Microstructure reconstruction of 2D/3D random materials via diffusion-based deep generative models

被引:0
|
作者
Xianrui Lyu
Xiaodan Ren
机构
[1] Tongji University,College of Civil Engineering
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Microstructure reconstruction serves as a crucial foundation for establishing process–structure–property (PSP) relationship in material design. Confronting the limitations of variational autoencoder and generative adversarial network within generative models, this study adopted the denoising diffusion probabilistic model (DDPM) to learn the probability distribution of high-dimensional raw data and successfully reconstructed the microstructures of various composite materials, such as inclusion materials, spinodal decomposition materials, chessboard materials, fractal noise materials, and so on. The quality of generated microstructure was evaluated using quantitative measures like spatial correlation functions and Fourier descriptor. On this basis, this study also achieved the regulation of microstructure randomness and the generation of gradient materials through continuous interpolation in latent space using denoising diffusion implicit model (DDIM). Furthermore, the two-dimensional microstructure reconstruction was extended to three-dimensional framework and integrated permeability as a feature encoding embedding. This enables the conditional generation of three-dimensional microstructures for random porous materials within a defined permeability range. The permeabilities of these generated microstructures were further validated through the application of the lattice Boltzmann method. The above methods provide new ideas and references for material reverse design.
引用
收藏
相关论文
共 50 条
  • [1] Microstructure reconstruction of 2D/3D random materials via diffusion-based deep generative models
    Lyu, Xianrui
    Ren, Xiaodan
    SCIENTIFIC REPORTS, 2024, 14 (01)
  • [2] Microstructure reconstruction using diffusion-based generative models
    Lee, Kang-Hyun
    Yun, Gun Jin
    MECHANICS OF ADVANCED MATERIALS AND STRUCTURES, 2024, 31 (18) : 4443 - 4461
  • [3] DiffComplete: Diffusion-based Generative 3D Shape Completion
    Chu, Ruihang
    Xie, Enze
    Mo, Shentong
    Li, Zhenguo
    Niessner, Matthias
    Fu, Chi-Wing
    Jia, Jiaya
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 36 (NEURIPS 2023), 2023,
  • [4] 3D Knee Structure Reconstruction from 2D X-rays Based on Generative Deep Learning Models
    Hwang, Siwon
    Lee, Jae-Joon
    Shin, Jitae
    2024 INTERNATIONAL TECHNICAL CONFERENCE ON CIRCUITS/SYSTEMS, COMPUTERS, AND COMMUNICATIONS, ITC-CSCC 2024, 2024,
  • [5] Diffusion-Based 3D Object Detection with Random Boxes
    Zhou, Xin
    Hou, Jinghua
    Yao, Tingting
    Liang, Dingkang
    Liu, Zhe
    Zou, Zhikang
    Ye, Xiaoqing
    Cheng, Jianwei
    Bai, Xiang
    PATTERN RECOGNITION AND COMPUTER VISION, PRCV 2023, PT II, 2024, 14426 : 28 - 40
  • [6] Reconstruction of 3D Random Media from 2D Images: Generative Adversarial Learning Approach
    Kononov, Evgeniy
    Tashkinov, Mikhail
    Silberschmidt, Vadim V.
    COMPUTER-AIDED DESIGN, 2023, 158
  • [7] Structural diffusion in 2D and 3D random flows
    Malik, NA
    ADVANCES IN TURBULENCES VI, 1996, 36 : 619 - 620
  • [8] Generative Adversarial Networks as an Advancement in 2D to 3D Reconstruction Techniques
    Dhondse, Amol
    Kulkarni, Siddhivinayak
    Khadilkar, Kunal
    Kane, Indrajeet
    Chavan, Sumit
    Barhate, Rahul
    DATA MANAGEMENT, ANALYTICS AND INNOVATION, ICDMAI 2019, VOL 2, 2020, 1016 : 343 - 364
  • [9] On Analyzing Generative and Denoising Capabilities of Diffusion-based Deep Generative Models
    Deja, Kamil
    Kuzina, Anna
    Trzcinski, Tomasz
    Tomczak, Jakub M.
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35 (NEURIPS 2022), 2022,
  • [10] Diffusion-Based 3D Bioprinting Strategies
    Cai, Betty
    Kilian, David
    Mejia, Daniel Ramos
    Rios, Ricardo J.
    Ali, Ashal
    Heilshorn, Sarah C.
    ADVANCED SCIENCE, 2024, 11 (08)