Increasing product requirements in the mechanical engineering industry and efforts to reduce time-to-market demand highly accurate and resource-efficient finite element simulations. The required parameter calibration of the material models is becoming increasingly challenging with regard to the growing variety of available materials. Besides the classical iterative optimization-based parameter identification method, novel machine learning-based methods represent promising alternatives, especially in terms of efficiency. However, the machine learning algorithms, architectures, and settings significantly affect the resulting accuracy. This work presents a comparative study of different machine learning algorithms based on virtual datasets wit...
Constitutive modeling of nonlinear materials is a computationally complex and time-intensive process...
The paper presents the results of a feasibility study aimed at combining probabilistic approaches fo...
To simulate the mechanical behavior of a material, it is essential to calibrate the internal paramet...
Increasing product requirements in the mechanical engineering industry and efforts to reduce time-to...
Today, the vast majority of design tasks are based on simulation tools. However, the success of the ...
In this paper, a parameter identification procedure using Bayesian neural networks is proposed. Base...
In this paper, a parameter identification procedure using Bayesian neural networks is proposed. Base...
In this paper, a parameter identification procedure using Bayesian neural networks is proposed. Base...
In this paper, a parameter identification procedure using Bayesian neural networks is proposed. Base...
A key limitation of finite element analysis is accurate modelling of material damage. While addition...
International audiencehis work presents a data-driven machine learning framework for the solution of...
Rapid development in numerical modelling of materials and the complexity of new models increase quic...
The work occupy by inverse analysis based on artificial neural network. This identification algorith...
A neural network (NN)-based method is presented in this paper which allows the identification of par...
The work occupy by inverse analysis based on artificial neural network. This identification algorith...
Constitutive modeling of nonlinear materials is a computationally complex and time-intensive process...
The paper presents the results of a feasibility study aimed at combining probabilistic approaches fo...
To simulate the mechanical behavior of a material, it is essential to calibrate the internal paramet...
Increasing product requirements in the mechanical engineering industry and efforts to reduce time-to...
Today, the vast majority of design tasks are based on simulation tools. However, the success of the ...
In this paper, a parameter identification procedure using Bayesian neural networks is proposed. Base...
In this paper, a parameter identification procedure using Bayesian neural networks is proposed. Base...
In this paper, a parameter identification procedure using Bayesian neural networks is proposed. Base...
In this paper, a parameter identification procedure using Bayesian neural networks is proposed. Base...
A key limitation of finite element analysis is accurate modelling of material damage. While addition...
International audiencehis work presents a data-driven machine learning framework for the solution of...
Rapid development in numerical modelling of materials and the complexity of new models increase quic...
The work occupy by inverse analysis based on artificial neural network. This identification algorith...
A neural network (NN)-based method is presented in this paper which allows the identification of par...
The work occupy by inverse analysis based on artificial neural network. This identification algorith...
Constitutive modeling of nonlinear materials is a computationally complex and time-intensive process...
The paper presents the results of a feasibility study aimed at combining probabilistic approaches fo...
To simulate the mechanical behavior of a material, it is essential to calibrate the internal paramet...