2005
DOI: 10.2118/84372-pa
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Reservoir Monitoring and Continuous Model Updating Using Ensemble Kalman Filter

Abstract: Summary The use of ensemble Kalman filter techniques for continuous updating of reservoir model is demonstrated. The ensemble Kalman filter technique is introduced, and thereafter applied to a simplified 2-D field model, which are generated by using a single horizontal layer from a North Sea field model. By assimilating measured production data, the reservoir model is continuously updated. The updated models give improved forecasts and the forecasts improve as more data is included. Both dyna… Show more

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Cited by 306 publications
(190 citation statements)
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“…Accurate prediction of groundwater flow and the fate of subsurface contaminants is one example (McLaughlin and Townley, 1996;Carrera et al, 2005). The multiphase flow of hydrocarbons in an oil reservoir is another example where accurate predictions have large economic impact (Naevdal et al, 2005;Fu and GomezHernandez, 2008). Subsurface domains are generally heterogeneous and shows wide range of heterogeneities in many physical attributes such as permeability and porosity fields.…”
Section: Introductionmentioning
confidence: 99%
“…Accurate prediction of groundwater flow and the fate of subsurface contaminants is one example (McLaughlin and Townley, 1996;Carrera et al, 2005). The multiphase flow of hydrocarbons in an oil reservoir is another example where accurate predictions have large economic impact (Naevdal et al, 2005;Fu and GomezHernandez, 2008). Subsurface domains are generally heterogeneous and shows wide range of heterogeneities in many physical attributes such as permeability and porosity fields.…”
Section: Introductionmentioning
confidence: 99%
“…As described by Naevdal et al [2003] Jahangiri [2012] are given below (note that only the key equations are provided). The EnKF comprises two main steps, forecast and analysis.…”
Section: Enkf Methodsmentioning
confidence: 99%
“…On the other hand, during the analysis step, new observations from the measurement sets are represented by another ensemble. In order to obtain consistent error propagation using the EnKF, the observations have to be considered as random variables [Naevdal et al, 2003]. This is accomplished by using the actual measurement (or whenever measurements are available) as the reference and the random measurement noise (d) is added to the measurement to obtain the perturbed observations denoted by d obs,j [Evensen, 2003, Naevdal et al, 2003, Jensen, 2007.…”
Section: Enkf Methodsmentioning
confidence: 99%
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“…Several publications have discussed the use of EnKF with oil reservoir models: Naevdal et al [19][20][21], Gu and Oliver [10], Gao and Reynolds [8], Liu and Oliver [15], Wen and Chen [27], and Skjervheim et al [24], showing promising results and, at the same time, raising some possible drawbacks.…”
Section: Introductionmentioning
confidence: 99%