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Selection of a minimum toxicity and high performance ionic liquid mixture for the separation of aromatic -aliphatic mixtures by extractive distillation

机译:选择最小毒性和高性能离子液体混合物,通过萃取蒸馏分离芳烃 - 碱性混合物

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The separation of aromatic compounds from naphtha (mainly aliphatics) has a great interest for the petrochemical industry. This separation is commonly carried out by liquid - liquid extraction using different solvents which entails very high energy cost during the solvent recovery steps. Recently, ionic liquids (ILs) have been proposed as entrainers for the separation of this mixtures. In this paper we present a multiobjective optimization to select of ILs. One objective is minimize the toxicity of the mixture of ionic liquids used as entrainer in the separation of aromatics and aliphatics mixtures. The second target is to improve the separation performance in the extractive distillation process. The estimation of the toxicity has been carried out by training an artificial neural network (ANN) from structure information and toxicity values of ionic liquids. Results show a high correlation between the presence of heteroatoms and toxicity. The separation of aromatic and aliphatic hydrocarbons was evaluated through rigorous simulation of an extractive distillation process as detailed in Diaz et al. (2016). The evaluation of objectives was carried out in MATLAB connecting Aspen Plus simulations of the single stage extractive distillation process (vapor-liquid-liquid equilibria)fhrough COM objects and evaluating the trained ANN for the ILs mixtures evaluated in each iteration. The multiobjective optimization of the problem was performed using a derivative free algorithm (genetic algorithm). Results show that l-ethyl-3-methylimidazolium dicyanamide ([EMIM][DCA]) is a promising solvent in terms of separation performance and low toxicity.
机译:从石脑油(主要是蛇族)的芳香化合物的分离对石化工业具有极大的兴趣。这种分离通常通过使用不同溶剂的液 - 液萃取来进行,这些溶剂在溶剂回收步骤期间需要非常高的能量成本。最近,已提出离子液体(ILS)作为分离该混合物的夹带剂。在本文中,我们提出了一种选择ILS的多目标优化。一个目的是最小化在芳烃和磷酸脂肪组混合物分离中使用的离子液体用作夹带剂的混合物的毒性。第二个目标是提高萃取蒸馏过程中的分离性能。通过从离子液体的结构信息和毒性值训练人工神经网络(ANN)来进行毒性的估计。结果显示杂原子和毒性的存在之间的高相关性。通过在Diaz等人中详述的萃取蒸馏过程的严格模拟来评价芳族和脂族烃的分离。 (2016)。目的的评价是在Matlab连接的Aspen Plus模拟中进行单级萃取蒸馏工艺(蒸气 - 液 - 液平衡)Fhrough COM物体,并评估在每次迭代中评价的ILS混合物的培训的ANN。使用衍生自由算法(遗传算法)进行问题的多目标优化。结果表明,在分离性能和低毒性方面,L-乙基-3-甲基咪唑鎓二氰胺([emim] [DCA]是一个有前途的溶剂。

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