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Prediction of oil-water relative permeability in sandstone and carbonate reservoir rocks using the CSA-LSSVM algorithm

机译:CSA-LSSVM算法预测砂岩和碳酸盐储层岩石中的油水相对渗透性

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摘要

Relative permeability of multiphase flow through porous media plays a vital role in the petroleum industry, especially in enhanced oil recovery (EOR) processes. In this study, models were developed based on a combination of Least-Square Support Vector Machine and Couple Simulated Annealing (CSA-LSSVM) algorithm to predict oil-water relative permeability in sandstone and carbonate porous media. Comparing the model to thousands of experimental data resulted in overall squared correlation coefficients (R-2) of 0.9866 and 0.9965, and minimum squared errors (MSEs) of 0.0014 and 0.000143 for K-ro and K-rw, respectively. In addition, Model predictions were found to agree excellently with experimental data. The results of CSA-LSSVM model were compared with some of the well-known mathematical equations including the Purcell, Burdine, Brooks and Corey, Corey, and some empirical correlations for predicting the oil-water relative permeability in a heterogeneous carbonate core sample. The models developed in this study outperform the mathematical equations and empirical correlations yielding an overall squared correlation coefficients of 0.9987 and 0.9994, and minimum squared errors of 0.0003 and 0.0049 for K-ro and K-rw, respectively. Finally, leverage value was introduced to analyze the whole dataset from which 19 points were diagnosed as possible outlier experimental data.
机译:通过多孔介质的多相流动的相对渗透性在石油工业中起着至关重要的作用,特别是在增强的溢油(EOR)过程中。在该研究中,基于最小二乘支持向量机和耦合模拟退火(CSA-LSSVM)算法的组合开发了模型,以预测砂岩和碳酸盐多孔介质中的油水相对渗透性。将模型与数千个实验数据进行比较导致0.9866和0.9965的总平方相关系数(R-2),以及0.0014和0.000143的最小平方误差(MSE)分别用于K-RO和K-RW。此外,发现模型预测与实验数据很高兴。将CSA-LSSVM模型的结果与一些众所周知的数学方程进行了比较,包括斑块,挤粉,布鲁克斯和Corey,Corey以及一些经验相关性,用于预测异质碳酸核酸核样品中的油水相对渗透性。本研究开发的模型优于数学方程和经验相关性,其总平方相关系数为0.9987和0.9994,以及K-RO和K-RW的最小平方误差为0.0003和0.0049。最后,引入了利用价值来分析从中诊断出19个点的整个数据集,这是可能的异常试验数据的诊断。

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