INTEC   05402
INSTITUTO DE DESARROLLO TECNOLOGICO PARA LA INDUSTRIA QUIMICA
Unidad Ejecutora - UE
congresos y reuniones científicas
Título:
A gradient-based strategy for integrating Real Time Optimizer (RTO) with Model Predictive Control (MPC)
Autor/es:
ALAMO, TEODORO; FERRAMOSCA, ANTONIO; GONZÁLEZ, ALEJANDRO HERNÁN; LIMÓN, DANIEL; ODLOAK, DARCI
Lugar:
Noordwijkerhout
Reunión:
Congreso; IFAC Conference on Nonlinear Model Predictive Control 2012 (NMPC'12); 2012
Institución organizadora:
IFAC
Resumen:
In the process industries it is often desirable that advanced controllers, such as model
predictive controllers (MPC), control the plant ensuring stability and constraints satisfaction,
while an economic criterion is minimized. Usually the economic objective is optimized by an
upper level Real Time Optimizer (RTO) that passes steady state targets to a lower dynamic
control level. The drawback of this structure is that the RTO employs complex stationary
nonlinear models to perform the optimization and has a sampling time larger than the controller
one. As a consequence, the economic setpoints calculated by the RTO may be inconsistent for
the dynamic layer. In this paper an MPC that explicitly integrates the RTO structure into the
dynamic control layer is presented. To overcome the complexity of this one-layer formulation a
gradient-based approximation is proposed, which provides a low-computational-cost suboptimal
solution. It is shown that the iterative application of the proposed strategy derives in a control
law that ensures convergence and recursive feasibility under any change of the economic function.
The proposed strategy is tested in a simulation on a subsystem of a fluid catalytic cracking
(FCC) unit.