Prediction model of mechanical properties of hot-rolled strip based on improved feature selection method

被引:0
|
作者
Gao, Zhi-wei [1 ]
Cao, Guang-ming [1 ]
Wu, Si-wei [1 ]
Luo, Deng [2 ]
Wang, Hou-xin [3 ]
Liu, Zhen-yu [1 ]
机构
[1] Northeastern Univ, State Key Lab Rolling & Automat, Shenyang 110819, Liaoning, Peoples R China
[2] Hunan Hualing Xiangtan Iron & Steel Co Ltd, Xiangtan 411101, Hunan, Peoples R China
[3] CIT Met Co Ltd, Beijing 100004, Peoples R China
基金
中国国家自然科学基金;
关键词
Feature selection; Data-driven model; Hot-rolled microalloyed steel; Mechanical property; Machine learning; GENETIC ALGORITHM; MICROALLOYED STEEL; PRECIPITATION; OPTIMIZATION; REGRESSION; MICROSTRUCTURE; PERFORMANCE; NETWORK; LIFE;
D O I
10.1007/s42243-024-01254-x
中图分类号
TF [冶金工业];
学科分类号
0806 ;
摘要
Selecting proper descriptors (also known feature selection, FS) is key in the process of establishing mechanical properties prediction model of hot-rolled microalloyed steels by using machine learning (ML) algorithm. FS methods based on data-driving can reduce the redundancy of data features and improve the prediction accuracy of mechanical properties. Based on the collected data of hot-rolled microalloyed steels, the association rules are used to mine the correlation information between the data. High-quality feature subsets are selected by the proposed FS method (FS method based on genetic algorithm embedding, GAMIC). Compared with the common FS method, it is shown on dataset that GAMIC selects feature subsets more appropriately. Six different ML algorithms are trained and tested for mechanical properties prediction. The result shows that the root-mean-square error of yield strength, tensile strength and elongation based on limit gradient enhancement (XGBoost) algorithm is 21.95 MPa, 20.85 MPa and 1.96%, the correlation coefficient (R2) is 0.969, 0.968 and 0.830, and the mean absolute error is 16.84 MPa, 15.83 MPa and 1.48%, respectively, showing the best prediction performance. Finally, SHapley Additive exPlanation is used to further explore the influence of feature variables on mechanical properties. GAMIC feature selection method proposed is universal, which provides a basis for the development of high-precision mechanical property prediction model.
引用
收藏
页数:14
相关论文
共 50 条
  • [21] INFLUENCE OF THE CONTROLLED COOLING OF A HOT-ROLLED STRIP ON ITS MECHANICAL PROPERTIES.
    Wang, Shengjuan
    Xie, Baorong
    Kang T'ieh/Iron and Steel (Peking), 1983, 18 (11): : 46 - 53
  • [22] Concave Cooling Control Method for Hot-rolled Strip
    Qiu Chunlin Gao Xiuhua Qi Kemin Wen Jinglin Northeastern University Shenyang China
    稀有金属材料与工程, 2011, 40(S3) (S3) : 266 - 268
  • [23] Concave Cooling Control Method for Hot-rolled Strip
    Qiu Chunlin
    稀有金属材料与工程, 2011, 40 (S3) : 266 - 268
  • [24] Concave Cooling Control Method for Hot-rolled Strip
    Qiu Chunlin
    Gao Xiuhua
    Qi Kemin
    Wen Jinglin
    RARE METAL MATERIALS AND ENGINEERING, 2011, 40 : 266 - 268
  • [25] Online thickness prediction of hot-rolled strip based on ISSA-OSELM
    Xiao, Sizhu
    Zhang, Fei
    Huang, Xuezhong
    International Journal on Interactive Design and Manufacturing, 2022, 16 (03) : 1089 - 1098
  • [26] Online thickness prediction of hot-rolled strip based on ISSA-OSELM
    Sizhu Xiao
    Fei Zhang
    Xuezhong Huang
    International Journal on Interactive Design and Manufacturing (IJIDeM), 2022, 16 : 1089 - 1098
  • [27] Online thickness prediction of hot-rolled strip based on ISSA-OSELM
    Xiao, Sizhu
    Zhang, Fei
    Huang, Xuezhong
    INTERNATIONAL JOURNAL OF INTERACTIVE DESIGN AND MANUFACTURING - IJIDEM, 2022, 16 (03): : 1089 - 1098
  • [28] Neural network model of the profile of hot-rolled strip
    Sikdar, Sudipta
    Kumari, Sabita
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2009, 42 (5-6): : 450 - 462
  • [29] Neural network model of the profile of hot-rolled strip
    Sudipta Sikdar
    Sabita Kumari
    The International Journal of Advanced Manufacturing Technology, 2009, 42 : 450 - 462
  • [30] Prediction of head thickness of hot-rolled strip based on deep neural network
    Yuan, Shangbin
    Sun, Jie
    Di, Hongshuang
    2022 34TH CHINESE CONTROL AND DECISION CONFERENCE, CCDC, 2022, : 646 - 653