简介概要

Prediction of Free Lime Content in Cement Clinker Based on RBF Neural Network

来源期刊:Journal Of Wuhan University Of Technology Materials Science Edition2012年第1期

论文作者:袁景凌 陶海征

文章页码:187 - 190

摘    要:Considering the fact that free calcium oxide content is an important parameter to evaluate the quality of cement clinker, it is very significant to predict the change of free calcium oxide content through adjusting the parameters of processing technique. In fact, the making process of cement clinker is very complex. Therefore, it is very difficult to describe this relationship using the conventional mathematical methods. Using several models, i e, linear regression model, nonlinear regression model, Back Propagation neural network model, and Radial Basis Function (RBF) neural network model, we investigated the possibility to predict the free calcium oxide content according to selected parameters of the production process. The results indicate that RBF neural network model can predict the free lime content with the highest precision (1.3%) among all the models.

详情信息展示

Prediction of Free Lime Content in Cement Clinker Based on RBF Neural Network

袁景凌1,陶海征2

1. School of Computer Science and Technology, Wuhan University of Technology2. State Key Laboratory of Silicate Materials for Architecture (Wuhan University of Technology)

摘 要:Considering the fact that free calcium oxide content is an important parameter to evaluate the quality of cement clinker, it is very significant to predict the change of free calcium oxide content through adjusting the parameters of processing technique. In fact, the making process of cement clinker is very complex. Therefore, it is very difficult to describe this relationship using the conventional mathematical methods. Using several models, i e, linear regression model, nonlinear regression model, Back Propagation neural network model, and Radial Basis Function (RBF) neural network model, we investigated the possibility to predict the free calcium oxide content according to selected parameters of the production process. The results indicate that RBF neural network model can predict the free lime content with the highest precision (1.3%) among all the models.

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