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Genetic algorithm-artificial neural network model for the prediction of germanium recovery from zinc plant residues

机译:遗传算法-人工神经网络模型预测锌植物残渣中锗的回收率

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摘要

A multi-layer, feed-forward, back-propagation learning algorithm was used as an artificial neural network (ANN) tool to predict the extraction of germanium from zinc plant residues by sulphuric acid leaching. A genetic algorithm (GA) was used for the selection of training and testing data and a GA-ANN model of the germanium leaching system was created on the basis of the training data. Testing of the model yielded good error levels (r2 = 0.95). The model was employed to predict the response of the system to different values of the factors that affect the recovery of germanium and the results facilitate selection of the experimental conditions in which the optimum recovery will be achieved.
机译:多层前馈反向传播学习算法用作人工神经网络(ANN)工具,可预测通过硫酸浸出从锌植物残渣中提取锗。使用遗传算法(GA)选择训练和测试数据,并基于训练数据创建了锗浸出系统的GA-ANN模型。对模型的测试产生了良好的误差水平(r2 = 0.95)。该模型用于预测系统对影响锗回收率的不同因素值的响应,其结果有助于选择能够实现最佳回收率的实验条件。

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