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Study of Montmorillonite Clay for the Removal of Copper (II) by Adsorption: Full Factorial Design Approach and Cascade Forward Neural Network

机译:吸附去除蒙脱土的研究:全因子设计方法和级联神经网络

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摘要

An intensive study has been made of the removal efficiency of Cu(II) from industrial leachate by biosorption of montmorillonite. A 24 factorial design and cascade forward neural network (CFNN) were used to display the significant levels of the analyzed factors on the removal efficiency. The obtained model based on 24 factorial design was statistically tested using the well-known methods. The statistical analysis proves that the main effects of analyzed parameters were significant by an obtained linear model within a 95% confidence interval. The proposed CFNN model requires less experimental data and minimum calculations. Moreover, it is found to be cost-effective due to inherent advantages of its network structure. Optimization of the levels of the analyzed factors was achieved by minimizing adsorbent dosage and contact time, which were costly, and maximizing Cu(II) removal efficiency. The suggested optimum conditions are initial pH at 6, adsorbent dosage at 10 mg/L, and contact time at 10 min using raw montmorillonite with the Cu(II) removal of 80.7%. At the optimum values, removal efficiency was increased to 88.91% if the modified montmorillonite was used.
机译:通过蒙脱土的生物吸附,对工业渗滤液中Cu(II)的去除效率进行了深入研究。采用2 4 析因设计和级联前向神经网络(CFNN)来显示分析因子对去除效率的显着水平。使用众所周知的方法对基于2 4 因子设计的模型进行统计检验。统计分析证明,所获得的线性模型在95%的置信区间内,所分析参数的主要影响是显着的。所提出的CFNN模型需要较少的实验数据和最少的计算量。此外,由于其网络结构的固有优势,发现它具有成本效益。通过最大限度地减少昂贵的吸附剂剂量和接触时间以及最大程度地去除Cu(II)去除效率,可以实现分析因子水平的优化。建议的最佳条件是初始pH值为6,吸附剂量为10 mg / L,接触时间为10 min(使用蒙脱石原料,其中Cu(II)的去除率为80.7%)。在最佳值下,如果使用改性蒙脱土,去除效率可提高至88.91%。

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