A novel approach has been developed for quantitative evaluation of the susceptibility of steels and alloys to hydrogen embrittlement. The approach uses a combination of hydrogen thermal desorption spectroscopy (TDS) analysis with recent advances in machine learning technology to develop a regression artificial neural network (ANN) model predicting hydrogen-induced degradation of mechanical properties of steels. We describe the thermal desorption data processing, artificial neural network architecture development, and the learning process beneficial for the accuracy of the developed artificial neural network model. A data augmentation procedure was proposed to increase the diversity of the input data and improve the generalization of the mod...
Fusion power is the production of electricity from a hot plasma of deuterium and tritium, reacting t...
In the present study, the effect of Niobium (Nb) on the hydrogen embrittlement resistance of Quenche...
This paper presents the results obtained using Machine Learning (ML) algorithms to predict the mecha...
Steels are the most used structural material in the world, and hydrogen content and localization wit...
Abstract Hydrogen, at critical concentrations, responsible for hydrogen-induced mechanical property...
Machine learning models were introduced to develop a relationship between the elemental composition ...
Reduction of area (RA) measurement in a hot ductility test is widely used to define the susceptibili...
International audienceThird generation steels have been designed in order to have a good compromise ...
DoctorIt is generally accepted that hydrogen embrittlement involves interaction with hydrogen and de...
International audienceThird generation steels are multiphase steels that contain high amounts of res...
Thermal desorption spectroscopy (TDS) is a very important tool in hydrogen related research. It allo...
Dataset supports: Richardson, A. D., et al. (2018). Thermal Desorption Analysis of Hydrogen in Non...
Hydrogen embrittlement is one of the most impacting issues for the use of the martensitic advanced h...
The analysis of the spectrum features of thermal desorption spectroscopy (TDS) using the desorption-...
Hydrogen embrittlement is a major concern for many engineering applications, especially the steel in...
Fusion power is the production of electricity from a hot plasma of deuterium and tritium, reacting t...
In the present study, the effect of Niobium (Nb) on the hydrogen embrittlement resistance of Quenche...
This paper presents the results obtained using Machine Learning (ML) algorithms to predict the mecha...
Steels are the most used structural material in the world, and hydrogen content and localization wit...
Abstract Hydrogen, at critical concentrations, responsible for hydrogen-induced mechanical property...
Machine learning models were introduced to develop a relationship between the elemental composition ...
Reduction of area (RA) measurement in a hot ductility test is widely used to define the susceptibili...
International audienceThird generation steels have been designed in order to have a good compromise ...
DoctorIt is generally accepted that hydrogen embrittlement involves interaction with hydrogen and de...
International audienceThird generation steels are multiphase steels that contain high amounts of res...
Thermal desorption spectroscopy (TDS) is a very important tool in hydrogen related research. It allo...
Dataset supports: Richardson, A. D., et al. (2018). Thermal Desorption Analysis of Hydrogen in Non...
Hydrogen embrittlement is one of the most impacting issues for the use of the martensitic advanced h...
The analysis of the spectrum features of thermal desorption spectroscopy (TDS) using the desorption-...
Hydrogen embrittlement is a major concern for many engineering applications, especially the steel in...
Fusion power is the production of electricity from a hot plasma of deuterium and tritium, reacting t...
In the present study, the effect of Niobium (Nb) on the hydrogen embrittlement resistance of Quenche...
This paper presents the results obtained using Machine Learning (ML) algorithms to predict the mecha...