Accelerating the Discovery of New DP Steel Using Machine Learning-Based Multiscale Materials Simulations

被引:0
|
作者
Abdallah A. Chehade
Tarek M. Belgasam
Georges Ayoub
Hussein M. Zbib
机构
[1] University of Michigan-Dearborn,Department of Industrial and Manufacturing Systems Engineering
[2] Materials Research Division,Mechanical Engineering Department, Faculty of Engineering
[3] Honda R&D America,School of Mechanical and Materials Engineering
[4] Inc.,undefined
[5] University of Benghazi,undefined
[6] Washington State University,undefined
关键词
D O I
暂无
中图分类号
学科分类号
摘要
In recent years, the use of dual-phase (DP) steels by the automotive industry has been growing rapidly, motivated by government policies prompting the production of fuel-efficient vehicles. While it is of high interest for the transportation industry to design and discover different grades of DP steels exhibiting desirable mechanical properties, this requires exploring a large number of DP steel microstructure combinations. Expensive trial-and-error-based experimentations and multiscale materials simulations are two conventional approaches that have been widely adopted in the field of materials design and discovery. Yet, it is challenging to use such approaches for fast materials design and discovery when considering the computational and cost limitations, as it is computationally infeasible and intractable to use multiscale materials models to characterize the mechanical properties of millions of different microstructures. To address this major limitation in material design, a Gaussian process is developed to accelerate the discovery of the mechanical properties of different DP steels by evolving the microstructure parameters using a limited number of numerical simulations (using a multiscale materials model). A Gaussian process is a machine learning technique that is trained to find nontrivial correlations between a set of inputs (microstructure properties) to predict a desired output (mechanical property). The proposed Gaussian process not only accelerates the prediction of the desired mechanical properties of millions of multiscale materials simulations but also offers uncertainty quantification around its predictions. These merits make the Gaussian process a very reliable, robust, and practical solution for material design exploration. The proposed framework combining multiscale simulations and the Gaussian process is used to discover the microstructural design of DP steel with maximum tensile toughness. The results showed the effectiveness and robustness of the proposed method in comparison to benchmark methods.
引用
收藏
页码:3268 / 3279
页数:11
相关论文
共 50 条
  • [31] Concurrent multiscale simulations of nonlinear random materials using probabilistic learning
    Chen, Peiyi
    Guilleminot, Johann
    Soize, Christian
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2024, 422
  • [32] New Opportunity: Machine Learning for Polymer Materials Design and Discovery
    Xu, Pengcheng
    Chen, Huimin
    Li, Minjie
    Lu, Wencong
    ADVANCED THEORY AND SIMULATIONS, 2022, 5 (05)
  • [33] Co-free and low strain cathode materials for sodium-ion batteries: Machine learning-based materials discovery
    Kim, Minseon
    Yeo, Woon-Hong
    Min, Kyoungmin
    ENERGY STORAGE MATERIALS, 2024, 69
  • [34] Machine learning-based multiscale constitutive modelling: Development and to dual mass transfer
    Ashworth, Mark
    Elsheikh, Ahmed H.
    Doster, Florian
    ADVANCES IN WATER RESOURCES, 2022, 163
  • [35] Accelerating discovery of glass materials in electronic devices through topology-guided machine learning
    Huang, Ming
    Li, Yahao
    Hu, Yongxing
    Mao, Haijun
    Liu, Zhuofeng
    Li, Wei
    Wang, Fenglin
    Ye, Yicong
    Zhang, Weijun
    Chen, Xingyu
    JOURNAL OF MATERIALS CHEMISTRY A, 2025, 13 (12) : 8715 - 8725
  • [36] Machine Learning-Based Efficient Discovery of Software Vulnerability for Internet of Things
    Jeon, So-Eun
    Lee, Sun-Jin
    Lee, Il-Gu
    INTELLIGENT AUTOMATION AND SOFT COMPUTING, 2023, 37 (02): : 2407 - 2419
  • [37] Machine learning-based discovery of molecules, crystals, and composites: A perspective review
    Lee, Sangwon
    Byun, Haeun
    Cheon, Mujin
    Kim, Jihan
    Lee, Jay Hyung
    KOREAN JOURNAL OF CHEMICAL ENGINEERING, 2021, 38 (10) : 1971 - 1982
  • [38] A Machine Learning-Based Model for Epidemic Forecasting and Faster Drug Discovery
    Stergiou, Konstantinos D.
    Minopoulos, Georgios M.
    Memos, Vasileios A.
    Stergiou, Christos L.
    Koidou, Maria P.
    Psannis, Konstantinos E.
    APPLIED SCIENCES-BASEL, 2022, 12 (21):
  • [39] Machine learning-based discovery of molecules, crystals, and composites: A perspective review
    Sangwon Lee
    Haeun Byun
    Mujin Cheon
    Jihan Kim
    Jay Hyung Lee
    Korean Journal of Chemical Engineering, 2021, 38 : 1971 - 1982
  • [40] Registries in Machine Learning-Based Drug Discovery: A Shortcut to Code Reuse
    Hartog, Peter B. R.
    Svensson, Emma
    Mervin, Lewis
    Genheden, Samuel
    Engkvist, Ola
    Tetko, Igor V.
    AI IN DRUG DISCOVERY, AIDD 2024, 2025, 14894 : 98 - 115