posted on 2014-11-05, 00:00authored byFernán
J. Serralunga, Pio A. Aguirre, Miguel C. Mussati
Real-time optimization (RTO) is widely
used in industry to improve
the steady-state performance of a process using the available measurements,
reacting to changing prices and demands scenarios and respecting operating,
contractual, and environmental constraints. Traditionally, RTO has
used nonlinear continuous formulations to model the process. Mixed-integer
formulations have not been used in RTO, because of the need of a fast
solution (on the order of seconds or a few minutes), and because many
discrete decisions, such as startups or shutdowns, are taken with
less frequency in a scheduling layer. This work proposes the use of
disjunctions in RTO models, listing a series of examples of discrete
decisions (different to startups or shutdowns) that can be addressed
by RTO. Two model adaptation approaches (the two-step approach and
the modifier adaptation strategy) are revised and
modified to make them suitable for RTO with discrete decisions. Some
common techniques used in RTO (such as filtering the optimal inputs)
are also analyzed and adapted for a formulation with disjunctions.
The performance of RTO with disjunctions is shown by a case study
in which a generic process is optimized. The results show that the
performance of a process can be improved by RTO with discrete decisions.
The system converges to the vicinity of the real plant optimum when
constraints gradients are corrected, even under structural and parametric
mismatch.