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Hidden Markov Models and Gaussian Mixture Models for Bearing Fault Detection Using Fractals

机译:分形的轴承故障检测隐马尔可夫模型和高斯混合模型

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Bearing vibration signals features are extracted using time domain fractal based feature extraction technique. This technique uses Multi-Scale Fractal Dimension (MFD) estimated using Box-Counting Dimension. The extracted features are then used to classify faults using Gaussian Mixture Models (GMM) and hidden Markov Models (HMM). The results obtained show that the proposed feature extraction technique does extract fault specific information. Furthermore, the experimentation shows that HMM outperforms GMM. However, the disadvantage of HMM is that it is computationally expensive to train compared to GMM. It is therefore concluded that the proposed framework gives enormous improvement to the performance of the bearing fault detection and diagnosis, but it is recommended to use the GMM classifier when time is the major issue.
机译:使用基于时域分形的特征提取技术来提取轴承振动信号的特征。此技术使用通过盒计数维估计的多尺度分形维(MFD)。然后,使用高斯混合模型(GMM)和隐马尔可夫模型(HMM)将提取的特征用于分类故障。获得的结果表明,所提出的特征提取技术确实提取了故障特定信息。此外,实验表明HMM优于GMM。但是,HMM的缺点是与GMM相比,训练在计算上昂贵。因此得出的结论是,提出的框架极大地改善了轴承故障检测和诊断的性能,但是当时间是主要问题时,建议使用GMM分类器。

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