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首页> 外文期刊>The Korean journal of chemical engineering >Fast and effective methylene blue adsorption onto graphene oxide/amberlite nanocomposite: Evaluation and comparison of optimization techniques
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Fast and effective methylene blue adsorption onto graphene oxide/amberlite nanocomposite: Evaluation and comparison of optimization techniques

机译:快速且有效的亚甲基蓝色吸附到石墨烯/琥珀烯烃纳米复合材料上:优化技术的评价和比较

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摘要

Since graphene is a miracle material of the 21(st) century, a considerable number of researchers have studied the oxidation of graphite to synthesize graphene oxide and its applications. In this study, polymeric resin (amberlite XAD7HP) supported graphene oxide (GO) nanocomposite was synthesized successfully. Analytical methods, namely Fourier transform infrared spectroscopy (FTIR), X-ray diffraction (XRD), and scanning electron microscopy (SEM) were utilized to characterize the new structure. Methylene blue (MB) solution was selected as a model discharged textile wastewater for adsorption application of synthesized nanocomposite. The adsorption data were modelled by response surface methodology (RSM), random forest (RF) and artificial neural networks (ANN) methods. The optimal condition parameters, which maximize the adsorption uptake capability, were determined by the genetic algorithm. Statistical errors and correlation coefficient values of each developed model were calculated independently to compare models' performance. According to the results, the developed RF model outperformed the other models. On the other hand, the ANN model had the lowest correlation coefficient value among the models.
机译:由于石墨烯是21(ST)世纪的奇迹材料,因此有相当数量的研究人员研究了石墨的氧化,以合成石墨烯氧化物及其应用。在该研究中,成功​​地合成了聚合物树脂(Amberlite Xad7HP)负载的石墨烯(GO)纳米复合材料。分析方法,即傅里叶变换红外光谱(FTIR),X射线衍射(XRD)和扫描电子显微镜(SEM)来表征新结构。选择亚甲基蓝(Mb)溶液作为用于吸附纳米复合材料的型号排出的纺织废水。吸附数据由响应面方法(RSM),随机林(RF)和人工神经网络(ANN)方法进行建模。最大化吸附摄取能力的最佳条件参数由遗传算法确定。独立计算每个开发模型的统计误差和相关系数值以比较模型的性能。根据结果​​,开发的RF模型表现优于其他模型。另一方面,ANN模型在模型中具有最低的相关系数值。

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