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A Fault Diagnosis Approach for Rolling Bearing Integrated SGMD IMSDE and Multiclass Relevance Vector Machine

机译:滚动轴承滚动轴承的故障诊断方法IMSDE和多标准相关矢量机

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摘要

The vibration signal induced by bearing local fault has strong nonstationary and nonlinear property, which indicates that the conventional methods are difficult to recognize bearing fault patterns effectively. Hence, to obtain an efficient diagnosis result, the paper proposes an intelligent fault diagnosis approach for rolling bearing integrated symplectic geometry mode decomposition (SGMD), improved multiscale symbolic dynamic entropy (IMSDE) and multiclass relevance vector machine (MRVM). Firstly, SGMD is employed to decompose the original bearing vibration signal into several symplectic geometry components (SGC), which is aimed at reconstructing the original bearing vibration signal and achieving the purpose of noise reduction. Secondly, the bat algorithm (BA)-based optimized IMSDE is presented to evaluate the complexity of reconstruction signal and extract bearing fault features, which can solve the problems of missing of partial fault information existing in the original multiscale symbolic dynamic entropy (MSDE). Finally, IMSDE-based bearing fault features are fed to MRVM for achieving the identification of bearing fault categories. The validity of the proposed method is verified by the experimental and contrastive analysis. The results show that our approach can precisely identify different fault patterns of rolling bearings. Moreover, our approach can achieve higher recognition accuracy than several existing methods involved in this paper. This study provides a new research idea for improvement of bearing fault identification.
机译:通过轴承局部故障引起的振动信号具有强烈的非间断和非线性性能,这表明常规方法难以有效地识别轴承故障模式。因此,为了获得高效的诊断结果,该文件提出了一种智能故障诊断方法,用于滚动轴承综合辛互补几何模式分解(SGMD),改进的多尺度符号动态熵(IMSDE)和多字母相关矢量机(MRVM)。首先,采用SGMD将原始轴承振动信号分解为几个辛的几何分量(SGC),其旨在重建原始轴承振动信号并实现降噪的目的。其次,提出了基于优化的IMSDE的BAT算法(BA)以评估重建信号和提取轴承故障特征的复杂性,这可以解决原始多尺度符号动态熵(MSDE)中存在的部分故障信息缺失的问题。最后,基于IMSDE的轴承故障特征被送到MRVM,以实现轴承故障类别的识别。通过实验和对比分析验证了所提出的方法的有效性。结果表明,我们的方法可以精确地识别滚动轴承的不同故障模式。此外,我们的方法可以实现比本文所涉及的几种现有方法更高的识别准确性。本研究为提高轴承故障识别提供了新的研究理念。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者单位
  • 年(卷),期 2020(20),15
  • 年度 2020
  • 页码 4352
  • 总页数 23
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:辛几何模式分解;改进的多尺度符号动态熵;多款相关矢量机;滚动轴承;故障诊断;
  • 入库时间 2022-08-21 12:17:30

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