Processing, Please wait...

  • Home
  • About Us
  • Search:
  • Advanced Search

Growing Science » Engineering Solid Mechanics » Feature extraction and optimized support vector machine for severity fault diagnosis in ball bearing

Journals

  • IJIEC (747)
  • MSL (2643)
  • DSL (668)
  • CCL (508)
  • USCM (1092)
  • ESM (413)
  • AC (562)
  • JPM (271)
  • IJDS (912)
  • JFS (91)
  • HE (32)
  • SCI (26)

ESM Volumes

    • Volume 1 (16)
      • Issue 1 (4)
      • Issue 2 (4)
      • Issue 3 (4)
      • Issue 4 (4)
    • Volume 2 (32)
      • Issue 1 (6)
      • Issue 2 (8)
      • Issue 3 (10)
      • Issue 4 (8)
    • Volume 3 (27)
      • Issue 1 (7)
      • Issue 2 (7)
      • Issue 3 (6)
      • Issue 4 (7)
    • Volume 4 (25)
      • Issue 1 (5)
      • Issue 2 (7)
      • Issue 3 (7)
      • Issue 4 (6)
    • Volume 5 (25)
      • Issue 1 (7)
      • Issue 2 (6)
      • Issue 3 (6)
      • Issue 4 (6)
    • Volume 6 (32)
      • Issue 1 (8)
      • Issue 2 (8)
      • Issue 3 (8)
      • Issue 4 (8)
    • Volume 7 (28)
      • Issue 1 (7)
      • Issue 2 (6)
      • Issue 3 (7)
      • Issue 4 (8)
    • Volume 8 (36)
      • Issue 1 (8)
      • Issue 2 (10)
      • Issue 3 (9)
      • Issue 4 (9)
    • Volume 9 (36)
      • Issue 1 (9)
      • Issue 2 (9)
      • Issue 3 (9)
      • Issue 4 (9)
    • Volume 10 (35)
      • Issue 1 (9)
      • Issue 2 (8)
      • Issue 3 (10)
      • Issue 4 (8)
    • Volume 11 (39)
      • Issue 1 (10)
      • Issue 2 (10)
      • Issue 3 (9)
      • Issue 4 (10)
    • Volume 12 (41)
      • Issue 1 (10)
      • Issue 2 (9)
      • Issue 3 (12)
      • Issue 4 (10)
    • Volume 13 (32)
      • Issue 1 (12)
      • Issue 2 (7)
      • Issue 3 (7)
      • Issue 4 (6)
    • Volume 14 (9)
      • Issue 1 (9)

Keywords

Supply chain management(166)
Jordan(161)
Vietnam(149)
Customer satisfaction(120)
Performance(113)
Supply chain(110)
Service quality(98)
Competitive advantage(95)
Tehran Stock Exchange(94)
SMEs(87)
optimization(86)
Financial performance(83)
Trust(83)
TOPSIS(83)
Sustainability(81)
Job satisfaction(80)
Factor analysis(78)
Social media(78)
Knowledge Management(77)
Artificial intelligence(77)


» Show all keywords

Authors

Naser Azad(82)
Mohammad Reza Iravani(64)
Zeplin Jiwa Husada Tarigan(63)
Endri Endri(45)
Muhammad Alshurideh(42)
Hotlan Siagian(39)
Jumadil Saputra(36)
Dmaithan Almajali(36)
Muhammad Turki Alshurideh(35)
Barween Al Kurdi(32)
Ahmad Makui(32)
Basrowi Basrowi(31)
Hassan Ghodrati(31)
Mohammad Khodaei Valahzaghard(30)
Sautma Ronni Basana(29)
Shankar Chakraborty(29)
Ni Nyoman Kerti Yasa(29)
Sulieman Ibraheem Shelash Al-Hawary(28)
Prasadja Ricardianto(28)
Haitham M. Alzoubi(27)


» Show all authors

Countries

Iran(2183)
Indonesia(1290)
India(787)
Jordan(786)
Vietnam(504)
Saudi Arabia(453)
Malaysia(441)
United Arab Emirates(220)
China(206)
Thailand(153)
United States(111)
Turkey(106)
Ukraine(104)
Egypt(98)
Canada(92)
Peru(88)
Pakistan(85)
United Kingdom(80)
Morocco(79)
Nigeria(78)


» Show all countries

Engineering Solid Mechanics

ISSN 2291-8752 (Online) - ISSN 2291-8744 (Print)
Quarterly Publication
Volume 4 Issue 4 pp. 167-176 , 2016

Feature extraction and optimized support vector machine for severity fault diagnosis in ball bearing Pages 167-176 Right click to download the paper Download PDF

Authors: Tawfik Thelaidjia, Abdelkrim Moussaoui, Salah Chenikher

DOI: 10.5267/j.esm.2016.6.004

Keywords: Fault Diagnosis, Particle Swarm Optimization with Passive Congregation, Principal Component Analysis, Statistical Parameters, Support Vector Machine, Wavelet Packet Transform

Abstract: In this paper, a method for severity fault diagnosis of ball bearings is presented. The method is based on wavelet packet transform (WPT), statistical parameters, principal component analysis (PCA) and support vector machine (SVM). The key to bearing faults diagnosis is features extraction. Hence, the proposed technique consists of preprocessing the bearing fault vibration signal using statistical parameters and energy obtained through the application of Db8- WPT at the third level of decomposition. After feature extraction from vibration signal, PCA is employed for dimensionality reduction. Finally, particle swarm optimization with passive congregation-based support vector machine is used to classify seven kinds of bearing faults. The classification results indicate the effectiveness of the proposed method for severity faults diagnosis in ball bearings.

How to cite this paper
Thelaidjia, T., Moussaoui, A & Chenikher, S. (2016). Feature extraction and optimized support vector machine for severity fault diagnosis in ball bearing.Engineering Solid Mechanics, 4(4), 167-176.

Refrences
Abe, S. (2005). Support vector machines for pattern classification (Vol. 53). London: Springer.
Angeline, P. J. (1998, March). Evolutionary optimization versus particle swarm optimization: Philosophy and performance differences. In International Conference on Evolutionary Programming (pp. 601-610). Springer Berlin Heidelberg.
Bell, R. N., McWilliams, D. W., O'donnell, P., Singh, C., & Wells, S. J. (1985). Report of large motor reliability survey of industrial and commercial installations. I. IEEE Transactions on Industry applications, 21(4), 853-864.
Case Western Reserve University. (Last accessed in 2014), Bearing data center.
Clerc, M., & Kennedy, J. (2002). The particle swarm-explosion, stability, and convergence in a multidimensional complex space. IEEE transactions on Evolutionary Computation, 6(1), 58-73.
Chen, F., Tang, B., Song, T., & Li, L. (2014). Multi-fault diagnosis study on roller bearing based on multi-kernel support vector machine with chaotic particle swarm optimization. Measurement, 47, 576-590.
Chebil, J., Noel, G., Mesbah, M., & Deriche, M. (2009). Wavelet decomposition for the detection and diagnosis of faults in rolling element bearings. Jordan Journal of Mechanical and Industrial Engineering, 3(4), 260-267.
Djebala, A., Babouri, M. K., & Ouelaa, N. (2015). Rolling bearing fault detection using a hybrid method based on empirical mode decomposition and optimized wavelet multi-resolution analysis. The International Journal of Advanced Manufacturing Technology, 79(9-12), 2093-2105.
Dong, S., & Luo, T. (2013). Bearing degradation process prediction based on the PCA and optimized LS-SVM model. Measurement, 46(9), 3143-3152.
He, S., Wu, Q. H., Wen, J. Y., Saunders, J. R., & Paton, R. C. (2004). A particle swarm optimizer with passive congregation. Biosystems, 78(1), 135-147.
Kankar, P. K., Sharma, S. C., & Harsha, S. P. (2011). Fault diagnosis of ball bearings using continuous wavelet transform. Applied Soft Computing, 11(2), 2300-2312.
Kankar, P. K., Sharma, S. C., & Harsha, S. P. (2011). Fault diagnosis of ball bearings using machine learning methods. Expert Systems with Applications, 38(3), 1876-1886.
Lei, Y., He, Z., Zi, Y., & Hu, Q. (2007). Fault diagnosis of rotating machinery based on multiple ANFIS combination with GAs. Mechanical Systems and Signal Processing, 21(5), 2280-2294.
Malhi, A., & Gao, R. X. (2004). PCA-based feature selection scheme for machine defect classification. IEEE Transactions on Instrumentation and Measurement, 53(6), 1517-1525.
Pandya, D. H., Upadhyay, S. H., & Harsha, S. P. (2014). Fault diagnosis of rolling element bearing by using multinomial logistic regression and wavelet packet transform. Soft Computing, 18(2), 255-266.
Prieto, M. D., Cirrincione, G., Espinosa, A. G., Ortega, J. A., & Henao, H. (2013). Bearing fault detection by a novel condition-monitoring scheme based on statistical-time features and neural networks. IEEE Transactions on Industrial Electronics, 60(8), 3398-3407.
Saidi, L., Ali, J. B., & Fnaiech, F. (2015). Application of higher order spectral features and support vector machines for bearing faults classification. ISA transactions, 54, 193-206.
Sharma, A., Amarnath, M., & Kankar, P. K. (2016). Feature extraction and fault severity classification in ball bearings. Journal of Vibration and Control, 22(1), 176-192.
Stepanic, P., Latinovic, I. V., & Djurovic, Z. (2009). A new approach to detection of defects in rolling element bearings based on statistical pattern recognition. The International Journal of Advanced Manufacturing Technology, 45(1-2), 91-100.
Thelaidjia, T., & Chenikher, S. (2013, December). A New approach of preprocessing with SVM optimization based on PSO for bearing fault diagnosis. In Hybrid Intelligent Systems (HIS), 2013 13th International Conference on (pp. 319-324). IEEE.
Vapnik, V. (2013). The nature of statistical learning theory. Springer Science & Business Media.
Vapnik, V.N. (1998). Statistical Learning Theory, Springer, New York.
Wang, L. (Ed.). (2005). Support vector machines: theory and applications (Vol. 177). Springer Science & Business Media.
Zarei, J., Tajeddini, M. A., & Karimi, H. R. (2014). Vibration analysis for bearing fault detection and classification using an intelligent filter. Mechatronics, 24(2), 151-157.
Zhang, Z., Wang, Y., & Wang, K. (2013). Intelligent fault diagnosis and prognosis approach for rotating machinery integrating wavelet transform, principal component analysis, and artificial neural networks. The International Journal of Advanced Manufacturing Technology, 68(1-4), 763-773.
Zhi-qiang, J., Hang-guang, F., & Ling-jun, L. I. (2005). Support Vector Machine for mechanical faults classification. Journal of Zhejiang University Science A, 6(5), 433-439.
Zhou, W., Habetler, T. G., & Harley, R. G. (2007, September). Bearing condition monitoring methods for electric machines: A general review. In Diagnostics for Electric Machines, Power Electronics and Drives, 2007. SDEMPED 2007. IEEE International Symposium on (pp. 3-6). IEEE.
Zhou, Z., Liu, D., & Shi, X. (2014). Fault Diagnosis Based on Principal Component Analysis and Support Vector Machine for Rolling Element Bearings. In Practical Applications of Intelligent Systems (pp. 795-803). Springer Berlin Heidelberg.


  • 0
  • 1
  • 2
  • 3
  • 4
  • 5

Journal: Engineering Solid Mechanics | Year: 2016 | Volume: 4 | Issue: 4 | Views: 2127 | Reviews: 0

Related Articles:
  • Campbell diagram analysis of open cracked rotor
  • A train bearing fault detection and diagnosis using acoustic emission
  • An effort allocation model considering different budgetary constraint on fa ...
  • Predicting product life cycle using fuzzy neural network
  • An entropy-LVQ system for S & P500 downward shifts forecasting

Add Reviews

Name:*
E-Mail:
Review:
Bold Italic Underline Strike | Align left Center Align right | Insert smilies Insert link URLInsert protected URL Select color | Add Hidden Text Insert Quote Convert selected text from selection to Cyrillic (Russian) alphabet Insert spoiler
winkwinkedsmileam
belayfeelfellowlaughing
lollovenorecourse
requestsadtonguewassat
cryingwhatbullyangry
Security Code: *
Include security image CAPCHA.
Refresh Code

® 2010-2026 GrowingScience.Com