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Modeling of CO2 solubility in crude oil during carbon dioxide enhanced oil recovery using gene expression programming

机译:使用基因表达程序模拟二氧化碳增强采油过程中二氧化碳在原油中的溶解度

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CO2 flooding into the petroleum reservoirs has gained much universal attentions owing to the benefits originated from the reduction of greenhouse gas emission and enhanced oil recovery (EOR). Among the all parameters applied for determining the feasibility of a particular CO2 EOR project especially in the miscible mode, solubility of CO2 has a vital function in the design and simulation of the CO2 injection. CO2 solubility has a prominent contribution to reduction of oil viscosity, IFT reduction, and a rise in swelling of crude oil which leads to the oil mobility increases, and improvement in oil recovery. In the present study, gene expression programming (GEP) as a recently developed and powerful soft-computing technique was utilized for establishing new symbolic CO2 solubility correlations in both dead and live oil systems. Moreover, the prediction capability of the artificial neural network ( ANN) was also examined. For this reason, a database of wide- ranging operational conditions was undertaken from the open literature. The parameters involved in both ANN and GEP-based schemes are temperature, saturation pressure, oil molecular weight, and oil specific gravity in dead oil model. In addition to these parameters, the impact of bubble point pressure has been introduced in live oil system. At the next step, these datasets were separated into the two subsets of training group to construct the model and testing group to check the model capability. For assessing the efficiency of the suggested tool, several statistical calculations and graphical illustrations were utilized. Extensive error analysis applied for the newly suggested GEP-based correlations represents satisfactory agreement with highly accurate results of AARD = 0.0378, and R-2 = 0.9860 in dead oil, and AARD = 0.0376, and R-2 = 0.9844 in live oil. In accordance to the results of this study, the best performance of the extended GEP-based tool in this study was demonstrated compared to the studied literature correlations. The results of trend analysis prove that the proposed model has the best match with the measured datapoints as compared with previously published correlations in both dead and live oil systems. The developed ANN model gives slightly better results than GEP-based correlation in live oil; however, in dead oil the GEPbased strategy is more accurate than the ANN technique. At last, it is found out the GEP-based model can serve as reliable and robust method for rapid and efficient estimation of CO2 solubility in dead and live oil systems.
机译:由于减少温室气体排放和提高石油采收率(EOR)所带来的好处,向石油储层中驱入CO2已引起了广泛关注。在用于确定特定CO2 EOR项目的可行性(尤其是在可混溶模式下)的所有参数中,CO2的溶解度在设计和模拟CO2注入方面具有至关重要的作用。 CO 2溶解度对降低油的粘度,降低IFT以及增加原油的溶胀(导致油的流动性增加)和提高油的采收率具有重要作用。在本研究中,基因表达编程(GEP)作为一种最新开发的功能强大的软计算技术,用于在死油和活油系统中建立新的符号性CO2溶解度相关性。此外,还检查了人工神经网络(ANN)的预测能力。因此,从公开文献中获得了广泛运行条件的数据库。基于ANN和GEP的方案都涉及的参数是死油模型中的温度,饱和压力,油的分子量和油的比重。除了这些参数外,在活油系统中还引入了起泡点压力的影响。下一步,将这些数据集分为训练组的两个子集以构建模型和测试组以检查模型能力。为了评估所建议工具的效率,使用了一些统计计算和图形插图。应用于新建议的基于GEP的相关性的广泛误差分析代表了令人满意的一致性,在死油中AARD = 0.0378和R-2 = 0.9860,在活油中AARD = 0.0376和R-2 = 0.9844具有高度精确的结果。根据这项研究的结果,与研究的文献相关性相比,证明了基于GEP的扩展工具的最佳性能。趋势分析的结果证明,与先前发布的死油和活油系统的相关性相比,该模型与实测数据点具有最佳匹配。与基于GEP的活油相关性相比,开发的ANN模型提供的结果略好。但是,在死油中,基于GEP的策略比ANN技术更准确。最后,发现基于GEP的模型可以作为可靠而可靠的方法,用于快速有效地估算死油和活油系统中的CO 2溶解度。

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