Data-driven modelling of the multiaxial yield behaviour of nanoporous metals

被引:8
|
作者
Dyckhoff, Lena [1 ]
Huber, Norbert [1 ,2 ]
机构
[1] Helmholtz Zentrum Hereon, Inst Mat Mech, Max Planck Str 1, D-21502 Geesthacht, Germany
[2] Hamburg Univ Technol, Inst Mat Phys & Technol, Eissendorfer Str 42, D-21073 Hamburg, Germany
关键词
Yield condition; Anisotropic material; Porous material; Finite elements; Machine learning; OPEN-CELL FOAMS; MECHANICAL RESPONSE; SCALING LAWS; GOLD; STRENGTH; SURFACE; STRESS;
D O I
10.1016/j.ijmecsci.2023.108601
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
Nanoporous metals, built out of complex ligament networks, can be produced with an additional level of hierarchy. The resulting complexity of the structure makes modelling of the mechanical behaviour computationally expensive and time consuming. In addition, multiaxial stresses occur in the higher hierarchy ligaments. Therefore, knowledge of the multiaxial material behaviour, including the 6D yield surface, is required. Surrogate models, predicting the mechanical behaviour of the lower level of hierarchy, represented by finite element beam models, are a promising approach to overcome such challenges, when existing analytical models are not able to describe the material behaviour. Therefore, as a first step, we studied the elastic behaviour and the yield surfaces of representative volume elements with idealised diamond and Kelvin structure in finite element simulations. The yield surfaces showed pronounced anisotropy and could not be described by the Deshpande-Fleck model for isotropic solid foams. Instead, we used data-driven and hybrid artificial neural networks, as well as data-driven support vector machines and compared them regarding their potential for the prediction of yield surfaces. All considered methods were well suited and resulted in relative errors < 4.5 %. Support vector machines showed the best generalisation and accuracy in 6D stress space and are suitable for extrapolation outside the range of training data.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Data-Driven Modelling: Concepts, Approaches and Experiences
    Solomatine, D.
    See, L. M.
    Abrahart, R. J.
    PRACTICAL HYDROINFORMATICS: COMPUTATIONAL INTELLIGENCE AND TECHNOLOGICAL DEVELOPMENTS IN WATER APPLICATIONS, 2008, 68 : 17 - +
  • [32] Multi-fidelity data-driven modelling of rate-dependent behaviour of soft clays
    He, Geng-Fu
    Zhang, Pin
    Yin, Zhen-Yu
    Jin, Yin-Fu
    Yang, Yi
    GEORISK-ASSESSMENT AND MANAGEMENT OF RISK FOR ENGINEERED SYSTEMS AND GEOHAZARDS, 2023, 17 (01) : 64 - 76
  • [33] A novel framework based on a data-driven approach for modelling the behaviour of organisms in chemical plume tracing
    Okajima, Kei
    Shigaki, Shunsuke
    Suko, Takanobu
    Duc-Nhat Luong
    Reyes, Cesar Hernandez
    Hattori, Yuya
    Sanada, Kazushi
    Kurabayashi, Daisuke
    JOURNAL OF THE ROYAL SOCIETY INTERFACE, 2021, 18 (181)
  • [34] Data-driven and physics-based modelling of process behaviour and deposit geometry for friction surfacing
    Bock, Frederic E.
    Kallien, Zina
    Huber, Norbert
    Klusemann, Benjamin
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2024, 418
  • [35] Modelling of the multiaxial elasto-plastic behaviour of porous metals with internal gas pressure
    Oechsner, Andreas
    Mishuris, Gennady
    FINITE ELEMENTS IN ANALYSIS AND DESIGN, 2009, 45 (02) : 104 - 112
  • [36] Generalizing multiaxial vibration fatigue criteria in the frequency domain: A data-driven approach
    Pei, Xianjun
    Cao, Yuda
    Gu, Tang
    Xie, Mingjiang
    Dong, Pingsha
    Wei, Zhigang
    Mei, Jifa
    Zhang, Tairui
    INTERNATIONAL JOURNAL OF FATIGUE, 2024, 186
  • [37] A strategy to formulate data-driven constitutive models from random multiaxial experiments
    Burcu Tasdemir
    Antonio Pellegrino
    Vito Tagarielli
    Scientific Reports, 12 (1)
  • [38] Interpretable data-driven constitutive modelling of soils with sparse data
    Zhang, Pin
    Yin, Zhen-Yu
    Sheil, Brian
    COMPUTERS AND GEOTECHNICS, 2023, 160
  • [39] A Data-driven Fuzzy Modelling Framework for the Classification of Imbalanced Data
    Rubio-Solis, Adrian
    Panoutsos, George
    Thornton, Steve
    2016 IEEE 8TH INTERNATIONAL CONFERENCE ON INTELLIGENT SYSTEMS (IS), 2016, : 302 - 307
  • [40] Data Mining and Data-Driven Modelling in Engineering Geology Applications
    Doglioni, Angelo
    Galeandro, Annalisa
    Simeone, Vincenzo
    ENGINEERING GEOLOGY FOR SOCIETY AND TERRITORY, VOL 5: URBAN GEOLOGY, SUSTAINABLE PLANNING AND LANDSCAPE EXPLOITATION, 2015, : 647 - 650