The Use of Artificial Neural Network (ANN) for Prediction of Removal of Co2+and Ni2+Ions from Waste Water by Electric Furnace Slag
The objectives of this work was the study the removal of cd+ and Ni2+ ions from aqueous solution by sorption onto five different electric furnace slag. All experiments were performed in batch conditions. The slag was obtAlned through the manufacturing processes of a fire-resistant cast steel(G-X40CrNiSi25-20) and a low-alloyed Cr-Mo-Ni cast steel, according to its chemical analysis. The sorption of metal ions on the slag depends on the chemical composition of the slag, initial ion concentration and type of the present metal ions. On all the examined electric furnace slag samples, sorption capacity for Ni2 + is higher than for cd+. This paper presents the results of application of artificial neural networks in predicting the cd+ and Ni2+ removal from aqueous solutions. A static multi-layer feed-forward artificial neural network with the back propagation trAlning function and LevenbergMarquardt optimization was used to predict the metal ions removal. The error-back propagation learning algorithm was used, with the assistance of Matlab 7.6.0 (R2008a) Neural network toolbox. The early stopping method was applied, in order to prevent the network from over-fitting. Data used for neural network testing were not used for network trAlning. When experimental data and data obtAlned by neural network prediction were compared, it was concluded that the applied network model provides very good prediction of the quantity of bound metal ions. The mean error and the standard deviation were found to be very good.
artificial neural network electric furnace slag heavy metals sorption
Irena Zmak Lidija Curkovic Tomislav Filetin
Faculty of Mechanical Engineering and Naval Architecture, University of Zagreb, Department of Materi Faculty of Mechanical Engineering and Naval Architecture, University of Zagreb, Department of Materi
国际会议
69th World Foundry Congress(第69届世界铸造会议 WFC 2010)
杭州
英文
1082-1086
2010-10-16(万方平台首次上网日期,不代表论文的发表时间)