The article is devoted to the development of machine learning methods for classes of technical problems, including determining the properties of materials. According to the authors, the neural network approximation algorithm is able to take into account the behavior of materials in various experimental conditions. The article provides illustrative examples of how a neural network with a single hidden layer can approximate a function of several variables with a given accuracy. As part of the study, a number of experimental measurements were made. The structure of the neural network and its main components are described
Constitutive modeling of nonlinear materials is a computationally complex and time-intensive process...
Artificial neural networks are an effective and frequently used modelling method in regression and c...
This research deals with the analysis of the behaviour of artificial neural nets for prediction of r...
The article is devoted to the development of machine learning methods for classes of technical probl...
The indentation test performed by means of a flat-ended indenter is a valuable non-destructive metho...
In the industrially advanced countries, that are different from our ex and present countries, to lea...
In this paper an Artificial Intelligent approach that performs materials' tests and evaluates their ...
The paper discusses issues connected with the use of an artificial neural network (ANN) to approxima...
One of the urgent tasks of industrial production is improving the quality of verification of receive...
AbstractDetermination of material characteristics using the instrumented indentation test has gained...
The general aim is the characterization of microstructural states and the determination of mechanica...
Instrumented indentation has been developed and widely utilized as one of the most versatile and pra...
Neural networks are now a prominent feature of materials science with rapid progress in all sectors ...
In this paper we show some different concepts for the use of Artificial Neural Networks [1-4] in mod...
There are difficult problems in materials science where the generai concepts might be understood but...
Constitutive modeling of nonlinear materials is a computationally complex and time-intensive process...
Artificial neural networks are an effective and frequently used modelling method in regression and c...
This research deals with the analysis of the behaviour of artificial neural nets for prediction of r...
The article is devoted to the development of machine learning methods for classes of technical probl...
The indentation test performed by means of a flat-ended indenter is a valuable non-destructive metho...
In the industrially advanced countries, that are different from our ex and present countries, to lea...
In this paper an Artificial Intelligent approach that performs materials' tests and evaluates their ...
The paper discusses issues connected with the use of an artificial neural network (ANN) to approxima...
One of the urgent tasks of industrial production is improving the quality of verification of receive...
AbstractDetermination of material characteristics using the instrumented indentation test has gained...
The general aim is the characterization of microstructural states and the determination of mechanica...
Instrumented indentation has been developed and widely utilized as one of the most versatile and pra...
Neural networks are now a prominent feature of materials science with rapid progress in all sectors ...
In this paper we show some different concepts for the use of Artificial Neural Networks [1-4] in mod...
There are difficult problems in materials science where the generai concepts might be understood but...
Constitutive modeling of nonlinear materials is a computationally complex and time-intensive process...
Artificial neural networks are an effective and frequently used modelling method in regression and c...
This research deals with the analysis of the behaviour of artificial neural nets for prediction of r...