A finite element model of a tapered tensile specimen with a hardness transition zone in the gauge section and a varying width parameter is used for creating corresponding solution snapshots. Subsequently, a long short-term memory (LSTM) recurrent neural network (RNN) is trained on the selected snapshots, providing a parametrized solution model for a computationally efficient prediction of the structural response, allowing real-time model evaluation. In addition to a parametrized solution of the fracture localization, the model also captures the bifurcating local mesh deformation. The internal solution strategy of the RNN for predicting the bifurcation phenomenon is investigated and visualized
International audienceLarge structural problems with complex localized behaviour are extremely diffi...
High-fidelity fracture mechanics simulations of multiple microcracks interaction via physics-based m...
In this paper back-propagation artificial neural network (BPANN) is employed to predict the deformat...
Codes for the conference paper: Title : Fracture Estimation based on Deformation History with Rec...
Recurrent Neural Network (RNN) based surrogate models constitute an emerging class of reduced order ...
An artificial Neural Network (NNW) is designed to serve as a surrogate model of micro-scale simulati...
FE2 multiscale simulations of history-dependent materials are accelerated by means of a recurrent ne...
peer reviewedArtificial Neural Networks (NNWs) are appealing functions to substitute high dimensiona...
Driven by the need to accelerate numerical simulations, the use of machine learning techniques is ra...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
This paper proposes a machine learning based methodology for predicting the buckling response of tub...
International audienceFatigue damage in bone in the form of microcracks results from the repetitive ...
In the last years, neural networks have been used to learn physical simulations in a wide range of c...
This work addresses an efficient neural network (NN) representation for the phase-field modeling of ...
Parameters identification on structure subjected to moving load can be predicted by using the accura...
International audienceLarge structural problems with complex localized behaviour are extremely diffi...
High-fidelity fracture mechanics simulations of multiple microcracks interaction via physics-based m...
In this paper back-propagation artificial neural network (BPANN) is employed to predict the deformat...
Codes for the conference paper: Title : Fracture Estimation based on Deformation History with Rec...
Recurrent Neural Network (RNN) based surrogate models constitute an emerging class of reduced order ...
An artificial Neural Network (NNW) is designed to serve as a surrogate model of micro-scale simulati...
FE2 multiscale simulations of history-dependent materials are accelerated by means of a recurrent ne...
peer reviewedArtificial Neural Networks (NNWs) are appealing functions to substitute high dimensiona...
Driven by the need to accelerate numerical simulations, the use of machine learning techniques is ra...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
This paper proposes a machine learning based methodology for predicting the buckling response of tub...
International audienceFatigue damage in bone in the form of microcracks results from the repetitive ...
In the last years, neural networks have been used to learn physical simulations in a wide range of c...
This work addresses an efficient neural network (NN) representation for the phase-field modeling of ...
Parameters identification on structure subjected to moving load can be predicted by using the accura...
International audienceLarge structural problems with complex localized behaviour are extremely diffi...
High-fidelity fracture mechanics simulations of multiple microcracks interaction via physics-based m...
In this paper back-propagation artificial neural network (BPANN) is employed to predict the deformat...