Multiple-point geostatistical modeling based on the cross-correlation functions

An important issue in reservoir modeling is accurate generation of complex structures. The problem is difficult because the connectivity of the flow paths must be preserved. Multiple-point geostatistics is one of the most effective methods that can model the spatial patterns of geological structures, which is based on an informative geological training image that contains the variability, connectivity, and structural properties of a reservoir. Several pixel- and pattern-based methods have been developed in the past. In particular, pattern-based algorithms have become popular due to their ability for honoring the connectivity and geological features of a reservoir. But a shortcoming of such methods is that they require a massive data base, which make them highly memory- and CPU-intensive. In this paper, we propose a novel methodology for which there is no need to construct pattern data base and small data event. A new function for the similarity of the generated pattern and the training image, based on a cross-correlation (CC) function, is proposed that can be used with both categorical and continuous training images. We combine the CC function with an overlap strategy and a new approach, adaptive recursive template splitting along a raster path, in order to develop an algorithm, which we call cross-correlation simulation (CCSIM), for generation of the realizations of a reservoir with accurate conditioning and continuity. The performance of CCSIM is tested for a variety of training images. The results, when compared with those of the previous methods, indicate significant improvement in the CPU and memory requirements.

[1]  J. A. Vargas-Guzmán Unbiased Resource Evaluations with Kriging and Stochastic Models of Heterogeneous Rock Properties , 2008 .

[2]  M. W. Davis,et al.  Production of conditional simulations via the LU triangular decomposition of the covariance matrix , 1987, Mathematical Geology.

[3]  J. P. Lewis,et al.  Fast Template Matching , 2009 .

[4]  A. Journel Combining Knowledge from Diverse Sources: An Alternative to Traditional Data Independence Hypotheses , 2002 .

[5]  Jef Caers,et al.  Stochastic Reservoir Simulation Using Neural Networks Trained on Outcrop Data , 1998 .

[6]  R. Mohan Srivastava,et al.  An Overview of Stochastic Methods for Reservoir Characterization , 1994 .

[7]  W. J. Kleingeld,et al.  The Conditional Simulation of a Cox Process with Application to Deposits with Discrete Particles , 1997 .

[8]  Eric R. Ziegel Statistics for Petroleum Engineers and Geoscientists , 1999, Technometrics.

[9]  Federico Tombari,et al.  ZNCC-based template matching using bounded partial correlation , 2004 .

[10]  Eric R. Ziegel,et al.  Statistics for Petroleum Engineers and Geoscientists (2nd ed.) , 2005 .

[11]  E. Ziegel,et al.  Geostatistics Wollongong '96 , 1997 .

[12]  Henning Omre,et al.  Petroleum Geostatistics , 1996 .

[13]  L. Lake,et al.  A New Approach to Shale Management in Field-Scale Models , 1984 .

[14]  Leon E. Borgman,et al.  Three-Dimensional, Frequency-Domain Simulations of Geological Variables , 1984 .

[15]  Ragnar Hauge,et al.  Well Conditioning in a Fluvial Reservoir Model , 1999 .

[16]  S. Gorelick,et al.  Identifying discrete geologic structures that produce anomalous hydraulic response: An inverse modeling approach , 2008 .

[17]  C. Daly,et al.  Multipoint Statistics in Reservoir Modelling and in Computer Vision , 2007 .

[18]  Douglas M. Hawkins,et al.  Comment on “SPHINX—a program to fit the spherical and exponential models to experimental semivariograms” , 1986 .

[19]  S. Strebelle,et al.  Real-time Post-Processing Method to Enhance Multiple-Point Statistics Simulation , 2007 .

[20]  J. Caers,et al.  A Distance-based Prior Model Parameterization for Constraining Solutions of Spatial Inverse Problems , 2008 .

[21]  Frank Klawonn,et al.  Compensation of Translational Displacement in Time Series Clustering Using Cross Correlation , 2009, IDA.

[22]  Paul Switzer,et al.  Filter-Based Classification of Training Image Patterns for Spatial Simulation , 2006 .

[23]  Jef Caers,et al.  Sequential simulation with patterns , 2005 .

[24]  L. Feyen,et al.  Quantifying geological uncertainty for flow and transport modeling in multi-modal heterogeneous formations , 2006 .

[25]  F. Alabert,et al.  Non-Gaussian data expansion in the Earth Sciences , 1989 .

[26]  J. Caers,et al.  History matching by jointly perturbing local facies proportions and their spatial distribution: Application to a North Sea reservoir , 2007 .

[27]  A. Journel,et al.  Geostatistics for natural resources characterization , 1984 .

[28]  Alexandre Boucher,et al.  Applied Geostatistics with SGeMS: A User's Guide , 2009 .

[29]  J. Wrench Table errata: The art of computer programming, Vol. 2: Seminumerical algorithms (Addison-Wesley, Reading, Mass., 1969) by Donald E. Knuth , 1970 .

[30]  Sebastien Strebelle,et al.  Reservoir Facies Modelling: New Advances in MPS , 2005 .

[31]  J. Vargas-Guzmán,et al.  The Kappa model of probability and higher-order rock sequences , 2011 .

[32]  G. Mariéthoz,et al.  An Improved Parallel Multiple-point Algorithm Using a List Approach , 2011 .

[33]  J. Caers,et al.  Dynamic data integration for structural modeling: model screening approach using a distance-based model parameterization , 2008 .

[34]  A. Journel,et al.  Entropy and spatial disorder , 1993 .

[35]  R. M. Srivastava,et al.  Multivariate Geostatistics: Beyond Bivariate Moments , 1993 .

[36]  J. Caers,et al.  Stochastic Simulation of Patterns Using Distance-Based Pattern Modeling , 2010 .

[37]  Colin Daly,et al.  Higher Order Models using Entropy, Markov Random Fields and Sequential Simulation , 2005 .

[38]  Louis J. Durlofsky,et al.  Optimizing the performance of smart wells in complex reservoirs using continuously updated geological models , 2005 .

[39]  Jef Caers,et al.  Modeling of a Deepwater Turbidite Reservoir Conditional to Seismic Data Using Multiple-Point Geostatistics , 2002 .

[40]  Antoine Saucier,et al.  A patchwork approach to stochastic simulation: A route towards the analysis of morphology in multiphase systems , 2008 .

[41]  Yuhong Liu,et al.  Multiple-point simulation integrating wells, three-dimensional seismic data, and geology , 2004 .

[42]  Jef Caers,et al.  A Distance-based Representation of Reservoir Uncertainty: the Metric EnKF , 2008 .

[43]  A. Ardeshir Goshtasby,et al.  A Two-Stage Cross Correlation Approach to Template Matching , 1984, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[44]  Andre G. Journel,et al.  Conditional fBm Simulation with Dual Kriging , 1994 .

[45]  Ragnar Hauge,et al.  Modeling of Fluvial Reservoirs with Object Models , 1998 .

[46]  Haakon Tjelmeland,et al.  Directional Metropolis : Hastings Updates for Posteriors with Nonlinear Likelihoods , 2005 .

[47]  L. Hu,et al.  Multiple-Point Simulations Constrained by Continuous Auxiliary Data , 2008 .

[48]  Jef Caers,et al.  Abstract: Geostatistical quantification of geological information for a fluvial-type North Sea reservoir , 2000 .

[49]  Andre G. Journel,et al.  Geostatistics: Roadblocks and Challenges , 1993 .

[50]  B. M. Davis Uses and abuses of cross-validation in geostatistics , 1987 .

[51]  Clayton V. Deutsch,et al.  Indicator Simulation Accounting for Multiple-Point Statistics , 2004 .

[52]  Eric R. Ziegel,et al.  Geostatistics for the Next Century , 1994 .

[53]  Clayton V. Deutsch,et al.  ANNEALING TECHNIQUES APPLIED TO RESERVOIR MODELING AND THE INTEGRATION OF GEOLOGICAL AND ENGINEERING (WELL TEST) DATA , 1992 .

[54]  A. Journel,et al.  Fast FILTERSIM Simulation with Score-based Distance , 2008 .

[55]  Gregoire Mariethoz,et al.  The Direct Sampling method to perform multiple‐point geostatistical simulations , 2010 .

[56]  Clayton V. Deutsch,et al.  Hierarchical Object-Based Geostatistical Modeling of Fluvial Reservoirs , 1996 .

[57]  A. Dassargues,et al.  Application of multiple-point geostatistics on modelling groundwater flow and transport in a cross-bedded aquifer (Belgium) , 2009 .

[58]  Roussos Dimitrakopoulos,et al.  Generalized Sequential Gaussian Simulation on Group Size ν and Screen-Effect Approximations for Large Field Simulations , 2004 .

[59]  J. Chilès,et al.  Geostatistics: Modeling Spatial Uncertainty , 1999 .

[60]  Sebastien Strebelle,et al.  Conditional Simulation of Complex Geological Structures Using Multiple-Point Statistics , 2002 .

[61]  Roberto Brunelli,et al.  Face Recognition: Features Versus Templates , 1993, IEEE Trans. Pattern Anal. Mach. Intell..

[62]  Sergios Theodoridis,et al.  Pattern Recognition & Matlab Intro , 2010 .

[63]  C. Deutsch,et al.  Geostatistics Banff 2004 , 2005 .

[64]  Julián M. Ortiz,et al.  Integrating Multiple-point Statistics into Sequential Simulation Algorithms , 2005 .

[65]  J. Kärger,et al.  Flow and Transport in Porous Media and Fractured Rock , 1996 .

[66]  A. Journel Geostatistics for Conditional Simulation of Ore Bodies , 1974 .

[67]  J. Caers,et al.  Conditional Simulation with Patterns , 2007 .

[68]  James Ooi,et al.  New insights into correlation-based template matching , 1991, Defense, Security, and Sensing.

[69]  Muhammad Sahimi,et al.  Development of optimal models of porous media by combining static and dynamic data: the permeability and porosity distributions. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.

[70]  G. Matheron The intrinsic random functions and their applications , 1973, Advances in Applied Probability.

[71]  R. Dimitrakopoulos,et al.  Two-dimensional Conditional Simulations Based on the Wavelet Decomposition of Training Images , 2009 .

[72]  J. Caers Interpreter's Corner—Stochastic integration of seismic data and geologic scenarios: A West Africa submarine channel saga , 2003 .

[73]  Muhammad Sahimi,et al.  Large-scale porous media and wavelet transformations , 2003, Comput. Sci. Eng..

[74]  R. Olea Geostatistics for Natural Resources Evaluation By Pierre Goovaerts, Oxford University Press, Applied Geostatistics Series, 1997, 483 p., hardcover, $65 (U.S.), ISBN 0-19-511538-4 , 1999 .

[75]  Clayton V. Deutsch,et al.  GSLIB: Geostatistical Software Library and User's Guide , 1993 .

[76]  Federico Tombari,et al.  Reliable rejection of mismatching candidates for efficient ZNCC template matching , 2008, 2008 15th IEEE International Conference on Image Processing.

[77]  Philippe Renard,et al.  Stochastic Hydrogeology: What Professionals Really Need? , 2007, Ground water.

[78]  Roussos Dimitrakopoulos,et al.  High-order Statistics of Spatial Random Fields: Exploring Spatial Cumulants for Modeling Complex Non-Gaussian and Non-linear Phenomena , 2009 .

[79]  Heidi Kjønsberg MARKOV MESH SIMULATIONS WITH DATA CONDITIONING THROUGH INDICATOR KRIGING , 2008 .

[80]  Clayton V. Deutsch,et al.  Geostatistical Software Library and User's Guide , 1998 .