪比(SNR)信号中检测轴承故障特征的能力。仿真的声发射信号和实际的轴承故障信号被用来评估该方法的有效性。结果表明,所提出的方法可以检测轴承的早期缺陷,并且优于其他基于Kurtogram的方法。

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