Title :
A predictor form state-space identification algorithm using multivariate linear regression
Author_Institution :
Adv. Control Syst. Lab., Beijing Jiaotong Univ., Beijing, China
Abstract :
This paper describes a novel MIMO state-space identification algorithm that is based on multivariate linear regression rather than the usual subspace techniques such as orthogonal and oblique projection. We first estimate the Markov parameters of the predictor using multivariate regression, then the state sequence is estimated using singular value decomposition via an equation central to our approach, and finally the A, B, C, K matrices are computed again by multivariate regression. Our algorithm is in predictor form, so it is suitable for both open- and closed-loop cases. Numerical experiments show the accuracy of our algorithm.
Keywords :
MIMO systems; Markov processes; closed loop systems; open loop systems; parameter estimation; regression analysis; singular value decomposition; state estimation; MIMO state-space identification algorithm; Markov parameter estimation; closed-loop cases; equation central; multivariate linear regression; open-loop cases; predictor form state-space identification algorithm; singular value decomposition; state sequence estimation; Equations; Linear regression; Markov processes; Mathematical model; Matrix decomposition; Observability; Prediction algorithms; Closed-Loop Identification; Multivariate Linear Regression; State-Space Identification; Subspace Identification;
Conference_Titel :
Control Conference (CCC), 2012 31st Chinese
Conference_Location :
Hefei
Print_ISBN :
978-1-4673-2581-3