4.6 Article

Data-Driven Analyses of Low Salinity Waterflooding in Carbonates

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 14, 页码 -

出版社

MDPI
DOI: 10.3390/app11146651

关键词

low salinity waterflooding; carbonates; data-driven analysis; machine learning; SVM; ANN; DT

资金

  1. Nazarbayev University through the NU Faculty Development Competitive Research Grants program [110119FD4541]

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Low salinity water injection in carbonates has the potential to improve oil recovery, although the exact relationship between controlling parameters and its effects is still uncertain. Data analysis approaches, including linear regression and machine learning models, were used to study the correlations between oil/brine parameters and the incremental recovery factor. Decision tree model showed the best correlation among the machine learning models, highlighting the complex nonlinear relationships involved in LSW effect.
Low salinity water (LSW) injection is a promising Enhanced Oil Recovery (EOR) technique that has the potential to improve oil recovery and has been studied by many researchers. LSW flooding in carbonates has been widely evaluated by coreflooding tests in prior studies. A closer look at the literature on LSW in carbonates indicates a number of gaps and shortcomings. It is difficult to understand the exact relationship between different controlling parameters and the LSW effect in carbonates. The active mechanisms involved in oil recovery improvement are still uncertain and more analyses are required. To predict LSW performance and study the mechanisms of oil displacement, data collected from available experimental studies on LSW injection in carbonates were analyzed using data analysis approaches. We used linear regression to study the linear relationships between single parameters and the incremental recovery factor (RF). Correlations between rock, oil, and brine properties and tertiary RF were weak and negligible. Subsequently, we analyzed the effect of oil/brine parameters on LSW performance using multivariable linear regression. Relatively strong linear correlations were found for a combination of oil/brine parameters and RF. We also studied the nonlinear relationships between parameters by applying machine learning (ML) nonlinear models, such as artificial neural network (ANN), support vector machine (SVM), and decision tree (DT). These models showed better data fitting results compared to linear regression. Among the applied ML models, DT provided the best correlation for oil/brine parameters, as ANN and SVM overfitted the testing data. Finally, different mechanisms involved in the LSW effect were analyzed based on the changes in the effluent PDIs concentration, interfacial tension, pH, zeta potential, and pressure drop.

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