Title :
Data-driven thermal efficiency modeling and optimization for reheating furnace based on statistics analysis
Author :
Jian-Guo, Wang ; Tiao, Shen ; Jing-Hui, Zhao ; Shi-Wei, Ma ; Wen-Tao, Rao ; Yong-Jie, Zhang
Author_Institution :
School of Mechatronical Engineering and Automation, Shanghai University, Shanghai Key Lab of Power Station Automation Technology, Shanghai, 200072, China
Abstract :
The rolling reheating furnace is widely used in the large-scale iron and steel plant and the constantly changing dynamic characteristics and the interaction effect between different heating zones become challenges to operate a reheating furnace in an efficient way. In this paper, statistics analysis methods are utilized to justify the significance of the derived variables for the thermal efficiency modeling. By employing nonnegative garrote (NNG) variable selection procedure, an adaptive scheme for thermal efficiency modeling and adjustment is proposed and virtually implemented for a rolling reheating furnace. The detail analysis results show that there is good control precision improvement and large energy-saving benefit when the furnace operation shifts from the present practice to the model-based optimization adjustment.
Keywords :
Adaptation models; Fluid flow; Furnaces; Heating; Input variables; Predictive models; Temperature measurement; Reheating furnace; data-driven; statistics analysis; thermal efficiency; variable selection;
Conference_Titel :
Control Conference (CCC), 2015 34th Chinese
Conference_Location :
Hangzhou, China
DOI :
10.1109/ChiCC.2015.7260951