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首页> 外文期刊>Journal of industrial and engineering chemistry >Competitive adsorption of methylene blue and brilliant green onto graphite oxide nano particle following: Derivative spectrophotometric and principal component-artificial neural network model methods for their simultaneous determination
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Competitive adsorption of methylene blue and brilliant green onto graphite oxide nano particle following: Derivative spectrophotometric and principal component-artificial neural network model methods for their simultaneous determination

机译:亚甲基蓝和亮绿色在氧化石墨纳米颗粒上的竞争性吸附:导数分光光度法和主成分-人工神经网络模型方法同时测定

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In this work, the competitive adsorption of methylene blue (MB) and brilliant green (BG) onto graphite oxide (GO) nanoparticles followed by their accurate and reproducible determination by second order derivative spectrophotometry (SODS) and principal component-artificial neural network model (PCA-ANN) model has been studied. The evaluation of kinetic and isotherm studies was investigated at optimum experimental conditions set as pH = 7.0, 8 mg of GO and 14 min contact time in binary systems. The equilibrium amounts of MB and BG dyes in binary mixture adsorbed onto GO-NP has opposite correlation with their initial concentration. Principal component analysis (PCA) used to minimize the dimensionality of large data sets via reducing the number of spectral data by a three-layered feed-forward artificial neural network (ANN) trained by Levenberg-Marquardt back-propagation algorithm. The ANN model was able to predict the concentrations of both dyes in mixtures with a tangent sigmoid transfer function (tansig) at hidden layer with 20 neurons and a linear transfer function (purelin) at output layer. Several isotherm models were applied to experimental data and the isotherm constants were calculated for BG and MB dyes. Among the applied models, the extended Freundlich isotherm model adequately predicts the multi-component adsorption equilibrium data at moderate ranges of concentration.
机译:在这项工作中,将亚甲基蓝(MB)和亮绿色(BG)竞争性吸附到氧化石墨(GO)纳米颗粒上,然后通过二阶导数分光光度法(SODS)和主成分-人工神经网络模型对其进行准确且可重现的测定(已经研究了PCA-ANN)模型。在二元系统中,在设定为pH = 7.0、8 mg GO和14分钟接触时间的最佳实验条件下,研究了动力学和等温线研究的评估。吸附在GO-NP上的二元混合物中MB和BG染料的平衡量与其初始浓度具有相反的相关性。主成分分析(PCA)用于通过Levenberg-Marquardt反向传播算法训练的三层前馈人工神经网络(ANN),通过减少光谱数据的数量来最大程度地减少大型数据集的维数。人工神经网络模型能够预测混合物中两种染料的浓度,该混合物在具有20个神经元的隐藏层具有切线的S型传递函数(tansig),在输出层具有线性传递函数(purelin)。将几种等温线模型应用于实验数据,并计算出BG和MB染料的等温线常数。在应用的模型中,扩展的Freundlich等温线模型可以充分预测中等浓度范围内的多组分吸附平衡数据。

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