首页> 外文期刊>Materials >Artificial Neural Network Modeling and Genetic Algorithm Optimization for Cadmium Removal from Aqueous Solutions by Reduced Graphene Oxide-Supported Nanoscale Zero-Valent Iron (nZVI/rGO) Composites
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Artificial Neural Network Modeling and Genetic Algorithm Optimization for Cadmium Removal from Aqueous Solutions by Reduced Graphene Oxide-Supported Nanoscale Zero-Valent Iron (nZVI/rGO) Composites

机译:石墨烯氧化纳米级零价铁(NZVI / RGO)复合材料中镉从水溶液中除去水溶液的人工神经网络建模与遗传算法优化

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Reduced graphene oxide-supported nanoscale zero-valent iron (nZVI/rGO) composites were synthesized in the present study by chemical deposition method and were then characterized by various methods, such as Fourier-transform infrared spectroscopy (FTIR) and X-ray photoelectron spectroscopy (XPS). The nZVI/rGO composites prepared were utilized for Cd(II) removal from aqueous solutions in batch mode at different initial Cd(II) concentrations, initial pH values, contact times, and operating temperatures. Response surface methodology (RSM) and artificial neural network hybridized with genetic algorithm (ANN-GA) were used for modeling the removal efficiency of Cd(II) and optimizing the four removal process variables. The average values of prediction errors for the RSM and ANN-GA models were 6.47% and 1.08%. Although both models were proven to be reliable in terms of predicting the removal efficiency of Cd(II), the ANN-GA model was found to be more accurate than the RSM model. In addition, experimental data were fitted to the Langmuir, Freundlich, and Dubinin-Radushkevich (D-R) isotherms. It was found that the Cd(II) adsorption was best fitted to the Langmuir isotherm. Examination on thermodynamic parameters revealed that the removal process was spontaneous and exothermic in nature. Furthermore, the pseudo-second-order model can better describe the kinetics of Cd(II) removal with a good R 2 value than the pseudo-first-order model.
机译:通过化学沉积方法在本研究中合成了石墨烯氧化物支持的纳米级氧化纳米级氧化物铁(NZVI / RGO)复合材料,然后通过各种方法表征,例如傅里叶变换红外光谱(FTIR)和X射线光电子谱(XPS)。制备的NZVI / Rgo复合材料用于在不同初始CD(II)浓度,初始pH值,接触时间和操作温度下以批态模式从水溶液中除去CD(II)。用遗传算法(ANN-GA)杂交的响应表面方法(RSM)和人工神经网络用于建模CD(II)的去除效率并优化四个去除过程变量。 RSM和Ann-GA型号的预测误差的平均值为6.47%和1.08%。尽管在预测CD(II)的去除效率方面,但两种模型都被证明是可靠的,但发现ANN-GA模型比RSM模型更准确。此外,实验数据适用于Langmuir,Freundlich和Dubinin-Radushkevich(D-R)等温线。发现CD(II)吸附最适合Langmuir等温线。热力学参数检测显示,除去过程本质上是自发性和放热的。此外,伪二阶模型可以更好地描述CD(II)的动力学与良好的R 2值除以伪级模型。

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