ECMOR VIII - 8th European Conference on the Mathematics of Oil Recovery 2002
DOI: 10.3997/2214-4609.201405943
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Generation of Low-Order Reservoir Models Using POD, Emperical Grammians and Subspace Identification

Abstract: In this paper we present a number of data-drieen approaches to obtain non-linear low-order models of heterogeneous reservoirs. Relying on the `proper orthogonal decomposition' (POD) method of snapshots, the proposed approaches scale-up an existing high-order dynamic reservoir model to a model of lower order. Combined with so-called `balanced' model order reduction techniques for linear systems the POD methods yield an intuitively motivated and systematic procedure for construction of low-order models for compl… Show more

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Cited by 8 publications
(13 citation statements)
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References 12 publications
(15 reference statements)
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“…2, decrease very rapidly. This is in line with earlier results from [15,19,28] and means that the 441 th order reservoir model behaves like a model of much lower order.…”
Section: Example 1: Homogeneous Permeabilitysupporting
confidence: 81%
See 1 more Smart Citation
“…2, decrease very rapidly. This is in line with earlier results from [15,19,28] and means that the 441 th order reservoir model behaves like a model of much lower order.…”
Section: Example 1: Homogeneous Permeabilitysupporting
confidence: 81%
“…In the following sections, this type of model reduction is not actually applied to reservoir models (as done in [15,19,28]). We merely point out that we can analyze when a high-order model in fact behaves like a loworder one.…”
Section: Balancing and Truncationmentioning
confidence: 99%
“…the number of balanced states required to describe the input-output behavior of the system, is much smaller than 400, which is the total number of the original states. This is also in line with earlier results in Markovinovi膰 et al (2002), Heijn et al (2004) and Zandvliet et al (2008). The second observation is that the slope of the HSV plot decreases as the number of wells (i.e., the number of inputs and outputs 9 ) increases.…”
Section: Example 31supporting
confidence: 79%
“…System-theoretical model reduction techniques such as proper orthogonal decomposition (POD) appear to provide another helpful tool to reduce the complexity of a large-scale model (Heijn et al, 2004;Antoulas 2005;Gildin 2006;Markovinovi膰 2002 and. In these methods, we use the spatial correlation in the states (pressures and saturations) to compute a limited number of spatial patterns (directions) in the state-space coordinates, which can be used to characterize the dominant dynamical variations of the system.…”
Section: Approachmentioning
confidence: 99%
“…[2,33]. For recent applications of system theory to reservoir modeling see [6,14,19,24,25,34,37,38,43].…”
Section: System-theoretical Conceptsmentioning
confidence: 99%