Actas de congresos
Advanced Control Strategy To A Fermentation Process To Obtain Ethanol
Registro en:
0816910057; 9780816910052
Aiche Annual Meeting, Conference Proceedings. , v. , n. , p. - , 2006.
2-s2.0-77953028171
Autor
Duarte E.R.
Ender L.
Maciel Filho R.
Institución
Resumen
The aim of this work is to evaluate the performance of a non linear control strategy based on Artificial Neural Networks (ANN's) for an extractive alcoholic fermentation process (MIMO 3x3). The process is simulated through a validated deterministic model which takes into account the main phenomena taking place in the system. The control is build-up by a multilayered and multivariable ANN that represents the inverse dynamics of the system, which is on-line trained through an optimization routine. The optimization routine adjusts the weight of neural controller using the estimate global error of closed loop. The global error is obtained using a dynamic model of the process, to represent a prediction for the next sampling time. This process model is on-line trained with the process data. The obtained results have shown the efficiency of control strategy in multivariable system and the potential of proposed on-line learning.
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