Reliable control of superheated steam temperature is necessary to ensure high efficiency and high load-following capability in the operation of modern power plant. This is often difficult to achieve using conventional PI controllers, as power plants are nonlinear and contain many uncertainties. A nonlinear generalized predictive controller based on neuro-fuzzy network (NFGPC) is proposed in this paper, which consists of local GPCs designed using the local linear models of the neuro-fuzzy network that models the plant. The proposed nonlinear controller is applied to control the superheated steam temperature of a 200-MW power plant. From the experiments on the plant and the simulation of the plant, much better performance than the traditional cascade PI controller or the linear GPC is obtained. © 2006 IEEE.
Xiangjie LiuJizhen LiuPing Guan
Xiangjie LiuFelipe Lara-RosanoMarino Sánchez ParraRaúl Ramirez
Xiangjie LiuFelipe Lara-Rosano