Development of ε-insensitive smooth support vector regression for predicting minimum miscibility pressure in CO2 flooding
Successful design of a carbon dioxide (CO2) flooding in enhanced oil recovery projects mostly depends on accurate determination of CO2-crude oil minimum miscibility pressure (MMP). Due to the high expensive and time-consuming of experimental determination of MMP, developing a fast and robust metho...
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doaj-1fc4629010054683b4f0363357e2dca72020-11-25T00:06:25ZengPrince of Songkla UniversitySongklanakarin Journal of Science and Technology (SJST)0125-33952018-02-01401535910.14456/sjst-psu.2018.8Development of ε-insensitive smooth support vector regression for predicting minimum miscibility pressure in CO2 floodingShahram Mollaiy-Berneti0Mehdi Abedi-Varaki1Young Researchers and Elite Club, Bandar Abbas Branch, Islamic Azad University, Bandar Abbas, IranDepartment of Plasma Engineering, Graduate University of Advanced Technology, Kerman, IranSuccessful design of a carbon dioxide (CO2) flooding in enhanced oil recovery projects mostly depends on accurate determination of CO2-crude oil minimum miscibility pressure (MMP). Due to the high expensive and time-consuming of experimental determination of MMP, developing a fast and robust method to predict MMP is necessary. In this study, a new method based on ε-insensitive smooth support vector regression (ε-SSVR) is introduced to predict MMP for both pure and impure CO2 gas injection cases. The proposed ε-SSVR is developed using dataset of reservoir temperature, crude oil composition and composition of injected CO2. To serve better understanding of the proposed, feed-forward neural network and radial basis function network applied to denoted dataset. The results show that the suggested ε-SSVR has acceptable reliability and robustness in comparison with two other models. Thus, the proposed method can be considered as an alternative way to monitor the MMP in miscible flooding process.http://rdo.psu.ac.th/sjstweb/journal/40-1/40-1-6.pdfCO2 floodingminimum miscibility pressureε-insensitive smooth support vector regressionfeed-forward neural networkradial basis function network |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Shahram Mollaiy-Berneti Mehdi Abedi-Varaki |
spellingShingle |
Shahram Mollaiy-Berneti Mehdi Abedi-Varaki Development of ε-insensitive smooth support vector regression for predicting minimum miscibility pressure in CO2 flooding Songklanakarin Journal of Science and Technology (SJST) CO2 flooding minimum miscibility pressure ε-insensitive smooth support vector regression feed-forward neural network radial basis function network |
author_facet |
Shahram Mollaiy-Berneti Mehdi Abedi-Varaki |
author_sort |
Shahram Mollaiy-Berneti |
title |
Development of ε-insensitive smooth support vector regression for predicting minimum miscibility pressure in CO2 flooding |
title_short |
Development of ε-insensitive smooth support vector regression for predicting minimum miscibility pressure in CO2 flooding |
title_full |
Development of ε-insensitive smooth support vector regression for predicting minimum miscibility pressure in CO2 flooding |
title_fullStr |
Development of ε-insensitive smooth support vector regression for predicting minimum miscibility pressure in CO2 flooding |
title_full_unstemmed |
Development of ε-insensitive smooth support vector regression for predicting minimum miscibility pressure in CO2 flooding |
title_sort |
development of ε-insensitive smooth support vector regression for predicting minimum miscibility pressure in co2 flooding |
publisher |
Prince of Songkla University |
series |
Songklanakarin Journal of Science and Technology (SJST) |
issn |
0125-3395 |
publishDate |
2018-02-01 |
description |
Successful design of a carbon dioxide (CO2) flooding in enhanced oil recovery projects mostly depends on accurate
determination of CO2-crude oil minimum miscibility pressure (MMP). Due to the high expensive and time-consuming of
experimental determination of MMP, developing a fast and robust method to predict MMP is necessary. In this study, a new
method based on ε-insensitive smooth support vector regression (ε-SSVR) is introduced to predict MMP for both pure and
impure CO2 gas injection cases. The proposed ε-SSVR is developed using dataset of reservoir temperature, crude oil composition
and composition of injected CO2. To serve better understanding of the proposed, feed-forward neural network and radial basis
function network applied to denoted dataset. The results show that the suggested ε-SSVR has acceptable reliability and
robustness in comparison with two other models. Thus, the proposed method can be considered as an alternative way to monitor
the MMP in miscible flooding process. |
topic |
CO2 flooding minimum miscibility pressure ε-insensitive smooth support vector regression feed-forward neural network radial basis function network |
url |
http://rdo.psu.ac.th/sjstweb/journal/40-1/40-1-6.pdf |
work_keys_str_mv |
AT shahrammollaiyberneti developmentofeinsensitivesmoothsupportvectorregressionforpredictingminimummiscibilitypressureinco2flooding AT mehdiabedivaraki developmentofeinsensitivesmoothsupportvectorregressionforpredictingminimummiscibilitypressureinco2flooding |
_version_ |
1725422115176316928 |