Title :
Computationally Efficient Identification of Global ARX Parameters With Guaranteed Stability
Author :
Nallasivam, Ulaganathan ; Srinivasan, Babji ; Kuppuraj, Vidyashankar ; Karim, M. Nazmul ; Rengaswamy, Raghunathan
Author_Institution :
Dept. of Chem. Eng., Clarkson Univ., Potsdam, NY, USA
fDate :
6/1/2011 12:00:00 AM
Abstract :
Identification of stable parametric models from input-output data of a process (stable) is an essential task in system identification. For a stable process, the identified parametric model may be unstable due to one or more of the following reasons: 1) presence of noise in the measurements, 2) plant disturbances, 3) finite sample effects 4) over/under modeling of the process and 5) nonlinear distortions. Therefore, it is essential to impose stability conditions on the parameters during model estimation. In this technical note, we develop a computationally efficient approach for the identification of global ARX parameters with guaranteed stability. The computational advantage of the proposed approach is derived from the fact that a series of computationally tractable quadratic programming (QP) problems are solved to identify the globally optimal parameters. The importance of identifying globally optimal stable model parameters is high lighted through illustrative examples; this does not seem to have been discussed much in the literature.
Keywords :
autoregressive processes; nonlinear distortion; parameter estimation; quadratic programming; Routh criterion; bilinear optimization; computationally efficient identification; finite sample effect; global ARX parameter identification; global optimization; globally optimal parameter; guaranteed stability; input-output data; model estimation; nonlinear distortion; plant disturbance; process modeling; quadratic programming; stability condition; stable parametric model; system identification; Computational modeling; Mathematical model; Optimization; Polynomials; Stability criteria; $epsilon$-optimality; Bilinear optimization; Routh criterion; global optimization; parametric models; stability;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.2011.2132250