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首页> 外文期刊>Journal of Molecular Liquids >Ultrasonic assisted removal of methylene blue on ultrasonically synthesized zinc hydroxide nanoparticles on activated carbon prepared from wood of cherry tree: Experimental design methodology and artificial neural network
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Ultrasonic assisted removal of methylene blue on ultrasonically synthesized zinc hydroxide nanoparticles on activated carbon prepared from wood of cherry tree: Experimental design methodology and artificial neural network

机译:超声波辅助在樱桃树木制备的超声合成氢氧化锌纳米粒子上的亚甲基蓝色:实验设计方法与人工神经网络

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The zinc hydroxide nanoparticles was synthesized and loaded on activated carbon prepared from wood of cherry tree (Zn (OH)(2)-NPs-AC). Prepared NP based adsorbent was used to remove methylene blue (MB) from aqueous medium. The dependency of MB concentration, pH, adsorbent doses and sonication time on the extent of adsorption was investigated and optimized using response surface methodology (RSM) based on central composite design. Analysis of variance (ANOVA) was made to calculate coefficient of determination (R-2). The best operation of conditions were determined for MB concentration (12.5 mg L-1), pH (6), adsorbent mass (0.025 g) and sonication time (6.5 min). In addition, all the experimental data was used to train the artificial neural network (ANN) model. Performance evaluation of the ANN model by means of squared error (MSE), average absolute percent deviation (AAD%) and correlation coefficient (R2) depicted the experimental value of MSE = 0.0529, MD = 0.1894% and R-2 = 0.98. These values were better than that of obtained from RSM model (MSE = 2.7107, MD = 1.470%, R-2 = 0.9142). It was noted that the equilibrium isotherm data followed Langmuir model with high adsorption capacity. The adsorption kinetics was efficiently represented by combination of pseudo second order and intraparticle diffusion models. (C)2016 Published by Elsevier B.V.
机译:氢氧化锌纳米颗粒合成并装载在由樱桃树的木材制备的活性炭上(Zn(OH)(2)-NPS-AC)上。制备的NP基吸附剂用于从水性介质中除去亚甲基蓝(MB)。基于中央复合设计,研究和优化了MB浓度,pH,吸附剂剂量和超声处理时间对吸附程度的依赖性。使方差分析(ANOVA)计算测定系数(R-2)。测定Mb浓度(12.5mg L-1),pH(6),吸附剂质量(0.025g)和超声处理时间(6.5分钟)测定条件的最佳操作。此外,所有实验数据都用于训练人工神经网络(ANN)模型。通过平方误差(MSE)的ANN模型的性能评估,平均绝对偏差(AAD%)和相关系数(R2)描绘了MSE = 0.0529,MD = 0.1894%和R-2 = 0.98的实验值。这些值优于RSM模型(MSE = 2.7107,MD = 1.470%,R-2 = 0.9142)的比例更好。有人指出,平衡等温数据遵循Langmuir模型,具有高吸附能力。通过伪二阶和骨质型扩散模型的组合有效地表示吸附动力学。 (c)2016年由elestvier b.v出版。

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