Zhang Yumeng, Dai Min, Liu Ke, Peng Changsheng, Du Yufeng, Chang Quanchao, Ali Imran, Naz Iffat, Saroj Devendra P
The Key Lab of Marine Environmental Science and Ecology, Ministry of Education, College of Environmental Science and Engineering, Ocean University of China Qingdao 266100 China
School of Environmental and Chemical Engineering, Zhaoqing University Zhaoqing 526061 China.
RSC Adv. 2019 Sep 24;9(52):30240-30248. doi: 10.1039/c9ra06079k. eCollection 2019 Sep 23.
Graphene oxide (GO), as an emerging material, exhibits extraordinary performance in terms of water treatment. Adsorption is a process that is influenced by multiple factors and is difficult to simulate by traditional statistical models. Artificial neural networks (ANNs) can establish highly accurate nonlinear functional relationships between multiple variables; hence, we constructed a three-layered ANN model to predict the removal performance of Cu(ii) metal ions by the prepared GO. In the present research work, GO was prepared and characterized by FT-IR spectroscopy, SEM, and XRD analysis techniques. In ANN modeling, the Levenberg-Marquardt learning algorithm (LMA) was applied by comparing 13 different back-propagation (BP) learning algorithms. The network structure and parameters were optimized according to various error indicators between the predicted and experimental data. The hidden layer neurons were set to be 12, and optimal network learning rate was 0.08. Contour and 3-D diagrams were used to illustrate the interactions of different influencing factors on the adsorption efficiency. Based on the results of batch adsorption experiments combined with the optimization of influencing factors by ANN, the optimum pH, initial Cu(ii) ion concentration and temperature were anticipated to be 5.5, 15 mg L and 318 K, respectively. Moreover, the adsorption experiments reached equilibrium at about 120 min. Combined with sensitivity analysis, the degree of influence of each factor could be ranked as: pH > initial concentration > temperature > contact time.
氧化石墨烯(GO)作为一种新兴材料,在水处理方面表现出非凡的性能。吸附是一个受多种因素影响的过程,难以用传统统计模型进行模拟。人工神经网络(ANN)可以在多个变量之间建立高度准确的非线性函数关系;因此,我们构建了一个三层ANN模型来预测制备的GO对Cu(II)金属离子的去除性能。在本研究工作中,通过傅里叶变换红外光谱(FT-IR)、扫描电子显微镜(SEM)和X射线衍射(XRD)分析技术对GO进行了制备和表征。在ANN建模中,通过比较13种不同的反向传播(BP)学习算法应用了Levenberg-Marquardt学习算法(LMA)。根据预测数据与实验数据之间的各种误差指标对网络结构和参数进行了优化。隐藏层神经元设置为12个,最优网络学习率为0.08。使用等高线图和三维图来说明不同影响因素对吸附效率的相互作用。基于批量吸附实验的结果,并结合ANN对影响因素的优化,预计最佳pH值、初始Cu(II)离子浓度和温度分别为5.5、15 mg/L和318 K。此外,吸附实验在约120分钟时达到平衡。结合敏感性分析,各因素的影响程度排序为:pH>初始浓度>温度>接触时间。