Proposing a machine learning approach to analyze and predict basic high-temperature properties of iron ore fines and its factors

被引:3
作者
Sun, Qing-ke [1 ,2 ]
Wang, Yao-zu [1 ,2 ]
Zhang, Jian-liang [3 ]
Liu, Zheng-jian [3 ]
Niu, Le-le [3 ]
Shan, Chang-dong [3 ]
Ma, Yun-fei [1 ,2 ]
机构
[1] Univ Sci & Technol Beijing, Inst Artificial Intelligence, Beijing 100083, Peoples R China
[2] Univ Sci & Technol Beijing, Sch Intelligence Sci & Technol, Beijing 100083, Peoples R China
[3] Univ Sci & Technol Beijing, Sch Met & Ecol Engn, Beijing 100083, Peoples R China
基金
中国国家自然科学基金;
关键词
Iron ore; Basic high-temperature property; Machine learning; Random forest; Genetic algorithm; SINTERING PROCESS; RANDOM FOREST; OPTIMIZATION; MODEL;
D O I
10.1007/s42243-023-01096-z
中图分类号
TF [冶金工业];
学科分类号
0806 ;
摘要
The basic high-temperature properties of iron ore play a crucial role in optimizing sintering and ore blending, but the testing process for these properties is complex and has significant lag time, which cannot meet the actual needs of ore blending. A prediction model for the basic high-temperature properties of iron ore fines was thus proposed based on a combination of machine learning algorithms and genetic algorithms. First, the prediction accuracy of different machine learning models for the basic high-temperature properties of iron ore fines was compared. Then, a random forest model optimized by genetic algorithms was built, further improving the prediction accuracy of the model. The test results show that the random forest model optimized by genetic algorithms has the highest prediction accuracy for the lowest assimilation temperature and liquid phase fluidity of iron ore, with a determination coefficient of 0.903 for the lowest assimilation temperature and 0.927 for the liquid phase fluidity after optimization. The trained model meets the fluctuation requirements of on-site testing and has been successfully applied to actual production on site.
引用
收藏
页码:1082 / 1094
页数:13
相关论文
共 33 条
  • [1] A comparison of social vulnerability indices specific to flooding in Ecuador: principal component analysis (PCA) and expert knowledge
    Bucherie, Agathe
    Hultquist, Carolynne
    Adamo, Susana
    Neely, Colleen
    Ayala, Fernanda
    Bazo, Juan
    Kruczkiewicz, Andrew
    [J]. INTERNATIONAL JOURNAL OF DISASTER RISK REDUCTION, 2022, 73
  • [2] Multi-time-scale TFe prediction for iron ore sintering process with complex time delay
    Chen, Xiaoxia
    Shi, Xuhua
    Tong, Chudong
    [J]. CONTROL ENGINEERING PRACTICE, 2019, 89 : 84 - 93
  • [3] Applications of random forest in multivariable response surface for short-term load forecasting
    Fan, Guo-Feng
    Zhang, Liu -Zhen
    Yu, Meng
    Hong, Wei-Chiang
    Dong, Song-Qiao
    [J]. INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2022, 139
  • [4] Machine Learning based quality prediction for milling processes using internal machine tool data
    Fertig, A.
    Weigold, M.
    Chen, Y.
    [J]. ADVANCES IN INDUSTRIAL AND MANUFACTURING ENGINEERING, 2022, 4
  • [5] A forecast model of the sinter tumble strength in iron ore fines sintering process
    Gao, Qiangjian
    Wang, Hui
    Pan, Xiangyang
    Jiang, Xin
    Zheng, Haiyan
    Shen, Fengman
    [J]. POWDER TECHNOLOGY, 2021, 390 : 256 - 267
  • [6] Hyperspectral SFIM-RFR Model on Predicting the Total Iron Contents of Iron Ore Powders
    Gao Wei
    Yang Ke-ming
    Li Meng-qian
    Li Yan-ru
    Han Qian-qian
    [J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2020, 40 (08) : 2546 - 2551
  • [7] Machine Learning Applications in Advanced Manufacturing Processes
    Guillen, Donna Post
    [J]. JOM, 2020, 72 (11) : 3906 - 3907
  • [8] A generalized method to predict the compressive strength of high-performance concrete by improved random forest algorithm
    Han, Qinghua
    Gui, Changqing
    Xu, Jie
    Lacidogna, Giuseppe
    [J]. CONSTRUCTION AND BUILDING MATERIALS, 2019, 226 : 734 - 742
  • [9] A Prediction Model of Blast Furnace Slag Viscosity Based on Principal Component Analysis and K-Nearest Neighbor Regression
    Jiang, Dewen
    Zhang, Jianliang
    Wang, Zhenyang
    Feng, Chenfan
    Jiao, Kexin
    Xu, Renze
    [J]. JOM, 2020, 72 (11) : 3908 - 3916
  • [10] Determination of Johnson-Cook material model parameters by an optimization approach using the fireworks algorithm
    Karkalos, Nikolaos E.
    Markopoulos, Angelos P.
    [J]. 11TH INTERNATIONAL CONFERENCE INTERDISCIPLINARITY IN ENGINEERING, INTER-ENG 2017, 2018, 22 : 107 - 113