On the optimization of froth flotation by the use of an artificial neural network

AL-THYABAT S
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引用次数: 47

Abstract

A multi layered, feed forward Artificial Neural Network (ANN) was used to study the effect of feed mean size, collector dosage and impeller speed on flotation recovery and grade. The results of 30 flotation experiments conducted on Jordanian siliceous phosphate were used for training the network while another 10 experiments were used for validation. Simulation results showed that a four layer network with a [9 11 5 9 2] architecture was the one that gave the least mean squared error (MSE). Using this ANN to optimize the flotation process showed that the optimum flotation parameters were 321.28 μm for the feed mean size, 0.7354 kg/TOF for the collector dosage and 1225.25 RPM for the impeller speed. Studying the effect of these parameters on flotation recovery and grade was done by analysis of variance, ANOVA. The results showed that grade was more sensitive to changes in flotation parameters than was recovery. They also showed that changes in collector dosage had a more significant effect on flotation grade and recovery than did changes in feed mean size or impeller speed.

基于人工神经网络的泡沫浮选优化研究
采用多层前馈人工神经网络(ANN)研究了进料平均粒度、捕收剂用量和叶轮转速对浮选回收率和品位的影响。利用在约旦磷酸硅质上进行的30次浮选实验结果对网络进行训练,并对另外10次实验进行验证。仿真结果表明,[9 11 5 9 2]结构的四层网络具有最小的均方误差(MSE)。采用该神经网络对浮选工艺进行优化,结果表明,最佳浮选参数为进料平均粒度321.28 μm,捕收剂用量0.7354 kg/TOF,叶轮转速1225.25 RPM。采用方差分析、方差分析等方法研究了各参数对浮选回收率和品位的影响。结果表明,品位对浮选参数变化的敏感性大于回收率。他们还表明,与进料平均粒度或叶轮转速的变化相比,捕收剂用量的变化对浮选品位和回收率的影响更为显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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