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A Hybrid Fault Diagnosis Approach for Rotating Machinery with the Fusion of Entropy-Based Feature Extraction and SVM Optimized by a Chaos Quantum Sine Cosine Algorithm

机译:一种旋转机械的混合故障诊断方法通过混沌量子正弦余弦算法优化了基于熵的特征提取和SVM的融合

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摘要

As crucial equipment during industrial manufacture, the health status of rotating machinery affects the production efficiency and device safety. Hence, it is of great significance to diagnose rotating machinery faults, which can contribute to guarantee the running stability and plan for maintenance, thus promoting production efficiency and economic benefits. For this purpose, a hybrid fault diagnosis model with entropy-based feature extraction and SVM optimized by a chaos quantum sine cosine algorithm (CQSCA) is developed in this research. Firstly, the state-of-the-art variational mode decomposition (VMD) is utilized to decompose the vibration signals into sets of components, during which process the preset parameter K is confirmed with the central frequency observation method. Subsequently, the permutation entropy values of all components are computed to constitute the feature vectors corresponding to different kind of signals. Later, the newly developed sine cosine algorithm (SCA) is employed and improved with chaotic initialization by a Duffing system and quantum technique to optimize the support vector machine (SVM) model, with which the fault pattern is recognized. Additionally, the availability of the optimized SVM with CQSCA was revealed in pattern recognition experiments. Finally, the proposed hybrid fault diagnosis approach was employed for engineering applications as well as contrastive analysis. The comparative results show that the proposed method achieved the best training accuracy 99.5% and best testing accuracy 97.89%. Furthermore, it can be concluded from the boxplots of different diagnosis methods that the stability and precision of the proposed method is superior to those of others.
机译:作为工业制造过程中的关键设备,旋转机械的健康状况影响了生产效率和设备安全性。因此,诊断旋转机械故障具有重要意义,这有助于保证运行稳定性和维护计划,从而促进生产效率和经济效益。为此,在本研究中开发了一种基于熵的特征提取和SVM的混合故障诊断模型,并在该研究中开发了Chaos量子正弦余弦算法(CQSCA)。首先,利用最先进的变分模式分解(VMD)将振动信号分解成组件组,在此期间使用中央频率观察方法确认预设参数k。随后,计算所有组件的置换熵值以构成对应于不同类型的信号的特征向量。后来,通过Duffing系统和量子技术采用新开发的正弦余弦算法(SCA)并改善了混沌初始化,以优化支持向量机(SVM)模型,其中识别出故障模式。另外,在模式识别实验中揭示了具有CQSCA的优化SVM的可用性。最后,采用了拟议的混合故障诊断方法来工程应用以及对比分析。比较结果表明,该方法达到了最佳训练精度99.5%,最佳测试精度为97.89%。此外,可以从不同的诊断方法的盒子中得出结论,所以所提出的方法的稳定性和精度优于其他方法。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2018(20),9
  • 年度 2018
  • 页码 626
  • 总页数 19
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:故障诊断;变分模式分解;排列熵;Duffing系统;混沌量子正弦余弦算法;
  • 入库时间 2022-08-21 12:20:29

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