INVESTIGADORES
ZUMOFFEN David Alejandro Ramon
artículos
Título:
Modeling-on-demand-based multivariable control performance monitoring
Autor/es:
S. RODRIGUEZ DEL PORTAL; L. BRACCIA; P. LUPPI; D. ZUMOFFEN
Revista:
COMPUTERS AND CHEMICAL ENGINEERING
Editorial:
PERGAMON-ELSEVIER SCIENCE LTD
Referencias:
Lugar: Amsterdam; Año: 2022
ISSN:
0098-1354
Resumen:
The current work presents a modeling-on-demand-basedmultivariable control performancemonitoring (CPM) strategy. The suggested approach addresses several challenging topics in multi input-multi output CPM area such as data-driven characteristics, recursive/adaptive philosophy, modeling, plant-wide control (PWC) performance/feasibility indicator, simple structure, minimum interference with the process operation and recovering actions suggestions. The new model-on-demand (MoD) algorithm combines partial least squares (block-wise and moving-window), model quality index, and the reference matrix concepts to improve the robustness characteristics of the recursive process, i.e. the model adaptation is only performed when it isneeded. Recovery actions may involve changes on tuning parameters as well as control structure modifications. The proposed strategy allows to identify static and dynamic abnormal events in the process which could produce strong degradation of the PWC performance. The robustness of the proposed methodology is tested by dynamic simulations on the well-known Shell fractionator process and compared with some classical recursive algorithms