Title :
Identification of Auto-Regressive Exogenous Hammerstein Models Based on Support Vector Machine Regression
Author :
Al-Dhaifllah, Mujahed ; Westwick, D.T.
Author_Institution :
Dept. of Syst. Eng., King Fahd Univ. of Pet. & Miner., Dhahran, Saudi Arabia
Abstract :
This paper extends the algorithms used to fit standard support vector machines (SVMs) to the identification of auto-regressive exogenous (ARX) input Hammerstein models consisting of a SVM, which models the static nonlinearity, followed by an ARX representation of the linear element. The model parameters can be estimated by minimizing an ε-insensitive loss function, which can be either linear or quadratic. In addition, the value of the uncertainty level, ε, can be specified by the user, which gives control over the sparseness of the solution. The effects of these choices are demonstrated using both simulated and experimental data.
Keywords :
parameter estimation; regression analysis; support vector machines; ε-insensitive loss function minimization; ARX input Hammerstein models; SVM; auto-regressive exogenous Hammerstein model identification; linear element ARX representation; model parameter estimation; static nonlinearity; support vector machine regression; Algorithm design and analysis; Autoregressive processes; Cost function; Least squares approximation; Robustness; Support vector machines; Hammerstein; identification; support vector machines (SVMs);
Journal_Title :
Control Systems Technology, IEEE Transactions on
DOI :
10.1109/TCST.2012.2228193