A two-stage algorithm for identification of nonlinear dynamic systems

@article{Li2006ATA,
  title={A two-stage algorithm for identification of nonlinear dynamic systems},
  author={Kang Li and Jian Xun Peng and Er-Wei Bai},
  journal={Automatica},
  year={2006},
  volume={42},
  pages={1189-1197}
}
This paper investigates the two-stage stepwise identification for a class of nonlinear dynamic systems that can be described by linear-in-the-parameters models, and the model has to be built from a very large pool of basis functions or model terms. The main objective is to improve the compactness of the model that is obtained by the forward stepwise methods, while retaining the computational efficiency. The proposed algorithm first generates an initial model using a forward stepwise procedure… CONTINUE READING

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