Intelligent diagnosis algorithm for rolling element bearings faults based on dual structure deep learning

QI Yongsheng1,2,GUO Chunyu1,2,SHI Fang1,2,GAO Shengli3,LI Yongting1,2

Journal of Vibration and Shock ›› 2021, Vol. 40 ›› Issue (10) : 103-113.

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PDF(2014 KB)
Journal of Vibration and Shock ›› 2021, Vol. 40 ›› Issue (10) : 103-113.

Intelligent diagnosis algorithm for rolling element bearings faults based on dual structure deep learning

  • QI Yongsheng1,2,GUO Chunyu1,2,SHI Fang1,2,GAO Shengli3,LI Yongting1,2
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Abstract

An intelligent diagnosis algorithm was presented based on double structure deep learning to identify the bearing fault type and damage degree.In the method, an incomplete data model was used and divided into two structures: fault type self-learning network and fault damage degree identification network.In the first structure, the faulty signal was filtered by morphology to suppress some noises and enhance the impulse components.Then, the filtered signal was transformed by S-transform to obtain a time-frequency graph, and obtain the common features of the fault type.The time-frequency graph was used as the input of a convolution neural network (CNN) to gather the same type of samples and separate the different types of samples in the target space by virtue of the similarity of the network, and further to realize the classification of bearing fault types and the self-learning of new fault types.In the second structure, the signals of known fault types were employed as the input of a deep belief network (DBN) after normalization, in order to extract the different features of different damage degrees.Subsequently, the extracted features were utilized as the input of a Bayesian classifier to automatically recognize the fault damage degree according to the posterior probability classification rules.In the end, the proposed method was validated using the bearing fault data acquired by the Bearing Data Center supported by the Case Western Reserve.The results show the proposed method can not only accurately identify fault type and damage degree, but also realize fault type  self-learning and damage degree self-growth under the condition of incomplete data modeling, and enhance the intelligence of the diagnosis procedure.

Key words

convolutional neural network(CNN) / deep belief network(DBN) / Bayesian classifier / rolling bearing / similarity measurement / incomplete data modeling

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QI Yongsheng1,2,GUO Chunyu1,2,SHI Fang1,2,GAO Shengli3,LI Yongting1,2.
Intelligent diagnosis algorithm for rolling element bearings faults based on dual structure deep learning
[J]. Journal of Vibration and Shock, 2021, 40(10): 103-113

References

[1]HOANG D T, KANG H J.Rolling element bearing fault diagnosis using convolutional neural network and vibration image[J].Cognitive Systems Research, 2018,53(3): 42-50.
[2]WEN L, LI X, GAO L, et al.A new convolutional neural network based data-driven fault diagnosis method[J].IEEE Transactions on Industrial Electronics, 2017,65(7): 5990-5998.
[3]LU C, WANG Z Y, ZHOU B.Intelligent fault diagnosis of rolling bearing using hierarchical convolutional network based health state classification[J].Advanced Engineering Informatics, 2017,32: 139-151.
[4]陶洁, 刘义伦, 杨大炼,等.基于细菌觅食决策和深度置信网络的滚动轴承故障诊断[J].振动与冲击, 2017,36(23): 68-74.
TAO Jie, LIU Yilun, YANG Dalian, 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.
[5]SHAO H D, JIANG H K, ZHANG X, et al.Rolling bearing fault diagnosis using an optimization deep belief network[J].Measurement Science and Technology, 2015,26(11): 115002.
[6]TAMILSELVAN P, WANG P F.Failure diagnosis using deep belief learning based health state classification[J].Reliability Engineering and System Safety, 2013,115(7): 124-135.
[7]YANG D L, LIU Y L, LI S B, et al.Fatigue crack growth prediction of 7075 aluminum alloy based on the GMSVR model optimized by the artificial bee colony algorithm[J].Engineering Computations, 2017,34(4): 1034-1053.
[8]MA M, CHEN X F, WANG S B, et al.Bearing degradation assessment based on weibull distribution and deep belief network[C]// 2016 International Symposium on Flexible Automation.Cleveland: IEEE, 2016.
[9]CHEN Z Y, LI W H.Multisensor feature fusion for bearing fault diagnosis using sparse autoencoder and deep belief network[J].IEEE Transactions on Instrumentation & Measurement, 2017,66(7): 1693-1702.
[10]QIU J W, LIANG W, ZHANG L B, et al.The early-warning model of equipment chain in gas pipeline based on DNN-HMM[J].Journal of Natural Gas Science and Engineering, 2015,27: 1710-1722.
[11]LI C, SNCHEZ R V, ZURITA G, et al.Fault diagnosis for rotating machinery using vibration measurement deep statistical feature learning[J].Sensors, 2016,16(6): 895.
[12]LI Y C, NIE X Q, HUANG R.Web spam classification method based on deep belief networks[J].Expert Systems with Applications, 2018,96(96): 261-270.
[13]DONG Y, LI D.Deep learning and its applications to signal and information processing[J].IEEE Signal Processing Magazine, 2011,28(1): 145-154.
[14]TRAN V T, ALTHOBIANI F, BALL A.An approach to fault diagnosis of reciprocating compressor valves using Teager-Kaiser energy operator and deep belief networks[J].Expert Systems with Applications, 2014,41(9): 4113-4122.
[15]CHOPRA S, HADSELL R, LECUN Y.Learning a similarity metric discriminatively, with application to face verification[C]//IEEE Computer Society Conference on Computer Vision and Pattern Recognition.San Diego: IEEE, 2005.
[16]周水庚,周傲英,曹晶.基于数据分区的DBSCAN算法[J].计算机研究与发展, 2000,37(10): 1153-1159.
ZHOU Shuigeng, ZHOU Aoying, CAO Jing.A data-partitioning-based DBSCAN algorithm[J].Journal of Computer Research and Development, 2000,37(10): 1153-1159.
[17]LI B, ZHANG P L, LIU D S, et al.Feature extraction for rolling element bearing fault diagnosis utilizing generalized S transform and two-dimensional non-negative matrix factorization[J].Journal of Sound and Vibration, 2010,330(10): 2388-2399.
[18]STOCKWELL R G, MANSINHA L, LOWE R P.Localization of the complex spectrum: the S transform[J].IEEE Transactions on Signal Processing, 2002,44(4): 998-1001.
[19]FRIEDMAN N, GEIGER D, GOLDSZMIDT M.Bayesian network classifiers[J].Machine Learning, 1997,9(2/3): 131-163.
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