Title of article :
MPC relevant identification––tuning
the noise model
Author/Authors :
R.B. Gopaluni، نويسنده , , R.S. Patwardhan
and S.L. Shah، نويسنده ,
Abstract :
The philosophy of identification by minimizing an objective function that is commensurate with the control objective function is
called control relevant identification. The control relevant method studied in this paper minimizes a multistep ahead prediction error
objective function, suitable for model predictive controllers, to obtain an optimal multistep ahead predictor. It is shown that the
method described in this paper provides better designed performance of the controller. A number of properties of this method in the
context of FIR models are presented in this paper. The noise model plays a pivotal role in determining the performance of multistep
ahead prediction errors. A method for tuning the noise model using the proposed control relevant method is presented in this
paper.
Keywords :
Model predictive control , Control relevant identification , bias distribution , Noise model , Identification
Journal title :
Astroparticle Physics