A New Nonlinear Predictive Control Approach Using Hammerstein Models with Compensation Term

نویسندگان

  • Danielle Simone S. Casillo
  • André L. Maitelli
  • Adhemar B. Fontes
چکیده

In this paper is presented a contribution for development and implementation of nonlinear predictive control based on Hammerstein models as well as to make properties evaluation. In this work, nonlinear predictive control development has been used the time-step linearity method and a compensation term is used with an objective to make better the controller performance. An example demonstrating the viability of the proposed methodology is presented.

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تاریخ انتشار 2008