Constitutive modeling of heterogeneous materials by interpretable neural networks: A review

被引:0
|
作者
Bilotta, Antonio [1 ]
Turco, Emilio [2 ]
机构
[1] Department of Informatics, Modelling, Electronics and System Engineering (DIMES), University of Calabria, Via P. Bucci, Cubo 42/C, CS, Rende,87036, Italy
[2] Department of Architecture, Design and Urban Planning (DADU), University of Sassari, Palazzo del Pou Salit, Piazza Duomo 6, SS, Alghero,07041, Italy
关键词
Adversarial machine learning - Generative adversarial networks - Neural network models;
D O I
10.3934/nhm.2025012
中图分类号
学科分类号
摘要
Is it possible to interpret the modeling decisions made by a neural network trained to simulate the constitutive behavior of simple or complex materials? The problem of the interpretability of a neural network is a crucial aspect that has been studied since the first appearance of this type of modeling tool and it is certainly not specific to applications related to constitutive modeling of heterogeneous materials. All areas of application, such as computer vision, biomedicine, and speech, suffer from this fuzziness, and for this reason, neural networks are often referred to as black-box models. The present work highlighted the efforts dedicated to this aspect in the constitutive modeling of the behavior of path independent materials, reviewing both more standard neural networks and those adopting, more or less strongly, the specific point of view of interpretability. © 2025 the Author(s), licensee AIMS Press.
引用
收藏
页码:232 / 253
相关论文
共 50 条
  • [1] A review of artificial neural networks in the constitutive modeling of composite materials
    Liu, Xin
    Tian, Su
    Tao, Fei
    Yu, Wenbin
    COMPOSITES PART B-ENGINEERING, 2021, 224
  • [2] Interpretable Graph Neural Networks for Heterogeneous Tabular Data
    Alkhatib, Amr
    Bostrom, Henrik
    DISCOVERY SCIENCE, DS 2024, PT I, 2025, 15243 : 310 - 324
  • [3] Equilibrium-based convolution neural networks for constitutive modeling of hyperelastic materials
    Li, L. F.
    Chen, C. Q.
    JOURNAL OF THE MECHANICS AND PHYSICS OF SOLIDS, 2022, 164
  • [4] Efficient multiscale modeling of heterogeneous materials using deep neural networks
    Fadi Aldakheel
    Elsayed S. Elsayed
    Tarek I. Zohdi
    Peter Wriggers
    Computational Mechanics, 2023, 72 : 155 - 171
  • [5] Efficient multiscale modeling of heterogeneous materials using deep neural networks
    Aldakheel, Fadi
    Elsayed, Elsayed S. S.
    Zohdi, Tarek I. I.
    Wriggers, Peter
    COMPUTATIONAL MECHANICS, 2023, 72 (01) : 155 - 171
  • [6] ???????Review: Inelastic Constitutive Modeling: Polycrystalline Materials
    Baig, Mirza
    Owusu-Danquah, Josiah
    Campbell, Anne A.
    Duffy, Stephen F.
    MATERIALS, 2023, 16 (09)
  • [7] Microvoiding and constitutive damage modeling with artificial neural networks
    Li, Ning
    Chew, Huck Beng
    INTERNATIONAL JOURNAL OF SOLIDS AND STRUCTURES, 2025, 306
  • [8] Modeling heterogeneous data sets with neural networks
    Belanche Munoz, Lluis A.
    INNOVATIONS IN HYBRID INTELLIGENT SYSTEMS, 2007, 44 : 96 - +
  • [9] Graph neural networks for an accurate and interpretable prediction of the properties of polycrystalline materials
    Minyi Dai
    Mehmet F. Demirel
    Yingyu Liang
    Jia-Mian Hu
    npj Computational Materials, 7
  • [10] Interpretable Performance Models for Energetic Materials using Parsimonious Neural Networks
    Appleton, Robert J.
    Salek, Peter
    Casey, Alex D.
    Barnes, Brian C.
    Son, Steven F.
    Strachan, Alejandro
    JOURNAL OF PHYSICAL CHEMISTRY A, 2024, 128 (06): : 1142 - 1153