With the development of the materials genome philosophy and data mining methodologies, machine learning (ML) has been widely applied for discovering new materials in various systems including high-end steels with improved performance. Although recently, some attempts have been made to incorporate physical features in the ML process, its effects have not been demonstrated and systematically analysed nor experimentally validated with prototype alloys. To address this issue, a physical metallurgy (PM) -guided ML model was developed, wherein intermediate parameters were generated based on original inputs and PM principles, e.g., equilibrium volume fraction (Vf) and driving force (Df) for precipitation, and these were added to the original datas...
Artificial intelligence is widely employed in metallurgy for its ability to solve complex phenomena,...
This project reviews literature on the applications of Machine Learning (ML) in the development of M...
In metals added substance fabricating (AM), materials and segments are simultaneously made in a soli...
In recent years, the advent of machine learning (ML) in materials science has provided a new tool fo...
High strength alloys are materials with alloying additions designed to produce a specific combinatio...
The article presents a computational model build with the use of artificial neural networks optimize...
Machine learning is now applied in virtually every sphere of life for data analysis and interpretati...
Advanced aluminum-lithium alloys are the key structural materials urgently needed for the developmen...
We formulate a materials design strategy combining a machine learning (ML) surrogate model with expe...
In the present study, the machine learning (ML) method was utilized to construct a composition–struc...
Abstract We identify compositionally complex alloys (CCAs) that offer exceptional mechanical propert...
A broad range of potential chemical compositions makes difficult design of novel bulk metallic glass...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
We apply machine learning algorithms to optimize thermodynamic and elastic properties of multicompon...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
Artificial intelligence is widely employed in metallurgy for its ability to solve complex phenomena,...
This project reviews literature on the applications of Machine Learning (ML) in the development of M...
In metals added substance fabricating (AM), materials and segments are simultaneously made in a soli...
In recent years, the advent of machine learning (ML) in materials science has provided a new tool fo...
High strength alloys are materials with alloying additions designed to produce a specific combinatio...
The article presents a computational model build with the use of artificial neural networks optimize...
Machine learning is now applied in virtually every sphere of life for data analysis and interpretati...
Advanced aluminum-lithium alloys are the key structural materials urgently needed for the developmen...
We formulate a materials design strategy combining a machine learning (ML) surrogate model with expe...
In the present study, the machine learning (ML) method was utilized to construct a composition–struc...
Abstract We identify compositionally complex alloys (CCAs) that offer exceptional mechanical propert...
A broad range of potential chemical compositions makes difficult design of novel bulk metallic glass...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
We apply machine learning algorithms to optimize thermodynamic and elastic properties of multicompon...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
Artificial intelligence is widely employed in metallurgy for its ability to solve complex phenomena,...
This project reviews literature on the applications of Machine Learning (ML) in the development of M...
In metals added substance fabricating (AM), materials and segments are simultaneously made in a soli...