Book Chapter10.1007/978-94-007-4153-9_17
Efficient Conditional Simulation of Spatial Patterns Using a Pattern-Growth Algorithm
Yu-Chun Huang,Sanjay Srinivasan +1 more
- 01 Jan 2012
- pp 209-220
6
TL;DR: A unique pattern-growth algorithm (GrowthSim) is presented in this paper that performs multiple point spatial simulation of patterns conditioned to multiple point data and a scheme for applying affine transformation to spatial patterns is presented to account for local variation in spatial patterns in a target reservoir.
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Abstract: Reproduction of complex 3D patterns is not possible using algorithms that are constrained to two-point (covariance or variogram) statistics. A unique pattern-growth algorithm (GrowthSim) is presented in this paper that performs multiple point spatial simulation of patterns conditioned to multiple point data. Starting from conditioning data locations, patterns are grown constrained to the pattern statistics inferred from a training image. This is in contrast to traditional multiple-point statistics based-algorithms where the simulation progresses one node at a time. In order to render this pattern growth algorithm computationally efficient, two strategies are employed—(i) computation of an optimal spatial template for pattern retrieval, and (ii) pattern classification using filters. To accurately represent the spatial continuity of large-scale features, a multi-level simulation scheme is implemented. In addition, a scheme for applying affine transformation to spatial patterns is presented to account for local variation in spatial patterns in a target reservoir. The GrowthSim algorithm is demonstrated for developing the reservoir model for a deepwater turbidite system. Lobes and channels that exhibit spatial variations in orientation, density and meandering characteristics characterize the reservoir. The capability of GrowthSim to represent such non-stationary features is demonstrated.
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Citations
Simultaneous Estimation of Geologic and Reservoir State Variables Within an Ensemble-Based Multiple-Point Statistic Framework
TL;DR: In this work, a novel methodology for characterizing complex geological structures is presented that integrates dynamic data and an efficient algorithm for pattern search is developed, which works with a flexible search radius and can be optimized for the estimation of either large- or small-scale structures.
A Pilot Point Guided Pattern Matching Approach to Integrate Dynamic Data into Geological Modeling
TL;DR: The Ensemble PATtern method is modified by introducing the pilot-point concept into the algorithm, and a faster MPS method is used to complete the simulation by conditioning to the previously simulated pilot point values.
20
Stochastic simulation of facies using deep convolutional generative adversarial network and image quilting
TL;DR: In this article , a deep convolutional generative adversarial network is used to extract high-dimensional features of facies and a large number of specific geologic patterns are randomly generated based on these features.
13
Multi-fractal conditional simulation of fault populations in coal seams using analogues: Method and application
TL;DR: The modelling of fault populations and quantification of fault risk is a challenge for earth science and engineering applications, including minerals and coal mining, tunnel construction, and tunnel construction.
7
References
•Book
GSLIB: Geostatistical Software Library and User's Guide
Clayton V. Deutsch,Andre G. Journel +1 more
- 18 Feb 1993
TL;DR: In this paper, the authors present a set of programs that summarize data with histograms and other graphics, calculate measures of spatial continuity, provide smooth least-squares-type maps, and perform stochastic spatial simulation.
4.6K
GSLIB: Geostatistical Software Library and User's Guide
TL;DR: GSLIB as discussed by the authors is a source code that can be used as a starting point for custom programs, advanced applications and research, and is addressed to the reasonably advanced practitioner or researcher who need powerful, flexible and documented programs that are not confined to user-friendly menus.
4.3K
Conditional Simulation of Complex Geological Structures Using Multiple-Point Statistics
TL;DR: The approach proposed in this paper consists of borrowing the required multiple-point statistics from training images depicting the expected patterns of geological heterogeneities from the geostatistical numerical model where they are anchored to the actual data in a sequential simulation mode.
1.6K
A Multiple-scale, Pattern-based Approach to Sequential Simulation
G. Burc Arpat,Jef Caers +1 more
- 01 Jan 2005
TL;DR: In the context of multiple-point geostatistics, a new algorithm (SIMPAT) is presented that makes use of a new multiple-grid approach by which the scale relations between the training image patterns are better captured and reproduced.
64
Non-Stationary Multiple-point Geostatistical Models
Sebastien Strebelle,Tuanfeng Zhang +1 more
- 01 Jan 2005
53