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基于EMD样本熵-LLTSA的故障特征提取方法

向丹 葛爽

向丹, 葛爽. 基于EMD样本熵-LLTSA的故障特征提取方法[J]. 航空动力学报, 2014, (7): 1535-1542. doi: 10.13224/j.cnki.jasp.2014.07.004
引用本文: 向丹, 葛爽. 基于EMD样本熵-LLTSA的故障特征提取方法[J]. 航空动力学报, 2014, (7): 1535-1542. doi: 10.13224/j.cnki.jasp.2014.07.004
XIANG Dan, GE Shuang. Method of fault feature extraction based on EMD sample entropy and LLTSA[J]. Journal of Aerospace Power, 2014, (7): 1535-1542. doi: 10.13224/j.cnki.jasp.2014.07.004
Citation: XIANG Dan, GE Shuang. Method of fault feature extraction based on EMD sample entropy and LLTSA[J]. Journal of Aerospace Power, 2014, (7): 1535-1542. doi: 10.13224/j.cnki.jasp.2014.07.004

基于EMD样本熵-LLTSA的故障特征提取方法

doi: 10.13224/j.cnki.jasp.2014.07.004
基金项目: 

广东高校优秀青年创新人才培养计划项目(2013LYM_0052);广东优秀青年教师培养计划(Yq2013110)

详细信息
    作者简介:

    向丹(1980-),女,湖北宜昌人,副教授,博士,主要从事控制工程、测试技术与自动化的研究。

  • 中图分类号: V263.6;TH165.3

Method of fault feature extraction based on EMD sample entropy and LLTSA

  • 摘要: 针对振动信号的非线性、非平稳性以及微弱故障特征难以提取的问题,提出了一种基于经验模态分解(EMD)、样本熵和流形学习的故障特征提取方法.该方法将EMD、样本熵和流形学习相结合.首先,利用EMD的自适应多分辨率的特点计算分解得到的IMF(固有模态函数)信号的样本熵,初步提取滚动轴承状态特征值;然后利用流形学习方法对初步的提取的滚动轴承状态特征进行进一步的提取;最后利用支持向量机(SVM)对该特征提取方法进行分类评估,并将该方法运用在滚动轴承故障诊断实验中,实验证明该特征提取方法与基于小波包样本熵的故障诊断方法相比具有很好的聚类性能,且对于SVM的分类结果可达100%,在降低了特征数据的复杂度的同时,增强了故障模式识别的分类性能,具有一定的优越性.

     

  • [1] 翟旭升,胡金海,谢寿生,等.基于DSmT的航空发动机早期振动故障融合诊断方法[J].航空动力学报,2012,27(2):301-304. ZHAI Xusheng,HU Jinhai,XIE Shousheng,et al.Diagnosis of aero-engine with early vibration fault symptom using DsmT[J].Journal of Aerospace Power,2012,27(2):301-304.(in Chinese)
    [2] 鞠萍华,秦树人,秦毅,等.多分辨EMD方法与频域平均在齿轮早期故障诊断的研究[J].振动与冲击,2009,28(5);97-101. JU Pinghua,QIN Shuren,QIN Yi,et al.Study of the average in the early fault diagnosis of gear multiresolution and frequency domain EMD method[J].Journal of Vibration and Shock,2009,28(5):97-101.(in Chinese)
    [3] Pincus S M.Approximate entropy as a complexity measure[J].Chaos,1995,5(1):110-117.
    [4] YAN Ruqiang,GAO R X.Approximate entropy as a diagnostic tool for machine health monitoring[J].Mechancial Systems and Signal Processing,2007,21(2):824-839.
    [5] 赵志宏,杨绍普.一种基于样本熵的轴承故障诊断方法[J].振动与冲击,2012,31(6):136-140. ZHAO Zhihong,YANG Shaopu.A bearing fault diagnosis method based on sample entropy[J].Journal of Vibration and Shock,2012,31(6):136-140.(in Chinese)
    [6] 夏鲁瑞,胡茑庆,秦国军,等.基于流形学习的涡轮泵海量数据异常识别算法[J].航空动力学报,2011,26(3):698-703. XIA Lurui,HU Niaoqing,QIN Guojun,et al.Abnormal recognition algorithm based on manifold learning for turbopump mass data[J].Journal of Aerospace Power,2011,26(3):698-703.(in Chinese)
    [7] 李峰,汤宝平,陈法法.基于线性局部切空间排列维数化简的故障诊断[J].振动与冲击,2012,31(13):36-41. LI Feng,TANG Baoping,CHEN Fafa.Fault diagnosis based on dimension reduction using linear local tangent space alignment[J].Journal of Vibration and Shock,2012,31(13):36-41.(in Chinese)
    [8] Huang N E,Shen Z,Long S R,et al.The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis[J].Proceedings of the Royal Society of London:Series A Mathematical,Physical and Engineering Science,1998,454:903-995.
    [9] Fegeant O.Closed form solutions for the pointmobilities of axisymmetrically excited cylindrical shells[J].Journal of Sound and Vibration,2001,243(1):89-115.
    [10] Richman J S,Moorman J R.Physiological time series analysis using approximate entropy and sample entropy[J].American Journal of Physiology-Heart Circulatory Physical,2000,278(3):2039-2049.
    [11] Pincus S M.Assessing serial irregularity and its implications for health[J].Annals of the New York Academy of Sciences,2002,954(1):245-267.
    [12] Zhang T,Yang J,Zhao D,et al.Linear local tangent space alignment and application to face recognition[J].Neurocomputing,2007,70(7/8/9):1547-1553.
    [13] 梁霖,徐光华,栗茂林,等.冲击故障特征提取的非线性流形学习方法[J].西安交通大学学报,2009,43(11):95-99. LIANG Lin,XU Guanghua,LI Maolin,et al.The nonlinear manifold learning method of feature extraction of impulse fault[J].Journal of Xi'an Jiaotong University,2009,43(11):95-99.(in Chinese)
    [14] LI Hua,ZHANG Yongxin.An algorithm of soft fault diagnosis for analog circuit based on the optimized SVM by GA[C]//The Ninth International Conference on Electronic Measurement and Instruments.:[S.I.]IEEE,2009:1023-1024.
    [15] Vapnik V N.The nature of statistical learning theory[M].2nd ed.New York:Springer,1995.
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出版历程
  • 收稿日期:  2013-04-23
  • 刊出日期:  2014-07-28

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