Akdeniz University, Vocational School of Technical Sciences, Department of Electricity and Energy, Antalya, 07070, Turkey.
Akdeniz University, Vocational School of Health Services, Department of Medical Services and Techniques, Antalya, 07070, Turkey.
Environ Res. 2022 May 1;207:112156. doi: 10.1016/j.envres.2021.112156. Epub 2021 Sep 29.
Herein, it is aimed to develop a high-performance monolithic adsorbent to be utilized in methyl orange (MO) adsorption. Therefore, amino-functionalized three-dimensional graphene networks (3D-GN) fulfilling the requirements of reusability and high capacity have been fabricated via hydrothermal self-assembly approach followed by a double-crosslinking strategy. The potential utilization of 3D-GN as an adsorbent for removal MO has been assessed using both batch-adsorption studies and an artificial neural network (ANN) approach. Graphene oxide sheets have been amino-functionalized and cross-linked, by ethylenediamine (EDA) during hydrothermal treatment, following the glutaraldehyde has used as a double-crosslinking agent to facilitate the crosslinking of architecture. The successful fabrication of 3D-GN has been confirmed by field-emission scanning electron microscopy (FESEM), Fourier transform infrared (FT-IR), Raman and X-ray photoelectron spectroscopy (XPS). Moreover, N adsorption/desorption isotherms have revealed the high specific surface area (1015 m g) with high pore volume (1.054 cm g) and hierarchical porous structure of 3D-GN. The effect of initial concentration, contact time, and temperature on adsorption capacity have been thoroughly studied, and the kinetics, isotherms, and thermodynamics of MO adsorption have been modelled. The MO adsorption has been well defined by the pseudo-second-order kinetic model and Langmuir isotherm model with a monolayer adsorption capacity of 270.27 mg g at 25 °C. The thermodynamic findings have revealed MO adsorption has occurred spontaneously with an endothermic process. The Levenberg-Marquardt backpropagation algorithm has been implemented to train the ANN model, which has used the activation functions of tansig and purelin functions at the hidden and output layers, respectively. An optimum ANN model with high-performance metrics (coefficient of determination, R = 0.9995; mean squared error, MSE = 0.0008) composed of three hidden layers with 5 neurons in each layer was constructed to forecast MO adsorption. The findings have shown that experimental results are consistent with ANN-based data, implying that the suggested ANN model may be used to forecast cationic dye adsorption.
本文旨在开发一种高性能整体吸附剂,用于甲基橙(MO)吸附。因此,通过水热自组装方法制备了满足可重复使用性和高容量要求的氨基功能化三维石墨烯网络(3D-GN),然后采用双交联策略。通过批量吸附研究和人工神经网络(ANN)方法评估了 3D-GN 作为去除 MO 的吸附剂的潜在应用。通过水热处理,氧化石墨烯片用乙二胺(EDA)进行氨基功能化和交联,然后使用戊二醛作为双交联剂来促进结构的交联。场发射扫描电子显微镜(FESEM)、傅里叶变换红外(FT-IR)、拉曼和 X 射线光电子能谱(XPS)证实了 3D-GN 的成功制备。此外,N 吸附/解吸等温线揭示了 3D-GN 的高比表面积(1015 m g)、高孔体积(1.054 cm g)和分级多孔结构。深入研究了初始浓度、接触时间和温度对吸附容量的影响,并对 MO 吸附的动力学、等温线和热力学进行了建模。MO 吸附由准二级动力学模型和 Langmuir 等温线模型很好地定义,在 25°C 时单层吸附容量为 270.27 mg g。热力学研究结果表明,MO 吸附是自发进行的,是一个吸热过程。使用 tansig 和 purelin 函数作为隐藏层和输出层的激活函数,实施了 Levenberg-Marquardt 反向传播算法来训练 ANN 模型。构建了一个具有高性能指标(决定系数,R = 0.9995;均方误差,MSE = 0.0008)的最优 ANN 模型,由三个隐藏层组成,每个层有 5 个神经元,用于预测 MO 吸附。结果表明,实验结果与基于 ANN 的数据一致,这表明所提出的 ANN 模型可用于预测阳离子染料吸附。