Title of article :
nterpolating optimizing process control
Author/Authors :
Bjarne A. Foss، نويسنده , , S. Joe Qin، نويسنده ,
Abstract :
A new model-based optimizing controller for a set of nonlinear systems is proposed. The nonlinear model
set is based on a convex combination of two bounding linear models. An optimal control sequence is computed
for each of the two bounding models. The proposed control algorithm is based on a convex combination
of the two control sequences. A novel feature in these two optimizations is an added constraint
related to the feasibility of the ʹotherʹ bounding model. The control algorithm can for example be used in
model predictive control. We provide robust feasibility guarantees and an upper bound on the optimal
criterion if the bounding models are linear FIR models. Further, simulation examples demonstrate significant
feasibility improvements in the case where the bounding models are general linear state-space
models• The proposed method guarantees robust feasibility for a l-step ahead prediction in the general
case. This can be of interest in MPC applications.
Keywords :
Model-based control , optimization , Model predictive control , Nonlinear systems , Robustness , interpolation , Convexity
Journal title :
Astroparticle Physics