Title :
Predictive control of a bench-scale chemical reactor based on neural-network models
Author :
Schenker, Benedikt ; Agarwal, Mukul
Author_Institution :
Mettler-Toledo AG, Schwerzenbach, Switzerland
fDate :
5/1/1998 12:00:00 AM
Abstract :
The authors have developed a reliable long-range predictor, comprising two neural networks with external feedback in series, and investigated its applicability for model predictive control on a simulation example. The networks use external feedback of the process state, yielding a state-space mapping that eliminates the drawbacks of the input-output mapping of the feedforward networks. This paper applies the long-range predictor to the model predictive control of an experimental bench-scale semi-batch chemical reactor. Examples of yield maximization for a reaction with complex kinetics are used to assess the proposed predictive control scheme. Control performance is compared for predictors based on the proposed external-feedback networks and on conventional feedforward networks. Results for various operating conditions, disturbances, and included analytical models demonstrate the superiority of the proposed control scheme in experiments
Keywords :
batch processing (industrial); chemical industry; feedback; neurocontrollers; predictive control; process control; state estimation; state-space methods; batch process; chemical reactor; feedback; long-range predictor; neural networks; predictive control; process control; state estimation; state-space mapping; system identification; Analytical models; Chemical reactors; Inductors; Neural networks; Neurofeedback; Predictive control; Predictive models; Robust control; State feedback; Time varying systems;
Journal_Title :
Control Systems Technology, IEEE Transactions on