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Calculation of the Binary Interaction and Nonrandomness Parameters of NRTL, NRTL1, and NRTL2 Models Using Genetic Algorithm for Ternary Ionic Liquid Systems

机译:基于遗传算法的三元离子液体系统NRTL,NRTL1和NRTL2模型的二元相互作用和非随机性参数的计算

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摘要

One of the most important applications of thermodynamics is the accurate prediction of fluid phase equilibria problems related to real chemical engineering processes. Various equations of state as well as activity coefficient models have been developed for such calculations with many interaction, size, and randomness parameters, which should be optimized based on powerful and effective computational methods. Leading to globally optimal values, genetic algorithm (GA) as a powerful and effective tool can be used for prediction of the interaction parameters of thermodynamic models in complex liquid-liquid equilibrium (LLE) systems. It requires only lower and upper bounds for the interaction parameters and the necessary initial guesses are produced automatically. In the present work, based on the GA method, a global optimization procedure is introduced for calculation of the binary interaction and nonrandomness parameters of NRTL, NRTL1, and NRTL2 activity coefficient models for 20 ternary aromatic extraction systems containing 16 different ionic liquids at various temperatures. The values of the parameters along with the root-mean-square deviations (rmsd) are reported. The results, in terms of rmsd for NRTL, NRTL1, and NRTL2 models, are very satisfactory, with global values of 0.0031, 0.0020, and 0.0053 for 187 tie-lines respectively. The obtained rmsd values for the NRTL model using the GA method are better than those reported in the literature. The rmsd results for the three studied models show that NRTL1 can handle the LLE calculations with more accuracy than the original NRTL and NRTL2 activity coefficient models.
机译:热力学最重要的应用之一是准确预测与实际化学工程过程有关的液相平衡问题。已经为具有许多相互作用,大小和随机性参数的这种计算开发了各种状态方程以及活动系数模型,应基于强大有效的计算方法对其进行优化。导致全局最优值的遗传算法(GA)作为一种功能强大且有效的工具,可用于预测复杂液-液平衡(LLE)系统中热力学模型的相互作用参数。它只需要交互参数的上下限,就可以自动生成必要的初始猜测。在目前的工作中,基于GA方法,引入了全局优化程序来计算NRTL,NRTL1和NRTL2活性系数模型的NRTL,NRTL2和NRTL2活性系数模型的二元相互作用和非随机性参数,该模型包含20种不同温度下的16种离子液体。报告参数值以及均方根偏差(rmsd)。就NRTL,NRTL1和NRTL2模型的均方根而言,结果非常令人满意,187条联系线的全局值分别为0.0031、0.0020和0.0053。使用GA方法获得的NRTL模型的均方根值优于文献报道的均方根值。三个研究模型的rmsd结果表明,与原始NRTL和NRTL2活度系数模型相比,NRTL1可以更准确地处理LLE计算。

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