Physics-informed machine learning and mechanistic modeling of additive manufacturing to reduce defects

被引:87
|
作者
Du, Y. [1 ]
Mukherjee, T. [1 ]
DebRoy, T. [1 ]
机构
[1] Penn State Univ, Dept Mat Sci & Engn, University Pk, PA 16802 USA
关键词
3D printing; Powder bed fusion; Heat transfer and fluid flow; Genetic algorithm; Feature importance; Defects; POWDER-BED FUSION; STAINLESS-STEEL; HUMPING PHENOMENON; SURFACE-ROUGHNESS; FLUID-FLOW; HEAT; SPATTER; NICKEL;
D O I
10.1016/j.apmt.2021.101123
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
In the past few decades, additive manufacturing has evolved for the one-step fabrication of various com-plex, customized metallic components that cannot be easily and economically produced by other means. However, widespread applications and market penetration of such components are often hindered by the formation of common defects that affect part quality, reliability, and serviceability, and increase the cost. Here, for the first time, we show that a combination of physics-informed machine learning, mechanistic modeling, and experimental data can reduce the occurrence of common defects in additive manufactur-ing. By analyzing experimental data on the defect formation for commonly used alloys available in the disjointed, peer-reviewed literature, we identify several important variables that reveal the physics be -hind the defect formation. Values of those variables computed using a mechanistic model, when used in a physics-informed machine learning, provide the hierarchical importance of the variables on defect formation. In addition, based on the results of the physics-informed machine learning, we provide easy-to-use, verifiable, quantitative formalism that can be used in real-time to predict defects before experi-ments. The proposed methodology can help in reducing common defects such as balling, cracking, lack of fusion, porosity, and surface roughness, and solve other complex engineering problems beyond additive manufacturing. (c) 2021 Elsevier Ltd. All rights reserved.
引用
收藏
页数:12
相关论文
共 50 条
  • [21] Separable physics-informed DeepONet: Breaking the curse of dimensionality in physics-informed machine learning
    Mandl, Luis
    Goswami, Somdatta
    Lambers, Lena
    Ricken, Tim
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2025, 434
  • [22] Physics-informed machine-learning for modeling aero-optics
    Kutz, J. Nathan
    Sashidhar, Diya
    Sahba, Shervin
    Brunton, Steven L.
    McDaniel, Austin
    Wilcox, Christopher C.
    APPLIED OPTICAL METROLOGY IV, 2021, 11817
  • [23] Application of physics-informed machine learning for excavator working resistance modeling
    Li, Shijiang
    Wang, Shaojie
    Chen, Xiu
    Zhou, Gongxi
    Wu, Binyun
    Hou, Liang
    MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2024, 209
  • [24] The Application of Physics-Informed Machine Learning in Multiphysics Modeling in Chemical Engineering
    Wu, Zhiyong
    Wang, Huan
    He, Chang
    Zhang, Bingjian
    Xu, Tao
    Chen, Qinglin
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2023, 62 (44) : 18178 - 18204
  • [25] Physics-Informed Machine Learning for Surrogate Modeling of Heat Transfer Phenomena
    Suzuki, Tomoyuki
    Hirohata, Kenji
    Ito, Yasutaka
    Hato, Takehiro
    Kano, Akira
    JOURNAL OF COMPUTATIONAL AND NONLINEAR DYNAMICS, 2023, 18 (11):
  • [26] Novel Anchor Discrimination Learning for Physics-Informed Machine Degradation Modeling
    Yan, Tongtong
    Wang, Dong
    Xia, Tangbin
    Xi, Lifeng
    IEEE TRANSACTIONS ON RELIABILITY, 2024, 73 (01) : 357 - 369
  • [27] Intelligent modeling with physics-informed machine learning for petroleum engineering problems
    Xie, Chiyu
    Du, Shuyi
    Wang, Jiulong
    Lao, Junming
    Song, Hongqing
    ADVANCES IN GEO-ENERGY RESEARCH, 2023, 8 (02): : 71 - 75
  • [28] A Taxonomic Survey of Physics-Informed Machine Learning
    Pateras, Joseph
    Rana, Pratip
    Ghosh, Preetam
    APPLIED SCIENCES-BASEL, 2023, 13 (12):
  • [29] Numerical analysis of physics-informed neural networks and related models in physics-informed machine learning
    De Ryck, Tim
    Mishra, Siddhartha
    ACTA NUMERICA, 2024, 33 : 633 - 713
  • [30] Physics-Informed Machine Learning for the Efficient Modeling of High-Frequency Devices
    Liu, Yanan
    Li, Hongliang
    Jin, Jian-Ming
    IEEE JOURNAL ON MULTISCALE AND MULTIPHYSICS COMPUTATIONAL TECHNIQUES, 2025, 10 : 28 - 37