INVESTIGADORES
MARCHETTI Alejandro Gabriel
congresos y reuniones científicas
Título:
Real-Time Optimization Based on Adaptation of Surrogate Models
Autor/es:
MARTAND SINGHAL; ALEJANDRO G. MARCHETTI; TIMM FAULWASSER; DOMINIQUE BONVIN
Lugar:
Trondheim
Reunión:
Simposio; 11th IFAC Symposium on Dynamics and Control of Process Systems, including Biosystems (DYCOPS-CAB 2016); 2016
Institución organizadora:
IFAC
Resumen:
Recently, different real-time optimization (RTO) schemes that guarantee feasibility of all RTO iterates and monotonic convergence to the optimal plant operating point have been proposed. However, simulations reveal that these schemes converge very slowly to the plant optimum, which may be prohibitive in applications. This note proposes an RTO scheme based on second-order surrogate models of the objective and the constraints, which enforces feasibility of all RTO iterates, i.e., plant constraints are satisfied at all iterations. In order to speed up convergence, we suggest an online adaptation strategy of the surrogate models that is based on trust-region ideas. The efficacy of the proposed RTO scheme is demonstrated in simulations via both a numerical example and the steady-state optimization of the Williams-Otto reactor.