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Application of adaptive neuro fuzzy interface system optimized with evolutionary algorithms for modeling CO2-crude oil minimum miscibility pressure

机译:进化算法优化的自适应神经模糊接口系统在CO2原油最小混溶压力建模中的应用

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CO2 injection is known as one of the most reliable enhanced oil recovery techniques. The success of every gas injection process depends highly on the minimum miscibility pressure (MMP) needed for the injected gas and the oil to reach miscibility. Therefore, determination of the MMP between the two fluids is of great importance. In this study, a novel intelligent model based on adaptive neuro fuzzy interface system (ANFIS) was developed for predicting MMP values between pure/impure CO2 and reservoir oil at different reservoir conditions based on 270 experimental data points for pure and impure CO2, dead and live oils, reservoir temperature ranges from 293.72 K to 388.73 K, and experimental MMP values range from 6.54 MPa to 31.30 MPa. The ANFIS model was optimized by five different approaches; including Back Propagation (BP), Genetic Algorithm (GA), Particle Swarm Optimization (PSO), Ant Colony Optimization (ACO) and Differential Evolution (DE). A large number of data points from various sources of literature were gathered for model development and verification. In addition, various statistical and graphical erroranalyses were employed to evaluate the performance of the developed models as well as to compare them with major literature models for MMP prediction. The results showed that the ANFIS model optimized by PSO has the highest accuracy among all the models developed in this study as well as literature models, with an average absolute percent relative error of only 7.53%. In addition, all models developed, in this study are more accurate than the existing models and their accuracy are as follows: ANFISPSO > ANFIS-GA > ANFIS-ACO > ANFIS-BP > ANFIS-DE. Lastly, the ANFIS models developed here can be inserted in any simulator to increase the accuracy of predicting pure and impure CO2-crude oil MMP. (C) 2017 Elsevier Ltd. All rights reserved.
机译:注入二氧化碳是最可靠的强化采油技术之一。每个气体注入过程的成功在很大程度上取决于注入的气体和油达到溶混性所需的最小溶混压力(MMP)。因此,确定两种流体之间的MMP非常重要。在这项研究中,基于270个纯净和不纯净CO2,死点和死点的实验数据点,开发了一种基于自适应神经模糊接口系统(ANFIS)的新型智能模型,用于预测不同油藏条件下纯净/不纯净CO2与油藏之间的MMP值。活油,储层温度范围为293.72 K至388.73 K,实验MMP值范围为6.54 MPa至31.30 MPa。通过五种不同的方法优化了ANFIS模型;包括反向传播(BP),遗传算法(GA),粒子群优化(PSO),蚁群优化(ACO)和差异进化(DE)。收集了来自各种文献来源的大量数据点,用于模型开发和验证。此外,采用了各种统计和图形错误分析来评估已开发模型的性能,并将其与MMP预测的主要文献模型进行比较。结果表明,由PSO优化的ANFIS模型在本研究开发的所有模型以及文献模型中具有最高的准确性,平均绝对百分比相对误差仅为7.53%。另外,在本研究中开发的所有模型都比现有模型更准确,其准确性如下:ANFISPSO> ANFIS-GA> ANFIS-ACO> ANFIS-BP> ANFIS-DE。最后,这里开发的ANFIS模型可以插入任何模拟器中,以提高预测纯净和不纯净CO2原油MMP的准确性。 (C)2017 Elsevier Ltd.保留所有权利。

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