Journal of Canadian Petroleum Technology
Volume 49,
Number 8,
August 2010,
pp. 59-69
Summary
Accurate characterization of sub-surface oil reservoirs is an essential
prerequisite to the design and implementation of enhanced oil recovery (EOR)
scenarios. Specifically, in reservoir characterization, integrating static and
dynamic data into reservoir models to construct accurate and realistic models
has received considerable attention. Unlike most of the conventional
geostatistical approaches of integrating data into reservoir models that are
based on semi-variograms (two-point statistics) as a measure of spatial
connectivity, a complete multiple-point (MP) statistic framework is presented
in this paper. In contrast to two-point statistic methods, MP statistics-based
methods are capable of reproducing curvilinear geological structures. The
algorithm starts with extracting MP statistics from training images (TI) using
an optimal spatial template. After collecting different patterns and building
the MP histogram, the pattern reproduction process commences. This process
begins from data locations and then grows to fill the whole reservoir domain.
The algorithm accounts for three main practical issues: uncertainty in
geological scenarios, scanning template and non-stationarity. The MP statistics
algorithm (growthsim) is capable of integrating data from multiple data
sources. Among these data types is dynamic data or flow history.
The conventional approach to integrate production information into reservoir
models is by iterative perturbation of the reservoir model until the production
history of the reservoir is matched. Iterative methods have been applied till
date to random fields that are completely characterized by a two-point
co-variance function. In contrast, this paper presents a forward modelling
approach that investigates history matching within a MP modelling framework. A
novel technique implemented in this research is based on the merging of MPs
inferred from history matched and geological models. Pattern growth is
performed subsequently by sampling from the merged MP histograms. History
matched models using the presented approach show an excellent agreement with
underlying geological descriptions and match production history.
© 2010. Society of Petroleum Engineers
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History
- Original manuscript received:
3 April 2008
- Meeting paper published:
18 June 2008
- Revised manuscript received:
7 June 2010
- Manuscript approved:
11 June 2010
- Published online:
4 August 2010
- Version of record:
3 August 2010