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Experimental investigation and adaptive neural fuzzy inference system prediction of copper recovery from flotation tailings by acid leaching in a batch agitated tank

机译:酸浸渍罐中浮选尾矿铜回收的实验研究和自适应神经模糊推理系统预测

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摘要

The potential of copper recovery from flotation tailings was experimentally investigated using a laboratory-mixing tank. The experiments were performed with solid weight percentages of 30wt%, 35wt%, 40wt% and 45wt% in water. The measurements revealed that adding sulfuric acid all at once to the tank rapidly increased the efficiency of the leaching process, which was attributed to the rapid change in the acid concentration. The rate of iron dissolution from tailings was less than when the acid was added gradually. The sample with 40wt% solid is recommended as an appropriate feed for the recovery of copper. The adaptive neural fuzzy system (ANFIS) was also used to predict the copper recovery from flotation tailings. The back-propagation algorithm and least squares method were applied for the training of ANFIS. The validation data was also applied to evaluate the performance of these models. Simulation results revealed that the testing results from these models were in good agreement with the experimental data.
机译:通过实验室混合罐通过实验研究了从浮选尾矿中填充铜回收的潜力。实验在水中以30wt%,35wt%,40wt%和45wt%的固体重量百分比进行。测量显示,加入硫酸均匀加入罐中迅速提高了浸出过程的效率,这归因于酸浓度的快速变化。来自尾矿的铁溶解速率小于逐渐加入酸时。建议使用40wt%固体的样品作为回收铜的适当进料。自适应神经模糊系统(ANFIS)还用于预测浮选尾矿的铜回收。应用后传播算法和最小二乘法用于培训ANFIS。还应用了验证数据来评估这些模型的性能。仿真结果表明,这些模型的测试结果与实验数据吻合良好。

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