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Fault diagnosis of rolling element bearing based on S transform and gray level co-occurrence matrix

机译:基于S变换和灰度共生矩阵的滚动轴承故障诊断。

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摘要

Time-frequency analysis is an effective tool to extract machinery health information contained in non-stationary vibration signals. Various time-frequency analysis methods have been proposed and successfully applied to machinery fault diagnosis. However, little research has been done on bearing fault diagnosis using texture features extracted from time-frequency representations (TFRs), although they may contain plenty of sensitive information highly related to fault pattern. Therefore, to make full use of the textural information contained in the TFRs, this paper proposes a novel fault diagnosis method based on S transform, gray level co-occurrence matrix (GLCM) and multi-class support vector machine (Multi-SVM). Firstly, S transform is chosen to generate the TFRs due to its advantages of providing frequency-dependent resolution while keeping a direct relationship with the Fourier spectrum. Secondly, the famous GLCM-based texture features are extracted for capturing fault pattern information. Finally, as a classifier which has good discrimination and generalization abilities, Multi-SVM is used for the classification. Experimental results indicate that the GLCM-based texture features extracted from TFRs can identify bearing fault patterns accurately, and provide higher accuracies than the traditional time-domain and frequency-domain features, wavelet packet node energy or two-direction 2D linear discriminant analysis based features of the same TFRs in most cases.
机译:时频分析是提取非平稳振动信号中包含的机械健康信息的有效工具。提出了多种时频分析方法,并将其成功地应用于机械故障诊断中。然而,尽管从时频表示(TFR)中提取的纹理特征可能包含大量与故障模式高度相关的敏感信息,但对于轴承故障诊断的研究很少。因此,为充分利用TFR中包含的纹理信息,提出了一种基于S变换,灰度共生矩阵(GLCM)和多类支持向量机(Multi-SVM)的故障诊断方法。首先,由于S变换具有提供频率相关分辨率的优点,同时又与傅立叶频谱保持直接关系,因此选择S变换来生成TFR。其次,提取著名的基于GLCM的纹理特征以捕获故障模式信息。最后,作为一种具有良好的判别和归纳能力的分类器,采用了Multi-SVM进行分类。实验结果表明,从TFR中提取的基于GLCM的纹理特征可以准确识别轴承故障模式,并且比传统的时域和频域特征,小波包节点能量或基于二维二维线性判别分析的特征具有更高的准确性。在大多数情况下是相同的TFR。

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