scholarly journals Crustal Reservoir Flow Simulation for Long-Range Spatially-Correlated Random Poroperm Media

2021 ◽  
Vol 3 (1) ◽  
Author(s):  
Peter Leary ◽  
◽  
Peter Malin
2020 ◽  
Vol 23 (02) ◽  
pp. 518-533
Author(s):  
Manuel Gomes Correia ◽  
João Carlos von Hohendorff Filho ◽  
Denis José Schiozer

2009 ◽  
Author(s):  
Luis Glauber Rodrigues ◽  
Luciane Bonet Cunha ◽  
Richard J. Chalaturnyk

2020 ◽  
Author(s):  
Jan von Harten ◽  
Miguel de la Varga ◽  
Florian Wellmann

<p>Kriging is a widely used geostatistical tool to estimate the value of a spatially correlated property at a certain location based on sampled data in the surrounding domain. It creates a weighted average of this data based on the distances to the point that is to be predicted. Interpolated maps and simulated stationary fields play an important role in various geological fields like flow simulation and resource estimation.</p><p>Distances between locations in a specified domain thus play an important role in the kriging process and are traditionally measured as straight-line distances. In this work we develop an alternative distance metric to these Euclidian distances normally used in the geostatistical worklflow.</p><p>The metric is based on a scalar field that is calculated for 3-D geologic models that are interpolated based on a potential field method implemented in the open-source, implicit geologic modeling tool GemPy.</p><p>The measure follows the curvature of the deformation of stratigraphic units, which is relevant when modeling the distribution of a property that developed before deformation. As an undeformed state of the domain is represented by these distances, authorized variogram and covariance models are still valid with the introduced distance metric.</p><p>In addition, anisotropies can be modeled in relation to the deformation of a layer by manipulating the new distance metric. The kriging calculations and distance measurements are combined in a Sequential Gaussian Simulation to estimate an entire domain, while adequately modeling the underlying variance. We show first promising results of our work using the newly developed distance metric in different geological settings, including folded and faulted domains.</p>


1999 ◽  
Author(s):  
Susan E. Minkoff ◽  
Charles M. Stone ◽  
J. Guadalupe Arguello ◽  
Steve Bryant ◽  
Joe Eaton ◽  
...  

Author(s):  
Denis Voskov ◽  
Hamdi A. Tchelepi

In this work, we generalize the Compositional Space Parameterization (CSP) approach, which was originally developed for compositional two-phase reservoir flow simulation. Tie-line based parameterization methods [1]–[3] were motivated by insights obtained from MOC (Method of Characteristics) theory. The MOC based analytical theory [4] has provided deep understanding of the interactions between thermodynamics and flow. In our adaptive framework, tie-lines are used to represent the solution route of multi-component multiphase displacements. The tie-line information is used as a preconditioner for EOS computations in general-purpose compositional flow simulation.


2017 ◽  
Vol 51 (1) ◽  
pp. 315-328 ◽  
Author(s):  
Menglu Lin ◽  
Shengnan Chen ◽  
Ernest Mbia ◽  
Zhangxing Chen

2005 ◽  
Author(s):  
L. Ganzer ◽  
H. Blaschko ◽  
M. Wittman

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