Case-based reasoning model based on attribute weights optimized by genetic algorithm for predicting end temperature of molten steel in RH
Kai Feng 1,2 An-jun Xu 1 Peng-fei Wu 3 Dong-feng He 1 Hong-bing Wang 4
1 School of Metallurgy and Ecology Engineering, University of Science and Technology, Beijing 100083, China; 2 Beijing Key Laboratory of Knowledge Engineering for Materials Science, University of Science and Technology, Beijing 100083, China; 3 China Minmetals Corporation, Beijing 100010, China; 4 School of Computer and Communication Engineering, University of Science and Technology, Beijing 100083, China
Case-based reasoning model based on attribute weights optimized by genetic algorithm for predicting end temperature of molten steel in RH
Kai Feng 1,2 An-jun Xu 1 Peng-fei Wu 3 Dong-feng He 1 Hong-bing Wang 4
1 School of Metallurgy and Ecology Engineering, University of Science and Technology, Beijing 100083, China; 2 Beijing Key Laboratory of Knowledge Engineering for Materials Science, University of Science and Technology, Beijing 100083, China; 3 China Minmetals Corporation, Beijing 100010, China; 4 School of Computer and Communication Engineering, University of Science and Technology, Beijing 100083, China
摘要 Temperature control is the key of Ruhrstahl-Heraeus (RH) process in steelmaking plant. The accuracy of RH control model greatly affects the molten steel temperature fluctuation. To obtain RH control model with higher accuracy, an improved case-based reasoning (CBR) model based on attribute weights optimized by genetic algorithm (GA) was proposed. The fitness function in GA was determined according to the prediction accuracy of end temperature of molten steel in RH; then, GA is used to optimize all the attribute weights based on known case base. An improved CBR model that contains the optimized attribute weights was applied to predict end temperature of molten steel in RH, and the prediction accuracy was calculated. Four methods, CBR based on attribute weights optimized by GA (CBR–GA), ordinary CBR, back propagation neural network (BPNN) and multiple linear regression (MLR) method were employed for comparison. The results show that in the error range of [- 3 °C, 3 °C], [- 5 °C, 5 °C], [- 7 °C, 7 °C] and [- 10 °C, 10 °C], the prediction accuracy of CBR–GA was improved by 19.99%, 28.19%, 27.11% and 16.3%, respectively, than that of MLR. Compared with BPNN, the prediction accuracy increased by 3.22%, 7.44%, 5.29% and 2.40%, respectively. Compared with ordinary CBR, the accuracy increased by 5.43%, 5.80%, 4.66% and 2.27%, respectively.
Abstract:Temperature control is the key of Ruhrstahl-Heraeus (RH) process in steelmaking plant. The accuracy of RH control model greatly affects the molten steel temperature fluctuation. To obtain RH control model with higher accuracy, an improved case-based reasoning (CBR) model based on attribute weights optimized by genetic algorithm (GA) was proposed. The fitness function in GA was determined according to the prediction accuracy of end temperature of molten steel in RH; then, GA is used to optimize all the attribute weights based on known case base. An improved CBR model that contains the optimized attribute weights was applied to predict end temperature of molten steel in RH, and the prediction accuracy was calculated. Four methods, CBR based on attribute weights optimized by GA (CBR–GA), ordinary CBR, back propagation neural network (BPNN) and multiple linear regression (MLR) method were employed for comparison. The results show that in the error range of [- 3 °C, 3 °C], [- 5 °C, 5 °C], [- 7 °C, 7 °C] and [- 10 °C, 10 °C], the prediction accuracy of CBR–GA was improved by 19.99%, 28.19%, 27.11% and 16.3%, respectively, than that of MLR. Compared with BPNN, the prediction accuracy increased by 3.22%, 7.44%, 5.29% and 2.40%, respectively. Compared with ordinary CBR, the accuracy increased by 5.43%, 5.80%, 4.66% and 2.27%, respectively.
Kai Feng,An-jun Xu,Peng-fei Wu, et al. Case-based reasoning model based on attribute weights optimized by genetic algorithm for predicting end temperature of molten steel in RH[J]. Journal of Iron and Steel Research International, 2019, 26(6): 585-592.