Comparative Studies of RSM, RSM–GA and ANFILS for Modeling and Optimization of Naphthalene Adsorption on Chitosan–CTAB–Sodium Bentonite Clay Matrix

Olaosebikan Abidoye Olafadehan, Victor Ehigimetor Bello
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Abstract

The aim of this article was to compare the predictive abilities of the optimization techniques of response surface methodology (RSM), the hybrid of RSM–genetic algorithm (RSM–GA) and adaptive neuro-fuzzy interference logic system (ANFILS) for design responses of % removal of naphthalene and adsorption capacity of the synthesized composite nanoparticles of chitosan–cetyltrimethylammonium bromide (CTAB)–sodium bentonite clay.  The process variables considered were surfactant concentration, , activation time, ,  activation temperature, , and chitosan dosage, .  The ANFILS models showed better modeling abilities of the adsorption data on the synthesized composite adsorbent than those of ANN for reason of lower % mean absolute deviation, lower % error value, higher coefficient of determination, , amongst others and lower error functions’ values than those obtained using ANN for both responses.  When applied RSM, the hybrid of RSM–genetic algorithm (RSM–GA) and ANFILS 3–D surface pot optimization technique to determine the optimal conditions for both responses, ANFILS was adjudged the best.  The ANFILS predicted optimal conditions were = 116.00 mg/L, = 2.06 h, = 81.2oC and = 5.20 g.  Excellent agreements were achieved between the predicted responses of 99.055% removal of naphthalene and 248.6375 mg/g adsorption capacity and their corresponding experimental values of 99.020% and 248.86 mg/g with % errors of -0.0353 and 0.0894 respectively.  Hence, in this study, ANFILS has been successfully used to model and optimize the conditions for the treatment of industrial wastewater containing polycyclic aromatic compounds, especially naphthalene and is hereby recommended for such and similar studies.
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壳聚糖- ctab -钠基膨润土基质对萘吸附的RSM、RSM - ga和ANFILS模拟及优化研究
本文旨在比较响应面法(RSM)、RSM -遗传算法(RSM - ga)和自适应神经模糊干扰逻辑系统(ANFILS)优化技术对设计萘去除率的预测能力和合成的壳聚糖-十六烷基三甲基溴化铵(CTAB) -钠基膨润土复合纳米颗粒的吸附能力。考察了表面活性剂浓度、活化时间、活化温度、壳聚糖用量等工艺参数。与人工神经网络相比,ANFILS模型对合成的复合吸附剂吸附数据的建模能力更好,因为它的平均绝对偏差%更小,误差值%更小,决定系数更高,误差函数值也更小。将RSM -遗传算法(RSM - ga)与ANFILS三维表面罐优化技术相结合,确定两种响应的最优条件,最终确定ANFILS为最优响应。ANFILS预测的最佳条件为= 116.00 mg/L, = 2.06 h, = 81.2oC, = 5.20 g。预测结果表明,99.055%的萘去除率和248.6375 mg/g的吸附量与实验值99.020%和248.86 mg/g吻合良好,误差%分别为-0.0353和0.0894。因此,在本研究中,ANFILS已成功地用于模拟和优化含多环芳香族化合物特别是萘的工业废水的处理条件,并被推荐用于此类和类似的研究。
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