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Multi-fault diagnosis of rolling bearing elements using wavelet analysis and hidden Markov model based fault recognition

机译:基于小波分析和隐马尔可夫模型的滚动轴承多故障诊断

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摘要

Due to the importance of rolling bearings as the most widely used machine elements, it is necessary to establish a suitable condition monitoring procedure to prevent malfunctions and breakages during operation. This paper presents a new method for detecting localized bearing defects based on wavelet transform. Bearing race faults have been detected by using discrete wavelet transform (DWT). Vibration signals from ball bearings having single and multiple point defects on inner race, outer race, ball fault and combination of these faults have been considered for analysis. Wavelet transform provides a variable resolution time-frequency distribution from which periodic structural ringing due to repetitive force impulses, generated upon the passing of each rolling element over the defect, are detected. It is found that the impulses appear periodically with a time period corresponding to characteristic defect frequencies. In this study, the diagnoses of ball bearing race faults have been investigated using wavelet transform. These results are compared with feature extraction data and results from spectrum analysis. It has been clearly shown that DWT can be used as an effective tool for detecting single and multiple faults in ball bearings. This paper also presents a new method of pattern recognition for bearing fault monitoring using hidden Markov Models (HMMs). Experimental results show that successful bearing fault detection rates as high as 99 percent can be achieved by this approach.
机译:由于滚动轴承是使用最广泛的机械元件的重要性,因此有必要建立一种适当的状态监视程序,以防止运行过程中出现故障和破损。本文提出了一种基于小波变换的局部轴承缺陷检测新方法。通过使用离散小波变换(DWT)已检测到轴承座圈故障。为了分析,考虑了来自在内部座圈,外座圈,球故障以及这些故障的组合上具有单点和多点缺陷的球轴承的振动信号。小波变换提供了可变分辨率的时频分布,从中可以检测到由于每个滚动元件经过缺陷而产生的重复力脉冲引起的周期性结构振铃。发现脉冲以对应于特征缺陷频率的时间周期周期性地出现。在这项研究中,已使用小波变换研究了滚珠轴承滚珠故障的诊断方法。将这些结果与特征提取数据和频谱分析的结果进行比较。已经清楚地表明,DWT可以用作检测球轴承中单个或多个故障的有效工具。本文还提出了一种使用隐马尔可夫模型(HMM)进行轴承故障监测的模式识别新方法。实验结果表明,通过这种方法可以成功地将轴承故障检测率提高到99%。

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