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Improved QSPR generalized interaction parameters for the nonrandom two-liquid activity coefficient model

机译:非随机两液活度系数模型的改进QSPR广义相互作用参数

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Phase equilibrium properties are essential in developing and optimizing numerous processes. The objective of this work is the application of a theory-framed quantitative structure-property relationship (QSPR) modeling approach to provide a priori vapor-liquid equilibrium (VLE) predictions. For this purpose, we apply the nonrandom two-liquid (NRTL) activity coefficient model to describe the phase behavior, and then use the QSPR methodology to generalize the substance-specific parameters of the model. Generalizing the parameters of a proven phase behavior model, such as the NRTL, will minimize the need for acquiring costly VLE experimental data for the systems of interest. The newly developed generalized NRTL-QSPR activity coefficient model constitutes a significant improvement over our previous generalization of the NRTL model. Specifically, an internally consistent generalization is provided for the NRTL interaction parameters using a more extensive database involving 578 binary systems. A non-linear QSPR model was developed for the NRTL parameters, where evolutionary algorithms combined with artificial neural networks were used to perform molecular descriptor reduction. The model predicts pressure and temperature of a binary VLE system within 6% and 0.6% average absolute deviation (AAD), respectively. Further, the generalized NRTL phase behavior predictions show a significant improvement over to the group contribution method, Universal Functional Activity Coefficient model (UNIFAC), which resulted in 9% AAD for pressure predictions.
机译:相平衡特性对于开发和优化众多过程至关重要。这项工作的目的是应用理论框架的定量结构-性质关系(QSPR)建模方法,以提供先验的气液平衡(VLE)预测。为此,我们应用非随机两液体(NRTL)活度系数模型来描述相行为,然后使用QSPR方法来概括模型的特定于物质的参数。对经过验证的相位行为模型(例如NRTL)的参数进行一般化,将可以最大程度地减少对目标系统获取昂贵的VLE实验数据的需求。新开发的广义NRTL-QSPR活动系数模型构成了对我们先前对NRTL模型的概括的重大改进。具体而言,使用涉及578个二进制系统的更广泛的数据库为NRTL交互参数提供了内部一致的概括。针对NRTL参数开发了非线性QSPR模型,其中使用进化算法与人工神经网络相结合来执行分子描述符的归约。该模型预测二进制VLE系统的压力和温度分别在6%和0.6%的平均绝对偏差(AAD)之内。此外,广义的NRTL相行为预测显示出对组贡献方法通用功能活度系数模型(UNIFAC)的显着改进,该模型的压力预测的AAD为9%。

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