ANN Optimization of Adsorption of Naphthalene on Composite Nanoparticles of Chitosan-CTAB-Sodium Bentonite Clay

Olafadehan Oa
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Abstract

In the present study, nanoparticles of chitosan-cetyltrimethylammonium bromide (CTAB)-sodium bentonite clay were synthesized and characterized using EDX, SEM, FTIR, XRF and XRD techniques. The composite material was utilized as adsorbent for the treatment of contaminated aqueous solution containing naphthalene. The adsorption process was modeled and optimized using artificial neural network (ANN) and ANN–genetic algorithm respectively. The process variables considered were surfactant concentration, X1 , activation time, X 2 , activation temperature, X3 , and chitosan dosage, X4 . The predicted ANN models for % removal of naphthalene and adsorption capacity of the composite adsorbent fitted excellently the experimental adsorption data of naphthalene judging from high value of coefficient of determination, 2 R , amongst others and very low values of error functions. The optimum conditions obtained with ANN–GA were X1 = 70.7580 mg/L, X 2 = 2.9940 h, X3 = 99.9880o C, and X 4 = 2.0340 g. The predicted response variables of 99.1461% removal of naphthalene and 249.67 mg/g adsorption capacity of the composite adsorbent using the ANN-GA models were in excellent agreement with their corresponding experimental values of 99.35% and 250.16 mg/g with % errors of 0.2056 and 0.1960 respectively. Consequently, the ANN models and the ANN–GA optimized conditions can be reliably applied to the experimental adsorption data of naphthalene on the chitosan–CTAB–sodium bentonite clay composite nanoparticles as adsorbent. Moreover, the prepared adsorbent in this study is a viable alternative adsorbent for the treatment of industrial wastewater containing polycyclic aromatic compounds, especially naphthalene.
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壳聚糖- ctab -钠基膨润土复合纳米颗粒吸附萘的人工神经网络优化
本研究合成了壳聚糖-十六烷基三甲基溴化铵(CTAB)-钠基膨润土纳米颗粒,并利用EDX、SEM、FTIR、XRF和XRD等技术对其进行了表征。将该复合材料作为吸附剂用于含萘污染水溶液的处理。分别采用人工神经网络(ANN)和遗传算法对吸附过程进行建模和优化。考察了表面活性剂浓度X1、活化时间x2、活化温度X3和壳聚糖用量X4。预测的人工神经网络模型对萘的去除率和复合吸附剂的吸附量具有较高的决定系数、2r等值和较低的误差函数,与萘的实验吸附数据拟合较好。ANN-GA的最佳条件为X1 = 70.7580 mg/L, x2 = 2.9940 h, X3 = 99.9880℃,x2 = 2.0340 g。利用ANN-GA模型预测的复合吸附剂对萘的去除率为99.1461%,吸附量为249.67 mg/g,与相应的实验值99.35%和250.16 mg/g吻合良好,%误差分别为0.2056和0.1960。结果表明,所建立的神经网络模型和优化条件可可靠地应用于壳聚糖- ctab -钠基膨润土复合纳米吸附剂对萘的吸附实验数据。此外,本研究制备的吸附剂是处理含多环芳香族化合物特别是萘的工业废水的可行的替代吸附剂。
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