Modelling minimum miscibility pressure of CO2-crude oil systems using deep learning, tree-based, and thermodynamic models: Application to CO2 sequestration and enhanced oil recovery

[Display omitted] •Minimum miscibility pressure of crude oil-CO2 is modeled by computational approaches.•Tree-based, deep learning, mixing cell, and empirical models were used for modeling.•CatBoost can predict all data with average absolute relative error of 1.34 %.•CatBoost model outperforms all d...

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Veröffentlicht in:Separation and purification technology 2023-04, Vol.310, p.123086, Article 123086
Hauptverfasser: Lv, Qichao, Zheng, Rong, Guo, Xinshu, Larestani, Aydin, Hadavimoghaddam, Fahimeh, Riazi, Masoud, Hemmati-Sarapardeh, Abdolhossein, Wang, Kai, Li, Junjian
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Sprache:eng
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Zusammenfassung:[Display omitted] •Minimum miscibility pressure of crude oil-CO2 is modeled by computational approaches.•Tree-based, deep learning, mixing cell, and empirical models were used for modeling.•CatBoost can predict all data with average absolute relative error of 1.34 %.•CatBoost model outperforms all deep learning, tree-based, mixing cell, and empirical models.•Leverage approach illustrates that the data are valid and modeling is statistically correct. The energy demand is still increasing across the globe, while environmental concerns about global warming effect and greenhouse gases have augmented recently. CO2 injection into mature oil reservoirs is an interesting operation that could help us supply the uprising demand while saving the environment. Having accurate knowledge about CO2 minimum miscibility pressure (MMP) is of utmost importance in designing a successful operation. This study mainly focuses on proposing several tools based on powerful tree-based and deep learning algorithms for estimating the MMP of CO2-crude oil system based on an extensive databank. The models employed in this study include extreme gradient boosting (XGBoost), categorical boosting (CatBoost), light gradient boosting machine (LGBM), random forest (RF), deep multi-layer neural network (deep MLN), deep belief network (DBN), and convolutional neural network (CNN). The models were trained and verified using 310 data points. Along with intelligent models, seven popular empirical correlations and two computational approaches, which are based on thermodynamics, were utilized to be compared with the proposed models. The outcomes expressed that the CatBoost model could estimate CO2 MMP values, using mole percent of volatile (C1 and N2) and intermediate (CO2, H2S, and C2–C5) fractions of oil, the average critical temperature of injection gas (Tcave), reservoir temperature (Tres), and molecular weight of C5+ fraction of oil (MWc5+) as input variables, with a total AARD of 1.34 %. Moreover, the variable impact examination showed that reservoir temperature greatly affects the MMP predictions. Finally, the Leverage approach verified the reliability of the databank and wide applicability domain of the developed CatBoost model spotting 5 outlier points (out of 310 points) only. The findings of this communication shed light on the high accuracy and reliability of CatBoost model in estimating CO2 MMP in a wide range of operational conditions.
ISSN:1383-5866
1873-3794
DOI:10.1016/j.seppur.2022.123086