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Bispectrum Texture Feature Manifold for Feature Extraction in Rolling Bear Fault Diagnosis

机译:BISPectrum纹理功能歧管用于滚动熊故障诊断中的特征提取

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摘要

Effectively classify the fault types and the degradation degree of a rolling bearing is an important basis for accurate malfunction detection. A novel feature extract method - bispectrum image texture features manifold (BTM) of the rolling bearing vibration signal is proposed in this paper. The BTM method is realized by three main steps: bispectrum image analysis, texture feature construction and manifold feature dimensionality reduction. In this method, bispectrum analysis is employed to convert the mass vibration signals into bispectrum contour map, the typical texture features were extracted from the contour map by gray level co-occurrence matrix (GLCM), then the manifold dimensionality reduction method liner local tangent space alignment (LLTSA) is used to remove redundant information and reduce the dimension from the extracted texture features and obtain more meaningful low-dimensional information. Furthermore, the low-dimensional texture features were identified by support vector machine (SVM) which was optimized by genetic optimization algorithm (GA). The validity of BTM is confirmed by rolling bear experiments, the result show that the proposed feature extraction method can accurately distinguish different fault types and have a good performance to classify the degradation degree of inner race fault, outer race fault and rolling ball fault.
机译:有效地分类故障类型,滚动轴承的劣化程度是准确故障检测的重要依据。一种新的特征提取方法 - 本文提出了滚动轴承振动信号的BISPectrum图像纹理特征歧管(BTM)。 BTM方法由三个主要步骤实现:BISPectrum图像分析,纹理特征结构和歧管特征维数。在该方法中,采用BISPectrum分析将质量振动信号转换为BISPectrum轮廓图,典型的纹理特征通过灰度级共发生矩阵(GLCM)从轮廓图中提取,然后歧管维数减少方法衬里局部切线空间对齐(LLTSA)用于去除冗余信息并从提取的纹理特征中减少维度,并获得更有意义的低维信息。此外,通过基因优化算法(GA)优化的支持向量机(SVM)识别了低维纹理特征。 BTM的有效性通过滚动承载实验确认,结果表明,所提出的特征提取方法可以准确地区分不同的故障类型并具有良好的性能,以分类内部竞争故障,外部竞争故障和滚珠故障的劣化程度。

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  • 来源
    《Mathematical Problems in Engineering 》 |2019年第5期| 3805729.1-3805729.11| 共11页
  • 作者

    Wang Fei; Fang Liqing;

  • 作者单位

    Army Engn Univ Dept Artillery Engn Shijiazhuang Campus Heping West Rd 97 Shijiazhuang 050003 Hebei Peoples R China;

    Army Engn Univ Dept Artillery Engn Shijiazhuang Campus Heping West Rd 97 Shijiazhuang 050003 Hebei Peoples R China;

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