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Modeling temperature-based oil-water relative permeability by integrating advanced intelligent models with grey wolf optimization: Application to thermal enhanced oil recovery processes

机译:通过将先进的智能模型与灰太狼优化相集成,对基于温度的油水相对渗透率进行建模:在热采油工艺中的应用

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Relative permeability is an indispensable parameter that is involved in many sensitive tasks related to reservoir studies. Due to this fact, there is increasing interest about methods that can accurately capture the temperature effect on relative permeability. As the existing empirical methods suffer from inaccuracies and the experimental methods are expensive and time consuming, developing accurate, rapid, and inexpensive model is inevitable to determine temperature-dependent oil/water relative permeability. In this paper, we propose various intelligent approaches to predict the effect of temperature on relative permeability in the oil/water systems (K-ro and K-rw). These approaches are based on two machine-learning methods: least square support vector machine (LSSVM) and radial basis neural network (RBFNN), coupled with four metaheuristic algorithms including particle swarm optimization (PSO), genetic algorithm (GA), differential evolution (DE) and grey wolf optimization (GWO). A large database including 1223 experimental points collected from published literature and some Algerian fields is employed to establish and test the models with the following inputs: absolute permeability, water saturation, reservoir temperature, water viscosity, and oil viscosity. The obtained results revealed that the proposed models can predict the temperature-based oil/water relative permeability with very satisfactory accuracy. Furthermore, graphical and statistical error analyses illustrated that RBFNN-GWO model outperforms the existing correlations and the other established hybridization-based models in predicting both K,, and K, where RBFNN-GWO showed overall determination coefficients (R-2) of 0.9997 and 0.9996, average absolute relative deviations (AARDs%) of 3.4056 and 5.8663, and root mean squared errors (RMSEs) of 0.0073 and 0.0048 for Kr-o and K-rw, respectively. Finally, outliers detection using the Leverage approach confirmed that the proposed RBFNN-GWO model is statistically valid, where only 1.69% and 1.39% of the K-ro and K-rw data points, respectively, may be regarded as doubtful data.
机译:相对渗透率是必不可少的参数,涉及与储层研究有关的许多敏感任务。由于这个事实,人们越来越关注能够准确捕获温度对相对渗透率的影响的方法。由于现有的经验方法存在误差,并且实验方法昂贵且费时,因此不可避免地要开发精确,快速且廉价的模型来确定与温度相关的油/水相对渗透率。在本文中,我们提出了各种智能方法来预测温度对油/水系统(K-ro和K-rw)中的相对渗透率的影响。这些方法基于两种机器学习方法:最小二乘支持向量机(LSSVM)和径向基神经网络(RBFNN),并结合了四种元启发式算法,包括粒子群优化(PSO),遗传算法(GA),差分进化( DE)和灰太狼优化(GWO)。利用包含从已发表的文献和一些阿尔及利亚领域中收集到的1223个实验点的大型数据库,使用以下输入来建立和测试模型:绝对渗透率,水饱和度,储层温度,水粘度和油粘度。获得的结果表明,所提出的模型可以非常令人满意的精度预测基于温度的油/水相对渗透率。此外,图形和统计误差分析表明,在预测K和K时,RBFNN-GWO模型优于现有的相关性模型和其他已建立的基于杂交的模型,其中RBFNN-GWO的整体确定系数(R-2)为0.9997, Kr-o和K-rw的平均绝对相对偏差(AARDs%)为0.94056和5.8663,均方根误差(RMSEs)分别为0.0073和0.0048。最后,使用杠杆方法的离群值检测证实了所提出的RBFNN-GWO模型在统计上是有效的,其中分别仅将K-ro和K-rw数据点的1.69%和1.39%视为可疑数据。

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