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Difference-Based Deep Learning Framework for Stress Predictions in
  Heterogeneous Media
v1v2v3 (latest)

Difference-Based Deep Learning Framework for Stress Predictions in Heterogeneous Media

1 July 2020
Haotian Feng
P. Prabhakar
ArXiv (abs)PDFHTML

Papers citing "Difference-Based Deep Learning Framework for Stress Predictions in Heterogeneous Media"

6 / 6 papers shown
Title
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
71
1
0
01 Dec 2022
Physics-Constrained Neural Network for Design and Feature-Based
  Optimization of Weave Architectures
Physics-Constrained Neural Network for Design and Feature-Based Optimization of Weave Architectures
Haotian Feng
Sabari Subramaniyan
H. Tewani
P. Prabhakar
AI4CE
58
4
0
19 Sep 2022
Predicting Mechanically Driven Full-Field Quantities of Interest with
  Deep Learning-Based Metamodels
Predicting Mechanically Driven Full-Field Quantities of Interest with Deep Learning-Based Metamodels
S. Mohammadzadeh
Emma Lejeune
AI4CE
67
28
0
24 Jul 2021
A Data-Driven Approach to Full-Field Damage and Failure Pattern
  Prediction in Microstructure-Dependent Composites using Deep Learning
A Data-Driven Approach to Full-Field Damage and Failure Pattern Prediction in Microstructure-Dependent Composites using Deep Learning
R. Sepasdar
Anuj Karpatne
Maryam Shakiba
AI4CE
150
64
0
09 Apr 2021
A study on using image based machine learning methods to develop the
  surrogate models of stamp forming simulations
A study on using image based machine learning methods to develop the surrogate models of stamp forming simulations
Hao Zhou
Qingfeng Xu
Nan Li
AI4CE
45
18
0
30 Sep 2020
StressGAN: A Generative Deep Learning Model for 2D Stress Distribution
  Prediction
StressGAN: A Generative Deep Learning Model for 2D Stress Distribution Prediction
Haoliang Jiang
Zhenguo Nie
Roselyn Yeo
A. Farimani
Levent Burak Kara
GAN
90
18
0
30 May 2020
1