INTEC   05402
INSTITUTO DE DESARROLLO TECNOLOGICO PARA LA INDUSTRIA QUIMICA
Unidad Ejecutora - UE
artículos
Título:
Neural network-based state estimation for a closed-loop control strategy applied to a fed-batch bioreactor
Autor/es:
ROSSOMANDO FRANCISCO; GUSTAVO SCAGLIA; ROMOLI SANTIAGO; JORGE R.VEGA; MARIO E. SERRANO; OSCAR A. ORTIZ
Revista:
Complexity
Editorial:
John Wiley & Sons Inc.
Referencias:
Año: 2017 vol. 2017
ISSN:
1099-0526
Resumen:
The lack of online information on some bioprocess variables and the presence of model and parametric uncertainties pose significant challenges to the design of efficient closed-loop control strategies. To address this issue, in this work it is proposed an online state estimator based on a Radial Basis Function (RBF) neural network that operates in closed-loop together with a control law derived on a linear algebra-based design strategy. The proposed methodology is applied to a class of nonlinear system with three types of uncertainties: (i) time-varying parameters; (ii) uncertain nonlinearities; and (iii) unmodeled dynamics. To reduce the effect of uncertainties on the bioreactor, some integrators of the tracking error are introduced that in turn allow the derivation of the proper control actions. This new control scheme guarantees that all signals are uniformly and ultimately bounded, and the tracking error converges to small values. The effectiveness of the proposed approach is illustrated on the basis of simulated experiments on a fed-batch bioreactor, and its performance is compared with two controllers available in the literature.