Orthogonal least squares methods and their application to non-linear system identification
- 1 November 1989
- journal article
- research article
- Published by Taylor & Francis in International Journal of Control
- Vol. 50 (5) , 1873-1896
- https://doi.org/10.1080/00207178908953472
Abstract
Identification algorithms based on the well-known linear least squares methods of gaussian elimination, Cholesky decomposition, classical Gram-Schmidt, modified Gram-Schmidt, Householder transformation, Givens method, and singular value decomposition are reviewed. The classical Gram-Schmidt, modified Gram-Schmidt, and Householder transformation algorithms are then extended to combine structure determination, or which terms to include in the model, and parameter estimation in a very simple and efficient manner for a class of multivariate discrete-time non-linear stochastic systems which are linear in the parameters.Keywords
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