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利用纳米复合水炭基材料的机器学习模型深入研究左氧氟沙星吸附作用。

Insights into levofloxacin adsorption with machine learning models using nano-composite hydrochars.

机构信息

Environmental Sciences Department, Faculty of Science, Alexandria University, Alexandria, 21511, Egypt; Green Technology Group, Faculty of Science, Alexandria University, Alexandria, 21511, Egypt.

Environmental Sciences Department, Faculty of Science, Alexandria University, Alexandria, 21511, Egypt; Green Technology Group, Faculty of Science, Alexandria University, Alexandria, 21511, Egypt.

出版信息

Chemosphere. 2024 May;355:141746. doi: 10.1016/j.chemosphere.2024.141746. Epub 2024 Mar 22.

Abstract

Hydrothermal carbonization was applied to taro peel wastes to produce hydrochars using a facile and environmentally friendly process. Four different entities were prepared: hydrochar (TPh), phosphoric-activated hydrochar (P-TPh), and silver@hydrochars (Ag@TPh, Ag@P-TPh). The elemental compositions of the single and composite hydrochars were confirmed by EDX. Among the produced hydrochars, the morphology of the Ag@hydrochar composites demonstrated more wrinkled structure, and Ag nanoparticles decorated the surface. The optimal experimental conditions for levofloxacin adsorption were determined to be a contact time of 45 min, hydrochar dose of 0.15 g L, and pH of 7. The best adsorption performances were assigned to Ag@hydrochars. Two machine learning models were applied to predict the levofloxacin adsorption efficiency of the Ag@hydrochars. A central composite design (CCD) and a 3-10-1 artificial neural network (ANN) model were developed to estimate the removal performance of levofloxacin using Levenberg-Marquardt backpropagation algorithm based on correlation and error analysis of the adopted training functions. Furthermore, the ANN sensitivity analysis revealed the order of the relative importance variable as initial concentration> hydrochar dose> pH. The predicted values of the CCD and ANN models fitted the experimental results with R> 0.989. Therefore, the applied models were effective in predicting levofloxacin removal under different operating conditions. This work provides an open option for the sustainable management of food industry wastes and the possibility of waste valorization to effective hydrochar composites to be applied in water treatment processes.

摘要

水热碳化法被应用于芋头皮废弃物中,通过简便、环保的工艺生产水炭。共制备了四种不同的实体:水炭(TPh)、磷酸活化水炭(P-TPh)和银@水炭(Ag@TPh、Ag@P-TPh)。通过 EDX 确认了单一和复合水炭的元素组成。在所制备的水炭中,Ag@水炭复合材料的形态表现出更褶皱的结构,并且 Ag 纳米颗粒装饰在表面。左氧氟沙星吸附的最佳实验条件确定为接触时间 45 分钟、水炭剂量 0.15 g/L 和 pH 值 7。最佳吸附性能归因于 Ag@水炭。两种机器学习模型被应用于预测 Ag@水炭对左氧氟沙星的吸附效率。采用中心复合设计(CCD)和 3-10-1 人工神经网络(ANN)模型,基于所采用的训练函数的相关性和误差分析,应用 Levenberg-Marquardt 反向传播算法来估计左氧氟沙星的去除性能。此外,ANN 敏感性分析揭示了相对重要性变量的顺序为初始浓度>水炭剂量>pH 值。CCD 和 ANN 模型的预测值与 R>0.989 的实验结果拟合良好。因此,所应用的模型在不同操作条件下预测左氧氟沙星的去除效果是有效的。这项工作为食品工业废物的可持续管理提供了一个开放的选择,并为将废物增值为有效的水炭复合材料应用于水处理过程提供了可能性。

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