Citation:
R.K. Al Seyab and Y. Cao, Nonlinear model predictive control for the ALSTOM
gasifier, Journal of Process Control, Volume 16, Issue 8, September 2006, Pages
795-808.
Abstract:
In this work a nonlinear model predictive control based on Wiener model has been
developed and used to control the ALSTOM gasifier. The 0% load condition was
identified as the most difficult case to control among three operating
conditions. A linear model of the plant at 0% load is adopted as a base model
for prediction. A nonlinear static gain represented by a feedforward neural
network was identified for a particular output channel—namely, fuel gas
pressure, to compensate its strong nonlinear behaviour observed in open-loop
simulations. By linearising the neural network at each sampling time, the static
nonlinear model provides certain adaptation to the linear base model at all
other load conditions. The resulting controller showed noticeable performance
improvement when compared with pure linear model based predictive contro