SVDD Based Data-Driven Fault Detection

Authors

  • Yusuf SEVIM

DOI:

https://doi.org/10.18100/ijamec.285123

Keywords:

Process Monitoring, Fault Detection, Support Vector Data Description, Independent Component Analysis, Principal Component Analysis

Abstract

Conventional data driven process monitoring algorithms are limited to Gaussian process data for principal component analysis (PCA) algorithm and non-Gaussian process data for independent component analysis (ICA) algorithm. This paper provides a comparison study between the conventional data driven methods and support vector data description (SVDD) algorithm for fault detection (FD). Different from the traditional methods, SVDD algorithm has no Gausssian assumption. Thus the distribution of process data is not important for SVDD method. In order to compare their FD performances of the proposed methods from the application viewpoint, Tennessee Eastman (TE) benchmark process is utilized to compare the results of all the discussed methods. Simulation results on TE process show that ICA and SVDD methods perform better for false faults than the PCA method.

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References

Shams M. B., Budman H. M., and Duever T. A., Fault detection, identification and diagnosis using CUSUM based PCA, Chemical Engineering Science, 66(20), 4488-4498, 2011.

Villegas T., Fuente M. J., and Rodríguez M., Principal component analysis for fault detection and diagnosis. experience with a pilot plant, In CIMMACS'10 Proceedings of the 9th WSEAS international conference on computational intelligence, man-machine systems and cybernetics , 2010, December, pp. 147-152.

Alkaya A., and Eker İ., Variance sensitive adaptive threshold-based PCA method for fault detection with experimental application, ISA transactions, 50(2), 287-302, 2011.

Kano M., Tanaka S., Hasebe S., Hashimoto I., and Ohno H., Monitoring independent components for fault detection, AIChE Journal, 49(4), 969-976, 2003.

Yoo C. K., Lee J. M., Vanrolleghem P. A., and Lee I. B., On-line monitoring of batch processes using multiway independent component analysis, Chemometrics and Intelligent Laboratory Systems, 71(2), 151-163, 2004.

Lee J. M., Yoo C., and Lee I. B., Statistical monitoring of dynamic processes based on dynamic independent component analysis, Chemical engineering science, 59(14), 2995-3006, 2004.

Tax D. M., and Duin R. P., Support vector data description, Machine learning, 54(1), 45-66, 2004.

Ge Z., Xie L., Kruger U. , Lamont L., Song Z., and Wang S., Sensor fault identification and isolation for multivariate non-Gaussian processes, Journal of Process Control, 19(10), 1707-1715, 2009.

Xie L., and Kruger U., Statistical processes monitoring based on improved ICA and SVDD, In International Conference on Intelligent Computing, 2006, August, pp. 1247-1256, Springer Berlin Heidelberg.

Wang D., Peter W. T., Guo W., and Miao Q., Support vector data description for fusion of multiple health indicators for enhancing gearbox fault diagnosis and prognosis, Measurement Science and Technology, 22(2), 025102, 2010.

Hyvärinen A., and Oja E., A fast fixed-point algorithm for independent component analysis, Neural computation, 9(7), 1483- 1492, 1997.

Hyvärinen A., and Oja E., Independent component analysis: algorithms and applications, Neural networks, 13(4), 411-430, 2000.

Silverman B. W., Density estimation for statistics and data analysis (Vol. 26). CRC press, 1986.

Liu X., Xie L., Kruger U., Littler T., and Wang S., Statistical‐based monitoring of multivariate non‐Gaussian systems, AIChE journal, 54(9), 2379-2391, 2008.

Downs J. J., and Vogel E. F., A plant-wide industrial process control problem, Computers & chemical engineering, 17(3), 245-255, 1993.

Chiang L. H., Braatz R. D., and , Russell E. L., Fault detection and diagnosis in industrial systems, Springer Science & Business Media, 2001.

Lee J. M., Qin S. J., and Lee I. B., Fault detection and diagnosis based on modified independent component analysis, AIChE journal, 52(10), 3501-3514, 2006.

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Published

01-12-2016

Issue

Section

Research Articles

How to Cite

[1]
“SVDD Based Data-Driven Fault Detection”, J. Appl. Methods Electron. Comput., pp. 408–411, Dec. 2016, doi: 10.18100/ijamec.285123.

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