Development of genetic programming based softsensor model for styrene polymerization process and its application in model based control
Title | Development of genetic programming based softsensor model for styrene polymerization process and its application in model based control |
Publication Type | Conference Paper |
Year of Publication | 2016 |
Authors | Ghugare, SB, Tambe, SS |
Conference Name | 2016 Indian Control Conference (ICC) |
Date Published | JAN |
Publisher | IEEE Control Syst Soc; Honeywell; Mathworks; ABB R & D Div; GE; Mahindra Ecole Centrale |
Conference Location | 345 E 47th ST, New York, NY 10017 USA |
ISBN Number | 978-1-4673-7993-9 |
Keywords | Artificial intelligence, genetic programming, Model Predictive Control, process identification, Styrene Polymerization |
Abstract | In recent years, soft sensors have been established as a valuable alternative to the traditional hardware sensors for the acquisition of critical information regarding ``difficult-to-measure'' process variables and/or parameters in chemical process monitoring and control. Soft sensors can also be modified as a novel process identification tool for process monitoring and model based control. Often, in polymer industries the main polymerization reaction is highly nonlinear and complex to model accurately by the conventional ``first principles'' approach. In such cases, genetic programming (GP)-a novel artificial intelligence-based exclusively data driven modeling technique-can be employed for process identification. In this work GP-based soft sensors have been developed for a continuous styrene polymerization reactor. The resulting GP-based models (soft sensor) showed high prediction and generalization performances. The best performing model was successfully utilized in designing a model predictive control (MPC) scheme for the polymerization reactor. |