recursive least-squares estimation for hammerstein nonlinear systems with nonuniform sampling
;Xiangli Li;Lincheng Zhou;Ruifeng Ding;Jie Sheng
journal of power sources2013Vol. 2013pp. -
145
li2013mathematicalrecursive
Abstract
This paper focuses on the identification problem of Hammerstein nonlinear systems with nonuniform sampling. Using the key-term separation principle, we present a discrete identification model with nonuniform sampling input and output data based on the frame period. To estimate parameters of the presented model, an auxiliary model-based recursive least-squares algorithm is derived by replacing the unmeasurable variables in the information vector with their corresponding recursive estimates. The simulation results show the effectiveness of the proposed algorithm.