In this paper neural networks are utilized to represent the rheological behaviour of nickel-base superalloys under hot forging conditions. A feedforward back-propagation neural network has been trained and tested on rheological data, obtained from hot compression experiments, performed under single- and multi-step deformation conditions, both at constant and varying strain rates. The good agreement between experimental and calculated flow curves shows that a properly trained neural network can be successfully employed in representing a material response to hot forging cycles
Introduction Finite element modeling of manufacturing processes has been gaining wider acceptance ov...
In this paper, neural network based constitutive models relating stress to deformation conditions of...
The rheological behaviour of mild steel subjected to hot forming was modelled through a parallel dis...
In this paper neural networks are utilised to represent the rheological behaviour of the Nickel-base...
In this work, neural networks are employed to represent the rheological behaviour of nickelbased sup...
In this work, neural networks are employed to represent the rheological behaviour of nickelbased su...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
The rheological behaviour of NIMONIC 115 superalloy was modeled using two empirical models, based on...
The rheological behaviour of NIMONIC 115 superalloy was modeled using two empirical models, based on...
The use of artificial neural networks in modelling the rheological behaviour of AA 6082 aluminium al...
AbstractAt the present time, numerical models (such as, numerical simulation based on FEM) adopted b...
In order to predict hot deformation behavior of superalloy nimonic 80A, a back-propagational artific...
In this paper, neural network based constitutive models relating stress to deformation conditions of...
Introduction Finite element modeling of manufacturing processes has been gaining wider acceptance ov...
In this paper, neural network based constitutive models relating stress to deformation conditions of...
The rheological behaviour of mild steel subjected to hot forming was modelled through a parallel dis...
In this paper neural networks are utilised to represent the rheological behaviour of the Nickel-base...
In this work, neural networks are employed to represent the rheological behaviour of nickelbased sup...
In this work, neural networks are employed to represent the rheological behaviour of nickelbased su...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
The rheological behaviour of NIMONIC 115 superalloy was modeled using two empirical models, based on...
The rheological behaviour of NIMONIC 115 superalloy was modeled using two empirical models, based on...
The use of artificial neural networks in modelling the rheological behaviour of AA 6082 aluminium al...
AbstractAt the present time, numerical models (such as, numerical simulation based on FEM) adopted b...
In order to predict hot deformation behavior of superalloy nimonic 80A, a back-propagational artific...
In this paper, neural network based constitutive models relating stress to deformation conditions of...
Introduction Finite element modeling of manufacturing processes has been gaining wider acceptance ov...
In this paper, neural network based constitutive models relating stress to deformation conditions of...
The rheological behaviour of mild steel subjected to hot forming was modelled through a parallel dis...