基于随机度和隐马尔可夫模型的涂层球轴承在线健康监测

B. Ling, M. Khonsari, A. Mesgarnejad, Ross Hathaway
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引用次数: 5

摘要

本文提出了一种基于振动测量的在线球轴承故障检测与识别方法的可行性分析,该方法可以有效地对涂层球轴承中与接触相关的各种故障阶段进行分类。为了检测滚珠轴承故障阶段,我们利用香农熵和随机协方差矩阵范数理论,提出了新的随机度分析方法。为了对故障阶段进行分类,我们进一步利用高斯混合隐马尔可夫模型(GM-HMM)理论建立了一套随机模型。测试结果表明,我们的算法可以在不使用实际故障数据的情况下预测轴承故障。
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Online coated ball bearing health monitoring using degree of randomness and Hidden Markov Model
We present a feasibility analysis for the development of an online ball bearing fault detection and identification method which can effectively classify various fault stages related to the contact in the coated ball bearings using vibration measurements. To detect ball bearing faulty stages, we have developed new degree of randomness (DoR) analysis methods using Shannon entropy and random covariance matrix norm theory. To classify the fault stages, we have further developed a set of stochastic models using Gaussian Mixture Hidden Markov Model (GM-HMM) theory. Test results have shown that our algorithms can predict bearing failures without using actual failure data.
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