Title :
Nonlinear System Identification based on Support Vector Machine using Particle Swarm Optimization
Author :
Lee, Byung-hwa ; Kim, Sang-un ; Seok, Jin-wook ; Won, Sangchul
Author_Institution :
Dept. of Electron. & Electr. Eng., POSTECH, Pohang
Abstract :
This paper describes a different method for the identification of the nonlinear system and parameter optimization of the obtained input-output model. The approach is the technique using the least square support vector machines (LS-SVM) regression based on particle swarm optimization (PSO). LS-SVM is a regression algorithm used to approximate nonlinear function and the PSO algorithm is a optimization technique. For the nonlinear system, the system model is built by using the LS-SVM algorithm with radial basis function (RBF) kernel. Then, the hyperparameters of LS-SVM model are selected by the PSO. The analytic solution demonstrates that the PSO can be applied to optimize efficiently the hyperparameters, cost weighting factor and RBF-kernel width, used in the LS-SVM model. So, the reliability of the formulated model is improved as compared to that of the direct LS-SVM model, which have the non-optimized parameters, and can obtain the optimum parameters rapidly. In addition, based on the obtained nonlinear LS-SVM model, the numerical simulation results in pulp washing process and CSTR system illustrate the effectiveness and the merits of this algorithm
Keywords :
identification; least mean squares methods; nonlinear systems; particle swarm optimisation; radial basis function networks; regression analysis; support vector machines; LS-SVM regression algorithm; RBF kernel; input-output model; least square support vector machines; nonlinear system identification; parameter optimization; particle swarm optimization; radial basis function kernel; support vector machine; Cost function; Kernel; Least squares approximation; Least squares methods; Nonlinear systems; Numerical models; Numerical simulation; Optimization methods; Particle swarm optimization; Support vector machines; CSTR system; Least squares support vector machines; RBF-kernel; particle swarm optimization; pulp washing process;
Conference_Titel :
SICE-ICASE, 2006. International Joint Conference
Conference_Location :
Busan
Print_ISBN :
89-950038-4-7
Electronic_ISBN :
89-950038-5-5
DOI :
10.1109/SICE.2006.315099