This paper focuses on the identification problem of Wiener nonlinear systems. The application of the key-term separation principle provides a simplified form of the estimated parameter model. To solve the identification problem of Wiener nonlinear systems with the unmeasurable variables in the information vector, the least-squares-based iterative algorithm is presented by replacing the unmeasurable variables in the information vector with their corresponding iterative estimates. The simulation results indicate that the proposed algorithm is effective. © 2013 Lincheng Zhou et al.
CITATION STYLE
Zhou, L., Li, X., & Pan, F. (2013). Least-squares-based iterative identification algorithm for wiener nonlinear systems. Journal of Applied Mathematics, 2013. https://doi.org/10.1155/2013/565841
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