Design of Novel Auxetic Bi-Materials Using Convolutional Neural Networks

被引:0
作者
Coropetchi, Iulian Constantin [1 ,2 ]
Constantinescu, Dan Mihai [1 ,3 ]
Vasile, Alexandru [1 ,2 ]
Indres, Andrei Ioan [1 ,2 ]
Sorohan, Stefan [2 ]
机构
[1] Natl Univ Sci & Technol POLITEHN Bucharest, Dept Strength Mat, Splaiul Independetei 313, Bucharest 060042, Romania
[2] Mil Tech Acad Ferdinand I, Fac Aircraft & Mil Vehicles, George Cosbuc Blvd 39-49, Bucharest 050141, Romania
[3] Romanian Acad, Inst Solid Mech, Str Constantin Mille 15, Bucharest 010141, Romania
关键词
convolutional neural networks; bi-material microstructures; auxetic materials; deep learning; microstructure optimization; greedy algorithm; OPTIMIZATION; HOMOGENIZATION;
D O I
10.3390/ma18081772
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
A convolutional neural network (CNN) was developed to predict the Poisson's ratio of representative volume elements (RVEs) composed of a bi-material system with soft and hard phases. The CNN was trained on a dataset of binary microstructure configurations, learning to approximate the effective Poisson's ratio based on spatial material distribution. Once trained, the network was integrated into a greedy optimization algorithm to identify microstructures with auxetic behavior. The algorithm iteratively modified material arrangements, leveraging the CNN's rapid inference to explore and refine configurations efficiently. The results demonstrate the feasibility of using deep learning for microstructure evaluation and optimization, offering a computationally efficient alternative to traditional finite element simulations. This approach provides a promising tool for the design of advanced metamaterials with tailored mechanical properties.
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页数:21
相关论文
共 47 条
  • [1] Discovering chiral auxetic structures with near-zero Poisson's ratio using an active learning strategy
    Afdal
    Jirousek, Ondrej
    Falta, Jan
    Dwianto, Yohanes Bimo
    Palar, Pramudita Satria
    [J]. MATERIALS & DESIGN, 2024, 244
  • [2] BASF, Ultrafuse TPU 85A Technical Data Sheet 2022 1 4
  • [3] Bendse M.P., 2004, Topology Optimization. Theory, Methods, and Applications
  • [4] Chollet F., 2017, Deep Learning with Python, V1st
  • [5] Exploring VAE-driven implicit parametric unit cells for multiscale topology optimization
    Chu, Chenchen
    Leichner, Alexander
    Wenz, Franziska
    Andrae, Heiko
    [J]. MATERIALS & DESIGN, 2024, 244
  • [6] Comparative analysis of direct search methods for material design optimization
    Coropechi, I. C.
    Constantinescu, D. M.
    Vasile, A.
    Sorohan, St
    Apostol, D. A.
    [J]. PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART L-JOURNAL OF MATERIALS-DESIGN AND APPLICATIONS, 2025, 239 (04) : 642 - 660
  • [7] Stiffness Optimization Through a Modified Greedy Algorithm
    Coropetchi, Iulian Constantin
    Vasile, Alexandru
    Sorohan, Stefan
    Picu, Catalin Radu
    Constantinescu, Dan Mihai
    [J]. 4TH INTERNATIONAL CONFERENCE ON STRUCTURAL INTEGRITY (ICSI 2021), 2022, 37 : 755 - 762
  • [8] Nonlinear bending of sandwich plates with deep learning inverse-designed 3D auxetic lattice core
    Fang, Xi
    Shen, Hui-Shen
    Wang, Hai
    [J]. AEROSPACE SCIENCE AND TECHNOLOGY, 2025, 161
  • [9] Three-point bending behaviors of sandwich beams with data-driven 3D auxetic lattice core based on deep learning
    Fang, Xi
    Shen, Hui-Shen
    Wang, Hai
    [J]. COMPOSITE STRUCTURES, 2025, 354
  • [10] Optimum stacking sequence design of composite materials Part II: Variable stiffness design
    Ghiasi, Hossein
    Fayazbakhsh, Kazem
    Pasini, Damiano
    Lessard, Larry
    [J]. COMPOSITE STRUCTURES, 2010, 93 (01) : 1 - 13