双层Hydroxide@Graphene氧化物去除乐果农药:响应面法和神经网络优化

IF 1.4 4区 综合性期刊 Q2 MULTIDISCIPLINARY SCIENCES
Shokooh Sadat Khaloo, Ali Jafari, Samaneh Jalali, Reza Gholamnia
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引用次数: 0

摘要

从水中去除农药对于保护生态系统和保护水源不受污染至关重要。利用纳米复合材料进行吸附去除在过去的十年中得到了广泛的关注。本文合成了氧化石墨烯(Mg-Al-LDH@GO)表面的镁铝双层氢氧化物,并利用FESEM、EDS和XRD技术对其进行了表征。以Mg-Al-LDH@GO为吸附剂对水溶液中乐果的脱除进行了优化和建模。采用响应面法(RSM)设计了基于中心复合设计(CCD)的实验。采用RSM-CCD对pH、接触时间、吸附剂剂量、污染物浓度等4个影响对乐果的吸附去除效果的参数进行了优化。结果表明,该二次模型可以较准确地预测去除过程。数值优化结果表明,当乐果浓度为83.7 mg/L时,最佳条件为pH 2.6、接触时间15.3 h、吸附剂用量27.5 mg/100 mL,在此条件下,吸附效率可达86.08%。采用前馈神经网络模型和Levenberg-Marquardt反向传播训练算法对去除过程进行建模。ANN模型在训练、验证、测试和总体上的R²值分别为0.9989、0.9803、0.9984和0.9936,具有较好的响应预测性能。研究结果表明,Mg-Al-LDH@GO是去除水中乐果的潜在吸附剂。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Removal of Dimethoate Pesticide Using Double Layer Hydroxide@Graphene Oxide: Optimization Via Response Surface Methodology and Neural Networks

Removing pesticides from water is essential to protect ecosystems and preserve water sources from pollutants. The use of nanocomposites for adsorption removal has gained attention in the last decade. In this work, Mg-Al double-layer hydroxide coated on graphene oxide (Mg-Al-LDH@GO) was synthesized and characterized using FESEM, EDS, and XRD techniques. The removal of dimethoate from aqueous solution using Mg-Al-LDH@GO as an adsorbent was optimized and modeled. The response surface method (RSM) was employed to design the experiments based on the central composite design (CCD). Four parameters affecting the adsorption removal efficiency of dimethoate, including pH, contact time, adsorbent dose, and pollutant concentration, were optimized using RSM-CCD. The results indicate that the removal process can be accurately predicted by the quadratic model. Numerical optimization results showed that when the concentration of dimethoate is 83.7 mg/L, the optimal conditions are pH 2.6, contact time 15.3 h, and adsorbent dose 27.5 mg/100 mL. Under these conditions, the removal efficiency reached 86.08%. A feed-forward neural network (ANN) model with the Levenberg-Marquardt backpropagation training algorithm was adapted to model the removal process. The performance of the ANN model showed adequate response prediction with R² values of 0.9989, 0.9803, 0.9984, and 0.9936 for training, validation, testing, and overall, respectively. The results obtained in this work demonstrate that Mg-Al-LDH@GO is a potential adsorbent for the removal of dimethoate from water.

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来源期刊
CiteScore
4.00
自引率
5.90%
发文量
122
审稿时长
>12 weeks
期刊介绍: The aim of this journal is to foster the growth of scientific research among Iranian scientists and to provide a medium which brings the fruits of their research to the attention of the world’s scientific community. The journal publishes original research findings – which may be theoretical, experimental or both - reviews, techniques, and comments spanning all subjects in the field of basic sciences, including Physics, Chemistry, Mathematics, Statistics, Biology and Earth Sciences
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