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Bearing Fault Classification Using Wavelet Energy and Autoencoder

Published: 09 January 2020 Publication History

Abstract

Today’s modern industry has widely accepted the intelligent condition monitoring system to improve the industrial organization. As an effect, the data-driven-based fault diagnosis methods are designed by integrating signal processing techniques along with artificial intelligence methods. Various signal processing approaches have been proposed for feature extraction from vibration signals to construct the fault feature space, and thus, over the years, the feature space has increased rapidly. Also, the challenge is to identify the promising features from the space for improving diagnosis performance. Therefore, in this paper, wavelet energy is presented as an input feature set to the fault diagnosis system. In this paper, wavelet energy is utilized to represent the multiple faults for reducing the requirement of number features, and therefore, the complex task of feature extraction becomes simple. Further, the convolutional autoencoder has assisted in finding more distinguishing fault feature from wavelet energy to improve the diagnosis task using extreme learning machine. The proposed method testified using two vibration datasets, and decent results are achieved. The effect of autoencoder on fault diagnosis performance has been observed in comparison to principal component analysis (PCA). Also, the consequence has seen in the size of the extreme learning machine (ELM) architecture.

References

[1]
Hossain MS and Muhammad G Cloud-assisted industrial internet of things (IIoT) - enabled framework for health monitoring Comput. Netw. 2016 101 192-202
[2]
Ren L, Cheng X, Wang X, Cui J, and Zhang L Multi-scale dense gate recurrent unit networks for bearing remaining useful life prediction Future Gener. Comput. Syst. 2019 94 601-609
[3]
Kan C, Yang H, and Kumara S Parallel computing and network analytics for fast industrial internet-of-things (IIoT) machine information processing and condition monitoring J. Manuf. Syst. 2018 46 282-293
[4]
Bellini A, Filippetti F, Tassoni C, and Capolino GA Advances in diagnostic techniques for induction machines IEEE Trans. Ind. Electron. 2008 55 12 4109-4126
[5]
Henriquez P, Alonso JB, Ferrer MA, and Travieso CM Review of automatic fault diagnosis systems using audio and vibration signals IEEE Trans. Syst. Man Cybern. Syst. 2014 44 5 642-652
[6]
Dai X and Gao Z From model, signal to knowledge: a data-driven perspective of fault detection and diagnosis IEEE Trans. Ind. Inf. 2013 9 4 2226-2238
[7]
Kan MS, Tan AC, and Mathew J A review on prognostic techniques for non-stationary and non-linear rotating systems Mech. Syst. Sign. Process. 2015 62 1-20
[8]
Choudhary A, Goyal D, Shimi SL, and Akula A Condition monitoring and fault diagnosis of induction motors: a review Arch. Comput. Methods Eng. 2018 26 4 1221-1238
[9]
El-Thalji I and Jantunen E A summary of fault modelling and predictive health monitoring of rolling element bearings Mech. Syst. Sign. Process. 2015 60 252-272
[10]
Marichal G, Artés M, Prada JG, and Casanova O Extraction of rules for faulty bearing classification by a neuro-fuzzy approach Mech. Syst. Sign. Process. 2011 25 6 2073-2082
[11]
Zhang S, Mathew J, Ma L, and Sun Y Best basis-based intelligent machine fault diagnosis Mech. Syst. Sign. Process. 2005 19 2 357-370
[12]
Kankar P, Sharma SC, and Harsha S Fault diagnosis of ball bearings using continuous wavelet transform Appl. Soft Comput. 2011 11 2 2300-2312
[13]
Kankar P, Sharma SC, and Harsha SP Rolling element bearing fault diagnosis using wavelet transform Neurocomputing 2011 74 10 1638-1645
[14]
Udmale, S.S., Singh, S.K.: A mechanical data analysis using kurtogram and extreme learning machine. Neural Comput. Appl. 1–13 (2019). 10.1007/s00521-019-04398-0
[15]
Soualhi A, Medjaher K, and Zerhouni N Bearing health monitoring based on Hilbert-Huang transform, support vector machine, and regression IEEE Trans. Instrum. Meas. 2015 64 1 52-62
[16]
Liu J, Wang W, and Golnaraghi F An enhanced diagnostic scheme for bearing condition monitoring IEEE Trans. Instrum. Meas. 2010 59 2 309-321
[17]
Udmale SS, Patil SS, Phalle VM, and Singh SK A bearing vibration data analysis based on spectral kurtosis and ConvNet Soft. Comput. 2019 23 19 1-19
[18]
Udmale, S.S., Singh, S.K., Singh, R., Sangaiah, A.K.: Multi-fault bearing classification using sensors and ConvNet-based transfer learning approach. IEEE Sens. J. 1–12 (2019). 10.1109/JSEN.2019.2947026
[19]
Udmale SS, Singh SK, and Bhirud SG A bearing data analysis based on kurtogram and deep learning sequence models Measurement 2019 145 665-677
[20]
Tao J, Liu Y, and Yang D Bearing fault diagnosis based on deep belief network and multisensor information fusion Shock Vibr. 2016 2016 9
[21]
Chen Z, Li C, and Sanchez RV Gearbox fault identification and classification with convolutional neural networks Shock Vibr. 2015 2015 10
[22]
Lu C, Wang Z, and Zhou B Intelligent fault diagnosis of rolling bearing using hierarchical convolutional network based health state classification Adv. Eng. Inf. 2017 32 139-151
[23]
Li C, Sánchez RV, Zurita G, Cerrada M, and Cabrera D Fault diagnosis for rotating machinery using vibration measurement deep statistical feature learning Sensors 2016 16 6 895
[24]
Chen Z, Deng S, Chen X, Li C, Sanchez RV, and Qin H Deep neural networks-based rolling bearing fault diagnosis Microelectron. Reliab. 2017 75 327-333
[25]
Dhamande LS and Chaudhari MB Compound gear-bearing fault feature extraction using statistical features based on time-frequency method Measurement 2018 125 63-77
[26]
Shao H, Jiang H, Li X, and Wu S Intelligent fault diagnosis of rolling bearing using deep wavelet auto-encoder with extreme learning machine Knowl. Based Syst. 2018 140 1-14
[27]
Zhang X, Yan Q, Yang J, Zhao J, and Shen Y An assembly tightness detection method for bolt-jointed rotor with wavelet energy entropy Measurement 2019 136 212-224
[28]
Pan Y, Zhang L, Wu X, Zhang K, and Skibniewski MJ Structural health monitoring and assessment using wavelet packet energy spectrum Saf. Sci. 2019 120 652-665
[29]
Goodfellow I, Bengio Y, and Courville A Deep Learning 2016 Cambridge MIT Press
[30]
Wang, W., Huang, Y., Wang, Y., Wang, L.: Generalized autoencoder: a neural network framework for dimensionality reduction. In: 2014 IEEE Conference on Computer Vision and Pattern Recognition Workshops, pp. 496–503, June 2014
[31]
Udmale SS and Singh SK Application of spectral kurtosis and improved extreme learning machine for bearing fault classification IEEE Trans. Instrum. Meas. 2019 68 11 1-12
[32]
CWRU: Case Western Reserve University Bearing Data Center Website (2009). https://csegroups.case.edu/bearingdatacenter/home
[33]
Smith WA and Randall RB Rolling element bearing diagnostics using the Case Western Reserve University data: a benchmark study Mech. Syst. Sig. Process. 2015 64–65 100-131
[34]
Huang GB, Chen L, and Siew CK Universal approximation using incremental constructive feedforward networks with random hidden nodes IEEE Trans. Neural Netw. 2006 17 4 879-892
[35]
Dong S and Luo T Bearing degradation process prediction based on the PCA and optimized LS-SVM model Measurement 2013 46 9 3143-3152
[36]
Samanta B and Al-Balushi K Artificial neural network based fault diagnostics of rolling element bearings using time-domain features Mech. Syst. Sig. Process. 2003 17 2 317-328

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            Published In

            cover image Guide Proceedings
            Distributed Computing and Internet Technology: 16th International Conference, ICDCIT 2020, Bhubaneswar, India, January 9–12, 2020, Proceedings
            Jan 2020
            442 pages
            ISBN:978-3-030-36986-6
            DOI:10.1007/978-3-030-36987-3

            Publisher

            Springer-Verlag

            Berlin, Heidelberg

            Publication History

            Published: 09 January 2020

            Author Tags

            1. Autoencoder
            2. Bearing
            3. Fault diagnosis
            4. Wavelet energy

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