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人工神经网络在紫外/过氧化氢工艺处理甲基叔丁基醚(MTBE)污染废水建模中的应用。

Application of artificial neural networks for modeling of the treatment of wastewater contaminated with methyl tert-butyl ether (MTBE) by UV/H2O2 process.

作者信息

Salari D, Daneshvar N, Aghazadeh F, Khataee A R

机构信息

Petroleum Research Laboratory, Department of Applied Chemistry, Faculty of Chemistry, University of Tabriz, Tabriz, Iran.

出版信息

J Hazard Mater. 2005 Oct 17;125(1-3):205-10. doi: 10.1016/j.jhazmat.2005.05.030.

Abstract

During the last two decades, methyl tert-butyl ether (MTBE) has been widely used as an additive to gasoline (up to 15%) both to increase the octane number and as a fuel oxygenate to improve air quality by reducing the level of carbon monoxide in vehicle exhausts. The present work mainly deals with photooxidative degradation of MTBE in the presence of H2O2 under UV light illumination (30W). We studied the influence of the basic operational parameters such as initial concentration of H2O2 and irradiation time on the photodegradation of MTBE. The oxidation rate of MTBE was low when the photolysis was carried out in the absence of H2O2 and it was negligible in the absence of UV light. The addition of proper amount of hydrogen peroxide improved the degradation, while the excess hydrogen peroxide could quench the formation of hydroxyl radicals (OH). The semi-log plot of MTBE concentration versus time was linear, suggesting a first order reaction. Therefore, the treatment efficiency was evaluated by figure-of-merit electrical energy per order (E(Eo)). Our results showed that MTBE could be treated easily and effectively with the UV/H2O2 process with E(Eo) value 80 kWh/m3/order. The proposed model based on artificial neural network (ANN) could predict the MTBE concentration during irradiation time in optimized conditions. A comparison between the predicted results of the designed ANN model and experimental data was also conducted.

摘要

在过去二十年中,甲基叔丁基醚(MTBE)已被广泛用作汽油添加剂(含量高达15%),既能提高辛烷值,又作为燃料含氧化合物,通过降低车辆尾气中的一氧化碳水平来改善空气质量。本工作主要研究了在紫外光(30W)照射下,过氧化氢存在时MTBE的光氧化降解。我们研究了过氧化氢初始浓度和照射时间等基本操作参数对MTBE光降解的影响。在没有过氧化氢的情况下进行光解时,MTBE的氧化速率较低,而在没有紫外光的情况下则可忽略不计。添加适量的过氧化氢可改善降解效果,而过量的过氧化氢会抑制羟基自由基(OH)的形成。MTBE浓度与时间的半对数图呈线性,表明为一级反应。因此,通过每级电能品质因数(E(Eo))来评估处理效率。我们的结果表明,采用UV/H2O2工艺,E(Eo)值为80 kWh/m3/级时,MTBE能够被轻松且有效地处理。基于人工神经网络(ANN)提出的模型能够预测优化条件下照射时间内的MTBE浓度。还对设计的ANN模型预测结果与实验数据进行了比较。

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