The annealing process is one of the important operations in production of cold rolled steel sheets, which significantly influences the final product quality of cold rolling mills. In this process, cold rolled coils are heated slowly to a desired temperature and then cooled. Modelling of annealing process (prediction of heating and cooling time and trend prediction of coil core temperature) is a very sophisticated and expensive work. Modelling of annealing process can be done by using of thermal models. In this paper, Modelling of steel annealing process is proposed by using data mining techniques. The main advantages of modelling with data mining techniques are: high speed in data processing, acceptable accuracy in obtained results and simp...
Thesis (M.Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
In order to set the mechanical characteristics to the target of the customer, cold rolled steel stri...
The work reported in this paper outlines the use of a combined artificial neural network model capab...
The mechanical properties of the SAPH440 hot rolled steel sheet are mainly controlled to satisfy pro...
Applications of neural networks in the rolling of steel are reviewed. The first papers on the topic ...
The economic cost of roll refurbishment in the steel-making industry is considerable. In a cold roll...
The purpose of this paper is to predict the mechanical properties of galvanized steel, using appropr...
Cold rolled steel industry in type of batch annealing furnace, the mechanical properties of steel sh...
AbstractThis work deals with the prediction of mechanical properties of hot rolled steel slab in the...
AbstractMathematical models have been widely used for prediction of microstructure and mechanical pr...
Machine Learning classification models have been trained and validated from a dataset (73 features a...
The paper presents a model for predicting the roll wear in the hot rolling process. It includes all ...
In this paper, the application of data mining and artificial intelligence techniques stemming from o...
This paper presents a system based on data mining and statistical modelling tools that permits the p...
The present study addresses the multi-criteria modeling and optimization of Electrical Discharge Mac...
Thesis (M.Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
In order to set the mechanical characteristics to the target of the customer, cold rolled steel stri...
The work reported in this paper outlines the use of a combined artificial neural network model capab...
The mechanical properties of the SAPH440 hot rolled steel sheet are mainly controlled to satisfy pro...
Applications of neural networks in the rolling of steel are reviewed. The first papers on the topic ...
The economic cost of roll refurbishment in the steel-making industry is considerable. In a cold roll...
The purpose of this paper is to predict the mechanical properties of galvanized steel, using appropr...
Cold rolled steel industry in type of batch annealing furnace, the mechanical properties of steel sh...
AbstractThis work deals with the prediction of mechanical properties of hot rolled steel slab in the...
AbstractMathematical models have been widely used for prediction of microstructure and mechanical pr...
Machine Learning classification models have been trained and validated from a dataset (73 features a...
The paper presents a model for predicting the roll wear in the hot rolling process. It includes all ...
In this paper, the application of data mining and artificial intelligence techniques stemming from o...
This paper presents a system based on data mining and statistical modelling tools that permits the p...
The present study addresses the multi-criteria modeling and optimization of Electrical Discharge Mac...
Thesis (M.Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
In order to set the mechanical characteristics to the target of the customer, cold rolled steel stri...
The work reported in this paper outlines the use of a combined artificial neural network model capab...