Evaluation of Heterocyclic Aromatic Compound Dye (Methylene Blue) on Chitosan Adsorbent Sourced from African Snail Shell: Modelling and Optimization Studies

V. E. Bello, Olaosebikan Abidoye Olafadehan
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引用次数: 2

Abstract

In this article, the modelling and optimization of five operational process parameters involving initial concentration, adsorbent dosage, contact time, temperature and pH of the solution as it affects the treatment of aqueous solution contaminated with methylene blue, a heterocyclic aromatic compound, on chitosan sourced from African Snail Shell were studied using response surface methodology (RSM) and artificial neural network (ANN) techniques coupled with genetic algorithm. The single and interactive effects of the variables were examined by way of analysis of variance (ANOVA). A comparison of the model techniques was done and an evaluation was carried out with some selected error functions. Both modelling and optimization tools performed creditably well. However, the hybrid ANN-GA proved to be a superior modelling and optimization technique with excellent generalization ability which gave an average absolute deviation between the experimental and predicted data of both response variables considered. The insightful relative importance of the process variables based on the renowned Garson and Olden’s algorithm methods coupled with step by step approach initiated in the Matlab environment were equally investigated. The findings from this study revealed in clear terms that pH and initial concentrations were the most influential parameters and the maximum value of 99.28% of methylene blue removed at optimum conditions affirmed that the chitosan adsorbent is viable for the treatment of effluents from the textile industry.  
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非洲蜗牛壳壳聚糖吸附剂对杂环芳香族化合物染料(亚甲基蓝)的评价:建模与优化研究
本文采用响应面法(RSM)和人工神经网络(ANN)技术结合遗传算法,研究了初始浓度、吸附剂用量、接触时间、温度和pH等5个工艺参数对处理非洲蜗牛壳壳聚糖(壳聚糖为杂环芳香族化合物)污染亚甲基蓝水溶液的影响,并对其进行了建模和优化。通过方差分析(ANOVA)检验了变量的单一效应和交互效应。对模型技术进行了比较,并对选定的误差函数进行了评价。建模和优化工具都表现良好。然而,混合ANN-GA被证明是一种卓越的建模和优化技术,具有出色的泛化能力,在考虑的两个响应变量的实验数据和预测数据之间具有平均的绝对偏差。基于著名的Garson和Olden算法方法以及在Matlab环境中发起的逐步方法,对过程变量的深刻相对重要性进行了同样的研究。研究结果表明,pH值和初始浓度对亚甲基蓝的去除率影响最大,在最佳条件下,壳聚糖对亚甲基蓝的去除率达到99.28%,证实了壳聚糖吸附剂对纺织工业废水的处理是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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