Title :
Next generation controllers for kiln/cooler and mill applications based on model predictive control and neural networks
Author :
Martin, Greg ; Lange, Tony ; Frewin, Neville
Author_Institution :
Pavilion Technol. Inc., Austin, TX, USA
Abstract :
Model predictive control (MPC) has become the standard supervisory control tool in some process industries, including oil refining and petrochemicals. It has been introduced into the cement industry, in a kiln/cooler application at Pretoria Portland Cement´s (PPC) Dwaalboom plant in South Africa. This application differs from the well-established expert system approach in that it incorporates a model of the process rather than a model of the operator. The continuous regulation and disturbance rejection of MPC is well suited to kiln/cooler control, and for example the application recovers from major upsets such as coating drop three times faster than typical operator intervention. Mills have been known to demonstrate severe nonlinear behavior, and linear controllers in mill applications have yielded only varying degrees of success. Most applications are eventually turned off due to poor performance caused by this nonlinear behaviour. Nonlinear MPC has been applied to the cement mill at Dwaalboom-a closed circuit ball mill. Gains are calculated at each control execution using a neural network model built from three months of log sheet data. Gains in the controller change by as much as a factor of fifteen. This controller has demonstrated significantly improved setpoint tracking and disturbance rejection over all three-product grades
Keywords :
cement industry; neural nets; nonlinear control systems; predictive control; process control; Dwaalboom plant; Pretoria Portland Cement; South Africa; cement mill; closed circuit ball mill; continuous regulation; disturbance rejection; kiln/cooler controller; log sheet data; model predictive control; neural network model; neural networks; nonlinear control; process industries; process model; setpoint tracking; supervisory control tool; Chemical industry; Electrical equipment industry; Fuel processing industries; Industrial control; Kilns; Milling machines; Predictive control; Predictive models; Supervisory control; Temperature control;
Conference_Titel :
Cement Industry Technical Conference, 2000 IEEE-IAS/PCA
Conference_Location :
Salt Lake City, UT
Print_ISBN :
0-7803-5823-6
DOI :
10.1109/CITCON.2000.848530