• Optics and Precision Engineering
  • Vol. 27, Issue 7, 1577 (2019)
XU Yan-wei*, LIU Ming-ming, LIU Yang, CHEN Li-hai, and XIE Tan-cheng
Author Affiliations
  • [in Chinese]
  • show less
    DOI: 10.3788/ope.20192707.1577 Cite this Article
    XU Yan-wei, LIU Ming-ming, LIU Yang, CHEN Li-hai, XIE Tan-cheng. Intelligent fault diagnosis of thin wall bearing based on information fusion[J]. Optics and Precision Engineering, 2019, 27(7): 1577 Copy Citation Text show less
    References

    [1] WANG T M, TAO Y. Research status and industrialization development strategy of Chinese industrial robot[J]. Chinese Journal of Mechanical Engineering, 2014, 50(9): 1-13. (in Chinese)

    [2] HE Q B, WANG J, HU F, et al.. Wayside acoustic diagnosis of defective train bearings based on signal resampling and information enhancement[J]. Journal of Sound and Vibration, 2013, 332(21): 5635-5649.

    [3] QIU M, ZHENG H T, CHEN L, et al.. Analysis on dynamic characteristics of thin-section angular contact ball bearings for robots[J]. Machinery Design & Manufacture, 2017(9): 250-253. (in Chinese)

    [4] YAO D CH, YANG J W, CHENG X Q, et al.. Railway rolling bearing fault diagnosis based on muti-scale IMF permutation entropy and SA-SVM classifier[J]. Journal of Mechanical Engineering, 2018, 54(9): 168-176. (in Chinese)

    [5] XIANG W W, CAI G G, FAN W, et al.. Transient feature extraction based on double-TQWT and its application in bearing fault diagnosis[J]. Journal of Vibration and Shock, 2015, 34(10): 34-39. (in Chinese)

    [6] LI H, LIU T, WU X, et al.. Research on fault diagnosis of rolling bearing based on SVD and optimized frequency band entropy by entropy[J]. Journal of Vibration Engineering, 2018, 31(2): 358-364. (in Chinese)

    [7] ZHU X Y, WANG Y J. Fault diagnosis of rolling bearings based on the MOMEDA and Teager energy operator[J]. Journal of Vibration and Shock, 2018, 37(6): 104-110, 123. (in Chinese)

    [8] CHEN X M, ZHANG K, JIN F H, et al.. Fault diagnosis method for rolling bearings under variable rotate speed based on time-varying zero-phase filter[J]. China Mechanical Engineering, 2018, 29(2): 177-185. (in Chinese)

    [9] CHEN B J, WANG X B, YAN W CH, et al.. A RSSD fault diagnosis method for rolling bearings based on optimization of quality factors and reconstruction of sub-bands[J]. Journal of Xi'an Jiaotong University, 2018, 52(4): 70-76, 89. (in Chinese)

    [10] YU J B, L J X, CHENG H, et al.. Fault diagnosis for rolling bearing based on ITD and improved morphological filter[J]. Journal of Beijing University of Aeronautics and Astronautics, 2018, 44(2): 241-249. (in Chinese)

    [11] LIU D D, CHENG W D, WEN W G, et al.. Rolling bearing multi-fault diagnosis based on envelope demodulation filter algorithm[J]. Journal of Central South University: Science and Technology, 2018, 49(4): 881-887. (in Chinese)

    [12] LIU D D, CHENG W D, WAN G T. Bearing fault diagnosis based on fault characteristic trend template[J]. Chinese Journal of Mechanical Engineering, 2017, 53(9): 83-91. (in Chinese)

    [13] ZHENG X X, ZHOU G W, REN H H, et al.. A rolling bearing fault diagnosis method based on variational mode decomposition and permutation entropy[J]. Journal of Vibration and Shock, 2017, 36(22): 22-28. (in Chinese)

    [14] MA P, ZHANG H L, FAN W H. Fault diagnosis of rolling bearings based on local and global preserving embedding algorithm[J]. Chinese Journal of Mechanical Engineering, 2017, 53(2): 20-25. (in Chinese)

    [15] YAN X A, JIA M P. Morphological demodulation method based on improved singular spectrum decomposition and its application in rolling bearing fault diagnosis[J]. Journal of Mechanical Engineering, 2017, 53(7): 104-112. (in Chinese)

    [16] ZHAO D Z, LI J Y, CHENG W D, et al.. Rolling element bearing fault diagnosis based on generalized demodulation algorithm under variable rotational speed[J]. Journal of Vibration Engineering, 2017, 30(5): 865-873. (in Chinese)

    [17] LI H K, YANG R, REN Y J, et al.. Rolling element bearing diagnosis using particle filter and kurtogram[J]. Journal of Mechanical Engineering, 2017, 53(3): 63-72. (in Chinese)

    [18] LIU W P, LIU Y Q, YANG SH P, et al.. Fault diagnosis of rolling bearing based on typical correlated kurtogram[J]. Journal of Vibration and Shock, 2018, 37(8): 87-92. (in Chinese)

    [19] LIU X D, LIU M Y, CHEN Y SH, et al.. Rolling bearing fault diagnosis based on EEMD-PE coupled with M-RVM[J]. Journal of Harbin Institute of Technology, 2017, 49(9): 122-128. (in Chinese)

    [20] TAO J, LIU Y L, YANG D L, et al.. Rolling bearing fault diagnosis based on bacterial foraging algorithm and deep belief network[J]. Journal of Vibration and Shock, 2017, 36(23): 68-74. (in Chinese)

    [21] LIAO CH J, LI X J, LIU D S. Application of reassigned wavelet scalogram in feature extraction based on acoustic emission signal[J]. Chinese Journal of Mechanical Engineering, 2009, 45(2): 273-279. (in Chinese)

    [22] HAO R J, LU W X, CHU F L. Morphology filters for analyzing roller bearing fault using acoustic emission signal processing[J]. Journal of Tsinghua University: Science and Technology, 2008, 48(5): 812-815. (in Chinese)

    [23] HU A J, MA W L, TANG G J. Rolling bearing fault feature extraction method based on ensemble empirical mode decomposition and kurtosis criterion[J]. Proceedings of the CSEE, 2012, 32(11): 106-111, 153. (in Chinese)

    [24] CAI Y P, LI A H, SHI L S, et al.. Roller bearing fault detection using improved envelope spectrum analysis based on EMD and spectrum kurtosis[J]. Journal of Vibration and Shock, 2011, 30(2): 167-172, 191. (in Chinese)

    [25] LIANG Z M, JIANG H Q, ZHOU B ZH, et al.. Multi-variable similarity-based information fusion method for remaining useful life prediction[J]. Computer Integrated Manufacturing Systems, 2018, 24(4): 813-819. (in Chinese)

    [26] ZHANG N N, GUO K H, DING H T. Driving cycle recognition algorithm based on multi-source information fusion and application in vehicle torque distribution[J]. Journal of Mechanical Engineering, 2017, 53(24): 135-143. (in Chinese)

    [27] ZHANG M, JIANG ZH N. Reciprocating compressor fault diagnosis technology based on multi-source information fusion[J]. Chinese Journal of Mechanical Engineering, 2017, 53(23): 46-52. (in Chinese)

    [28] YU K, TAN J W, LI SH. Rolling bearing fault diagnosis research based on multi-sensor information fusion[J]. Instrument Technique and Sensor, 2016(7): 97-102, 107. (in Chinese)

    [29] LI R Y, ZHANG G Y, WANG H R, et al.. Research on multi-sensor bearing fault diagnosis based on GA-BP neural network[J]. Control and Instruments in Chemical Industry, 2017, 44(10): 916-920, 972. (in Chinese)

    [30] GB/T 24607-2009, Rolling Bearings-Test and Assessment for Life and Reliability [S]. Luoyang: Luoyang Bearing Science And Technology Co., Ltd, 2010. (in Chinese)

    [31] SUN ZH L. Study on fault diagnosis of rolling element bearings based on resonance-based sparse decomposition [D]. Beijing: Beijing Jiaotong University, 2017. (in Chinese)

    [32] XU Y W, CHEN L H, YUAN Z H, et al.. Intelligent recognition of tool wear conditions based on the information fusion[J]. Journal of Vibration and Shock, 2017, 36(21): 257-264. (in Chinese)

    [33] QIAN SH C, SUN Y X, XIONG ZH H. Support vector machine based online intelligent chatter detection [J]. Journal of Mechanical Engineering, 2015, 51(20): 1-8. (in Chinese)

    [34] CHEN D N, ZHANG Y D, YAO CH Y, et al.. Fault diagnosis based on FVMD multi-scale permutation entropy and GK fuzzy clustering[J]. Journal of Mechanical Engineering, 2018, 54(14): 16-27. (in Chinese)

    [35] WU A G, LIU H T, DONG N. Nonsingular fast terminal sliding mode control of robotic manipulators based on neural networks[J]. Transactions of the Chinese Society for Agricultural Machinery, 2018, 49(2): 395-404, 240. (in Chinese)

    [36] ZHANG Y ZH, DONG J H. Modeling fuzzy RBF neural network to predict of mechanical properties of welding joints based on fuzzy C-means cluster[J]. Journal of Mechanical Engineering, 2014, 50(12): 58-64. (in Chinese)

    [37] GAO W X, TANG N, LI L, et al.. New algorithm for detecting air bubbles in steel pipe welding of X-ray based on hopfield neural network[J]. Chinese Journal of Mechanical Engineering, 2007, 43(4): 193-197. (in Chinese)

    [38] CAI R, WU ZH, YUN H, et al.. Research on earthquake prediction based on BP and SOM neural network[J]. Journal of Sichuan University(Natural Science Edition), 2018, 55(2): 307-315. (in Chinese)

    [39] WANG X CH, SHI F, YU L, et al.. 43 Cases Analysis of MATLAB Neural Network [M]. Beijing: Beihang University Press, 2013. (in Chinese)

    CLP Journals

    [1] MA Yu-ke, ZHENG Liang, HU Gao-kai, JI Xiao-wen, SI Zhao-yi, LIU Yan-tong. Path planning strategy of amphibious spherical robot[J]. Optics and Precision Engineering, 2020, 28(8): 1733

    [2] Tianqi WANG, Xinhao NAN, Linyuan CAI, Sanfeng GU, Ming DENG. Grating strain sensing system with high sensitivity and high precision[J]. Optics and Precision Engineering, 2024, 32(22): 3257

    [3] WU Hai-bin, CHEN Yin-sheng, ZHANG Ting-hao, WANG Ying. Rolling bearing fault diagnosis by improved multiscale amplitude-aware permutation entropy and random forest[J]. Optics and Precision Engineering, 2020, 28(3): 621

    XU Yan-wei, LIU Ming-ming, LIU Yang, CHEN Li-hai, XIE Tan-cheng. Intelligent fault diagnosis of thin wall bearing based on information fusion[J]. Optics and Precision Engineering, 2019, 27(7): 1577
    Download Citation