Fault Diagnosis Based on IGA-SVMR for Satellite Attitude Control System

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Abstract:

Support Vector Machine Regression is a nonlinear modeling method with a simple structure and shows excellent performance compared with other nonlinear-linear regression methods. Unfortunately, most users always select the SVMR parameters by rule of thumb, so they frequently fail to get the optimal model. This paper propose to use the immune genetic algorithm to adjust the SVMR parameters and use the RMSE of the cross validation as the fitness of IGA. At last, this method was applied to modeling satellite attitude control system to detect the faults of the system. Simulation shows the high fitting precision to the system models which insures the correctness of the fault detection.

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1339-1342

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February 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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[1] Schroder D, Hintz C.Intelligent modeling observation and control f0r nonlinear systems Mechatronics[J].IEEE Transactions on ASME,2001,6(2):122-131.

DOI: 10.1109/3516.928725

Google Scholar

[2] Norgaard M, Ravn O. NNSYSID and NNCTRL tools for system identification and control with neural networks[J]. Computing& Control Engineering Journal, 2001 , 12(1):29-36.

DOI: 10.1049/cce:20010105

Google Scholar

[3] Vapnik V. The Nature of Statistical Learning Theory [M]. New York:springer, (1999).

Google Scholar

[4] Chun J S, Kim M K. Shape optimization of electronic devices using immune algorithm[J]. IEEE Trans. On Magnetics, 1997, 33(2):1876~1879.

DOI: 10.1109/20.582650

Google Scholar

[5] LU Gang, CHEN Xiaoping. Improvement on Regulating Definition of Antibody Density of Immune Algorithm[J]. Journal of Data Acquisition & Processing, 2003, 18(1):44-48.

Google Scholar

[6] ZHENG Chunhong. Automatic model selection for support vector machines using heuristic genetic algor ithm[J]. Control Theory& Applications. 2006, 23(2):187-192.

Google Scholar

[7] DU Jingyi, HOU Yuanbin. Parameters selection of support vector regression by genetic algorithms[J]. Systems Engineering And Electronics. 2006, 28(9):1430-1433.

Google Scholar

[8] XUE Wentao. A Genetic Algorithm Based on Immune Learning Mechanism and Its Application. Information And Control . 2008, 37(1) :68-72.

Google Scholar

[9] BAO Zhejing. Applications of Support Vector Machine in Intelligent Modeling and Model Predictive Control[D]. Dissertation for the Doctoral Degree, (2007).

Google Scholar

[10] Zhao Shi-Lei, Wu Li-Na. Fault Diagnosis of Satellite Based on IMM and Moving Horizon Estimation. Chin. J. Space Sci., 2011, 31(5): 647-652.

DOI: 10.11728/cjss2011.05.647

Google Scholar

[11] JIANG Yunchun, QIU Jing, LIU Guanjun. Fault Diagnosis of the Hydraulic Servo System Based on LS-SVM Modeling and Predictio[J]. Chinese Hydraulics& Pneumatics, 2006(6):44~4.

Google Scholar