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Least square-support vector (LS-SVM) method for modeling of methylene blue dye adsorption using copper oxide loaded on activated carbon: Kinetic and isotherm study

机译:最小二乘支持向量(LS-SVM)方法用于模拟使用活性炭负载的氧化铜吸附亚甲基蓝染料:动力学和等温线研究

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摘要

A multiple linear regression (MLR) model and least square support vector regression (LS-SVM) model with principal component analysis (PCA) was used for preprocessing to predict the efficiency of methylene blue adsorption onto copper oxide nanoparticle loaded on activated carbon (CuO-NP-AC) based on experimental data set achieved in batch study. The PCA-LSSVM model indicated higher predictive capability than linear method with coefficient of determination (R2) of 0.97 and 0.92 for the training and testing data set, respectively. Firstly, the novel nanoparticles including copper oxide as low cost, non-toxic, safe and reusable adsorbent was synthesized in our laboratory with a simple and routine procedure. Subsequently, this new material properties such as surface functional group, homogeneity and pore size distribution was identified by FT-IR, SEM and BET analysis. The methylene blue (MB) removal and adsorption onto the CuO-NP-AC was investigated and the influence of variables such as initial pH and MB concentration, contact time, amount of adsorbent and pH, and temperature was investigated. The results of examination of the time on experimental adsorption data and fitting the data to conventional kinetic model show the suitability of pseudo-second order and intraparticle diffusion model. Evaluation of the experimental equilibrium data by Langmuir, Tempkin, Freundlich and Dubinin Radushkevich (D-R) isotherm explore that Langmuir is superior to other model for fitting the experimental data in term of higher correlation coefficient and lower error analysis.
机译:使用具有主成分分析(PCA)的多元线性回归(MLR)模型和最小二乘支持向量回归(LS-SVM)模型进行预处理,以预测亚甲基蓝吸附到负载在活性炭上的氧化铜纳米颗粒上的效率(CuO- NP-AC)基于在批处理研究中获得的实验数据集。 PCA-LSSVM模型显示出比线性方法更高的预测能力,其中训练和测试数据集的确定系数(R2)分别为0.97和0.92。首先,在我们的实验室中通过简单而常规的方法合成了新型的纳米颗粒,其中包括氧化铜作为低成本,无毒,安全和可重复使用的吸附剂。随后,通过FT-IR,SEM和BET分析确定了这种新的材料特性,例如表面官能团,均匀性和孔径分布。研究了亚甲基蓝(MB)的去除和在CuO-NP-AC上的吸附,并研究了诸如初始pH和MB浓度,接触时间,吸附剂和pH值以及温度等变量的影响。对实验吸附数据进行时间检验并将数据与常规动力学模型拟合的结果表明,伪二级和颗粒内扩散模型是合适的。通过Langmuir,Tempkin,Freundlich和Dubinin Radushkevich(D-R)等温线评估实验平衡数据,发现Langmuir在较高的相关系数和较低的误差分析方面优于其他模型来拟合实验数据。

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