期刊文献+

Application and comparison of RNN, RBFNN and MNLR approaches on prediction of flotation column performance 被引量:7

Application and comparison of RNN, RBFNN and MNLR approaches on prediction of flotation column performance
下载PDF
导出
摘要 Evaluation of grade and recovery plays an important role in process control and plant profitability in mineral processing operations, especially flotation. The accurate measurement or estimation of these two parameters, based on the secondary variables, is a critical issue. Data-driven modeling techniques, which entail comprehensive data analysis and implementation of machine learning methods for system forecast, provide an attractive alternative. In this paper, two types of artificial neural networks(ANNs),namely radial basis function neural network(RBFNN) and layer recurrent neural network(RNN), and also a multivariate nonlinear regression(MNLR) model were employed to predict metallurgical performance of the flotation column. The training capacity and the accuracy of these three above mentioned types of models were compared. In order to acquire data for the simulation, a case study was conducted at Sarcheshmeh copper complex pilot plant. Based on the root mean squared error and correlation coefficient values, at training and testing stages, the RNN forecasted the metallurgical performance of the flotation column better than RBF and MNLR models. The RNN could predict Cu grade and recovery with correlation coefficients of 0.92 and 0.9, respectively in testing process. Evaluation of grade and recovery plays an important role in process control and plant profitability in mineral processing operations, especially flotation. The accurate measurement or estimation of these two parameters, based on the secondary variables, is a critical issue. Data-driven modeling techniques, which entail comprehensive data analysis and implementation of machine learning methods for system fore- cast, provide an attractive alternative. In this paper, two types of artificial neural networks (ANNs), namely radial basis function neural network (RBFNN) and layer recurrent neural network (RNN), and also a multivariate nonlinear regression (MNLR) model were employed to predict metallurgical performance of the flotation column. The training capacity and the accuracy of these three above mentioned types of models were compared. In order to acquire data for the simulation, a case study was conducted at Sarcheshmeh copper complex pilot plant. Based on the root mean squared error and correlation coefficient values, at training and testing stages, the RNN forecasted the metallurgical performance of the flotation column better than RBF and MNLR models. The RNN could predict Cu grade and recovery with correlation coefficients of 0.92 and 0.9, respectively in testing process.
出处 《International Journal of Mining Science and Technology》 SCIE EI CSCD 2015年第6期983-990,共8页 矿业科学技术学报(英文版)
基金 the support of the Department of Research and Development of Sarcheshmeh Copper Plants for this research
关键词 RBF神经网络 性能预测 浮选柱 网络应用 LR方法 径向基函数神经网络 多元非线性回归 MN Flotation columnRadial basis functionRecurrent neural networkMultivariate nonlinear regressionMetallurgical performance
  • 相关文献

参考文献3

二级参考文献12

  • 1ZHANG Xiao-qiang,WANG Hui-bing,YU Hong-zhen.Neural Network Based Algorithm and Simulation of Information Fusion in the Coal Mine[J].Journal of China University of Mining and Technology,2007,17(4):595-598. 被引量:4
  • 2F. Hayes-Roth,D.A. Waterman,D.B. Lenat.Building Expert Systems[]..1983
  • 3P. Jackson.Introduction to Expert Systems[]..1986
  • 4J. Liebowitz.Introduction to Expert Systems[]..1988
  • 5J. Liebowitz,D.A. DeSalvo.Structuring Expert Sys-tems: Domain, Design, and Development[]..1989
  • 6R. Mockler,D. Dologite.Introduction to Expert Systems[]..1992
  • 7J. Liebowitz.Expert systems: a short introduction[].Eng Fract Mech.1995
  • 8I. Tsushima,,T. Tashiro,,N. Komoda,,K. Baba,,S. Ta-kakura.Application of rule based control to flow line con-trol: billet conditioning line control[].Trans Soc Instrum Control Eng.1985
  • 9K. Yui,,H. Nishikawa,,S. Watanabe,,T. Seki,,Y. Kawamura.Application of knowledge system for blast furnace operation[].J Soc Instrum Control Eng.1987
  • 10M. Ishiduka,S. Kobayashi.Introduction to Expert Systems[]..1991

共引文献13

同被引文献57

引证文献7

二级引证文献21

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部