This paper proposes a dynamic analytics method based on the least squares support vector machine with a hybrid kernel to address real-time prediction problems in the converter steelmaking process. The hybrid kernel function is used to enhance the performance of the existing kernels. To improve the model's accuracy, the internal parameters are optimized by a differential evolution algorithm. In light of the complex mechanisms of the converter steelmaking process, a multistage modeling strategy is designed instead of the traditional single-stage modeling method. Owing to the dynamic nature of the practical production process, great effort has been made to construct a dynamic model that uses the prediction error information based on the static...
Ensuring the high quality of end product steel by removing phosphorus content in Basic Oxygen Furnac...
Herein, we propose a novel hybrid method for forecasting steel prices by modeling nonlinearity and t...
Transient states modeling of industrial grinding process with significant accuracy is extremely esse...
In this paper, a novel prediction method for low carbon steel is proposed based on an improved twin ...
Basic Oxygen Furnace (BOF) steelmaking is an important way for steel production. Correctly recognizi...
Iron and steel making processes are very complex in nature and we need prediction tools which can ac...
The endpoint carbon content is an important target of converters. The precise prediction of carbon c...
This work presents three data-driven models based on process data, to estimate different indicators ...
The basic oxygen furnace (BOF) steelmaking process in the steel industry is highly complicated, and ...
This paper is concerned with the modeling of both endpoint temperature and carbon content for BOF st...
The precise prediction of end-point carbon content in liquid steel plays a critical role in increasi...
To solve the issue of oxygen consumption forecasting, the researchers suggested a twin support vecto...
Oxygen steelmaking is a mature technology with over fifty years of continuous process development. O...
In this paper, we propose a novel data-driven prediction system for Multivariate Time Series (MTS) i...
Strict monitoring and prediction of endpoints in a Basic Oxygen Furnace (BOF) are essential for end-...
Ensuring the high quality of end product steel by removing phosphorus content in Basic Oxygen Furnac...
Herein, we propose a novel hybrid method for forecasting steel prices by modeling nonlinearity and t...
Transient states modeling of industrial grinding process with significant accuracy is extremely esse...
In this paper, a novel prediction method for low carbon steel is proposed based on an improved twin ...
Basic Oxygen Furnace (BOF) steelmaking is an important way for steel production. Correctly recognizi...
Iron and steel making processes are very complex in nature and we need prediction tools which can ac...
The endpoint carbon content is an important target of converters. The precise prediction of carbon c...
This work presents three data-driven models based on process data, to estimate different indicators ...
The basic oxygen furnace (BOF) steelmaking process in the steel industry is highly complicated, and ...
This paper is concerned with the modeling of both endpoint temperature and carbon content for BOF st...
The precise prediction of end-point carbon content in liquid steel plays a critical role in increasi...
To solve the issue of oxygen consumption forecasting, the researchers suggested a twin support vecto...
Oxygen steelmaking is a mature technology with over fifty years of continuous process development. O...
In this paper, we propose a novel data-driven prediction system for Multivariate Time Series (MTS) i...
Strict monitoring and prediction of endpoints in a Basic Oxygen Furnace (BOF) are essential for end-...
Ensuring the high quality of end product steel by removing phosphorus content in Basic Oxygen Furnac...
Herein, we propose a novel hybrid method for forecasting steel prices by modeling nonlinearity and t...
Transient states modeling of industrial grinding process with significant accuracy is extremely esse...