Artificial neural network vs. nonlinear regression for gold content estimation in pyrometallurgy
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摘要
Pyrometallurgy is often used in the industrial process for treating gold-bearing slime. Slag compositions have remarkable influences on gold recovery and gold content in slag. In this paper, the relationships between the slag compositions in the soda–borax–silica glass-salt system and the gold content in the slag are investigated by using nonlinear regression and artificial neural network. A neural network model for estimating the gold contents of different slag compositions is presented, including the neural network type, structure and its learning algorithms. The study indicates that the three-layer back propagation neural network model can be applied to estimate gold content in the slag. Compared with the traditional regression methods, the neural network has many advantages.
论文关键词:Pyrometallurgy,Neural network,Gold
论文评审过程:Available online 31 January 2009.
论文官网地址:https://doi.org/10.1016/j.eswa.2009.01.038