Stress prediction in porous materials and structures is challenging due to the high computational cost associated with direct numerical simulations. Convolutional Neural Network (CNN) based architectures have recently been proposed as surrogates to approximate and extrapolate the solution of such multiscale simulations. These methodologies are usually limited to 2D problems due to the high computational cost of 3D voxel based CNNs. We propose a novel geometric learning approach based on a Graph Neural Network (GNN) that efficiently deals with three-dimensional problems by performing convolutions over 2D surfaces only. Following our previous developments using pixel-based CNN, we train the GNN to automatically add local fine-scale stress cor...
Abstract We propose a deep neural network (DNN) as a fast surrogate model for local stress calculati...
Discrete Fracture Network (DFN) flow simulations are commonly used to determine the outflow in fract...
DeePore is a deep learning workflow for rapid estimation of a wide range of porous material properti...
International audienceAbstract Multiscale computational modelling is challenging due to the high com...
Here you can find the results and code corresponding to the article "Modeling the relationship betwe...
Machine learning (ML) models enable exploration of vast structural space faster than the traditional...
Machine learning (ML) and deep learning (DL) techniques have gained significant attention as reduced...
This paper presents a hybrid deep learning framework that combines graph neural networks with convol...
In this work we employ an encoder-decoder convolutional neural network to predict the failure locati...
This dataset is from the paper: "Design of an Interpretable Convolutional Neural Network for Stress ...
Abstract Developing accurate yet fast computational tools to simulate complex physical phenomena is ...
Being able to predict the failure of materials based on structural information is a fundamental issu...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
Workshop presentation at Fraunhofer IWM : AI, digitalization and materials modeling for better lifet...
Subsurface fluid flow, essential in various natural and engineered processes, is largely governed by...
Abstract We propose a deep neural network (DNN) as a fast surrogate model for local stress calculati...
Discrete Fracture Network (DFN) flow simulations are commonly used to determine the outflow in fract...
DeePore is a deep learning workflow for rapid estimation of a wide range of porous material properti...
International audienceAbstract Multiscale computational modelling is challenging due to the high com...
Here you can find the results and code corresponding to the article "Modeling the relationship betwe...
Machine learning (ML) models enable exploration of vast structural space faster than the traditional...
Machine learning (ML) and deep learning (DL) techniques have gained significant attention as reduced...
This paper presents a hybrid deep learning framework that combines graph neural networks with convol...
In this work we employ an encoder-decoder convolutional neural network to predict the failure locati...
This dataset is from the paper: "Design of an Interpretable Convolutional Neural Network for Stress ...
Abstract Developing accurate yet fast computational tools to simulate complex physical phenomena is ...
Being able to predict the failure of materials based on structural information is a fundamental issu...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
Workshop presentation at Fraunhofer IWM : AI, digitalization and materials modeling for better lifet...
Subsurface fluid flow, essential in various natural and engineered processes, is largely governed by...
Abstract We propose a deep neural network (DNN) as a fast surrogate model for local stress calculati...
Discrete Fracture Network (DFN) flow simulations are commonly used to determine the outflow in fract...
DeePore is a deep learning workflow for rapid estimation of a wide range of porous material properti...