화학공학소재연구정보센터
Journal of Process Control, Vol.18, No.5, 431-438, 2008
Realization of robust nonlinear model predictive control by offline optimisation
This paper describes a new method for increasing the computational efficiency of nonlinear robust model-based predictive control. It is based on the application of neuro-fuzzy networks and improves the computation efficiency by arranging the online optimisation to be done offline. The offline optimisation is realized by offline training a neuro-fuzzy network, consisting of zero-order T-S fuzzy rules, which is designed to approximate the input-output relationship of a robust model-based predictive controller. The design and the training of the neuro-fuzzy network are described, and the corresponding control algorithm is developed. Experiment results performed on the temperature control loop of an experimental air-handling unit (AHU) demonstrate the effectiveness of this approach. (c) 2007 Elsevier Ltd. All rights reserved.