Title of article :
Robust constrained receding-horizon predictive control via bounded data uncertainties Original Research Article
Author/Authors :
C. Ramos، نويسنده , , M. Mart?nez، نويسنده , , J. Sanchis، نويسنده , , J.V. Salcedo، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
The main objective of this work consists of obtaining a new robust and stable Model Predictive Control (MPC). One widely used technique for improving robustness in MPC consists of the Min–Max optimization, where an analogy can be established with the Bounded Data Uncertainties (BDU) method. The BDU is a regularization technique for least-squares problems by taking into account the uncertainty bounds. So BDU both improves robustness in MPC and offers a guided way of tuning the empirically tuned penalization parameter for the control effort in MPC due to the duality that the parameter coincides with the regularization one in BDU. On the other hand, the stability objective is achieved by the use of terminal constraints, in particular the Constrained Receding-Horizon Predictive Control (CRHPC) algorithm, so the original CRHPC–BDU controller is stated, which presents a better performance from the point of view of robustness and stability than a standard MPC.
Keywords :
Regularized least-squares method , Stability by constraints , Min–Max optimization , Model predictive control , Robustness to uncertainty
Journal title :
Mathematics and Computers in Simulation
Journal title :
Mathematics and Computers in Simulation