Title :
Development and application of an integrated neural system for an HDCL
Author :
Lu, Yong-Zai ; Markward, S.W.
Author_Institution :
Inf. Technol. Dept., Bethlehem Steel Co., IN, USA
fDate :
11/1/1997 12:00:00 AM
Abstract :
This study presents the development and industrial application of an integrated neural system in coating weight control for a modern hot dip coating line (HDCL) in a steel mill. The neural system consists of two multilayered feedforward neural networks and a neural adaptive controller. They perform coating weight real-time prediction, feedforward control (FFC), and adaptive feedback control (FBC), respectively. The production line analysis, neural system architecture, learning, associative memories, generalization and real-time applications are addressed in this paper. This integrated neural system has been successfully implemented and applied to an HDCL at Burns Harbor Division, Bethlehem Steel Co., Chesterton, IN. The industrial application results have shown significant improvements in reduction of coating weight transitional footage, variation of the error between the target and actual coating weight, and the coating material used. Some practical aspects for applying a neural system to industrial control are discussed as concluding remarks
Keywords :
adaptive control; coating techniques; feedback; feedforward neural nets; multilayer perceptrons; neurocontrollers; process control; steel industry; steel manufacture; Bethlehem Steel Co.; HDCL; adaptive feedback control; associative memories; coating weight control; coating weight real-time prediction; coating weight transitional footage reduction; error variation; feedforward control; hot dip coating line; industrial control; integrated neural system; learning; multilayered feedforward neural networks; neural adaptive controller; neural system architecture; production line analysis; real-time applications; steel mill; Adaptive control; Dip coating; Electrical equipment industry; Industrial control; Metals industry; Milling machines; Neural networks; Programmable control; Steel; Weight control;
Journal_Title :
Neural Networks, IEEE Transactions on