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A simple approach for the sonochemical loading of Au, Ag and Pd nanoparticle on functionalized MWCNT and subsequent dispersion studies for removal of organic dyes: Artificial neural network and response surface methodology studies

机译:Au,Ag和Pd纳米粒子对官能化MWCNT的一种简单方法及随后的分散研究,用于去除有机染料:人工神经网络和响应面方法研究

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In this study, the artificial neural network (ANN) and response surface methodology (RSM) based on central composite design (CCD) were applied for modeling and optimization of the simultaneous ultrasound-assisted removal of quinoline yellow (QY) and eosin B (EB). The MWCNT-NH2 and its composites were prepared by sonochemistry method and characterized by scanning electron microscopy (SEM), X-ray diffraction (XRD) and energy dispersive spectroscopy (EDS) analysis's. Initial dyes concentrations, adsorbent mass, sonication time and pH contribution on QY and EB removal percentage were investigated by CCD and replication of experiments at conditions suggested by model has results which statistically are close to experimented data. The ultrasound irradiation is associated with raising mass transfer of process so that small amount of the adsorbent (0.025 g) is able to remove high percentage (88.00% and 91.00%) of QY and EB, respectively in short time (6.0 min) at pH = 6. Analysis of experimental data by conventional models is good indication of Langmuir efficiency for fitting and explanation of experimented data. The ANN based on the Levenberg-Marquardt algorithm (LMA) combined of linear transfer function at output layer and tangent sigmoid transfer function at hidden layer with 20 hidden neurons supply best operation conditions for good prediction of adsorption data, Accurate and efficient artificial neural network was obtained by changing the number of neurons in the hidden layer, while data was divided into training, test and validation sets which contained 70, 15 and 15% of data points respectively. The Average absolute deviation (AAD)% of a collection of 128 data points for MWCNT-NH2 and composites is 0.58%.for EB and 0.55 for YQ.
机译:在本研究中,基于中央复合设计(CCD)的人工神经网络(ANN)和响应面方法(RSM)用于喹啉黄色(QY)和eosin B(EB的同时超声辅助去除)。 MWCNT-NH2及其复合材料由SONoChemisty方法制备,其特征在于扫描电子显微镜(SEM),X射线衍射(XRD)和能量分散光谱(EDS)分析。通过CCD研究了初始染料浓度,吸附物质,超声处理时间和对Qγ和EB去除百分比的贡献,并通过模型建议的条件的实验复制具有统计上的结果,统计学接近实验数据。超声辐射与加长过程传质相关,使得少量吸附剂(0.025g)能够分别在短时间(6.0分钟)在pH下除去高百分比(88.00%和91.00%)QY和EB = 6.通过常规模型分析实验数据是Langmuir效率的良好指示,用于拟合和实验数据的解释。基于Levenberg-Marquardt算法(LMA)的ANN组合在输出层的线性传递函数和第二个隐形神经元供应最佳操作条件下的线性传递函数,用于良好预测吸附数据,准确和高效的人工神经网络是通过改变隐藏层中的神经元数而获得,而数据分别分为包含70,15和15%的数据点的训练,测试和验证集。 MWCNT-NH2和复合材料的128个数据点的集合的平均绝对偏差(AAD)%为0.58%。对于YQ,EB和0.55。

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