Prediction model for endpoint and product composition of copper-converter smelting based on CNN-GAT algorithm collaboration
Yunhao Qiu , Mingzhou Li , Jindi Huang , Zhiming He , Wenfeng Fang , Lihua Zhong , Wu Xu
International Journal of Minerals, Metallurgy, and Materials ›› 2026, Vol. 33 ›› Issue (4) : 1187 -1200.
The endpoint timing of copper-converter blowing directly affects the quality of blister copper, furnace stability, and blowing efficiency. Therefore, enhancing the digitalization and intelligence levels of this process has significant practical importance. This study employed a deep learning algorithm that integrated a convolutional neural network (CNN) and graph attention network (GAT). It utilized CNNs to extract image features from the cooling samples of high-temperature melts. Subsequently, by fusing these image features with various production condition data and constraints through the GAT, a model was constructed to determine the best endpoint and predict the product composition. This model could predict the main elemental content of furnace products and estimate the required blowing time. A dataset comprising 5172 production parameters and images of high-temperature cooling samples from a furnace was established. The model was trained and validated using this dataset, and the results indicated that the model achieved endpoint judgment accuracies of 96.73% and 97.85% for the slag-making and copper-making periods, respectively, on the test set. The average prediction error for the composition across four cycles of copper-converter blowing was as low as 0.705wt%, and the average error in estimating the required blowing time was only 1.94 min. The results of this study provide new methods and insights for the development of intelligent endpoint judgment technologies for copper-converter blowing.
endpoint judgment of copper-converter blowing / composition prediction / convolutional neural networ / graph attention network
| [1] |
J.J. Fan, J.P. He, Q. Liu, and Z.J. Xie, Application of copper end point on-line monitoring system to judge end point of converter blowing, Nonferrous Met. Extr. Metall., (2018), No. 8, p. 8. |
| [2] |
|
| [3] |
H.Z. Zhang, B.J. Zhang, and T.Q. Guo, Endpoint determination of converter blowing based on deep fusion of flame and flue gas characteristics, Copper Eng., (2023), No. 6, p. 175. |
| [4] |
|
| [5] |
H.Z. Zhang, Z.A. Xu, G.Y. Liu, T.Q. Guo, and B.J. Zhang, Image intelligent monitoring and auxiliary analysis system of copper converter blowing furnace, Copper Eng., (2024), No. 2, p. 1. |
| [6] |
|
| [7] |
Z.K. Hu, X.Q. Peng, J.F. Yao, et al., Research on endpoint forecast of copper smelting converter, Nonferrous Met. Extr. Metall., (2000), No. 6, p. 7. |
| [8] |
|
| [9] |
|
| [10] |
|
| [11] |
|
| [12] |
R. Zhang, M.Z. Li, L.H. Zhong, C.R. Tong, F.Y. He, and J.D. Huang, Research on prediction model of Fe content in slag during copper converter slag-making period based on image recognition, Nonferrous Met. Extr. Metall., (2022), No. 4, p. 21. |
| [13] |
|
| [14] |
|
| [15] |
|
| [16] |
|
| [17] |
|
| [18] |
Y.J. Xia, H.B. Wang, and A.J. Xu, dmPINNs: An integrated data-driven and mechanism-based method for endpoint carbon prediction in BOF, Metals, 14(2024), No. 8, art. No. 926. |
| [19] |
|
| [20] |
|
| [21] |
|
| [22] |
|
| [23] |
|
| [24] |
|
| [25] |
|
| [26] |
|
| [27] |
R.T. Yang, Y. Fu, Q. Zhang, and L.N. Zhang, GCNGAT: Drug–disease association prediction based on graph convolution neural network and graph attention network, Artif. Intell. Med., 150(2024), art. No. 102805. |
| [28] |
J.L. Bian, H. Lu, G.H. Dong, and G.H. Wang, Hierarchical multimodal self-attention-based graph neural network for DTI prediction, Brief. Bioinform., 25(2024), No. 4, art. No. bbae293. |
| [29] |
J.K. Hao, J. Liu, E. Pereira, et al., Uncertainty-guided graph attention network for parapneumonic effusion diagnosis, Med. Image Anal., 75(2022), art. No. 102217. |
| [30] |
W. Lan, Y. Dong, Q.F. Chen, et al., KGANCDA: Predicting circRNA-disease associations based on knowledge graph attention network, Brief. Bioinform., 23(2022), No. 1, art. No. bbab494. |
| [31] |
W.Y. Yang, P.P. Wang, S.P. Xu, et al., Deciphering cell-cell communication at single-cell resolution for spatial transcriptomics with subgraph-based graph attention network, Nat. Commun., 15(2024), No. 1, art. No. 7101. |
| [32] |
X. Zhou, J. Yang, Y. Luo, and X. Shen, HNCGAT: A method for predicting plant metabolite-protein interaction using heterogeneous neighbor contrastive graph attention network, Brief. Bioinform., 25(2024), No. 5, art. No. bbae397. |
| [33] |
Q. Li, Y.F. Wang, J. Dong, C. Zhang, and K.X. Peng, Multinode knowledge graph assisted distributed fault detection for large-scale industrial processes based on graph attention network and bidirectional LSTMs, Neural Netw., 173(2024), art. No. 106210. |
| [34] |
M. Keicher, H. Burwinkel, D. Bani-Harouni, et al., Multimodal graph attention network for COVID-19 outcome prediction, Sci. Rep., 13(2023), No. 1, art. No. 19539. |
| [35] |
|
| [36] |
|
| [37] |
|
University of Science and Technology Beijing
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