SPE Annual Technical Conference and Exhibition 2006
DOI: 10.2118/102913-ms
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Robust Waterflooding Optimization of Multiple Geological Scenarios

Abstract: Dynamic optimization of waterflooding using optimal control theory has a significant potential to increase ultimate recovery, as has been shown in various studies. However, optimal control strategies often lack robustness to geological uncertainties. We present an approach to reduce the impact of geological uncertainties in the field development phase known as a robust optimization (RO). RO uses a set of realizations that reflect the range of possible geological structures honoring the statistics of the geolog… Show more

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Cited by 46 publications
(38 citation statements)
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“…This includes partial and sometimes heuristic approaches, valid for particular types of constraints [5,38,39,43], and more systematic approaches, valid for a broader range of constraint equations [9,14,22,33,37]. An important feature in simulations involving highly compressible fluids, which we have in the systems considered here since we inject gas, is the occurrence of transient peaks in the rate in response to changes in well bottom-hole pressure (bottom-hole pressure, or BHP, is the wellbore pressure at a specified depth within the reservoir).…”
Section: Nonlinear Constraintsmentioning
confidence: 99%
See 1 more Smart Citation
“…This includes partial and sometimes heuristic approaches, valid for particular types of constraints [5,38,39,43], and more systematic approaches, valid for a broader range of constraint equations [9,14,22,33,37]. An important feature in simulations involving highly compressible fluids, which we have in the systems considered here since we inject gas, is the occurrence of transient peaks in the rate in response to changes in well bottom-hole pressure (bottom-hole pressure, or BHP, is the wellbore pressure at a specified depth within the reservoir).…”
Section: Nonlinear Constraintsmentioning
confidence: 99%
“…Our third example uses the three-dimensional geological model introduced in [38]. We again consider CO 2 injection, though this model contains a total of six components, defined in Table 6.9.…”
Section: Example 3: Twelve-well Channelized Systemmentioning
confidence: 99%
“…All other settings for model reduction and history matching stayed the same. For this case, we assumed, following Van Essen et al [39], that the main direction of the channels was known, e.g., from seismic measurements, but that no specific knowledge about the channel configuration was available. The set of 100 realizations of the reservoir were sketched by hand based on the geological insight, with a strong vertical correlation, and each realization displayed an alternative channel configuration.…”
Section: Methodsmentioning
confidence: 99%
“…The model, originally introduced by Van Essen et al [39], describes iso-thermal slightly compressible twophase (oil-water) flow, in a channelized reservoir with eight injection and four production wells; see Fig. 2.…”
Section: Model Settingsmentioning
confidence: 99%
“…Because of the inherent uncertainty in the geological characterization of the subsurface, a non-deterministic approach is necessary. Robust life-cycle optimization uses one or more ensembles of geological realizations (reservoir models) to account for uncertainties and to determine the production strategy that maximizes a given objective function over the ensemble (see, e.g., Yeten et al [21] or Van Essen et al [20]). …”
Section: Robust Optimizationmentioning
confidence: 99%