A review on physics-informed machine learning for process-structure-property modeling in additive manufacturing

被引:1
|
作者
Faegh, Meysam [1 ]
Ghungrad, Suyog [1 ]
Oliveira, Joao Pedro [2 ]
Rao, Prahalada [3 ]
Haghighi, Azadeh [1 ]
机构
[1] Univ Illinois, Dept Mech & Ind Engn, Chicago, IL 60607 USA
[2] Univ NOVA Lisboa, NOVA Sch Sci & Technol, Dept Mat Sci, CENIMAT I3N, P-2829516 Caparica, Portugal
[3] Virginia Tech, Grad Dept Ind & Syst Engn, Blacksburg, VA USA
基金
美国国家科学基金会;
关键词
Additive manufacturing; Physics-informed machine learning; Process-structure-property relationships; Physics-based feature engineering; Physics-based architecture; Physics-based loss function; LASER METAL-DEPOSITION; MELT POOL; POROSITY PREDICTION; NEURAL-NETWORK; SIMULATION; CHALLENGES; STRATEGIES; FRAMEWORK;
D O I
10.1016/j.jmapro.2024.11.066
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
This article presents a state-of-the-art review of the emerging field of physics-informed machine learning (PIML) models in additive manufacturing for process-structure-property modeling. Additive manufacturing processes hold immense potential for fabricating intricate and complex geometries across diverse applications and material classes. From a quality assurance standpoint, appropriate modeling of process-structure-property relationships of additive manufacturing processes using either physics-based or machine learning (ML)-based approaches has been a topic of intensive research. As an example, ML of data acquired from in-situ sensors is related to flaw formation, e.g., porosity, cracking, or deformation. In recent years, the computational burden of pure physicsbased models, the large data set requirement, and their black-box nature, i.e., the lack of interpretability of ML models, have prompted researchers to turn to PIML models. In PIML models, physical insights of the additive manufacturing process gained from various means are integrated with ML models, resulting in a more robust and interpretable framework for both process and microstructure evolution. A key delineator is the source of physical knowledge to be fused into PIML models, which can be obtained either from governing physical equations, datacentric feature extraction without implementing any physical equations, or a hybrid of the two foregoing. Within this review, we stratify PIML models based on the method used for the fusion of physical knowledge to ML models, into three categories, namely: (i) physics-based feature engineering, (ii) physics-based architecture shaping of ML models, and (iii) physics-based modification of the loss function of the ML models. For each of these categories, we further delineate the source of physical knowledge, ML models, integration approach, and data-set requirement, among others. A comparative analysis of the reviewed studies is presented and critically discussed, while the potential research gaps, along with future research directions on developing PIML models for different AM technologies are outlined.
引用
收藏
页码:524 / 555
页数:32
相关论文
共 50 条
  • [31] Physics-Informed Machine Learning for Modeling and Control of Dynamical Systems
    Nghiem, Truong X.
    Drgona, Jan
    Jones, Colin
    Nagy, Zoltan
    Schwan, Roland
    Dey, Biswadip
    Chakrabarty, Ankush
    Di Cairano, Stefano
    Paulson, Joel A.
    Carron, Andrea
    Zeilinger, Melanie N.
    Cortez, Wenceslao Shaw
    Vrabie, Draguna L.
    2023 AMERICAN CONTROL CONFERENCE, ACC, 2023, : 3735 - 3750
  • [32] Physics-informed machine learning for composition - process - property design: Shape memory alloy demonstration
    Liu, Sen
    Kappes, Branden B.
    Amin-ahmadi, Behnam
    Benafan, Othmane
    Zhang, Xiaoli
    Stebner, Aaron P.
    APPLIED MATERIALS TODAY, 2021, 22
  • [33] Review of Process-Structure-Property Relationships in Metals Fabricated Using Binder Jet Additive Manufacturing
    Huang, Nancy
    Cook, Olivia J.
    Arguelles, Andrea P.
    Beese, Allison M.
    METALLOGRAPHY MICROSTRUCTURE AND ANALYSIS, 2023, 12 (06) : 883 - 905
  • [34] The use of machine learning in process–structure–property modeling for material extrusion additive manufacturing: a state-of-the-art review
    Ziadia Abdelhamid
    Habibi Mohamed
    Sousso Kelouwani
    Journal of the Brazilian Society of Mechanical Sciences and Engineering, 2024, 46
  • [35] Predictions of Additive Manufacturing Process Parameters and Molten Pool Dimensions with a Physics-Informed Deep Learning Model
    Zhao, Mingzhi
    Wei, Huiliang
    Mao, Yiming
    Zhang, Changdong
    Liu, Tingting
    Liao, Wenhe
    ENGINEERING, 2023, 23 : 181 - 195
  • [36] A defect-based physics-informed machine learning framework for fatigue finite life prediction in additive manufacturing
    Salvati, Enrico
    Tognan, Alessandro
    Laurenti, Luca
    Pelegatti, Marco
    De Bona, Francesco
    MATERIALS & DESIGN, 2022, 222
  • [37] 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
  • [38] Additive manufacturing: A machine learning model of process-structure-property linkages for machining behavior of Ti-6Al-4V
    Gong, Xi
    Zeng, Dongrui
    Groeneveld-Meijer, Willem
    Manogharan, Guha
    MATERIALS SCIENCE IN ADDITIVE MANUFACTURING, 2022, 1 (01):
  • [39] 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
  • [40] 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