Machine learning (ML) models enable exploration of vast structural space faster than the traditional methods, such as finite element method (FEM). This makes ML models suitable for stochastic fracture problems in brittle porous materials. In this work, fully convolutional networks (FCNs) were trained to predict stress and stress concentration factor distributions in two-dimensional isotropic elastic materials with uniform porosity. We show that even with downsampled data, FCN models predict the stress distributions for a given porous structure. FCN predicted stress concentration factors 10,000 times faster than the FEM simulations. The FCN-predicted stresses combined with fracture mechanics captured the effect of porosity on the strength of...
AbstractThis paper addresses the effect of pore distribution on the overall properties and local str...
The constitutive description of the inelastic deformation behavior of porous media is a challenging ...
In this paper a computational technique is proposed to describe brittle fracture of highly porous ra...
Machine learning (ML) models enable exploration of vast structural space faster than the traditional...
Brittle porous materials are used in many applications, such as molten metal filter, battery, fuel c...
Here you can find the results and code corresponding to the article "Modeling the relationship betwe...
Stress prediction in porous materials and structures is challenging due to the high computational co...
In this work we employ an encoder-decoder convolutional neural network to predict the failure locati...
International audienceAbstract Multiscale computational modelling is challenging due to the high com...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
High-fidelity fracture mechanics simulations of multiple microcracks interaction via physics-based m...
Effective properties of functional materials crucially depend on their 3D microstructure. In this pa...
Despite their recent success, machine learning (ML) models such as graph neural networks (GNNs), suf...
A novel method to predict the mechanical responses of arbitrary microstructures from the deep learni...
Abstract We report a deep learning method to predict high-resolution stress fields from...
AbstractThis paper addresses the effect of pore distribution on the overall properties and local str...
The constitutive description of the inelastic deformation behavior of porous media is a challenging ...
In this paper a computational technique is proposed to describe brittle fracture of highly porous ra...
Machine learning (ML) models enable exploration of vast structural space faster than the traditional...
Brittle porous materials are used in many applications, such as molten metal filter, battery, fuel c...
Here you can find the results and code corresponding to the article "Modeling the relationship betwe...
Stress prediction in porous materials and structures is challenging due to the high computational co...
In this work we employ an encoder-decoder convolutional neural network to predict the failure locati...
International audienceAbstract Multiscale computational modelling is challenging due to the high com...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
High-fidelity fracture mechanics simulations of multiple microcracks interaction via physics-based m...
Effective properties of functional materials crucially depend on their 3D microstructure. In this pa...
Despite their recent success, machine learning (ML) models such as graph neural networks (GNNs), suf...
A novel method to predict the mechanical responses of arbitrary microstructures from the deep learni...
Abstract We report a deep learning method to predict high-resolution stress fields from...
AbstractThis paper addresses the effect of pore distribution on the overall properties and local str...
The constitutive description of the inelastic deformation behavior of porous media is a challenging ...
In this paper a computational technique is proposed to describe brittle fracture of highly porous ra...