All Days 2018
DOI: 10.2118/192243-ms
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A Stochastic Optimization Approach for Profit Maximization Using Alkaline-Surfactant-Polymer Flooding in Complex Reservoirs

Abstract: In heterogeneous reservoir formations, water tends to have early breakthrough due to the overriding and viscous fingering during secondary recovery. The overall hydrocarbon recovery efficiency remains very low in gas and water flooding projects because of less viscosity and higher mobility of water and gas. Therefore, there is an underlying need for improving recovery through a suitable chemical enhanced oil recovery (EOR) method. After investigating the feasibility of alkaline, polymer, surfactant, surfactant… Show more

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Cited by 10 publications
(3 citation statements)
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“…Many successful implementations of this science in real oil and gas cases have attracted considerable interest, especially those applying these techniques to predict challenging industry parameters. Some areas of petroleum engineering in which AI techniques have introduced new innovations include: permeability porosity relationship predictions [20,31], hydraulic flow unit identification [32], geomechanics parameters estimation [33,34], geophysical well logs estimation [35,36], drilling parameters estimation [37,38], water saturation prediction [39], enhanced oil recovery [40], and many others. Common traditional AI techniques applied in petroleum engineering applications include ANNs, functional networks (FNs), support vector machines (SVMs), decision trees, and FL.…”
Section: Design For the Adaptive Network-based Fuzzy Inference Systemmentioning
confidence: 99%
“…Many successful implementations of this science in real oil and gas cases have attracted considerable interest, especially those applying these techniques to predict challenging industry parameters. Some areas of petroleum engineering in which AI techniques have introduced new innovations include: permeability porosity relationship predictions [20,31], hydraulic flow unit identification [32], geomechanics parameters estimation [33,34], geophysical well logs estimation [35,36], drilling parameters estimation [37,38], water saturation prediction [39], enhanced oil recovery [40], and many others. Common traditional AI techniques applied in petroleum engineering applications include ANNs, functional networks (FNs), support vector machines (SVMs), decision trees, and FL.…”
Section: Design For the Adaptive Network-based Fuzzy Inference Systemmentioning
confidence: 99%
“…Machine learning and artificial intelligence is making great progress in the oil and gas industry, with various researchers investigating advance applications pertaining to complex/heterogenous systems (Konoshonkin et al, 2020;Ma et al, 2018;Mohaghegh et al, 1994;wu zy and liu, 2018;Zhang et al, 2005Zhang et al, , 2012 (Elkatatny et al, 2016;Tariq, 2018;Tariq et al, 2021Tariq et al, , 2020cTariq et al, , 2020dTariq et al, , 2019aTariq et al, , 2019bTariq and Mahmoud, 2019). A wide range of ML algorithms have been employed to develop models/correlations for estimating various parameters related to hydrocarbons development (Ahmadi et al, 2014;Anifowose et al, 2015;da Silva et al, 2005;Janjua et al, 2016;Khan et al, 2019aKhan et al, , 2019bKhan et al, , 2018bKhan et al, , 2018aKhan et al, , 2018cLi et al, 2020;Tariq et al, 2018Tariq et al, , 2016Tohidi-Hosseini et al, 2016). Lithology determination from well logs utilizing neural networks has been the subject for various publications (Amir et al, 2020;Rogers et al, 1992).…”
Section: Methodsmentioning
confidence: 99%
“…Machine learning is making great progress in the oil and gas industry, with various researchers investigating advance applications pertaining to complex/heterogenous systems (Konoshonkin et al, 2020;Ma et al, 2018;Mohaghegh et al, 1994;wu zy and liu, 2018;Zhang et al, 2005Zhang et al, , 2012 (Elkatatny et al, 2016;Tariq, 2018;Tariq et al, 2021Tariq et al, , 2019aTariq et al, , 2019bZeeshan Tariq et al, 2020b, 2020cTariq and Mahmoud, 2019). A wide range of AI algorithms have been employed to develop models/correlations for estimating various parameters related to hydrocarbons development (Ahmadi et al, 2014;Anifowose et al, 2015;da Silva et al, 2005;Janjua et al, 2016;Khan et al, 2019aKhan et al, , 2019bKhan et al, , 2018bKhan et al, , 2018aKhan et al, , 2018cLi et al, 2020;Tariq et al, 2018Tariq et al, , 2016Tohidi-Hosseini et al, 2016). Lithology determination from well logs utilizing neural networks has been the subject for various publications (Amir et al, 2020;Rogers et al, 1992).…”
Section: Introductionmentioning
confidence: 99%