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A Fault Diagnosis Method of Rolling Bearings Using Empirical Mode Decomposition and Hidden Markov Model

机译:基于经验模态分解和隐马尔可夫模型的滚动轴承故障诊断方法

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This paper describes a new approach to detect localized rolling bearing defects based on Empirical Mode Decomposition (EMD) and Hidden Markov Model (HMM). In view of the non-stationary characteristics of bearing fault vibration signals, using EMD method, the original non-stationary vibration signal can be decomposed into a finite number of stationary signals. The stationary signal adapts itself better to the conditions of fault characteristic parameter based on power spectrum analysis and also show bearing fault characteristics clearly. By setting envelope-singles fault-characteristic parameters of each main stationary signal to train HMM, this study also presents a method of pattern recognition for bearing fault diagnosis using HMM. Experimental results show that (1) the approach has successful bearing fault detection rates as high as 98% for every single fau (2) although fault styles sometimes are confusing, the approach proves better at recognizing combinations of these faults.
机译:本文介绍了一种基于经验模态分解(EMD)和隐马尔可夫模型(HMM)的检测局部滚动轴承缺陷的新方法。鉴于轴承故障振动信号的非平稳特性,使用EMD方法,可以将原始的非平稳振动信号分解为有限数量的平稳信号。基于功率谱分析,平稳信号可以更好地适应故障特征参数的条件,并且可以清晰地显示轴承的故障特征。通过设置每个主要静止信号的包络单个故障特征参数来训练HMM,本研究还提出了一种模式识别方法,用于使用HMM诊断轴承故障。实验结果表明:(1)该方法对每一个故障的轴承故障成功检出率高达98%; (2)尽管故障类型有时会令人困惑,但该方法在识别这些故障的组合方面被证明是更好的。

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