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A Novel and Robust Mixing Rule Model Coupled with Neural Network for Rapid Determination of Minimum Miscibility Pressure

机译:结合神经网络的新型鲁棒混合规则模型快速确定最小混溶压力

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Miscible gas injection is one of the most effective enhanced oil recovery techniques. Minimum miscibility pressure is one of the most important parameters in the gas injecting process in oil reservoirs. Accurate determination of this parameter is critical for an adequate design of injection equipment and project investment prospects. In this study, 128 samples of experimental data are used based on a slim tube test. Effective parameters on minimum miscibility pressure are investigated to define independent variables. The mixing rules method is coupled with an artificial neural network to present a new model for simulating the slim tube apparatus. A comparison between the results of the proposed model and the other conventional methods indicated that it is more accurate and rapid in predicting minimum miscibility pressure. The new model yields the lowest average absolute relative error equal to 2.21%, and the lowest standard deviation of error equal to 3.03%. The proposed model is applicable for various injected gases, such as light hydrocarbons gases, pure and impure CO2, nitrogen, and flue gases.
机译:混溶气体注入是最有效的强化采油技术之一。最小溶混压力是储油层注气过程中最重要的参数之一。正确确定该参数对于适当设计注射设备和项目投资前景至关重要。在这项研究中,基于细管测试使用了128个实验数据样本。研究最小混溶压力的有效参数以定义独立变量。混合规则方法与人工神经网络相结合,提出了一种用于模拟细管设备的新模型。所提出的模型的结果与其他常规方法之间的比较表明,它在预测最小混溶压力方面更为准确和快速。新模型产生的最低平均绝对相对误差为2.21%,最低标准偏差为3.03%。提出的模型适用于各种注入气体,例如轻烃气体,纯净和不纯净的CO2,氮气和烟道气。

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