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基于局部特征尺度分解的旋转机械故障欠定盲源分离方法研究 被引量:5

Underdetermined blind source separation method of rotating machinery faults based on local characteristic-scale decomposition
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摘要 针对传统盲源分离方法局限于源信号平稳、非高斯且相互独立,要求观测信号数不少于源信号数的问题,提出了一种基于局部特征尺度分解的旋转机械故障欠定盲源分离方法。采用局部特征尺度分解方法将观测信号分解为若干个内禀尺度分量,相当于对观测信号数进行升维,重组所有内禀尺度分量作为新的观测信号进行盲源分离,该方法不仅能分离非线性、非平稳的旋转机械故障信号,而且也可以解决观测信号数少于源信号数的欠定问题。通过模拟仿真和建立不平衡-碰摩-松动耦合故障的转子试验台进行试验分析,且与传统盲源分离方法进行对比,结果表明了该方法的有效性。 The traditional blind source separation is restricted that source signals should be non-gaussian, stationary and mutually independent and that the number of observations is assumed to be not less than the number of sources. Aiming at this problem, underdetermined blind source separation method of rotating machinery faults based on local characteristic-scale decomposition (LCD) is put forward. In the method, all the mechanical fault signals are decomposed into several intrinsic scale components (ISC) by LCD, so the number of observations become more. Then all the ISCs are composed into new observations, which were blindly separated. This method not only decompose non-linear and non-stationary signals of mechanical fault but also can solve the underdetermined problem that the number of observations is less than the number of sources. While combining that method with the traditional blind source separation, the analysis of simulation and experimental results of the rotor of unbalance-rubbing-loose- ness coupled faults show that this method is effective.
出处 《燕山大学学报》 CAS 2014年第2期168-174,共7页 Journal of Yanshan University
基金 国家自然科学基金资助项目(51205340)
关键词 局部特征尺度分解 盲源分离 欠定 故障诊断 转子耦合故障 local characteristic-scale decomposition blind source separation underdetermined fault diagnosis coupled faults of rotor
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  • 1Huang N E, Shen Z, Long S R,et al. The Empiri- cal Mode Decomposition and the Hilhert Spectrum for Nonlinear and Non- stationary Time Series Analysis[J]. Proceedings of the Royal Society of London. Series A: Mathematical, Physical and En- gineering Sciences, 1998, 454(1971) : 903-995.
  • 2Huang N E, Wu Z.A Review on Hilbert Huang Transform Method and Its Applications to Geo- physical Studies[J]. Reviews of Geophysics, 2008, 47(2) : 1-23.
  • 3Lei Yaguo, Lin Jing, He Zhengjia, et al. A Review on Empirical Mode Decomposition in Fault Diagno- sis of Rotating Machinery[J]. Mechanical Systems and Signal Processing, 2013, 35(1) : 108-126.
  • 4Zheng Jinde, Cheng Junsheng, Yang Yu. General- ized Empirical Mode Decomposition and Its Appli- cations to Rolling Element Bearing Fault Diagnosis [J]. Mechanical Systems and Signal Processing, 2013, 40(1). 136-153.
  • 5Rilling G, Flandrin P. One or Two Frequencies? The Empirical Mode Decomposition Answers[J]. IEEE Transactions on Signal Processing, 2008, 56 (1) : 85-95.
  • 6Hong H. Liang M. Fault Severity Assessment forRolling Element Bearings Using the Lempel - ZivComplexity and Continuous Wavelet Transform[J].Journal of Sound and Vibration,2009,320(1/2):452-468.
  • 7Yang Yu,Cheng Junsheng,Zhang Kang.An Ensem-ble Local Means Decomposition Method and ItsApplication to Local Rub-impact Fault Diagnosis ofthe Rotor Systems [J]. Measurement,2012 , 45 (3):561-570.
  • 8Zheng Jinde, Cheng Junsheng, Yang Yu. A RollingBearing Fault Diagnosis Approach Based on LCDand Fuzzy Entropy [J]. Mechanism and MachineTheory,2013,70:441-453.
  • 9Zheng Jinde, Cheng Junsheng, Yang Yu. General-ized Empirical Mode Decomposition and Its Appli-cations to Rolling Element Bearing Fault Diagnosis[J]. Mechanical Systems and Signal Processing,2013, 40(1):136-153.
  • 10Wu Zhaohua,Huang N E. Ensemble EmpiricalMode Decomposition: a Noise - assisted DataAnalysis Method [J]. Advances in Adaptive DataAnalysis, 2009,1(1) : 1-41.

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