Fan Mingyi, Hu Jiwei, Cao Rensheng, Xiong Kangning, Wei Xionghui
Guizhou Provincial Key Laboratory for Information Systems of Mountainous Areas and Protection of Ecological Environment, Guizhou Normal University, Guiyang, 550001, Guizhou, China.
Cultivation Base of Guizhou National Key Laboratory of Mountainous Karst Eco-environment, Guizhou Normal University, Guiyang, 550001, Guizhou, China.
Sci Rep. 2017 Dec 21;7(1):18040. doi: 10.1038/s41598-017-18223-y.
Reduced graphene oxide-supported nanoscale zero-valent iron (nZVI/rGO) magnetic nanocomposites were prepared and then applied in the Cu(II) removal from aqueous solutions. Scanning electron microscopy, transmission electron microscopy, X-ray photoelectron spectroscopy and superconduction quantum interference device magnetometer were performed to characterize the nZVI/rGO nanocomposites. In order to reduce the number of experiments and the economic cost, response surface methodology (RSM) combined with artificial intelligence (AI) techniques, such as artificial neural network (ANN), genetic algorithm (GA) and particle swarm optimization (PSO), has been utilized as a major tool that can model and optimize the removal processes, because a tremendous advance has recently been made on AI that may result in extensive applications. Based on RSM, ANN-GA and ANN-PSO were employed to model the Cu(II) removal process and optimize the operating parameters, e.g., operating temperature, initial pH, initial concentration and contact time. The ANN-PSO model was proven to be an effective tool for modeling and optimizing the Cu(II) removal with a low absolute error and a high removal efficiency. Furthermore, the isotherm, kinetic, thermodynamic studies and the XPS analysis were performed to explore the mechanisms of Cu(II) removal process.
制备了还原氧化石墨烯负载的纳米级零价铁(nZVI/rGO)磁性纳米复合材料,并将其应用于从水溶液中去除铜(II)。采用扫描电子显微镜、透射电子显微镜、X射线光电子能谱和超导量子干涉仪磁力计对nZVI/rGO纳米复合材料进行了表征。为了减少实验次数和经济成本,响应面法(RSM)与人工智能(AI)技术(如人工神经网络(ANN)、遗传算法(GA)和粒子群优化(PSO))相结合,已被用作一种主要工具,可对去除过程进行建模和优化,因为近年来人工智能取得了巨大进展,可能会带来广泛应用。基于RSM,采用ANN-GA和ANN-PSO对铜(II)去除过程进行建模并优化操作参数,如操作温度、初始pH值、初始浓度和接触时间。结果表明,ANN-PSO模型是一种有效的工具,可用于对铜(II)去除过程进行建模和优化,具有较低的绝对误差和较高的去除效率。此外,还进行了等温线、动力学、热力学研究以及XPS分析,以探讨铜(II)去除过程的机理。