Machine learning (ML) and deep learning (DL) for big data (BD) management are currently viable approaches that can significantly help in high-temperature materials design and development. ML-DL can accumulate knowledge by learning from existing data generated through multi-physics modelling (MPM) and experimental tests (ETs). DL mainly involves analyzing nonlinear correlations and high-dimensional datasets implemented through specifically designed numerical algorithms. DL also makes it possible to learn from new data and modify predictive models over time, identifying anomalies, signatures, and trends in machine performance, develop an understanding of patterns of behaviour, and estimate efficiencies in a machine. Machine learning was imple...
This project aims to advance the rate of material science study by automating one highly time consum...
The latest progress in machine learning (ML) algorithms enabled to predict some steel physical prope...
Cold spray additive manufacturing (CSAM) is a promising process for producing metallic layers on dif...
In this study, machine learning (ML) techniques were used to model surveillance test data of nuclear...
Reduction of area (RA) measurement in a hot ductility test is widely used to define the susceptibili...
In Direct Energy Deposition (DED), the melt pool temperature is a critical control parameter that a...
In this paper the use of machine learning (ML) is explored as an efficient tool for uncertainty quan...
Highly accurate machine learning (ML) approaches rely heavily on the quality of data and the design ...
The development of reinforced polymer composite materials has had a significant influence on the cha...
In-situ monitoring of the additive layer characteristics in the directed energy deposition (DED) pro...
A robust single hidden layer feed forward neural network (SLFN) is used in this study to model the i...
Surface quality measures such as roughness, and especially its uncertain character, affect most magn...
The long-term operating strategy of nuclear plants must ensure the integrity of the vessel, which is...
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ducti...
The long-standing performance-stability contradiction issue of high energy density materials (HEDMs)...
This project aims to advance the rate of material science study by automating one highly time consum...
The latest progress in machine learning (ML) algorithms enabled to predict some steel physical prope...
Cold spray additive manufacturing (CSAM) is a promising process for producing metallic layers on dif...
In this study, machine learning (ML) techniques were used to model surveillance test data of nuclear...
Reduction of area (RA) measurement in a hot ductility test is widely used to define the susceptibili...
In Direct Energy Deposition (DED), the melt pool temperature is a critical control parameter that a...
In this paper the use of machine learning (ML) is explored as an efficient tool for uncertainty quan...
Highly accurate machine learning (ML) approaches rely heavily on the quality of data and the design ...
The development of reinforced polymer composite materials has had a significant influence on the cha...
In-situ monitoring of the additive layer characteristics in the directed energy deposition (DED) pro...
A robust single hidden layer feed forward neural network (SLFN) is used in this study to model the i...
Surface quality measures such as roughness, and especially its uncertain character, affect most magn...
The long-term operating strategy of nuclear plants must ensure the integrity of the vessel, which is...
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ducti...
The long-standing performance-stability contradiction issue of high energy density materials (HEDMs)...
This project aims to advance the rate of material science study by automating one highly time consum...
The latest progress in machine learning (ML) algorithms enabled to predict some steel physical prope...
Cold spray additive manufacturing (CSAM) is a promising process for producing metallic layers on dif...