Prediction of Hardenability Curves for Non-Boron Steels via a Combined Machine Learning Model

被引:7
|
作者
Geng, Xiaoxiao [1 ]
Wang, Shuize [1 ]
Ullah, Asad [2 ]
Wu, Guilin [1 ,3 ]
Wang, Hao [4 ]
机构
[1] Univ Sci & Technol Beijing, Beijing Adv Innovat Ctr Mat Genome Engn, Beijing 100083, Peoples R China
[2] Karakoram Int Univ, Dept Math Sci, Gilgit 15100, Pakistan
[3] Yangjiang Adv Alloys Lab, Guangdong Lab Mat Sci & Technol, Yangjiang Branch, Yangjiang 529500, Peoples R China
[4] Univ Sci & Technol Beijing, Sch Mat Sci & Engn, Beijing 100083, Peoples R China
基金
中国国家自然科学基金;
关键词
hardenability; machine learning; JMatPro; empirical formulas; CHEMICAL-COMPOSITION; CLASSIFICATION; ALGORITHM;
D O I
10.3390/ma15093127
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Hardenability is one of the most basic criteria influencing the formulation of the heat treatment process and steel selection. Therefore, it is of great engineering value to calculate the hardenability curves rapidly and accurately without resorting to any laborious and costly experiments. However, generating a high-precision computational model for steels with different hardenability remains a challenge. In this study, a combined machine learning (CML) model including k-nearest neighbor and random forest is established to predict the hardenability curves of non-boron steels solely on the basis of chemical compositions: (i) random forest is first applied to classify steel into low- and high-hardenability steel; (ii) k-nearest neighbor and random forest models are then developed to predict the hardenability of low- and high-hardenability steel. Model validation is carried out by calculating and comparing the hardenability curves of five steels using different models. The results reveal that the CML model works well for its distinguished prediction performance with precise classification accuracy (100%), high correlation coefficient (>= 0.981), and low mean absolute errors (<= 3.6 HRC) and root-mean-square errors (<= 3.9 HRC); it performs better than JMatPro and empirical formulas including the ideal critical diameter method and modified nonlinear equation. Therefore, this study demonstrates that the CML model combining material informatics and data-driven machine learning can rapidly and efficiently predict the hardenability curves of non-boron steel, with high prediction accuracy and a wide application range. It can guide process design and machine part selection, reducing the cost of trial and error and accelerating the development of new materials.
引用
收藏
页数:14
相关论文
共 50 条
  • [31] Machine Learning Classifier Model for Prediction of COVID-19
    Adhikari, Jhimli
    INTERNATIONAL JOURNAL OF NEXT-GENERATION COMPUTING, 2021, 12 (01): : 12 - 21
  • [32] Prediction of hardness or yield strength for ODS steels based on machine learning
    Yang, Tian-Xing
    Dou, Peng
    MATERIALS CHARACTERIZATION, 2024, 211
  • [33] Prediction of creep rupture life of ODS steels based on machine learning
    Yang, Tian-Xing
    Dou, Peng
    MATERIALS TODAY COMMUNICATIONS, 2024, 38
  • [34] Machine learning-based fatigue lifetime prediction of structural steels
    Arvanitis, Konstantinos
    Nikolakopoulos, Pantelis
    Pavlou, Dimitrios
    Farmanbar, Mina
    ALEXANDRIA ENGINEERING JOURNAL, 2025, 125 : 55 - 66
  • [35] Machine learning for ULCF life prediction of structural steels with synthetic data
    Yu, Mingming
    Li, Shuailing
    Xie, Xu
    JOURNAL OF CONSTRUCTIONAL STEEL RESEARCH, 2025, 224
  • [36] A hybrid machine learning strategy for pitting probability prediction of stainless steels
    Qu, Zhihao
    Cheng, Kexin
    Jiang, Xue
    Wang, Zhu
    Su, Yanjing
    Zhang, Lei
    MATERIALS TODAY COMMUNICATIONS, 2024, 40
  • [37] Machine learning approach for prediction of hydrogen environment embrittlement in austenitic steels
    Kim, Sang-Gyu
    Shin, Seung-Hyeok
    Hwang, Byoungchul
    JOURNAL OF MATERIALS RESEARCH AND TECHNOLOGY-JMR&T, 2022, 19 : 2794 - 2798
  • [38] A Machine Learning Approach for Modelling Cold-Rolling Curves for Various Stainless Steels
    Contreras-Fortes, Julia
    Rodriguez-Garcia, M. Inmaculada
    Sales, David L.
    Sanchez-Miranda, Rocio
    Almagro, Juan F.
    Turias, Ignacio
    MATERIALS, 2024, 17 (01)
  • [39] Approximate model predictive building control via machine learning
    Drgona, Jan
    Picard, Damien
    Kvasnica, Michal
    Helsen, Lieve
    APPLIED ENERGY, 2018, 218 : 199 - 216
  • [40] A Machine Learning Model for Prediction of Marine Icing
    Deshpande, Sujay
    JOURNAL OF OFFSHORE MECHANICS AND ARCTIC ENGINEERING-TRANSACTIONS OF THE ASME, 2024, 146 (06):