Title :
Neural network based predictor for control of cascaded thermal process
Author :
Pappa, N. ; Shanmugam, Jayamsakthi
Author_Institution :
Dept. of Instrum., Anna Univ., Chennai, India
Abstract :
Process control has been by far the most popular area of neural network application in chemical engineering. The use of neural networks in this area offers a potentially effective means of handling three difficult problems: complexity, nonlinearity and uncertainty. In comparison with other empirical models, neural networks are relatively less sensitive to noise and incomplete information, and thus deal with higher levels of uncertainty when applied in process control problems. The artificial neural network (ANN) technique is applied to the simulation of the time-dependent behaviour of a cascaded thermal process (heat exchangers) and is used to control the temperature of hot fluid flowing in the inner tube of the second heat exchanger. Two neuro predictor control schemes are presented. In the first scheme, a methodology is proposed for training and prediction of dynamic behavior of heat exchanger using feed forward neural network with external recurrent connections. Then a non-linear predictive control strategy based on identified model is proposed for heat exchanger control. In the second scheme, neural network based predictor for predicting outputs of first and second stages is presented. The performances of neuro schemes are evaluated by simulation for both servo and regulatory problems and the results are compared with a PID controller. An approach to the neural network-based predictor for control of cascaded thermal process is presented for predicting the effect of major load disturbance on the controlled variable in advance. First a mathematical model is developed in a traditional way, followed by the implementation of a neural network multilayer predictor trained based on mathematical model. The dynamic and steadystate behaviors are investigated.
Keywords :
cascade control; chemical engineering; feedback; feedforward neural nets; heat exchangers; learning (artificial intelligence); multilayer perceptrons; neurocontrollers; nonlinear control systems; predictive control; process control; temperature control; PID controller; artificial neural network; cascaded thermal process control; chemical engineering; external recurrent connections; feedback; feedforward neural network; heat exchanger control; hot fluid temperature control; learning; load disturbance; neural network multilayer predictor; neuro predictor control; nonlinear dynamics; nonlinearity; regulatory problems; servo problems; uncertainty; variable steady state gain; Artificial neural networks; Chemical engineering; Fluid flow control; Mathematical model; Multi-layer neural network; Neural networks; Process control; Temperature control; Thermal variables control; Uncertainty;
Conference_Titel :
Intelligent Sensing and Information Processing, 2004. Proceedings of International Conference on
Print_ISBN :
0-7803-8243-9
DOI :
10.1109/ICISIP.2004.1287669