An artificial Neural Network (NNW) is designed to serve as a surrogate model of micro-scale simulations in the context of multi-scale analyzes in solid mechanics. The design and training methodologies of the NNW are developed in order to allow accounting for history-dependent material behaviors. On the one hand, a Recurrent Neural Network (RNN) using a Gated Recurrent Unit (GRU) is constructed, which allows mimicking the internal variables required to account for history-dependent behaviors since the RNN is self-equipped with hidden variables that have the ability of tracking loading history. On the other hand, in order to achieve accuracy under multi-dimensional non-proportional loading conditions, training of the RNN is achieve...
peer reviewedThis contribution discusses surrogate models that emulate the solution field(s) in the ...
Direct numerical simulation of hierarchical materials via homogenization-based concurrent multiscale...
Modern material systems with properly designed microstructures offer new avenues for engineering mat...
Driven by the need to accelerate numerical simulations, the use of machine learning techniques is ra...
Data related to the publication (we would be grateful if you could cite the paper in the case in whi...
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...
In a concurrent (FE2) multiscale modeling is an increasingly popular approach for modeling complex m...
Recurrent Neural Network (RNN) based surrogate models constitute an emerging class of reduced order ...
Data for: On the Importance of Self-consistency in Recurrent Neural Network Models Representing Elas...
The present work aims at proposing a hybrid physics-AI based model to predict non-linear mechanical ...
Codes for the conference paper: Title : Fracture Estimation based on Deformation History with Rec...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
We present a test technique and an accompanying computational framework to obtain data-driven, surro...
In this paper, a recurrent neural network structure is proposed for the modeling of the behavior of ...
peer reviewedThis contribution discusses surrogate models that emulate the solution field(s) in the ...
Direct numerical simulation of hierarchical materials via homogenization-based concurrent multiscale...
Modern material systems with properly designed microstructures offer new avenues for engineering mat...
Driven by the need to accelerate numerical simulations, the use of machine learning techniques is ra...
Data related to the publication (we would be grateful if you could cite the paper in the case in whi...
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...
In a concurrent (FE2) multiscale modeling is an increasingly popular approach for modeling complex m...
Recurrent Neural Network (RNN) based surrogate models constitute an emerging class of reduced order ...
Data for: On the Importance of Self-consistency in Recurrent Neural Network Models Representing Elas...
The present work aims at proposing a hybrid physics-AI based model to predict non-linear mechanical ...
Codes for the conference paper: Title : Fracture Estimation based on Deformation History with Rec...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
We present a test technique and an accompanying computational framework to obtain data-driven, surro...
In this paper, a recurrent neural network structure is proposed for the modeling of the behavior of ...
peer reviewedThis contribution discusses surrogate models that emulate the solution field(s) in the ...
Direct numerical simulation of hierarchical materials via homogenization-based concurrent multiscale...
Modern material systems with properly designed microstructures offer new avenues for engineering mat...