Ghaedi M, Shojaeipour E, Ghaedi A M, Sahraei Reza
Chemistry Department, Yasouj University, Yasouj 75918-74831, Iran.
Department of Chemistry, Islamic Azad University, Omidiyeh Branch, Omidiyeh, Iran.
Spectrochim Acta A Mol Biomol Spectrosc. 2015 May 5;142:135-49. doi: 10.1016/j.saa.2015.01.086. Epub 2015 Feb 9.
In this study, copper nanowires loaded on activated carbon (Cu-NWs-AC) was used as novel efficient adsorbent for the removal of malachite green (MG) from aqueous solution. This new material was synthesized through simple protocol and its surface properties such as surface area, pore volume and functional groups were characterized with different techniques such XRD, BET and FESEM analysis. The relation between removal percentages with variables such as solution pH, adsorbent dosage (0.005, 0.01, 0.015, 0.02 and 0.1g), contact time (1-40min) and initial MG concentration (5, 10, 20, 70 and 100mg/L) was investigated and optimized. A three-layer artificial neural network (ANN) model was utilized to predict the malachite green dye removal (%) by Cu-NWs-AC following conduction of 248 experiments. When the training of the ANN was performed, the parameters of ANN model were as follows: linear transfer function (purelin) at output layer, Levenberg-Marquardt algorithm (LMA), and a tangent sigmoid transfer function (tansig) at the hidden layer with 11 neurons. The minimum mean squared error (MSE) of 0.0017 and coefficient of determination (R(2)) of 0.9658 were found for prediction and modeling of dye removal using testing data set. A good agreement between experimental data and predicted data using the ANN model was obtained. Fitting the experimental data on previously optimized condition confirm the suitability of Langmuir isotherm models for their explanation with maximum adsorption capacity of 434.8mg/g at 25°C. Kinetic studies at various adsorbent mass and initial MG concentration show that the MG maximum removal percentage was achieved within 20min. The adsorption of MG follows the pseudo-second-order with a combination of intraparticle diffusion model.
在本研究中,负载在活性炭上的铜纳米线(Cu-NWs-AC)被用作从水溶液中去除孔雀石绿(MG)的新型高效吸附剂。这种新材料通过简单的方法合成,并用不同技术(如XRD、BET和FESEM分析)对其表面积、孔体积和官能团等表面性质进行了表征。研究并优化了去除率与溶液pH值、吸附剂用量(0.005、0.01、0.015、0.02和0.1g)、接触时间(1 - 40分钟)和初始MG浓度(5、10、20、70和100mg/L)等变量之间的关系。在进行了248次实验后,利用三层人工神经网络(ANN)模型预测Cu-NWs-AC对孔雀石绿染料的去除率(%)。当对ANN进行训练时,ANN模型的参数如下:输出层为线性传递函数(purelin),采用Levenberg-Marquardt算法(LMA),隐藏层为具有11个神经元的正切Sigmoid传递函数(tansig)。使用测试数据集进行染料去除预测和建模时,发现最小均方误差(MSE)为0.0017,决定系数(R²)为0.9658。实验数据与使用ANN模型预测的数据之间取得了良好的一致性。在先前优化条件下对实验数据进行拟合,证实了Langmuir等温线模型适用于解释这些数据,在25°C时最大吸附容量为434.8mg/g。在不同吸附剂质量和初始MG浓度下进行的动力学研究表明,在20分钟内可实现MG的最大去除率。MG的吸附遵循准二级动力学,并结合了颗粒内扩散模型。