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Artificial neural network-genetic algorithm based optimization for the adsorption of phenol red (PR) onto gold and titanium dioxide nanoparticles loaded on activated carbon

机译:基于人工神经网络-遗传算法的酚红(PR)在活性炭负载的金和二氧化钛纳米颗粒上的吸附优化

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The artificial neural network (ANN) model based on application of Levenberg-Marquardt algorithm (LMA) composed of linear transfer function (purelin) at output layer and tangent sigmoid transfer function (tansig) at hidden layer with 15 and 19 neurons for Au-NP-AC and TiO2-NP-AC, respectively was applied for optimization and prediction of adsorption system behavior. The judgment about applicability of this model was criterion such as mean squared error (MSE) (3.19e(-04)) and coefficient of determination (R-2) 0.9962 were found for removal efficiency of Au-NP-AC. For TiO2-NP-AC, the obtained values for MSE and R-2 were 0.0022 and 0.9729, respectively. It was seen that a good agreement between the experimental data and predicted values based on ANN model was found. The novel approximately green adsorbents with unique advantages such as low cost, locally available and relatively new are applicable for the removal of dyes from aqueous solutions. The optimization has been carried out by fitting the experimental parameters including initial pH, dye concentration, sorbent dosage and contact time to ANN. At initial pH lower than 2 the removal percentage and adsorption of dye on both adsorbent was complete that suggest and confirm their suitability for removal of this dye from complicated real matrices. The isothermal data for adsorption followed the Freundlich and Langmuir models with high monolayer adsorption capacity in short time that confirm their applicability and suggest their attractive candidates for removal of under study dye. (C) 2014 The Korean Society of Industrial and Engineering Chemistry. Published by Elsevier B.V. All rights reserved.
机译:基于Levenberg-Marquardt算法(LMA)的人工神经网络(ANN)模型,该模型由输出层的线性传递函数(purelin)和隐层的切线S形传递函数(tansig)组成,具有15和19个神经元的Au-NP -AC和TiO2-NP-AC分别用于优化和预测吸附系统的行为。关于该模型适用性的判断是诸如Au-NP-AC去除效率的均方误差(MSE)(3.19e(-04))和测定系数(R-2)0.9962等判据。对于TiO2-NP-AC,获得的MSE和R-2值分别为0.0022和0.9729。可以看出,在实验数据和基于ANN模型的预测值之间找到了很好的一致性。具有独特优势(例如低成本,本地可用和相对较新)的新颖的近似绿色的吸附剂​​可用于从水溶液中去除染料。通过拟合实验参数(包括初始pH,染料浓度,吸附剂剂量和与ANN的接触时间)进行了优化。在初始pH值低于2时,染料的去除率和在两种吸附剂上的吸附均完成,这表明并证实了它们适用于从复杂的实际基质中去除这种染料。吸附的等温数据遵循短时间内具有高单层吸附能力的Freundlich和Langmuir模型,证实了它们的适用性,并提出了诱人的候选物用于去除待研究的染料。 (C)2014韩国工业和工程化学学会。由Elsevier B.V.发布。保留所有权利。

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