Geostatistical modeling of clay spatial distribution in siliciclastic rock samples using the plurigaussian simulation method

In order to implement secondary and enhanced oil recovery processes in complex terrigenous formations as is usual in turbidite deposits, a precise knowledge of the spatial distribution of shale grains is a crucial element for the fluid flow prediction. The reason of this is that the interaction of water with shale grains can significantly modify their size and/or shape, which in turn would cause porous space sealing with the subsequent impact in the flow. In this work, a methodology for stochastic simulations of spatial grains distributions obtained from scanning electron microscopy images of siliciclastic rock samples is proposed. The aim of the methodology is to obtain stochastic models would let us investigate the shale grain behavior under various physico-chemical interactions and flux regimes, which in turn, will help us get effective petrophysical properties (porosity and permeability) at core scale. For stochastic spatial grains simulations a plurigaussian method is applied, which is based on the truncation of several standard Gaussian random functions. This approach is very flexible, since it allows to simultaneously manage the proportions of each grain category in a very general manner and to rigorously handle their spatial dependency relationships in the case of two or more grain categories. The obtained results show that the stochastically simulated porous media using the plurigaussian method adequately reproduces the proportions, basic statistics and sizes of the pore structures present in the studied reference images.

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Main Authors: Méndez-Venegas,Javier, Díaz-Viera,Martín A.
Format: Digital revista
Language:English
Published: Universidad Nacional Autónoma de México, Instituto de Geofísica 2013
Online Access:http://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S0016-71692013000300003
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spelling oai:scielo:S0016-716920130003000032014-02-24Geostatistical modeling of clay spatial distribution in siliciclastic rock samples using the plurigaussian simulation methodMéndez-Venegas,JavierDíaz-Viera,Martín A. Geostatistics porous media monogaussian plurigaussian spatial distribution siliciclastic rock In order to implement secondary and enhanced oil recovery processes in complex terrigenous formations as is usual in turbidite deposits, a precise knowledge of the spatial distribution of shale grains is a crucial element for the fluid flow prediction. The reason of this is that the interaction of water with shale grains can significantly modify their size and/or shape, which in turn would cause porous space sealing with the subsequent impact in the flow. In this work, a methodology for stochastic simulations of spatial grains distributions obtained from scanning electron microscopy images of siliciclastic rock samples is proposed. The aim of the methodology is to obtain stochastic models would let us investigate the shale grain behavior under various physico-chemical interactions and flux regimes, which in turn, will help us get effective petrophysical properties (porosity and permeability) at core scale. For stochastic spatial grains simulations a plurigaussian method is applied, which is based on the truncation of several standard Gaussian random functions. This approach is very flexible, since it allows to simultaneously manage the proportions of each grain category in a very general manner and to rigorously handle their spatial dependency relationships in the case of two or more grain categories. The obtained results show that the stochastically simulated porous media using the plurigaussian method adequately reproduces the proportions, basic statistics and sizes of the pore structures present in the studied reference images.info:eu-repo/semantics/openAccessUniversidad Nacional Autónoma de México, Instituto de GeofísicaGeofísica internacional v.52 n.3 20132013-09-01info:eu-repo/semantics/articletext/htmlhttp://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S0016-71692013000300003en
institution SCIELO
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country México
countrycode MX
component Revista
access En linea
databasecode rev-scielo-mx
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region America del Norte
libraryname SciELO
language English
format Digital
author Méndez-Venegas,Javier
Díaz-Viera,Martín A.
spellingShingle Méndez-Venegas,Javier
Díaz-Viera,Martín A.
Geostatistical modeling of clay spatial distribution in siliciclastic rock samples using the plurigaussian simulation method
author_facet Méndez-Venegas,Javier
Díaz-Viera,Martín A.
author_sort Méndez-Venegas,Javier
title Geostatistical modeling of clay spatial distribution in siliciclastic rock samples using the plurigaussian simulation method
title_short Geostatistical modeling of clay spatial distribution in siliciclastic rock samples using the plurigaussian simulation method
title_full Geostatistical modeling of clay spatial distribution in siliciclastic rock samples using the plurigaussian simulation method
title_fullStr Geostatistical modeling of clay spatial distribution in siliciclastic rock samples using the plurigaussian simulation method
title_full_unstemmed Geostatistical modeling of clay spatial distribution in siliciclastic rock samples using the plurigaussian simulation method
title_sort geostatistical modeling of clay spatial distribution in siliciclastic rock samples using the plurigaussian simulation method
description In order to implement secondary and enhanced oil recovery processes in complex terrigenous formations as is usual in turbidite deposits, a precise knowledge of the spatial distribution of shale grains is a crucial element for the fluid flow prediction. The reason of this is that the interaction of water with shale grains can significantly modify their size and/or shape, which in turn would cause porous space sealing with the subsequent impact in the flow. In this work, a methodology for stochastic simulations of spatial grains distributions obtained from scanning electron microscopy images of siliciclastic rock samples is proposed. The aim of the methodology is to obtain stochastic models would let us investigate the shale grain behavior under various physico-chemical interactions and flux regimes, which in turn, will help us get effective petrophysical properties (porosity and permeability) at core scale. For stochastic spatial grains simulations a plurigaussian method is applied, which is based on the truncation of several standard Gaussian random functions. This approach is very flexible, since it allows to simultaneously manage the proportions of each grain category in a very general manner and to rigorously handle their spatial dependency relationships in the case of two or more grain categories. The obtained results show that the stochastically simulated porous media using the plurigaussian method adequately reproduces the proportions, basic statistics and sizes of the pore structures present in the studied reference images.
publisher Universidad Nacional Autónoma de México, Instituto de Geofísica
publishDate 2013
url http://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S0016-71692013000300003
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