Title :
Partially-Linear Least-Squares Regularized Regression for System Identification
Author :
Xu, Yong-Li ; Chen, Di-Rong
Author_Institution :
Dept. of Math., Beijing Univ. of Aeronaut. & Astronaut., Beijing, China
Abstract :
In this technical note, we propose a partially-linear least-squares regularized regression (PL-LSRR) method for system identification. This method identifies a general nonlinear function as a sum of two functions which come from a linear and a nonlinear function space respectively. Both the linear and nonlinear functions can involve all regressors. Therefore, the PL-LSRR can make use of the partially-linear structure of a given system to reduce prediction errors more efficiently than exiting partially-linear identification methods. Two examples show that the PL-LSRR can reduce prediction errors and estimate the true linear expansion of the system well.
Keywords :
identification; least squares approximations; nonlinear functions; regression analysis; general nonlinear function; linear expansion; linear function; partially-linear least-squares regularized regression; prediction errors; system identification; Artificial neural networks; Hilbert space; Kernel; Linear systems; Mathematics; Nonlinear systems; Polynomials; Stochastic systems; Support vector machines; System identification; Learning theory; least-squares regularized regression; partially-linear model; reproducing kernel Hilbert space; system identification;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.2009.2031566