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Modeling of Cu(II) Adsorption from an Aqueous Solution Using an Artificial Neural Network (ANN)

机译:使用人工神经网络(ANN)从水溶液中吸附Cu(II)的建模(ANN)

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摘要

This research optimized the adsorption performance of rice husk char (RHC4) for copper (Cu(II)) from an aqueous solution. Various physicochemical analyses such as Fourier transform infrared spectroscopy (FTIR), field-emission scanning electron microscopy (FESEM), carbon, hydrogen, nitrogen, and sulfur (CHNS) analysis, Brunauer–Emmett–Teller (BET) surface area analysis, bulk density (g/mL), ash content (%), pH, and pH were performed to determine the characteristics of RHC4. The effects of operating variables such as the influences of aqueous pH, contact time, Cu(II) concentration, and doses of RHC4 on adsorption were studied. The maximum adsorption was achieved at 120 min of contact time, pH 6, and at 8 g/L of RHC4 dose. The prediction of percentage Cu(II) adsorption was investigated via an artificial neural network (ANN). The Fletcher–Reeves conjugate gradient backpropagation (BP) algorithm was the best fit among all of the tested algorithms (mean squared error (MSE) of 3.84 and of 0.989). The pseudo-second-order kinetic model fitted well with the experimental data, thus indicating chemical adsorption. The intraparticle analysis showed that the adsorption process proceeded by boundary layer adsorption initially and by intraparticle diffusion at the later stage. The Langmuir and Freundlich isotherm models interpreted well the adsorption capacity and intensity. The thermodynamic parameters indicated that the adsorption of Cu(II) by RHC4 was spontaneous. The RHC4 adsorption capacity is comparable to other agricultural material-based adsorbents, making RHC4 competent for Cu(II) removal from wastewater.
机译:本研究优化了米壳(RHC4)的铜(Cu(II))从水溶液中的吸附性能。诸如傅里叶变换红外光谱(FTIR),现场排放扫描电子显微镜(FESEM),碳,氢气,氮气和硫(CHN)分析,Brunauer-emmett-exculter(Bet)表面积分析,散装密度等各种物理化学分析(g / ml),进行灰分含量(%),pH和pH以确定RHC4的特征。研究了操作变量,例如水性水溶液,接触时间,Cu(II)浓度和rHC4对吸附的影响。在120分钟的接触时间,pH6和8g / L的RHC4剂量下实现最大吸附。通过人工神经网络(ANN)研究了Cu(II)吸附百分比的预测。 Fletcher-Reeves缀合物梯度背部衰退(BP)算法是最适合所有测试算法(平均平均误差(MSE)为3.84和0.989)。伪二阶动力学模型与实验数据很好,从而表明化学吸附。粒前分析表明,吸附过程最初通过边界层吸附进行,并通过后期的粒径扩散进行。 Langmuir和Freundlich等温线模型解释了吸附能力和强度。热力学参数表明,RHC4的Cu(II)的吸附是自发的。 RHC4吸附能力与其他农业基础的吸附剂相当,使RHC4能够从废水中除去Cu(II)。

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