Economic-Oriented Stochastic Optimization in Advanced Process Control of Chemical Processes
Author(s) -
László Dobos,
András Király,
János Abonyi
Publication year - 2012
Publication title -
the scientific world journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.453
H-Index - 93
eISSN - 2356-6140
pISSN - 1537-744X
DOI - 10.1100/2012/801602
Subject(s) - setpoint , computer science , process (computing) , chemical process , benchmark (surveying) , monte carlo method , mathematical optimization , nonlinear system , process control , operating point , optimal control , stochastic control , situated , control theory (sociology) , control (management) , mathematics , engineering , geodesy , quantum mechanics , chemical engineering , artificial intelligence , geography , operating system , statistics , physics , electrical engineering
Finding the optimal operating region of chemical processes is an inevitable step toward improving economic performance. Usually the optimal operating region is situated close to process constraints related to product quality or process safety requirements. Higher profit can be realized only by assuring a relatively low frequency of violation of these constraints. A multilevel stochastic optimization framework is proposed to determine the optimal setpoint values of control loops with respect to predetermined risk levels, uncertainties, and costs of violation of process constraints. The proposed framework is realized as direct search-type optimization of Monte-Carlo simulation of the controlled process. The concept is illustrated throughout by a well-known benchmark problem related to the control of a linear dynamical system and the model predictive control of a more complex nonlinear polymerization process.
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