A mixed bat optimization algorithm based on chaos and differential evolution (CDEBA) is proposed for the endblow process of basic oxygen furnance (BOF) after sub-lance detection, and a prediction model based on BP neural network optimized by chaotic differential bat algorithm (CDEBA-NN) is presented. The simulation results show that the prediction model of carbon content achieves a hit rate of 94 % with the error range of 0,005 %, and 90 % for temperature with the error range of 15 °C, the accuracy is higher than the traditional neural network model, and then it verifies the effectiveness of the proposed model
Inside the blast furnace (BF) the process is very complicated and very tough to model mathematically...
In view of the nonlinear characteristics of gas emission in a coal working face, a prediction method...
The paper presents a method to predict blast furnace parameters based on artificial neural network (...
A mixed bat optimization algorithm based on chaos and differential evolution (CDEBA) is proposed for...
Abstract The endpoint temperature and carbon content of basic oxygen furnace (BOF) are the control o...
The basic oxygen steelmaking (BOS) is a transient process, highly complex and is also subject to osc...
A machine learning-based analysis was applied to process data obtained from a Basic Oxygen Steelmaki...
In this paper, a novel prediction method for low carbon steel is proposed based on an improved twin ...
The precise prediction of end-point carbon content in liquid steel plays a critical role in increasi...
Strict monitoring and prediction of endpoints in a Basic Oxygen Furnace (BOF) are essential for end-...
The steel-making process in a Basic Oxygen Furnace (BOF) must meet a combination of target values su...
The basic oxygen furnace (BOF) steelmaking process in the steel industry is highly complicated, and ...
This paper describes the development of neural models and their industrial applications to the basic...
This paper proposes the use of artificial neural networks for the prediction of fuel consumption in ...
The phosphorus (P) content of molten steel is of great importance for the quality of steel products ...
Inside the blast furnace (BF) the process is very complicated and very tough to model mathematically...
In view of the nonlinear characteristics of gas emission in a coal working face, a prediction method...
The paper presents a method to predict blast furnace parameters based on artificial neural network (...
A mixed bat optimization algorithm based on chaos and differential evolution (CDEBA) is proposed for...
Abstract The endpoint temperature and carbon content of basic oxygen furnace (BOF) are the control o...
The basic oxygen steelmaking (BOS) is a transient process, highly complex and is also subject to osc...
A machine learning-based analysis was applied to process data obtained from a Basic Oxygen Steelmaki...
In this paper, a novel prediction method for low carbon steel is proposed based on an improved twin ...
The precise prediction of end-point carbon content in liquid steel plays a critical role in increasi...
Strict monitoring and prediction of endpoints in a Basic Oxygen Furnace (BOF) are essential for end-...
The steel-making process in a Basic Oxygen Furnace (BOF) must meet a combination of target values su...
The basic oxygen furnace (BOF) steelmaking process in the steel industry is highly complicated, and ...
This paper describes the development of neural models and their industrial applications to the basic...
This paper proposes the use of artificial neural networks for the prediction of fuel consumption in ...
The phosphorus (P) content of molten steel is of great importance for the quality of steel products ...
Inside the blast furnace (BF) the process is very complicated and very tough to model mathematically...
In view of the nonlinear characteristics of gas emission in a coal working face, a prediction method...
The paper presents a method to predict blast furnace parameters based on artificial neural network (...