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Modeling interfacial tension of normal alkane-supercritical CO_2 systems: Application to gas injection processes

机译:普通烷烃-超临界CO_2系统的界面张力建模:在注气工艺中的应用

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摘要

To study the gas injection scenario for successful implementation of enhanced oil recovery (EOR) processes, the prediction of interfacial tension (IFT) between injected gas and the crude oil is of paramount significance. In the present study, some intelligent methods were developed for determining IFT values between supercritical CO2 and normal alkanes. IFT was considered as a function of temperature, pressure, and molecular weight of normal alkanes. The developed methods were Multilayer perceptron (MLP), Genetic Algorithm Radial Basis Function (GA-RBF), and Conjugate Hybrid-PSO ANFIS (CHPSO-ANFIS). The average absolute percent relative errors (AAREs) for the stated techniques were found to be 2.59%, 1.39%, and 1.81%, respectively, showing that GA-RBF is the most efficient technique. This model was then compared to the other previously developed models in literature. It was also found that the current GA-RBF model with AARE of 1.39% surpasses the previously developed models. Finally, the results of the Leverage approach showed that GA-RBF model could be trusted to predict the IFT of the normal alkane- supercritical CO2 systems in the used range of pressure, temperature, and n-alkanes. This study represents the most reliable technique in predicting the IFT value between supercritical CO2 and normal alkanes to be applied in studies on gas injection processes.
机译:为了研究成功实施提高采油率(EOR)工艺的注气方案,预测注气与原油之间的界面张力(IFT)至关重要。在本研究中,开发了一些智能方法来确定超临界CO2和正构烷烃之间的IFT值。 IFT被认为是温度,压力和正构烷烃分子量的函数。开发的方法是多层感知器(MLP),遗传算法径向基函数(GA-RBF)和共轭混合PSO ANFIS(CHPSO-ANFIS)。发现上述技术的平均绝对相对误差百分比(AARE)分别为2.59%,1.39%和1.81%,这表明GA-RBF是最有效的技术。然后将该模型与文献中其他先前开发的模型进行比较。还发现,当前的AARE为1.39%的GA-RBF模型超过了以前开发的模型。最后,杠杆方法的结果表明,在压力,温度和正构烷烃的使用范围内,可以使用GA-RBF模型预测普通烷烃-超临界CO2系统的IFT。这项研究代表了预测超临界CO2和正构烷烃之间IFT值的最可靠技术,可用于气体注入过程的研究。

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