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Machine Prognostics Based on Health State Estimation Using SVM

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Asset Condition, Information Systems and Decision Models

Part of the book series: Engineering Asset Management Review ((EAMR))

Abstract

The ability to accurately predict the remaining useful life of machine components is critical for machine continuous operation, and can also improve productivity and enhance system safety. In condition-based maintenance (CBM), maintenance is performed based on information collected through condition monitoring and an assessment of the machine health. Effective diagnostics and prognostics are important aspects of CBM for maintenance engineers to schedule a repair and to acquire replacement components before the components actually fail. All machine components are subjected to degradation processes in real environments and they have certain failure characteristics which can be related to the operating conditions. This paper describes a technique for accurate assessment of the remnant life of machines based on health state probability estimation and involving historical knowledge embedded in the closed loop diagnostics and prognostics systems. The technique uses a Support Vector Machine (SVM) classifier as a tool for estimating health state probability of machine degradation, which can affect the accuracy of prediction. To validate the feasibility of the proposed model, real life historical data from bearings of High Pressure Liquefied Natural Gas (HP-LNG) pumps were analysed and used to obtain the optimal prediction of remaining useful life. The results obtained were very encouraging and showed that the proposed prognostic system based on health state probability estimation has the potential to be used as an estimation tool for remnant life prediction in industrial machinery.

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References

  • AKS Jardine, D Lin, D Banjevic (2006) A review on machinery diagnostics and prognostics implementing condition-based maintenance. Mech Sys Signal Pr 20:1483-1510.

    Article  Google Scholar 

  • Y Li, S Billington, C Zhang, T Kurfess, S Danyluk, S Liang (1999) Adaptive Prognostics for Rolling Element Bearing Condition. Mech Sys Signal Pr 13:103-113.

    Article  Google Scholar 

  • M Pal, PM Mather (2004) Assessment of the effectiveness of support vector machines for hyperspectral data. Future Gener Comp Sy 20:1215-1225.

    Article  Google Scholar 

  • G Niu, JD Son, A Widodo, BS Yang, DH Hwang, DS Kang (2007) A comparison of classifier performance for fault diagnosis of induction motor using multi-type signals. Struct Health Monit 6:215-229.

    Article  Google Scholar 

  • Y Weizhong, X Feng (2008) Jet engine gas path fault diagnosis using dynamic fusion of multiple classifiers. In: Neural Networ. IJCNN 2008. (IEEE World Congress on Computational Intelligence). IEEE Int Joint Conf 1585-1591.

    Google Scholar 

  • G Niu, T Han, BS Yang, ACC Tan (2007) Multi-agent decision fusion for motor fault diagnosis, Mech Sys Signal Pr Vol. 21.

    Google Scholar 

  • VN Vapnik (1995) The Nature of Statistical Learning Theory. Springer, New York.

    Book  MATH  Google Scholar 

  • VN Vapnik (1999) An overview of statistical learning theory. IEEE Tr Neural Networ10(5): 988-999.

    Article  Google Scholar 

  • N Cristianini, NJ Shawe-Taylor (2000) An Introduction to Support Vector Machines. Cambridge University Press, Cambridge.

    Google Scholar 

  • CW Hsu, CJ Lin (2002) A comparison of methods for multiclass support vector machines. IEEE Tr Neural Networ 13:415-425.

    Article  Google Scholar 

  • LM He, FS Kong, ZQ Shen (2005) Multiclass SVM based on land cover classification with multisource data, In: Pr Fourth Intl Conf Mach Learn Cybernet 3541-3545.

    Google Scholar 

  • S Knerr, L Personnaz, G Dreyfus, Single-layer learning revisited: a stepwise procedure for building and training a neural network. Springer-Verlag, New York.

    Google Scholar 

  • J Platt (1999) Fast training of support vector machines using sequential minimal optimization. In: B. Scholkopf et al Advances in Kernel Methods-Support Vector Learning. MIT Press, Cambridge.

    Google Scholar 

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© 2012 Springer-Verlag London Limited

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Kim, HE., Tan, A.C., Mathew, J., Kim, E.Y.H., Choi, BK. (2012). Machine Prognostics Based on Health State Estimation Using SVM. In: Amadi-Echendu, J., Willett, R., Brown, K., Mathew, J. (eds) Asset Condition, Information Systems and Decision Models. Engineering Asset Management Review. Springer, London. https://doi.org/10.1007/978-1-4471-2924-0_9

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  • DOI: https://doi.org/10.1007/978-1-4471-2924-0_9

  • Publisher Name: Springer, London

  • Print ISBN: 978-1-4471-2923-3

  • Online ISBN: 978-1-4471-2924-0

  • eBook Packages: EngineeringEngineering (R0)

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