Tatar Afshin, Askarova Ingkar, Shafiei Ali, Rayhani Mahsheed
Petroleum Engineering Program, School of Mining and Geosciences, Nazarbayev University, 53 Kabanbay Batyr Avenue, Nur-Sultan 010000, Kazakhstan.
ACS Omega. 2021 Nov 16;6(47):32304-32326. doi: 10.1021/acsomega.1c05493. eCollection 2021 Nov 30.
Low salinity waterflooding (LSWF) and its variants also known as smart water or ion tuned water injection have emerged as promising enhanced oil recovery (EOR) methods. LSWF is a complex process controlled by several mechanisms and parameters involving oil, brine, and rock composition. The major mechanisms and processes controlling LSWF are still being debated in the literature. Thus, the establishment of an approach that relates these parameters to the final recovery factor (RF) is vital. The main objective of this research work was to use a number of artificial intelligence models to develop robust predictive models based on experimental data and main parameters controlling the LSWF determined through sensitivity analysis and feature selection. The parameters include properties of oil, rock, injected brine, and connate water. Different operational parameters were considered to increase the model accuracy as well. After collecting the relevant data from 99 experimental studies reported in the literature, the database underwent a comprehensive and rigorous data preprocessing stage, which included removal of duplicates and low-variance features, missing value imputation, collinearity assessment, data characteristic assessment, outlier removal, feature selection, data splitting (80-20 rule was applied), and data scaling. Then, a number of methods such as linear regression (LR), multilayer perceptron (MLP), support vector machine (SVM), and committee machine intelligent system (CMIS) were used to link 1316 data samples assembled in this research work. Based on the obtained results, the CMIS model was proven to produce superior results compared to its counterparts such that the root mean squared rrror (RMSE) values for both training and testing data are 4.622 and 7.757, respectively. Based on the feature importance results, the presence of Ca in the connate water, Na in the injected brine, core porosity, and total acid number of the crude oil are detected as the parameters with the highest impact on the RF. The CMIS model proposed here can be applied with a high degree of confidence to predict the performance of LSWF in sandstone reservoirs. The database assembled for the purpose of this research work is so far the largest and most comprehensive of its kind, and it can be used to further delineate mechanisms behind LSWF and optimization of this EOR process in sandstone reservoirs.
低盐度水驱(LSWF)及其变体,也被称为智能水或离子调谐注水,已成为很有前景的强化采油(EOR)方法。低盐度水驱是一个由多种机制和参数控制的复杂过程,涉及油、盐水和岩石成分。控制低盐度水驱的主要机制和过程在文献中仍存在争议。因此,建立一种将这些参数与最终采收率(RF)相关联的方法至关重要。这项研究工作的主要目标是使用一些人工智能模型,基于实验数据以及通过敏感性分析和特征选择确定的控制低盐度水驱的主要参数,开发出强大的预测模型。这些参数包括油、岩石、注入盐水和原生水的性质。还考虑了不同的操作参数以提高模型准确性。从文献报道的99项实验研究中收集相关数据后,数据库经历了一个全面且严格的数据预处理阶段,包括去除重复数据和低方差特征、缺失值插补、共线性评估、数据特征评估、异常值去除、特征选择、数据划分(应用80 - 20规则)以及数据缩放。然后,使用了多种方法,如线性回归(LR)、多层感知器(MLP)、支持向量机(SVM)和委员会机器智能系统(CMIS)来关联本研究工作中收集的1316个数据样本。基于所得结果,事实证明CMIS模型比其他同类模型产生的结果更优,训练数据和测试数据的均方根误差(RMSE)值分别为4.622和7.757。基于特征重要性结果,检测到原生水中的钙、注入盐水中的钠、岩心孔隙度和原油的总酸值是对采收率影响最大的参数。这里提出的CMIS模型可以高度自信地应用于预测砂岩油藏中低盐度水驱的性能。为本研究工作目的而收集的数据库是迄今为止同类数据库中最大且最全面的,它可用于进一步阐明低盐度水驱背后的机制以及砂岩油藏中这种强化采油过程的优化。