There are many difficulties associated with the development of a quantitative correlation model relating the thermo-mechanical processing parameters to mechanical properties due to the complexity of the problem. In this research, based on the experimental data obtained from a series of forging and heat treatment experiments, the correlation model between hot processing parameters and the mechanical properties of the Ti–6Al–4V alloy has been established using an artificial neural network (ANN) approach. In the proposed model, the input variables are forging temperature, degree of deformation, annealing temperature and annealing time. The mechanical properties are determined as the output variables, including ultimate tensile strength, yield ...
Titanium alloy (Ti-6Al-4V) can be economically machined with high-pressure coolant (HPC) supply. In ...
Abstract strength, ductility and hardness were modeled for multi-pass welds deposited by gas tungste...
A feed-forward neural-network (FFNN) technique with a back-propagation-learning algorithm was used t...
Modeling the relationship between microstructure and mechanical properties of materials is fairly di...
An artificial neural network model was developed to correlate the relationship between the alloying ...
In this paper, an artificial neural network (ANN) model with high accuracy and good generalization a...
Improvement of ductility at room temperature has been a major concern on processing and application ...
The main objective of the present work is to develop a methodology to predict the mechanical propert...
The 22MnB5 steel is a hot stamping steel developed with the aim to satisfy the increasing request of...
The microstructural features present in titanium alloys not only vary over a wide range of length sc...
AbstractThe mechanical properties of aluminium alloy castings, such as EL%, YS and UTS, are controll...
Laser powder-bed fusion (LPBF) process, as one of the most widely used technologies of additive manu...
Steel is the most important material and it has several applications, and positions second to cement...
The main objective of this study is to present a methodology to model the microstructure and mechani...
Laser shock processing (LSP), which utilizes the stress effect induced by high-energy nanosecond pul...
Titanium alloy (Ti-6Al-4V) can be economically machined with high-pressure coolant (HPC) supply. In ...
Abstract strength, ductility and hardness were modeled for multi-pass welds deposited by gas tungste...
A feed-forward neural-network (FFNN) technique with a back-propagation-learning algorithm was used t...
Modeling the relationship between microstructure and mechanical properties of materials is fairly di...
An artificial neural network model was developed to correlate the relationship between the alloying ...
In this paper, an artificial neural network (ANN) model with high accuracy and good generalization a...
Improvement of ductility at room temperature has been a major concern on processing and application ...
The main objective of the present work is to develop a methodology to predict the mechanical propert...
The 22MnB5 steel is a hot stamping steel developed with the aim to satisfy the increasing request of...
The microstructural features present in titanium alloys not only vary over a wide range of length sc...
AbstractThe mechanical properties of aluminium alloy castings, such as EL%, YS and UTS, are controll...
Laser powder-bed fusion (LPBF) process, as one of the most widely used technologies of additive manu...
Steel is the most important material and it has several applications, and positions second to cement...
The main objective of this study is to present a methodology to model the microstructure and mechani...
Laser shock processing (LSP), which utilizes the stress effect induced by high-energy nanosecond pul...
Titanium alloy (Ti-6Al-4V) can be economically machined with high-pressure coolant (HPC) supply. In ...
Abstract strength, ductility and hardness were modeled for multi-pass welds deposited by gas tungste...
A feed-forward neural-network (FFNN) technique with a back-propagation-learning algorithm was used t...