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Artificial neural network (ANN) approach for modeling of Cr(VI) adsorption from aqueous solution by zeolite prepared from raw fly ash (ZFA)

机译:人工神经网络(ANN)方法用于模拟原粉煤灰(ZFA)制备的沸石从水溶液中吸附Cr(VI)

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摘要

In this present work, artificial neural networks (ANN) are applied for prediction of percentage adsorption efficiency for the removal of Cr(VI) ions from aqueous solution by zeolite (ZFA) prepared from raw fly ash (RFA). The off operational parameters such as initial pH, adsorbent dosage, contact time and temperature is studied to optimize the conditions for maximum removal of Cr(VI) ions. Three equations, i.e. Morris-Weber, Lagergren, and pseudo second order have been tested to track the kinetics of removal process. The Langmuir, Freundlich, Redlich-Peterson, Temkin, and D-R are subjected to sorption data to estimate sorption capacity. Thermodynamic parameters showed that the adsorption of Cr(VI) onto ZFA was feasible, spontaneous and endothermic. Artificial neural networks are effective in modeling and simulation of highly non-liner multivariable relationships. The comparison of the removal efficiencies of Cr(VI) using ANN model and experimental results showed that ANN model can estimate the behavior of the Cr(VI) removal process under different conditions.
机译:在本工作中,人工神经网络(ANN)用于预测由原粉煤灰(RFA)制备的沸石(ZFA)从水溶液中去除Cr(VI)离子的吸附效率百分比。研究了初始pH,吸附剂用量,接触时间和温度等关闭操作参数,以优化最大去除Cr(VI)离子的条件。测试了三个方程,即Morris-Weber,Lagergren和伪二阶方程,以跟踪去除过程的动力学。对Langmuir,Freundlich,Redlich-Peterson,Temkin和D-R进行吸附数据以估算吸附容量。热力学参数表明,Cr(VI)在ZFA上的吸附是可行的,自发的和吸热的。人工神经网络可有效地建模和仿真高度非线性的多变量关系。使用人工神经网络模型对Cr(VI)去除效率的比较和实验结果表明,ANN模型可以估计不同条件下Cr(VI)去除过程的行为。

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