Open Access Open Access  Restricted Access Subscription or Fee Access

Hybrid SVR-PSO for Identification of Nonlinear

Xianfang Wang, Zhiyong Du, Yi-xian Shen


This paper develops a hybrid support vector regression (SVR)-particle swarm optimization (PSO) model to identify nonlinear systems. The predictive accuracy of SVR models is highly dependent on their learning parameters. Therefore, PSO is exploited to seek the optimal hyper-parameters for SVR in order to improve its generalization capability. The proposed identification procedure is successfully applied to measurements of nonlinear systems. The efficiency of the proposed algorithm was demonstrated by some simulation examples.


Identification, Nonlinear systems, Support vector regression, Particle swarm optimization.

Full Text:



  • There are currently no refbacks.

Disclaimer/Regarding indexing issue:

We have provided the online access of all issues and papers to the indexing agencies (as given on journal web site). It’s depend on indexing agencies when, how and what manner they can index or not. Hence, we like to inform that on the basis of earlier indexing, we can’t predict the today or future indexing policy of third party (i.e. indexing agencies) as they have right to discontinue any journal at any time without prior information to the journal. So, please neither sends any question nor expects any answer from us on the behalf of third party i.e. indexing agencies.Hence, we will not issue any certificate or letter for indexing issue. Our role is just to provide the online access to them. So we do properly this and one can visit indexing agencies website to get the authentic information.