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A novel predictive model for estimation of cell voltage in electrochemical recovery of copper from brass: Application of gene expression programming

机译:一种新型预测模型,用于从黄铜铜电化学回收中的电化学回收中的预测模型:基因表达规划的应用

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Regarding the high corrosion resistance of brass in sulfuric acid, its leaching process is the most important step in hydrometallurgical recovery of brass scraps. In this study, the electrochemical dissolution of brass chips in sulfuric acid has been investigated. The electrochemical cell voltage depends on various parameters. Regarding the complexity of electrochemical dissolution, the system voltage could not be easily predicted based on the operational parameters of the cell. So, it is necessary to use modeling techniques to predict cell voltage. In this study, 139 leaching experiments were conducted under different conditions. Using the experimental results and gene expression programming (GEP), parameters such as acid concentration, current density, temperature and anode-cathode distance were entered as the inputs and the voltage of the electrochemical dissolution was predicted as the output. The results showed that GEP-based model was capable of predicting the voltage of electrochemical dissolution of brass alloy with correlation coefficient of 0.929 and root square mean error (RSME) of 0.052. Based on the sensitivity analysis on the input and output parameters, acid concentration and anode-cathode distance were the most and least effective parameters, respectively. The modeling results confirmed that the proposed model is a powerful tool in designing a mathematical equation between the parameters of electrochemical dissolution and the voltage induced by variation of these parameters.
机译:关于硫酸黄铜的高耐腐蚀性,它的浸出过程是在黄铜碎屑的湿法冶金回收最重要的一步。在这项研究中,在硫酸黄铜芯片的电化学溶解进行了研究。电化学电池电压取决于各种参数。关于电化学溶解的复杂性,系统电压不能被容易地预测基于所述小区的操作参数。因此,有必要使用建模技术来预测电池电压。在这项研究中,139个浸出实验在不同的条件下进行。使用实验结果和基因表达编程(GEP),参数诸如酸浓度,电流密度,温度和阳极 - 阴极距离被输入作为输入和电化学溶解的电压预测作为输出。结果表明,基于GEP-模型是能够预测与0.929的相关系数和的0.052均方根平均误差(RSME)的黄铜合金的电化学溶解的电压。基于关于输入和输出参数的敏感性分析,酸的浓度和阳极 - 阴极距离分别最大和最小有效参数,分别。模拟结果证实,该模型是设计电化学溶解的这些参数的变化引起的参数和电压之间的数学方程式的有力工具。

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