Day 1 Tue, June 07, 2016 2016
DOI: 10.2118/180716-ms
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Integration of Artificial Intelligence and Production Data Analysis for Shale Heterogeneity Characterization in SAGD Reservoirs

Abstract: SAGD recovery is strongly impacted by distributions of heterogeneous shale barriers, which impede the vertical growth and lateral spread of a steam chamber and potentially reduce oil production. Conventional reservoir heterogeneities characterization workflows that entail updating static reservoir models with dynamic flow data are quite time-consuming. Furthermore, numerical flow simulation could provide only approximate solutions to the recovery responses, as numerous simplifications and assumptions must be i… Show more

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Cited by 5 publications
(1 citation statement)
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“…Artificial Neural Networks (ANN) were employed to correlate those parameters to a number of SAGD performance indicators. ANN has also been used to analyze heavy oil recovery in a number of previous works (Queipo et al, 2002;Ahmadloo et al, 2010;Karambeigi et al, 2011;Popa et al, 2011;Zerafat et al, 2011;Popa and Patel, 2012;Amirian et al, 2015;Ma et al, 2016). In particular, ANN was implemented in Ma et al (2015) recently to construct a series of data-driven models from an actual SAGD field dataset.…”
Section: Introductionmentioning
confidence: 99%
“…Artificial Neural Networks (ANN) were employed to correlate those parameters to a number of SAGD performance indicators. ANN has also been used to analyze heavy oil recovery in a number of previous works (Queipo et al, 2002;Ahmadloo et al, 2010;Karambeigi et al, 2011;Popa et al, 2011;Zerafat et al, 2011;Popa and Patel, 2012;Amirian et al, 2015;Ma et al, 2016). In particular, ANN was implemented in Ma et al (2015) recently to construct a series of data-driven models from an actual SAGD field dataset.…”
Section: Introductionmentioning
confidence: 99%