TY - JOUR
T1 - Stochastic generation of explicit pore structures by thresholding Gaussian random fields
AU - Hyman, Jeffrey D.
AU - Winter, Larrabee C.
N1 - Funding Information:
We thank M. Zhang for providing the sample of Berea sandstone, J.M. Hyman, A. Guadagnini and C.M. Newman for several insightful discussions and encouragement, and B. Berman for helping with image processing. We gratefully acknowledge the support of the U.S. Department of Energy through the LANL/LDRD Program for this work (Grant no. DE-AC52-06NA25396 ).
PY - 2014/11/15
Y1 - 2014/11/15
N2 - We provide a description and computational investigation of an efficient method to stochastically generate realistic pore structures. Smolarkiewicz and Winter introduced this specific method in pores resolving simulation of Darcy flows (Smolarkiewicz and Winter, 2010 [1]) without giving a complete formal description or analysis of the method, or indicating how to control the parameterization of the ensemble. We address both issues in this paper. The method consists of two steps. First, a realization of a correlated Gaussian field, or topography, is produced by convolving a prescribed kernel with an initial field of independent, identically distributed random variables. The intrinsic length scales of the kernel determine the correlation structure of the topography. Next, a sample pore space is generated by applying a level threshold to the Gaussian field realization: points are assigned to the void phase or the solid phase depending on whether the topography over them is above or below the threshold. Hence, the topology and geometry of the pore space depend on the form of the kernel and the level threshold. Manipulating these two user prescribed quantities allows good control of pore space observables, in particular the Minkowski functionals. Extensions of the method to generate media with multiple pore structures and preferential flow directions are also discussed. To demonstrate its usefulness, the method is used to generate a pore space with physical and hydrological properties similar to a sample of Berea sandstone.
AB - We provide a description and computational investigation of an efficient method to stochastically generate realistic pore structures. Smolarkiewicz and Winter introduced this specific method in pores resolving simulation of Darcy flows (Smolarkiewicz and Winter, 2010 [1]) without giving a complete formal description or analysis of the method, or indicating how to control the parameterization of the ensemble. We address both issues in this paper. The method consists of two steps. First, a realization of a correlated Gaussian field, or topography, is produced by convolving a prescribed kernel with an initial field of independent, identically distributed random variables. The intrinsic length scales of the kernel determine the correlation structure of the topography. Next, a sample pore space is generated by applying a level threshold to the Gaussian field realization: points are assigned to the void phase or the solid phase depending on whether the topography over them is above or below the threshold. Hence, the topology and geometry of the pore space depend on the form of the kernel and the level threshold. Manipulating these two user prescribed quantities allows good control of pore space observables, in particular the Minkowski functionals. Extensions of the method to generate media with multiple pore structures and preferential flow directions are also discussed. To demonstrate its usefulness, the method is used to generate a pore space with physical and hydrological properties similar to a sample of Berea sandstone.
KW - Direct numerical simulation
KW - Minkowski functionals
KW - Porous media
KW - Stochastic methods
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U2 - 10.1016/j.jcp.2014.07.046
DO - 10.1016/j.jcp.2014.07.046
M3 - Article
AN - SCOPUS:84906495432
SN - 0021-9991
VL - 277
SP - 16
EP - 31
JO - Journal of Computational Physics
JF - Journal of Computational Physics
ER -