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首页> 外文期刊>Water, Air, and Soil Pollution >Artificial Neural Network (ANN) for Modelling Adsorption of Lead (Pb (II)) from Aqueous Solution
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Artificial Neural Network (ANN) for Modelling Adsorption of Lead (Pb (II)) from Aqueous Solution

机译:人工神经网络(ANN)用于模拟水溶液中铅(Pb(II))的吸附

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摘要

This study investigated the efficiency of rice husk carbon (RHC) for lead (Pb (II)) adsorption. The developed RHC was characterized by CHNS analyser, FTIR and FESEM. BET surface area, micropore area, micropore volume and average pore diameter of RHC were 58.54 m(2)/g, 14.53 m(2)/g, 0.007209 mL/g, and 45.46 angstrom, respectively. Batch adsorption experiments were conducted to assess the effect of initial pH, contact time, initial Pb (II) concentration and RHC dose on Pb (II) removal. A contact time of 120 min and a pH value of 5 were found as optimum for Pb (II) adsorption; maximum adsorption occurred at 8 g/L of RHC dose. Artificial neural network (ANN) was applied to model Pb (II) adsorption. For prediction of Pb (II) adsorption from aqueous solution by RHC, the smallest mean square error (MSE) and the largest coefficient of determination (R-2) values were, respectively, obtained as 6.0053 and 0.988567 with Levenberg-Marquardt algorithm (LMA). Hence, it was selected as the best training algorithm. Traincgf and traincgp functions followed this function with a MSE of 6.1496 and 6.2967, respectively. Adsorption of Pb (II) by RHC followed pseudo-second-order kinetics. The experimental data were described well by both Langmuir and Freundlich isotherm models. Thermodynamics study revealed that Pb (II) adsorption by RHC was spontaneous and endothermic, and the system randomness increased during the whole process. Pb (II) adsorption capacity of RHC was compared with different adsorbents. As evidenced by its high adsorption capacity, RHC can be used as an effective adsorbent for Pb (II) removal from aqueous solutions and wastewaters.
机译:这项研究调查了稻壳碳(RHC)吸附铅(Pb(II))的效率。 CHNS分析仪,FTIR和FESEM对已开发的RHC进行了表征。 RHC的BET表面积,微孔面积,微孔体积和平均孔径分别为58.54 m(2)/g、14.53 m(2)/g、0.007209 mL / g和45.46埃。进行分批吸附实验以评估初始pH,接触时间,初始Pb(II)浓度和RHC剂量对Pb(II)去除的影响。发现120分钟的接触时间和5的pH值最适合Pb(II)吸附;在8 g / L的RHC剂量下发生最大吸附。人工神经网络(ANN)被应用于模型Pb(II)吸附。为了通过RHC预测水溶液中Pb(II)的吸附,使用Levenberg-Marquardt算法(LMA)分别获得了最小均方误差(MSE)和最大测定系数(R-2)值,分别为6.0053和0.988567。 )。因此,它被选为最佳训练算法。 Traincgf和traincgp函数的后继MSE分别为6.1496和6.2967。 RHC对Pb(II)的吸附遵循伪二级动力学。 Langmuir和Freundlich等温线模型很好地描述了实验数据。热力学研究表明,RHC对Pb(II)的吸附是自发的和吸热的,在整个过程中系统的随机性增加。将RHC的Pb(II)吸附容量与不同的吸附剂进行了比较。正如其高吸附能力所证明的那样,RHC可以用作从水溶液和废水中去除Pb(II)的有效吸附剂。

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