基于RSM和ANN的碳纳米管去除水中铜的建模与优化

Elif ÇALGAN, Elif OZMETİN
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引用次数: 0

摘要

本研究旨在利用多壁碳纳米管MWCNT-OH去除水溶液中的重金属铜。采用响应面法(RSM)和人工神经网络(ANN)进行建模和优化。用两种方法推导了模型方程。采用RSM进行方差分析,确定各参数对去除率和吸附量的影响。得到了二元参数相互作用的等值线图,并对两种方法的最大去除效率和最大吸附量进行了优化。MWCNT-OH的去除率为45.1%,吸附量为16.7 mg/g。此外,通过测试实验和建模方法的比较,表明人工神经网络的建模能力优于RSM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling and Optimization of Copper Removal from Water Using Carbon Nanotubes with RSM and ANN
In this study, it was aimed to remove heavy metal copper from aqueous solutions by using MWCNT-OH, which is a multi-walled carbon nanotube. Modelling and optimization were performed using the Response Surface Method (RSM) and Artificial Neural Networks (ANN). Model equations were derived by both methods. ANOVA analyses were performed with RSM to determine the significance of the parameters on removal efficiency and adsorption capacity. Contour graphs showing the binary parameter interactions were obtained Optimization was carried out to obtain the maximum removal efficiency and maximum adsorption capacity using both RSM and ANN. With MWCNT-OH, 45.1 % removal efficiency and 16.7 mg/g adsorption capacity were achieved. In addition, test experiments and modelling methods were compared, revealing that the modelling capability of ANN was superior to that of RSM.
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