• CN:11-2187/TH
  • ISSN:0577-6686

›› 2007, Vol. 43 ›› Issue (1): 191-195.

• 论文 • 上一篇    下一篇

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基于非线性时序模型盲辨识的因子隐Markov模型识别方法

李志农;郝伟;韩捷;褚福磊;吴昭同   

  1. 郑州大学振动工程研究所;清华大学精密仪器与机械学;浙江大学现代制造工程研究所
  • 发布日期:2007-01-15

FACTORIAL HIDDEN MARKOV MODEL RECOGNITION METHOD BASED ON BLIND DENTIFICATION OF NONLINEAR TIME SERIES MODELS

LI Zhinong;HAO Wei;HAN Jie;CHU Fulei;WU Zhaotong   

  1. Research Institute of Vibration Engineering, Zhengzhou University Department of Precision Instruments and Mechanol-ogy, Tsinghua University Research Institute of Modern Manufacture Engi-neering, Zhejiang University
  • Published:2007-01-15

摘要: 基于模型辨识的机械有效故障特征提取方法中输入信号难以确定,以及机械设备运行过程中具有信息量大、非平稳、特征重复再现性差的特点,结合非线性时序模型盲辨识和因子隐Markov模型,提出一种基于非线性时序模型盲辨识的特征提取的因子隐Markov模型识别方法,并应用到旋转机械升降速过程故障诊断中。同时还与基于Fourier变换、小波变换的特征提取的因子隐Markov模型识别方法进行比较,试验结果表明该方法是有效的。

关键词: 非线性时间序列, 故障诊断, 盲系统辨识, 模式识别, 因子隐Markov模型(FHMM)

Abstract: Considering the problem of hardly determinate input signals in machine fault diagnosis method based on the system identification, and the characteristics of the abundant informa-tion, non-stationary, poor repeatability and reproducibility in the operating process of the mechanical equipment, here, combined blind identification of nonlinear time model and factorial hid-den Markov Model (FHMM), a fault diagnosis approach named as BSI-FHMM, is proposed. This approach is that blind identi-fication of nonlinear time series model is used as a feature ex-traction, and FHMM as a classifier, the proposed approach has been successfully completed in the speed-up and speed-down process of rotating machinery. At the same time, this approach is compared with another two fault diagnosis approaches named FFT-FHMM, wavelet-FHMM respectively. In the FFT-FHMM and wavelet-FHMM recognition approaches, the Fourier trans-formation and wavelet transformation is used as a feature ex-traction respectively, FHMM as a classifier. Experiment results show that the BSI-FHMM recognition approach is supe- rior to the FFT-FHMM and wavelet-FHMM recognition approaches.

Key words: Blind system identification (BSI), Factorial hidden Markov model (FHMM), Fault diagnosis, Nonlinear time series, Pattern recognition

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