This paper proposes a new technique based on artificial neural network useful for the characterization of superplastic behaviour, in particular for PbSn60 alloy. A three-layer neural network with back propagation (BP) algorithm is employed to train the network. The network input parameters are: alloy grain size, strain and strain rate. Just one is the output: the flow stress. Experiments are performed to evaluate the behaviour of PbSn60 alloy, subject to uniaxial tensile test, when the cross speed is kept constant. The strain rate sensitivity value (m) has been estimated analyzing the slope of the curve. It is shown that BP artificial neural network can predict the flow stress and, consequently, the m index during superplastic deformation...
The flow behavior of CMn (Nb-Ti-V) micro alloyed steel was studied by hot compression tests in a wid...
The application of accurate constitutive relationship in finite element simulation would significant...
In the last years, neural networks have been used to learn physical simulations in a wide range of c...
This paper proposes a new technique based on artificial neural network useful for the characterizati...
The paper focuses on developing constitutive models for superplastic deformation behaviour of near-α...
An artificial neural network (ANN) constitutive model and Johnson–Cook (J–C) model were developed fo...
AbstractAn artificial neural network (ANN) constitutive model and Johnson–Cook (J–C) model were deve...
An artificial neural network (ANN) is used to model nonlinear, large deformation plastic behavior of...
In the present study, artificial neural networks (ANNs) were used to model flow stress in Ti-6Al-4V ...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
Abstract: In this paper, a multilayer feedforward neural network with Bayesian regularization consti...
AbstractAn artificial neural network (ANN) constitutive model is developed for high strength armor s...
This paper examines the application of artificial neural networks (ANNs) in materials science and ex...
Abstract: Artificial neural network is used to model INCONEL 718 in this paper. The model accounts f...
The flow behavior of CMn (Nb-Ti-V) micro alloyed steel was studied by hot compression tests in a wid...
The application of accurate constitutive relationship in finite element simulation would significant...
In the last years, neural networks have been used to learn physical simulations in a wide range of c...
This paper proposes a new technique based on artificial neural network useful for the characterizati...
The paper focuses on developing constitutive models for superplastic deformation behaviour of near-α...
An artificial neural network (ANN) constitutive model and Johnson–Cook (J–C) model were developed fo...
AbstractAn artificial neural network (ANN) constitutive model and Johnson–Cook (J–C) model were deve...
An artificial neural network (ANN) is used to model nonlinear, large deformation plastic behavior of...
In the present study, artificial neural networks (ANNs) were used to model flow stress in Ti-6Al-4V ...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
The main objectives of this paper are investigations on the usability of artificial neuronal network...
Abstract: In this paper, a multilayer feedforward neural network with Bayesian regularization consti...
AbstractAn artificial neural network (ANN) constitutive model is developed for high strength armor s...
This paper examines the application of artificial neural networks (ANNs) in materials science and ex...
Abstract: Artificial neural network is used to model INCONEL 718 in this paper. The model accounts f...
The flow behavior of CMn (Nb-Ti-V) micro alloyed steel was studied by hot compression tests in a wid...
The application of accurate constitutive relationship in finite element simulation would significant...
In the last years, neural networks have been used to learn physical simulations in a wide range of c...