The rheological behaviour of mild steel subjected to hot forming was modelled through a parallel distributed processing paradigm based on the artificial neural network prediction of the metal material response. The evaluation of different feedforward back-propagation neural networks for the flow stress prediction was carried out on the basis of laboratory data of the stress–strain behaviour of mild steel subjected to compression tests with different temperature and strain rate conditions. The results obtained consist of a number of neural network models capable of describing the material flow stress under the considered processing conditions with diverse levels of agreement with the experimental data. The availability of a range of neural n...
The hot strength of austenitic steels of different carbon contents was modelled using an artificial ...
In this work, neural networks are employed to represent the rheological behaviour of nickelbased sup...
Constitutive behavior models for steels are typically semi-empirical, however recently neural networ...
The rheological behaviour of mild steel subjected to hot forming was modelled through a parallel dis...
In this paper, neural network based constitutive models relating stress to deformation conditions of...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
A number of semi-empirical models are available in literature to predict flow stress of steel during...
Hot deformation of metals is a widely used process to produce end products with the desired geometry...
In this paper neural networks are utilised to represent the rheological behaviour of the Nickel-base...
In this thesis a study was performed to obtain a model of artificial neural network that is able to ...
The hot deformation behaviour of austenite in steels is a complicated process which depends on chemi...
The flow behavior of CMn (Nb-Ti-V) micro alloyed steel was studied by hot compression tests in a wid...
In this study, an artificial neural network model is proposed to predict the flow stress variations ...
The 22MnB5 steel is a hot stamping steel developed with the aim to satisfy the increasing request of...
In this paper neural networks are utilized to represent the rheological behaviour of nickel-base sup...
The hot strength of austenitic steels of different carbon contents was modelled using an artificial ...
In this work, neural networks are employed to represent the rheological behaviour of nickelbased sup...
Constitutive behavior models for steels are typically semi-empirical, however recently neural networ...
The rheological behaviour of mild steel subjected to hot forming was modelled through a parallel dis...
In this paper, neural network based constitutive models relating stress to deformation conditions of...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
A number of semi-empirical models are available in literature to predict flow stress of steel during...
Hot deformation of metals is a widely used process to produce end products with the desired geometry...
In this paper neural networks are utilised to represent the rheological behaviour of the Nickel-base...
In this thesis a study was performed to obtain a model of artificial neural network that is able to ...
The hot deformation behaviour of austenite in steels is a complicated process which depends on chemi...
The flow behavior of CMn (Nb-Ti-V) micro alloyed steel was studied by hot compression tests in a wid...
In this study, an artificial neural network model is proposed to predict the flow stress variations ...
The 22MnB5 steel is a hot stamping steel developed with the aim to satisfy the increasing request of...
In this paper neural networks are utilized to represent the rheological behaviour of nickel-base sup...
The hot strength of austenitic steels of different carbon contents was modelled using an artificial ...
In this work, neural networks are employed to represent the rheological behaviour of nickelbased sup...
Constitutive behavior models for steels are typically semi-empirical, however recently neural networ...