Title of article :
Linear programming and model predictive control
Author/Authors :
Christopher V. Rao and James B. Rawlings، نويسنده ,
Pages :
7
From page :
283
To page :
289
Abstract :
The practicality of model predictive control (MPC) is partially limited by the ability to solve optimization problems in real time. This requirement limits the viability of MPC as a control strategy for large scale processes. One strategy for improving the com- putational performance is to formulate MPC using a linear program. While the linear programming formulation seems appealing from a numerical standpoint, the controller does not necessarily yield good closed-loop performance. In this work, we explore MPC with an l1 performance criterion. We demonstrate how the non-smoothness of the objective function may yield either dead-beat or idle control performance.
Keywords :
Model predictive control , Linear programming , optimization
Journal title :
Astroparticle Physics
Record number :
401164
Link To Document :
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