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首页> 外文期刊>RSC Advances >The development of an artificial neural network - genetic algorithm model (ANN-GA) for the adsorption and photocatalysis of methylene blue on a novel sulfur-nitrogen co-doped Fe2O3 nanostructure surface
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The development of an artificial neural network - genetic algorithm model (ANN-GA) for the adsorption and photocatalysis of methylene blue on a novel sulfur-nitrogen co-doped Fe2O3 nanostructure surface

机译:一种人工神经网络遗传算法模型(Ann-Ga)在新型硫 - 氮掺杂Fe2O3纳米结构表面上的亚甲基蓝吸附和光催化分析

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In this study, a new sulfur-nitrogen co-doped Fe2O3 nanostructure was synthesized via a simple and efficient method and characterized via UV-Vis spectrophotometry, X-ray diffraction, field emission scanning electron microscopy, energy-dispersive X-ray spectroscopy, and Brunauer-Emmett-Teller surface area analysis. The as-synthesized nanoparticles showed high efficiency for the removal of methylene blue. The experimental conditions including the dose of the nanoparticle, the concentration of the dye, pH and the light dose were studied and optimized. The removal percentage was approximately 95% in a short time (5 min). A three-layer artificial neural network (ANN) model was proposed for predicting the efficiency of the dye removal. The network was trained using the obtained experimental data at optimum values. Some training functions were tested and their ability to predict different numbers of neurons was evaluated. The coefficient of determination (R-squared) and the mean squared error (MSE) were measured for comparison. In order to improve the accuracy of the prediction and to remove its dependency on the number of neurons, the ANN parameters were optimized using the genetic algorithm (GA). The final model results showed an acceptable agreement with experimental data. Furthermore, the relative importance of the dose of the nanoparticle, the concentration of the dye, and pH on the efficiency were obtained as 39%, 46%, and 15%, respectively. Moreover, interestingly, the obtained results showed that this newly synthesized nanoparticle has some photocatalytic properties with a band gap of 1.65 eV and therefore, it can be proposed as a low-cost visible light-driven photocatalyst for engineering applications.
机译:在该研究中,通过简单有效的方法合成了一种新的硫 - 氮共掺杂Fe2O3纳米结构,并通过UV-Vis分光光度法,X射线衍射,场发射扫描电子显微镜,能量分散X射线光谱,以及Brunauer-Emmett-Teller表面积分析。优选的纳米颗粒表现出高效率的去除亚甲基蓝。研究和优化了包括纳米颗粒的剂量,染料浓度,pH和光剂量的实验条件。除去百分比在短时间内约为95%(5分钟)。提出了一种三层人工神经网络(ANN)模型,用于预测染料去除的效率。使用所获得的实验数据在最佳值下进行培训。测试了一些训练功能,评估了它们预测不同数量的神经元的能力。测量测量速度系数(R角)和平均平方误差(MSE)进行比较。为了提高预测的准确性并去除其对神经元数量的依赖性,使用遗传算法(GA)优化了ANN参数。最终模型结果显示了与实验数据的可接受协议。此外,纳米颗粒的剂量,染料浓度和pH值的相对重要性分别获得为39%,46%和15%。此外,有趣的结果表明,该新合成的纳米颗粒具有带有1.65eV的带隙的一些光催化性能,因此,可以提出作为工程应用的低成本可见光的光催化剂。

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