吉林大学学报(信息科学版) ›› 2020, Vol. 38 ›› Issue (2): 154-159.

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机械故障稀疏特征相似性度量优化研究

徐世福,蒋亚南   

  1. 宁波大学 科学技术学院,浙江 宁波 315212
  • 收稿日期:2019-11-20 出版日期:2020-03-24 发布日期:2020-05-20
  • 作者简介: 徐世福(1985— ),男,山东临沂人,宁波大学助理研究员,主要从事机构创新与自动化应用研究,(Tel)86-15258129858(E-mail)xushifu369@163. com。
  • 基金资助:
     浙江省教育厅基金资助项目(Y201737089)

Research on Similarity Measure of Sparse Feature of Mechanical Fault#br# Based on Quantum Genetic Algorithm Optimization#br#

XU Shifu,JIANG Yanan   

  1. College of Science and Technology,Ningbo University,Ningbo 315212,China
  • Received:2019-11-20 Online:2020-03-24 Published:2020-05-20

摘要: 针对当前机械故障诊断研究忽略了对其参数的选取与优化,导致准确性较差等问题,提出基于量子遗传
算法优化的机械故障稀疏特征相似性度量方法。基于先进行信号非线性混合,再进行去混合。将峭度作为目
标函数,利用量子遗传算法,对盲源分离过程的分离矩阵参数与非线性去混合参数进行优化,实现机械故障盲
源分离。基于故障信号处理,利用量子遗传算法与最小二乘支持向量机(LSSVM: Least Squares Support Vector
Machine)相结合实现机械故障稀疏特征相似性度量。当LSSVM在机械故障诊断时对模型参数选取,利用量子遗
传算法针对 LSSVM 模型参数进行优化。将 LSSVM 参数选取问题转换为优化问题,利用优化后的 LSSVM 分类
模型实现机械故障稀疏特征相似模式分类。实验结果表明,该方法可以实现高效盲源分离,机械故障诊断准确
率高,运行性能良好。

关键词: 量子遗传算法, 机械故障, 特征, 相似性度量

Abstract: Aiming at the problem that the selection and optimization of mechanical fault parameters are neglected
in the current research on mechanical fault diagnosis,which leads to poor accuracy,this paper proposes a sparse
feature similarity measurement method for mechanical fault based on quantum genetic algorithm optimization.
According to the first signal nonlinear mixing,then demixing. With kurtosis as the objective function and
quantum genetic algorithm,the separation matrix parameters and nonlinear de-mixing parameters of blind source
separation are optimized to realize blind source separation of mechanical faults. Based on fault signal processing,
the similarity measurement of mechanical fault sparse features is realized by combining quantum genetic algorithm
with LSSVM ( Least Squares Support Vector Machine). LSSVM selects the model parameters during the
mechanical fault diagnosis,the quantum genetic algorithm is used to optimize the model parameters of LSSVM.
The parameter selection problem of LSSVM is transformed to an optimization problem,and the optimized LSSVM
classification model is used to realize the classification of mechanical fault sparse feature similarity mode. The
experimental results show that the method can achieve high efficiency blind source separation,high accuracy in
mechanical fault diagnosis and good performance.

Key words: quantum genetic algorithm, mechanical failure, feature, similarity measure

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