Prediction of hot metal temperature based on data mining

Author:

Jun Zhao1,Xin Li2,Song Liu3,Kun Wang2,Qing Lyu2,Erhao Liu4

Affiliation:

1. College of Metallurgy, Northeastern University , Shenyang 110004 , China

2. College of Metallurgy and Energy, North China University of Science and Technology , Tangshan 063009 , China

3. Department of Computer Science and Technology, Tangshan College , Tangshan 063000 , China

4. Technical Centre, Chengde Iron and Steel Group Co., Ltd. , Chengde 067000 , China

Abstract

Abstract Accurately and continuously monitoring the hot metal temperature status of the blast furnace (BF) is a challenging job. To solve this problem, we propose a hot metal temperature prediction model based on the AdaBoost integrated algorithm using the real production data of the BF. We cleaned the raw data using the data analysis technology combined with metallurgical process theory, which mainly included data integration, outliers elimination, and missing value supplement. The redundant features were removed based on Pearson’s thermodynamic diagram analysis, and the input parameters of the model were preliminarily determined by using recursive feature elimination method. We built the hot metal temperature prediction model using the AdaBoost ensemble algorithm on a dataset with selected features as well as derived features by using K-mean clustering tags. The results show that the performance of the hot metal temperature prediction model with K-means clustering tags has been further improved, and the accurate monitoring and forecast of molten iron temperature has been achieved. The model can achieve an accuracy of more than 90% with an error of ±5°C.

Publisher

Walter de Gruyter GmbH

Subject

Physical and Theoretical Chemistry,Mechanics of Materials,Condensed Matter Physics,General Materials Science

Reference28 articles.

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2. Fan, X. H., Mathematical models and expert systems of iron ore agglomeration, Science Press, Beijing, 2013, 8 (in Chinese).

3. Li, A. L., Y. M. Zhao, and G. M. Cui. Prediction model of blast furnace temperature based on ELM with grey correlation analysis. Journal of Iron and Steel Research, Vol. 27, 2015, id. 33 (in Chinese).

4. Cui, G. M., T. Sun, and Y. Zhang. Forecast of blast furnace hot metal temperaturebased on least support vector machine. Computer Simulation, Vol. 30, 2013, id. 354 (in Chinese).

5. Yan, C., Hot metal temperature forecast research based onquantum genetic neural networkp, Northeastern University, Shenyang City, China, 2014 (in Chinese).

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