AbstractThe structural durability design of components requires the knowledge of cyclic material properties. These parameters are strongly dependent on environmental conditions and manufacturing processes, and require many experimental tests to be correctly determined. Considering time and costs, it is not possible to include in the tests all the variables that influence the material behaviour. For this reason, the computational method of the Artificial Neural Network (ANN) can be implemented to support these investigations. This method allows an estimation of the cyclic material properties starting from the static parameters deducted through tensile tests. The results permit a very good approximation of cyclic material properties using jus...
An artificial neural network (ANN) model was developed to predict the tensile properties of dual-pha...
The algorithm for calculating the durability of beam rod elements, subjected to corrosive wear, is p...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
The structural durability design of components requires the knowledge of cyclic material properties....
AbstractThe structural durability design of components requires the knowledge of cyclic material pro...
Several estimation methods have been developed to estimate the cyclic material parameters out of the...
Suitable methods and transferability criteria and knowledge of the cyclic material behaviour is esse...
A durable design for linear flow split sheet components requires suitable methods and transferabilit...
The applicability of artificial neural networks (ANN) in predicting the strain-life fatigue properti...
In this paper an Artificial Intelligent approach that performs materials' tests and evaluates their ...
Lightweight materials are in constant progress due to the new requirements of mobility. At the same ...
This paper assessed the suitability of artificial neural networks (ANN) as an analytical technique f...
This paper examines the application of artificial neural networks (ANNs) in materials science and ex...
In this paper we show some different concepts for the use of Artificial Neural Networks [1-4] in mod...
AbstractTensile testing, also known as tension testing is a fundamental material technology test in ...
An artificial neural network (ANN) model was developed to predict the tensile properties of dual-pha...
The algorithm for calculating the durability of beam rod elements, subjected to corrosive wear, is p...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
The structural durability design of components requires the knowledge of cyclic material properties....
AbstractThe structural durability design of components requires the knowledge of cyclic material pro...
Several estimation methods have been developed to estimate the cyclic material parameters out of the...
Suitable methods and transferability criteria and knowledge of the cyclic material behaviour is esse...
A durable design for linear flow split sheet components requires suitable methods and transferabilit...
The applicability of artificial neural networks (ANN) in predicting the strain-life fatigue properti...
In this paper an Artificial Intelligent approach that performs materials' tests and evaluates their ...
Lightweight materials are in constant progress due to the new requirements of mobility. At the same ...
This paper assessed the suitability of artificial neural networks (ANN) as an analytical technique f...
This paper examines the application of artificial neural networks (ANNs) in materials science and ex...
In this paper we show some different concepts for the use of Artificial Neural Networks [1-4] in mod...
AbstractTensile testing, also known as tension testing is a fundamental material technology test in ...
An artificial neural network (ANN) model was developed to predict the tensile properties of dual-pha...
The algorithm for calculating the durability of beam rod elements, subjected to corrosive wear, is p...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...