Issue
Korean Journal of Chemical Engineering,
Vol.25, No.2, 203-208, 2008
Adaptive monitoring statistics with state space model updating based on canonical variate analysis
A new multivariate statistical model updating by using a recursive state space model updating based on CVA is proposed. The CVA-based monitoring techniques have been researched to detect and isolate process abnormalities in dynamic processes. Two monitoring indices are defined for fault detection, and a state space model updating procedure is developed by using mean, covariance, and correlation updating based on forgetting factor as well as the recursive Cholesky factor updating. To adjust forgetting factors according to variation of process state, the forgetting factor updating criteria are introduced. The proposed method is applied to benchmark models of a continuous stirred tank reactor with a first order reaction and the Tennessee Eastman process (TEP) under transient and time-varying operating conditions. Through the simulation results, we expect that the proposed approach can be applied to time-varying and dynamic processes under transient state.
[References]
  1. Negiz A, Cinar A, AIChE J., 43(8), 2002, 1997
  2. Russel EL, Chiang LH, Braatz RD, Chemometrics and Intelligent Laboratory Systems, 51, 81, 2000
  3. Simoglou A, Martin EB, Morris AJ, Comput. Chem. Eng., 26(6), 909, 2002
  4. Aoki M, State space modeling of time series, 2nd ed, Springer-Verlag, Berlin Heidelberg New York, 1990
  5. Larimore WE, Canonical variate analysis in identification, filtering, and adaptive control, Proceedings of IEEE Conference on Decision and Control, Honolulu, Hawaii, 596, 1990
  6. Akaike H, SLAM Journal on Control, 13, 162, 1975
  7. Ewerbring LM, Luk FT, Journal of Computational and Applied Mathematics, 27, 37, 1989
  8. Lee C, Choi SW, Lee IB, J. Process Control, 16(7), 747, 2006
  9. Liu X, Chen T, Thornton SM, Pattern Recognition, 36, 1945, 2003
  10. Choi SW, Martin EB, Morris AJ, Lee IB, Ind. Eng. Chem. Res., 45(9), 3108, 2006
  11. Pan CT, Plemmons RJ, Journal of Computational and Applied Mathematics, 27, 109, 1989
  12. Hall P, Marshall D, Martin R, IEEE Transactions on Pattern Analysis and Machine Intelligence, 22, 1042, 2000
  13. Choi SW, Yoo CK, Lee IB, Ind. Eng. Chem. Res., 42(1), 108, 2003
  14. Chiang LH, Russel EL, Braatz RD, Fault detection and diagnosis in industrial systems, Springer, London, 2001