AbstractThis work deals with the prediction of mechanical properties of hot rolled steel slab in the hot rolling mill to avoid the manual working of preparing tension test samples in the mechanical testing lab. The time consumption for testing is avoided and the cost of product is decreased.A model for predicting mechanical properties of low carbon steel has been developed and Feed Forward Back Propagation (FFBP) as one type of algorithm of the Artificial Neural Network has been applied to the prediction system. Yield strength (YS), Ultimate tensile strength (UTS) and Elongation(EL) are the basic mechanical properties of low carbon steel are predicted as a function of thermo-mechanical process parameters. These properties mainly depend on t...
The paper presents a model for predicting the machinability of steels using the method of artificial...
The main objective of the present work is to develop a methodology to predict the mechanical propert...
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ducti...
AbstractThis work deals with the prediction of mechanical properties of hot rolled steel slab in the...
Steel is the most important material and it has several applications, and positions second to cement...
Steel is the most important material and it has several applications, and positions second to cement...
High-strength low-alloy (HSLA) steels provide increased strength-to-weight ratios over conventional ...
A model based on adaptive neural network formalism coupled with fuzzy inference system has been deve...
A model based on adaptive neural network formalism coupled with fuzzy inference system has been deve...
The mechanical properties of the SAPH440 hot rolled steel sheet are mainly controlled to satisfy pro...
The paper presents a model for predicting the machinability of steels using the method of artificial...
Constitutive behavior models for steels are typically semi-empirical, however recently neural networ...
The goal of the work reported in this paper is to develop a neural network model for describing the ...
A neural network model under the Bayesian framework (referred to as Bayesian neural network hereafte...
The work reported in this paper outlines the use of a combined artificial neural network model capab...
The paper presents a model for predicting the machinability of steels using the method of artificial...
The main objective of the present work is to develop a methodology to predict the mechanical propert...
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ducti...
AbstractThis work deals with the prediction of mechanical properties of hot rolled steel slab in the...
Steel is the most important material and it has several applications, and positions second to cement...
Steel is the most important material and it has several applications, and positions second to cement...
High-strength low-alloy (HSLA) steels provide increased strength-to-weight ratios over conventional ...
A model based on adaptive neural network formalism coupled with fuzzy inference system has been deve...
A model based on adaptive neural network formalism coupled with fuzzy inference system has been deve...
The mechanical properties of the SAPH440 hot rolled steel sheet are mainly controlled to satisfy pro...
The paper presents a model for predicting the machinability of steels using the method of artificial...
Constitutive behavior models for steels are typically semi-empirical, however recently neural networ...
The goal of the work reported in this paper is to develop a neural network model for describing the ...
A neural network model under the Bayesian framework (referred to as Bayesian neural network hereafte...
The work reported in this paper outlines the use of a combined artificial neural network model capab...
The paper presents a model for predicting the machinability of steels using the method of artificial...
The main objective of the present work is to develop a methodology to predict the mechanical propert...
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ducti...