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Toward smart schemes for modeling CO_2 solubility in crude oil: Application to carbon dioxide enhanced oil recovery

机译:朝着原油中的CO_2溶解度建模的智能方案:应用于二氧化碳增强的采油

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This paper presents an artificial intelligence-based numerical investigation on the CO2 solubility in live and dead oils for possible CO2-enhanced oil recovery (EOR). A thorough smart modeling was accomplished by utilizing Multilayer Perceptron (MLP) and Radial Basis Function (RBF) neural network predictors integrated with seven vigorous optimization algorithms. Furthermore, Group Method of Data Handling (GMDH) approach was manipulated to achieve explicit mathematical expressions for the scope of the current study. The modeling was performed on a rich source of data derived from the previously published works. Assessments regarding all extended models demonstrated the Absolute Average Relative Error (AARD) ranges of 1.19%-3.47% and 1.63%-3.13% for live and dead oils, respectively. This indicates the prosperousness of all suggested models for anticipating the CO2 solubility in live/dead oil. A comparison between the proposed models indicated the marginally better performance of the MLP-LM (AARD = 1.19%) and MLP-SCG (AARD = 1.63%) in the case of live and dead oils, respectively. Additionally, the implemented models were compared against various published approaches, and the results revealed that the majority of our newly generated models outperform the prior approaches. In addition, the established GMDH-derived correlations were found to be the most truthful in comparison to other explicit literature correlations. These results provide significant insights for understanding the complex physicochemical processes of CO2-EOR and accurately predicting CO2 solubility in live and dead oils in reservoirs.
机译:本文介绍了对现场和死油中的CO2溶解度基于人工智能的数值研究,以获得可能的CO2-增强的溢油(EOR)。通过利用多层的Perceptron(MLP)和径向基函数(RBF)神经网络预测器与七种剧烈优化算法集成来实现彻底的智能建模。此外,操纵数据处理(GMDH)方法的组方法以实现目前研究范围的明确数学表达式。对从先前发布的作品的丰富数据来进行建模。关于所有扩展模型的评估证明了实时和死油的绝对平均相对误差(AARD)范围为1.19%-3.47%和1.63%-3.13%。这表明所有建议模型的繁荣程度预期在活/死油中的CO2溶解度。所提出的模型之间的比较表明,在Live和死油的情况下,MLP-LM(AARD = 1.19%)和MLP-SCG(AARD = 1.63%)的略微更好的性能。此外,将实施的模型与各种公开的方法进行比较,结果表明,我们的大多数新产生的模型优于现有方法。此外,与其他明确的文献相关性相比,发现已建立的GMDH导出的相关性是最真实的。这些结果为了解CO2-EOR的复杂物理化学方法提供了重要的见解,并准确地预测储层中的活油和死油中的CO2溶解度。

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