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PSAutomatic Detection of the Degree of Compaction in Reservoir Rocks Based on Visual Knowledge*
Carlos Eduardo Santin1, Mara Abel2, Karin Goldberg3 and Luiz Fernando De Ros3
Search and Discovery Article #80061 (2009)
Posted October 15, 2009
* Adapted from poster presentation at AAPG Annual Convention and Exhibition, Denver, Colorado, USA, June 7-10, 2009.
1Endeeper Rock Knowledge Systems, Porto Alegre, RS, Brazil ([email protected])
2Institute of Informatics, UFRGS, Porto Alegre, RS, Brazil
3Petroleum Geology Program, UFRGS, Porto Alegre, RS, Brazil
A
low-cost method is proposed for evaluating the degree of compaction in
reservoir rocks by
using
automatic inference methods on optical
photomicrographs. In order to reproduce the visual interpretation performed
during petrographic analysis, a hybrid method was developed combining
image-processing algorithms with knowledge representation and reasoning models.
The method proposed was inspired on visual attention, the mechanism used
by the human brain for dealing with visual information. This mechanism allows
the brain to filter the huge amount of information that comes through the eyes,
selecting the relevant elements to be further analysed by the highly abstract
level of reasoning. The process involves the decomposition of scenes, and the
competition among their different aspects in order to isolate and select the
relevant areas. In other words, the eyes of petrographers initially examine a
thin-section by capturing and isolating the grains borders (outlines), and then
focus on the grains. The outlines are essential to separate each grain from
other grains and their interstices, because petrographic analysis is performed
in the two-dimensional universe of thin-sections. The knowledge at this level
is modelled in terms of Sections (grains), Outlines (borders of
grains), and Interstices, which may be Pores (empty) or NonPores (e.g. cement, matrix). The shapes of the outlines (mainly concave or
convex), complemented by the detection of the impregnation blue resin,
indicates if they contain Pores, NonPores or Sections. The
types of contacts between grains are then used to define the degree of
compaction of the rocks. The
system
provides a preliminary identification of
the objects that can be interactively refined by the user when the grain
outlines are unclear in the images. The evaluation of compaction degree
provided by this method is far more sensitive and precise than those based on
the intergranular volume or number of intergranular contacts. This formalized
interpretation method shows better results for the complex tasks of reservoir
quality characterization and prediction.
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uCompaction Evaluation of Siliciclastic Rocks uKnowledge Modelling of Visual Aspects
uCompaction Evaluation of Siliciclastic Rocks uKnowledge Modelling of Visual Aspects
uCompaction Evaluation of Siliciclastic Rocks uKnowledge Modelling of Visual Aspects
uCompaction Evaluation of Siliciclastic Rocks uKnowledge Modelling of Visual Aspects
uCompaction Evaluation of Siliciclastic Rocks uKnowledge Modelling of Visual Aspects
uCompaction Evaluation of Siliciclastic Rocks uKnowledge Modelling of Visual Aspects
uCompaction Evaluation of Siliciclastic Rocks uKnowledge Modelling of Visual Aspects
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The quality of a rock as a petroleum reservoir is strongly affected by the post-depositional (diagenetic) processes that modify the original porosity and permeability of the sediments. Petrographic analysis allows the capture of relevant aspects for determining the depositional and diagenetic history and for understanding how the sequence of processes has affected reservoir quality. Petrographic descriptions provide fundamental information for petroleum exploration and production.
In the last years we have developed a software suite named Petroledge® that allows the acquisition and management of detailed petrographic information of siliciclastic and carbonate reservoir rocks. Petrographic information is selected and modelled based on visual features recognized during description, to which Petroledge® provides a symbolic representation, formalizing the whole vocabulary of petrographic description in a domain ontology. With this information, and based on artificial intelligence methods, Petroledge® performs diagenetic interpretations that help in the characterization and prediction of reservoir quality (De Ros, Goldberg et al., 2007).
In this paper, we explain how the Petroledge® suite was
improved in order to provide the evaluation of compaction degree of
reservoirs by
Compaction Evaluation of Siliciclastic Rocks
The quality of a rock as a petroleum reservoir is essentially defined by its porosity and permeability values. Basically, three diagenetic processes are responsible by the modification of the intergranular volume from clastic rocks during burial: mechanical compaction, chemical compaction and cementation. (Figure 1) The mechanical compaction causes the reduction of the intergranular volume by rearrangement, fracturing or ductile deformation of the grains. Chemical compaction reduces the intergranular volume by dissolving the grains along their contacts. Cementation causes obstruction of the intergranular pores by the precipitation of new minerals, mostly without reducing the intergranular volume. The intensity of mechanical and chemical compaction defines the degree of proximity – or packing – of the grains, which can be loose, normal or tight. As the packing changes from loose to tight, the types of contacts between grains change from point contact, to long, to concaves-convex and to sutured (Taylor, 1950). (Figure 2)
Other method for evaluating the
degree of compaction involves comparing the present intergranular volume
(IGV) with the original IGV, measured
Our
Knowledge Modelling of Visual Aspects
In order to identify evidence for image interpretation in
the physical level to be used to support the reasoning process in the
knowledge level, we propose a knowledge representation model in three levels
of abstraction, summarized in Figure 3. In
the first one, the Image Processing Level, we have the basic elements of the
image, which are pixels and image entities. (Figure
4) Each image is referenced to a spatial
In the Visual Level, we provide representation primitives to
be associated to the elements of the image that are separated by visual
attention object recognition. (Figure 5)
Knowledge acquisition experiments showed that the visual attention
The objects captured and
labelled in the visual level are then processed in the Semantic Level, in order
to extract the meaning of shapes and contacts for compaction interpretation.
The
A domain ontology is a
formal representation of the consensual meaning of the objects in a
particular domain (Gómez-Pérez, Fernández-López et al., 2004).
Ontologies are being used to define a standard vocabulary and to formalize
the shared meaning of it in such a way that it can be understood and applied
by computers. Ontologies have been shown a strong approach in representing
the knowledge used to support automatic inference processing in expert
The identities of the objects in each level are guaranteed by mapping tables that associate the primitives of each level of representation, such as, Section in the visual level and Grain in the semantic level. These tables allow recovering the reasoning process by showing how a particular petrographic feature recognized in the thin-section was used to support the inference on degree of compaction.
Our inference mechanism receives the rock image, the segmented image and the size scale. The sections in the segmented image are individualized, and the main shape, concave or convex, is determined. Grains, defined by their convex shapes are identified, and their largest axes are measured. Pores are identified by the blue resin colour. After the physical processing of the image, the elements are associated to the objects in the visual level. In that level, the outlines are analysed in terms of topology and the type and number of contacts are defined. (Figure 6) Currently, the process of contact type definition is manually performed, however an implementation to automatic detect them based on the geometry of outlines at the contacts is under development. The whole set of information are applied to determine the compaction level and the intergranular volume.
The workflow at Figure 7 shows how the data processing is done in our approach, since the
rock description
The automatic interpretation of visual content is still an area under study that does not offer largely accepted technical solutions due to difficulties to extract meaning from images in different domains. In order to perform automatic image interpretation, it is necessary to provide a symbolic representation of visualized objects, so that this information can be processed. The use of ontologies stands out for that purpose, as they allow visual knowledge representation in a very similar way to human image interpretation process.
We use this approach in order to interpret the level of
compaction of petroleum reservoirs, based on photomicrographs collected
during petrographic description. Since our approach is based on the shape of
the contact between grains, it is not affected by the common deformations of
the image caused by optical capture. These deformations, such as the
parallax, that augment the area of the grains as far as are the grains from
the center of the optical
Although the
We acknowledge the support of the Brazilian Research Council (CNPq) and Agency for Studies and Projects Funding (FINEP).
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