The tempering of low-alloy steels is important for controlling the mechanical properties required for industrial fields. Several studies have investigated the relationships between the input and target values of materials using machine learning algorithms. The limitation of machine learning algorithms is that the mechanism of how the input values affect the output has yet to be confirmed despite numerous case studies. To address this issue, we trained four machine learning algorithms to control the hardness of low-alloy steels under various tempering conditions. The models were trained using the tempering temperature, holding time, and composition of the alloy as the inputs. The input data were drawn from a database of more than 1900 experi...
Raw data and processed data used in the paper "A predicting model for properties of steel using the ...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
The accurate prediction of the mechanical properties of foundry alloys is a rather complex task give...
Accurately predicting properties of steels containing martensite by using models based on traditiona...
Hardenability is one of the most basic criteria influencing the formulation of the heat treatment pr...
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ducti...
The possibility to estimate the Jominy profile of steel based on its chemical composition is of utmo...
Artificial intelligence in material science has attracted many attention in 4.0 industrial revolutio...
This paper presents the results obtained using Machine Learning (ML) algorithms to predict the mecha...
The mechanical properties of the SAPH440 hot rolled steel sheet are mainly controlled to satisfy pro...
Data-driven algorithms for predicting mechanical properties with small datasets are evaluated in a c...
The latest progress in machine learning (ML) algorithms enabled to predict some steel physical prope...
Steel manufacturing is a long and complicated process including refining, casting, and rolling; hund...
Reduction of area (RA) measurement in a hot ductility test is widely used to define the susceptibili...
This work aims to evaluate the predictive performance of various Machine Learning algorithms when a...
Raw data and processed data used in the paper "A predicting model for properties of steel using the ...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
The accurate prediction of the mechanical properties of foundry alloys is a rather complex task give...
Accurately predicting properties of steels containing martensite by using models based on traditiona...
Hardenability is one of the most basic criteria influencing the formulation of the heat treatment pr...
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ducti...
The possibility to estimate the Jominy profile of steel based on its chemical composition is of utmo...
Artificial intelligence in material science has attracted many attention in 4.0 industrial revolutio...
This paper presents the results obtained using Machine Learning (ML) algorithms to predict the mecha...
The mechanical properties of the SAPH440 hot rolled steel sheet are mainly controlled to satisfy pro...
Data-driven algorithms for predicting mechanical properties with small datasets are evaluated in a c...
The latest progress in machine learning (ML) algorithms enabled to predict some steel physical prope...
Steel manufacturing is a long and complicated process including refining, casting, and rolling; hund...
Reduction of area (RA) measurement in a hot ductility test is widely used to define the susceptibili...
This work aims to evaluate the predictive performance of various Machine Learning algorithms when a...
Raw data and processed data used in the paper "A predicting model for properties of steel using the ...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
The accurate prediction of the mechanical properties of foundry alloys is a rather complex task give...