TY - JOUR
T1 - Oil-recovery predictions for surfactant polymer flooding
AU - Rai, Khyati
AU - Johns, Russell T.
AU - Delshad, Mojdeh
AU - Lake, Larry W.
AU - Goudarzi, Ali
N1 - Funding Information:
The authors are grateful for the financial support provided by the participating companies of the Chemical EOR research program at The University of Texas at Austin . Dr. Russell T. Johns is the Beginning Professor of Petroleum and Natural Gas Engineering in the John and Willie Leone Family Department of Energy and Mineral Engineering at the Pennsylvania State University. He is also a member of the Earth and Mineral Sciences Energy Institute at Penn State. Larry Lake holds the W.A. (Monty) Moncrief Centennial Chair at The University of Texas.
PY - 2013/12
Y1 - 2013/12
N2 - There is increasing interest in surfactant-polymer (SP) flooding because of the need to increase oil production from depleted and water flooded reservoirs. Prediction of oil recovery from SP flooding, however, is complex and time consuming. Thus, a quick and easy method is needed to screen reservoirs for potential SP floods. This paper presents a scaling model that is capable of producing reasonable estimates of oil recovery for a SP flood using a simple spreadsheet calculation. The model is also useful for initial SP design. We present key dimensionless groups that control recovery for a SP flood. The proper physics for SP floods including the optimal salinity in the three-phase region and the trapping number for residual oil saturation determination has been incorporated. Based on these groups, a Box-Behnken experimental design is performed to generate response surface fits for oil recovery prediction at key dimensionless times. The response surfaces derived can be used to estimate the oil recovery potential for any given reservoir and are ideal for screening large databases of reservoirs to identify the most attractive chemical flooding candidates. The response function can also be used for proper design of key parameters for SP flooding. Our model will aid engineers to understand how key parameters affect oil recovery without performing time consuming chemical simulations. This is the first time that dimensionless groups for SP flooding have been derived comprehensively to obtain a response function of oil recovery as a function of dimensionless groups.
AB - There is increasing interest in surfactant-polymer (SP) flooding because of the need to increase oil production from depleted and water flooded reservoirs. Prediction of oil recovery from SP flooding, however, is complex and time consuming. Thus, a quick and easy method is needed to screen reservoirs for potential SP floods. This paper presents a scaling model that is capable of producing reasonable estimates of oil recovery for a SP flood using a simple spreadsheet calculation. The model is also useful for initial SP design. We present key dimensionless groups that control recovery for a SP flood. The proper physics for SP floods including the optimal salinity in the three-phase region and the trapping number for residual oil saturation determination has been incorporated. Based on these groups, a Box-Behnken experimental design is performed to generate response surface fits for oil recovery prediction at key dimensionless times. The response surfaces derived can be used to estimate the oil recovery potential for any given reservoir and are ideal for screening large databases of reservoirs to identify the most attractive chemical flooding candidates. The response function can also be used for proper design of key parameters for SP flooding. Our model will aid engineers to understand how key parameters affect oil recovery without performing time consuming chemical simulations. This is the first time that dimensionless groups for SP flooding have been derived comprehensively to obtain a response function of oil recovery as a function of dimensionless groups.
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U2 - 10.1016/j.petrol.2013.11.028
DO - 10.1016/j.petrol.2013.11.028
M3 - Review article
AN - SCOPUS:84892493128
SN - 0920-4105
VL - 112
SP - 341
EP - 350
JO - Journal of Petroleum Science and Engineering
JF - Journal of Petroleum Science and Engineering
ER -