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Stress field prediction in fiber-reinforced composite materials using a
  deep learning approach

Stress field prediction in fiber-reinforced composite materials using a deep learning approach

1 November 2021
Anindya Bhaduri
Ashwini Gupta
L. Graham‐Brady
    AI4CE
ArXivPDFHTML

Papers citing "Stress field prediction in fiber-reinforced composite materials using a deep learning approach"

14 / 14 papers shown
Title
Global Stress Generation and Spatiotemporal Super-Resolution Physics-Informed Operator under Dynamic Loading for Two-Phase Random Materials
Global Stress Generation and Spatiotemporal Super-Resolution Physics-Informed Operator under Dynamic Loading for Two-Phase Random Materials
Tengfei Xing
Xiaodan Ren
Jie Li
DiffM
34
0
0
26 Apr 2025
Predicting Stress in Two-phase Random Materials and Super-Resolution Method for Stress Images by Embedding Physical Information
Predicting Stress in Two-phase Random Materials and Super-Resolution Method for Stress Images by Embedding Physical Information
Tengfei Xing
Xiaodan Ren
Jie Li
38
1
0
26 Apr 2025
Micrometer: Micromechanics Transformer for Predicting Mechanical
  Responses of Heterogeneous Materials
Micrometer: Micromechanics Transformer for Predicting Mechanical Responses of Heterogeneous Materials
Sifan Wang
Tong-Rui Liu
Shyam Sankaran
P. Perdikaris
AI4CE
35
3
0
23 Sep 2024
A spatiotemporal deep learning framework for prediction of crack
  dynamics in heterogeneous solids: efficient mapping of concrete
  microstructures to its fracture properties
A spatiotemporal deep learning framework for prediction of crack dynamics in heterogeneous solids: efficient mapping of concrete microstructures to its fracture properties
Rasoul Najafi Koopas
Shahed Rezaei
N. Rauter
Richard Ostwald
R. Lammering
AI4CE
35
2
0
22 Jul 2024
Bayesian neural networks for predicting uncertainty in full-field
  material response
Bayesian neural networks for predicting uncertainty in full-field material response
G. Pasparakis
Lori Graham-Brady
Michael D. Shields
AI4CE
31
4
0
21 Jun 2024
A finite element-based physics-informed operator learning framework for
  spatiotemporal partial differential equations on arbitrary domains
A finite element-based physics-informed operator learning framework for spatiotemporal partial differential equations on arbitrary domains
Yusuke Yamazaki
Ali Harandi
Mayu Muramatsu
A. Viardin
Markus Apel
T. Brepols
Stefanie Reese
Shahed Rezaei
AI4CE
26
12
0
21 May 2024
Crack-Net: Prediction of Crack Propagation in Composites
Crack-Net: Prediction of Crack Propagation in Composites
Hao Xu
Wei Fan
A. Taylor
Dongxiao Zhang
Lecheng Ruan
Rundong Shi
AI4CE
12
1
0
24 Sep 2023
Challenges and opportunities for machine learning in multiscale
  computational modeling
Challenges and opportunities for machine learning in multiscale computational modeling
Phong C. H. Nguyen
Joseph B. Choi
H. Udaykumar
Stephen Seung-Yeob Baek
AI4CE
19
8
0
22 Mar 2023
Application of probabilistic modeling and automated machine learning
  framework for high-dimensional stress field
Application of probabilistic modeling and automated machine learning framework for high-dimensional stress field
Lele Luan
Nesar Ramachandra
S. Ravi
Anindya Bhaduri
Piyush Pandita
Prasanna Balaprakash
M. Anitescu
Changjie Sun
Liping Wang
AI4CE
19
0
0
15 Mar 2023
Image-based Artificial Intelligence empowered surrogate model and shape
  morpher for real-time blank shape optimisation in the hot stamping process
Image-based Artificial Intelligence empowered surrogate model and shape morpher for real-time blank shape optimisation in the hot stamping process
Hao Zhou
Nan Li
AI4CE
29
1
0
01 Dec 2022
Linking Properties to Microstructure in Liquid Metal Embedded Elastomers
  via Machine Learning
Linking Properties to Microstructure in Liquid Metal Embedded Elastomers via Machine Learning
Abhijith Anantharanga
Mohammad Saber Hashemi
A. Sheidaei
AI4CE
10
4
0
24 Jul 2022
A mixed formulation for physics-informed neural networks as a potential
  solver for engineering problems in heterogeneous domains: comparison with
  finite element method
A mixed formulation for physics-informed neural networks as a potential solver for engineering problems in heterogeneous domains: comparison with finite element method
Shahed Rezaei
Ali Harandi
Ahmad Moeineddin
Bai-Xiang Xu
Stefanie Reese
19
112
0
27 Jun 2022
Reinforcement Learning based Sequential Batch-sampling for Bayesian
  Optimal Experimental Design
Reinforcement Learning based Sequential Batch-sampling for Bayesian Optimal Experimental Design
Yonatan Ashenafi
Piyush Pandita
Sayan Ghosh
OffRL
28
6
0
21 Dec 2021
Predicting Mechanical Properties from Microstructure Images in
  Fiber-reinforced Polymers using Convolutional Neural Networks
Predicting Mechanical Properties from Microstructure Images in Fiber-reinforced Polymers using Convolutional Neural Networks
Yixuan Sun
I. Hanhan
M. Sangid
Guang Lin
AI4CE
19
14
0
07 Oct 2020
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