Exploring nonlinear strengthening in polycrystalline metallic materials by machine learning methods and heterostructure design

被引:11
|
作者
Du, Jinliang [1 ]
Li, Jie [1 ]
Feng, Yunli [1 ]
Li, Ying [2 ]
Zhang, Fucheng [1 ,3 ]
机构
[1] North China Univ Sci & Technol, Coll Met & Energy, Tangshan 063210, Peoples R China
[2] Beijing Inst Technol, Beijing Key Lab Lightweight Multifunct Composite M, Beijing 100081, Peoples R China
[3] State Key Lab Metastable Mat Sci & Technol, Qinhuangdao 066004, Peoples R China
关键词
Heterogeneity; Grain boundary; Multiscale; MICROSTRUCTURE FORMATION; MECHANICAL-PROPERTIES; TEMPERATURE; ALLOY; STEEL; DEFORMATION; BEHAVIOR;
D O I
10.1016/j.ijplas.2023.103587
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
To improve the strength and plasticity of structural materials, researchers often introduce various strengthening mechanisms such as second-phase strengthening, dislocation strengthening, and back stress strengthening (HDI). Due to the interaction of multiple mechanisms, the linear su-perposition relationship has a poor fitting effect and is only used for rough calculations of the strengthening mechanisms. In this study, the transfer learning data was used to optimize the deep learning network structure (Re-CNN) based on the residual algorithm, and the yield strength prediction physical neural informed model (PNIM) of polycrystalline metallic materials was established. To promote the industrial application of the heterostructure design method, a me-dium carbon steel heterostructure design strategy based on the existing equipment of the factory was proposed. Medium-carbon heterostructure materials (MHSM) with mixed strengthening mechanisms were successfully prepared. MHSM exhibits excellent comprehensive mechanical properties. When a linear relationship is used to describe the MHSM yield strength, there is a large error, while Re-CNN shows satisfactory prediction accuracy. The linear relationship is incom-patible with homogeneous structure materials and heterogeneous structure materials, and its universality is lower than that of nonlinear Re-CNN. Re-CNN shows high cross-scale prediction ability and can be compatible with homogeneous microstructures and heterogeneous micro-structures. Using the heterogeneity evolution characteristics of MHSM, the key factors deviating from the linear relationship were revealed. The overestimation and underestimation of the linear relation are demonstrated by Taylor factor and TEM analysis to be caused by the multiscale properties of ferrite, the behavior of the second phase particles, and the interaction of various mechanisms. This study provides a new idea for the cross-scale calculation of the mechanical properties of polycrystalline metallic materials.
引用
收藏
页数:25
相关论文
共 50 条
  • [21] Machine Learning for the Discovery, Design, and Engineering of Materials
    Duan, Chenru
    Nandy, Aditya
    Kulik, Heather J.
    ANNUAL REVIEW OF CHEMICAL AND BIOMOLECULAR ENGINEERING, 2022, 13 : 405 - 429
  • [22] Machine learning in materials design: Algorithm and application
    宋志龙
    陈曦雯
    孟繁斌
    程观剑
    王陈
    孙中体
    尹万健
    ChinesePhysicsB, 2020, 29 (11) : 68 - 96
  • [23] Rational materials design via machine learning
    Hachmann, Johannes
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2017, 253
  • [24] Adaptive machine learning for efficient materials design
    Balachandran, Prasanna V.
    MRS BULLETIN, 2020, 45 (07) : 579 - 586
  • [25] Machine learning for perovskite materials design and discovery
    Tao, Qiuling
    Xu, Pengcheng
    Li, Minjie
    Lu, Wencong
    NPJ COMPUTATIONAL MATERIALS, 2021, 7 (01)
  • [26] Machine learning for perovskite materials design and discovery
    Qiuling Tao
    Pengcheng Xu
    Minjie Li
    Wencong Lu
    npj Computational Materials, 7
  • [27] Adaptive machine learning for efficient materials design
    Prasanna V. Balachandran
    MRS Bulletin, 2020, 45 : 579 - 586
  • [28] The Role of Machine Learning in the Understanding and Design of Materials
    Moosavi, Seyed Mohamad
    Jablonka, Kevin Maik
    Smit, Berend
    JOURNAL OF THE AMERICAN CHEMICAL SOCIETY, 2020, 142 (48) : 20273 - 20287
  • [29] Big Data Creates New Opportunities for Materials Research: A Review on Methods and Applications of Machine Learning for Materials Design
    Zhou, Teng
    Song, Zhen
    Sundmacher, Kai
    ENGINEERING, 2019, 5 (06) : 1017 - 1026
  • [30] Machine Learning Algorithms for Recommending Design Methods
    Fuge, Mark
    Peters, Bud
    Agogino, Alice
    JOURNAL OF MECHANICAL DESIGN, 2014, 136 (10)