Title :
Neural modeling and control of a 13C isotope separation process
Author :
Vlad Muresan;Mihail Abrudean;Honoriu Valean;Tiberiu Colosi;Mihaela-Ligia Unguresan;Valentin Sita;Iulia Clitan;Daniel Moga
Author_Institution :
Automation Department, Technical University of Cluj-Napoca, Baritiu Street, Romania
fDate :
7/1/2015 12:00:00 AM
Abstract :
The paper presents a solution for the 13C isotope concentration control inside and at the output of a separation column, solution based on the Internal Model Control strategy. The 13C isotope results from a chemical exchange process carbon dioxide - carbamate, which is a distributed parameter process. In order to model the mentioned process, an original form of the approximating analytical solution which describes the process work in transitory regime is determined. The evolution of the approximating solution depends both on time and on the position from the column height. The reference model of the fixed part of the control structure is implemented using neural networks, representing an original solution due to the fact that a neural model is determined for a distributed parameter process. The controller is, also, implemented using neural networks, its main parameter being adapted in relation to the transducer position change in the separation column. The advantages of using the proposed concentration control strategy consist of: the possibility of controlling the value of the 13C isotope concentration in any point from the separation column height; the improvement of the system performance regarding the settling time; the possibility to reject the effect of the disturbances.
Keywords :
"Isotopes","Neural networks","Separation processes","Analytical models","Steady-state"
Conference_Titel :
Informatics in Control, Automation and Robotics (ICINCO), 2015 12th International Conference on