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Photodegradation process of Eosin y using ZnO/SnO_2 nanocomposites as photocatalysts: Experimental study and neural network modeling

机译:ZnO / SnO_2纳米复合材料作为光催化剂对曙红y的光降解过程:实验研究和神经网络建模

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摘要

A series of coupled ZnO/SnO_2 nanocomposites were prepared with different molar ratios (1:10, 1:2, 2:1, and 10:1), using a homogeneous co-precipitation method. The structural properties were evaluated by different techniques: XRD, UVDR, SEM, N_2 adsorption, and IR. The photocatalytic activity of the samples was tested with the main goal of Eosin Y degradation from wastewaters. The prepared nanocomposites/systems exhibit higher photocatalytic activity than a single semiconductor photocatalyst and ZnO can effectively improve the photocatalytic efficiency of SnO_2 under UV illumination. A direct neural network modeling methodology, based on feed-forward neural networks, was performed in order to evaluate the efficiency of the photodegradation process of Eosin Y, depending of the reaction conditions. The developed model considered the following parameters with significant influence on the approached process: crystallite size, surface area, absorbtion edge, TOC values, time of reaction, and catalyst concentration as inputs and the final dye concentration as output. Accurate results were obtained in the validation phase of the neural model: relative average error under 4 % and a correlation between experimental and simulation data of 0.999.
机译:使用均相共沉淀法制备了具有不同摩尔比(1:10、1:2、2:1和10:1)的一系列ZnO / SnO_2偶联纳米复合材料。通过不同的技术评估结构性能:XRD,UVDR,SEM,N_2吸附和IR。测试了样品的光催化活性,其主要目标是从废水中降解曙红Y。制备的纳米复合材料/体系比单一的半导体光催化剂具有更高的光催化活性,ZnO可以有效提高SnO_2在紫外光下的光催化效率。基于前馈神经网络,进行了直接神经网络建模方法,以便根据反应条件评估曙红Y的光降解过程的效率。所开发的模型考虑了以下参数,这些参数对所接近的过程具有重大影响:微晶尺寸,表面积,吸收边缘,TOC值,反应时间和催化剂浓度作为输入,最终染料浓度作为输出。在神经模型的验证阶段获得了准确的结果:相对平均误差在4%以下,实验数据与模拟数据之间的相关性为0.999。

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