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Fault diagnosis of bearing running status using mutual information

机译:基于互信息的轴承运行状态故障诊断

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Fault diagnosis and the prediction of remaining useful life play a key role in the Prognostics and Health management (PHM). One of the most important challenges in modern PHM is how to diagnose the fault of mechanical equipment accurately. Aiming to improve the fault diagnosis precision of the rotating machinery, a novel method of fault diagnosis combines mutual information models and second generation wavelet packet decomposition is presented in this paper. The traditional approaches to fault diagnosis always focus on the signals of a certain time. This method is different from traditional models because fault can be diagnosed more accurately by comparing the conditions of two different periods. Firstly, vibration signal of different times is extracted from the working bearings. Secondly, each frequency band's energy is calculated through the second generation decomposition and the energy of joint probability distribution of two different periods of time as well. Finally, the mutual information of two different periods of time is gained by using their joint probability distribution. A life test of a bearing is used to validate the proposed methodology and the results demonstrate that the proposed methodology is an effective tool to improve the accuracy of fault diagnosis of bearings running status.
机译:故障诊断和剩余使用寿命的预测在预测和健康管理(PHM)中起着关键作用。现代PHM面临的最重要挑战之一是如何准确诊断机械设备的故障。为了提高旋转机械的故障诊断精度,提出了一种将互信息模型与第二代小波包分解相结合的故障诊断方法。传统的故障诊断方法始终将特定时间的信号作为重点。此方法与传统模型不同,因为可以通过比较两个不同时期的条件来更准确地诊断故障。首先,从工作轴承中提取不同时间的振动信号。其次,通过第二代分解以及两个不同时间段的联合概率分布的能量来计算每个频带的能量。最后,利用两个联合时段的联合概率分布获得两个时段的互信息。通过轴承寿命试验验证了所提方法的有效性,结果表明所提方法是提高轴承运行状态故障诊断准确性的有效工具。

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