INVESTIGADORES
MARCHETTI Alejandro Gabriel
artículos
Título:
On Improving the Efficiency of Modifier Adaptation via Directional Information
Autor/es:
DIOGO RODRIGUES; ALEJANDRO G. MARCHETTI; DOMINIQUE BONVIN
Revista:
COMPUTERS AND CHEMICAL ENGINEERING
Editorial:
PERGAMON-ELSEVIER SCIENCE LTD
Referencias:
Lugar: Amsterdam; Año: 2022 vol. 164 p. 107867 - 107867
ISSN:
0098-1354
Resumen:
In real-time optimization, the solution quality depends on the model ability to predict the plant KarushKuhnTucker (KKT) conditions. In the case of non-parametric plant-model mismatch, one can add input- affine modifiers to the model cost and constraints as is done in modifier adaptation (MA). These modifiers require estimating the plant cost and constraint gradients. This paper discusses two ways of reducing the number of input directions, thereby improving the efficiency of MA in practice. The first approach capitalizes on the knowledge of the active set to reduce the number of KKT conditions. The second approach determines the dominant gradients using sensitivity analysis. This way, MA reaches near plant optimality efficiently by adapting the first-order modifiers only along the dominant input directions. These approaches allow generating several alternative MA schemes, which are analyzed in terms of the number of degrees of freedom and compared in a simulated study of the WilliamsOtto plant.