Dynamic selective Gaussian process regression for forecasting temperature of molten steel in ladle furnace

被引:19
作者
Wang, Biao [1 ]
Wang, Wenjing [2 ]
Qiao, Zhihua [1 ]
Meng, Guanglei [1 ]
Mao, Zhizhong [3 ]
机构
[1] Shenyang Aerosp Univ, Sch Automat, Shenyang 110136, Peoples R China
[2] Liaoning Vocat Coll Ecol Engn, Sch Elect Engn, Shenyang 110122, Peoples R China
[3] Northeastern Univ, Sch Informat Sci & Engn, Shenyang 110819, Peoples R China
关键词
Molten steel temperature prediction; Gaussian process regression; Dynamic ensemble; Ladle furnace; HEAT-TRANSFER; PREDICTION;
D O I
10.1016/j.engappai.2022.104892
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The requirement for intelligent steelmaking has underlined the significance of data-driven predictions of molten steel temperature in ladle furnace. Recently, predictors based on ensemble learning have shown their superiority over single ones. However, the strong reliability on the ensemble diversity can hardly insure their generalization ability. Moreover, most existing predictors cannot provide statistical meaning to their outputs. This has degraded their engineering value. In this paper, we aim to address these two problems in one scheme, where a dynamic regression ensemble of Gaussian process models is built. Our dynamic ensemble will select the most competent individual for each test pattern according to the competence estimated by informative neighbors. To this end, a distance measure based on RReliefF is constructed to search for these neighbors, rather than traditional K-nearest neighbor. Several evaluation indexes are combined by a meta regressor so that more robust estimation of competence can be achieved. A Bayesian nonparametric model is used for ensemble generation in order to obtain statistical predictions. A data set from real-world ladle furnace is used to verify the effectiveness of the proposed predictor. According to the comparative results, we have found the superiority of our dynamic ensemble over static ensembles and single predictors. Furthermore, the improvement over existing dynamic ensembles has also been confirmed.
引用
收藏
页数:13
相关论文
共 38 条
[1]  
Aggarwal Charu C., 2015, Acm sigkdd explorations newsletter, V17, P24
[2]  
Breiman L, 1996, MACH LEARN, V24, P123, DOI 10.1023/A:1018054314350
[3]  
Çamdali UI, 2003, CAN METALL QUART, V42, P439
[4]   Steady state heat transfer of ladle furnace during steel production process [J].
Camdali, Unal ;
Turc, Murat .
JOURNAL OF IRON AND STEEL RESEARCH INTERNATIONAL, 2006, 13 (03) :18-+
[5]   Dynamic classifier selection: Recent advances and perspectives [J].
Cruz, Rafael M. O. ;
Sabourin, Robert ;
Cavalcanti, George D. C. .
INFORMATION FUSION, 2018, 41 :195-216
[6]  
Demsar J, 2006, J MACH LEARN RES, V7, P1
[7]   Bayesian optimization based dynamic ensemble for time series forecasting [J].
Du, Liang ;
Gao, Ruobin ;
Suganthan, Ponnuthurai Nagaratnam ;
Wang, David Z. W. .
INFORMATION SCIENCES, 2022, 591 :155-175
[8]   Walk-forward empirical wavelet random vector functional link for time series forecasting [J].
Gao, Ruobin ;
Du, Liang ;
Yuen, Kum Fai ;
Suganthan, Ponnuthurai Nagaratnam .
APPLIED SOFT COMPUTING, 2021, 108
[9]  
Giacinto G, 2000, LECT NOTES COMPUT SC, V1857, P177
[10]   Fluid Flow and Heat Transfer in the Ladle during Teeming [J].
Glaser, Bjorn ;
Gornerup, Marten ;
Sichen, Du .
STEEL RESEARCH INTERNATIONAL, 2011, 82 (07) :827-835