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From the Geologists’ Eyes to Synthetic Core Descriptions: Geological Log Modeling Using Well-Log Data
By
Benoit Mathis1, Jean Pierre Leduc1, and Thibault Vandenabeele1
Search and Discovery #40109 (2004)
*Adapted from “extended abstract” for presentation at the AAPG Annual Meeting, Salt Lake City, Utah, May 11-14, 2003.
1Totalfinaelf, 64018 Pau, France
Modeling and propagating core descriptions over uncored areas is of prime
importance regarding the reservoir understanding of a field. Relevant
information observed from only a few cores can be quickly extrapolated over the
whole reservoir using conventional well-log clustering, T2 spectrum
classification, and automated borehole
imaging processes. Furthermore, costs
such as core acquisition, storage, and manpower are greatly reduced.
Geologists usually describe cores in terms of lithology, structure, texture, color, fluid, and fossil content. Most of these items can be investigated by log analysts except fossil content and color. This paper describes a methodology designed to reproduce as closely as possible the core description made by the geologist. It has been proven successful in both clastic and carbonate reservoirs in terms of facies prediction.
Firstly, quality control is performed. Borehole
images must be pre-processed and
conventional well logs normalized where necessary. In a second step, clustering
tools are used to classify conventional log responses by lithology. Clustering
of the T2 spectrum can also be integrated in order to differentiate between
diverse porosity types. Following this,
borehole
images are automatically
interpreted in terms of texture and different types of sedimentary surfaces,
along with their associated attributes.
The model is created using relationships brought out by calibrating the above results with the core description. Its coherency is evaluated using contingency tables. The resulting ‘‘synthetic core description’’ summarizes all the geological information contained in the full log suite and can be used in a similar manner to a core description.
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Recognition of sedimentary lithofacies is of prime importance when
considering the management of uncertainties for the geological model of
a field. This paper discusses how a facies description can be obtained
from a complete well log dataset--including Electrical
Our approach aims to provide rapidly the reservoir geologist with a
virtual core, obtainable throughout the entire reservoir section and
based on the available core data and wireline logs, including EBI and
NMR logs. A sedimentary lithofacies may be first described in terms of
mineralogical content. In the absence of core, this aspect, as well as
reservoir property evaluation, is routinely evaluated by conventional
log interpretation. However, a complete facies description also takes
into account sedimentary structures, texture, and the arrangement of the
different lithologies. In the uncored areas, this complementary facet
was traditionally accessed through manual interpretation of EBI and was
superficially taken into account. Automated interpretation of
In order to create a model, a conventional wireline log suite,
Core Data and Conventional Log Analysis The fundamental parameter for accurate modeling is the availability of a relevant and representative core description for use as calibration. However, the interpreter must be aware that logging-tool resolution causes a smoothing (up-scaling) of the basic geological information which must be taken into account during model construction. All log data are checked and validated (mainly normalized). Wireline log responses are then analyzed to see which help discriminate core facies. These are used as inputs for the clustering phase, the results of which are calibrated to the core facies. A first case study, illustrated in Figure 2, presents the distribution of the different core facies on a Density vs. Neutron cross-plot for a sandstone and shale succession. Despite fuzzy boundaries, the different core groups are well distinguished: - Facies 1 (massive shales) indeed corresponds to the most argillaceous lithologies. - Facies 2 (mud-dominant heterolithic alternations) enriched in quartz compared to Facies 1. - Facies 3 (sand-dominant heterolithic alternations) shows an increase of effective porosity coupled to a trend of decreasing shale content, up to clean siltstones or sandstones. - Facies 4 to 6 are identified as the cleanest sandy lithologies. - Facies 7 (mudstone breccias) is superimposed on the other facies but does not completely belong to the conventional lithology/porosity trend described above. It also appears as an intermediate stage between massive shales and clean, porous sands.
In the case above, comparing the electrofacies classes and the core facies shows that wireline logs permit a confident identification of the distribution of shale, sand, and porosity. In more complex sedimentary environments (e.g., dissolved carbonates), further refinement can be introduced using the T2 NMR spectra (Figure 3), which describe both fluid nature and porosity geometry. For a constant saturation, it is possible to discriminate different porosity network types.
- Image texture attributes classified using a Kohonen 2D neural network. - Bed boundaries take into account specific image attributes (‘‘connective components’’). This process identifies lithological and/or textural changes, although they are not quantified nor qualified. - Bedding takes into account all significant dips, which are automatically picked on the image in a manner comparable to a manual picking.
Additional curves are calculated to characterize the image better, such as event continuity (does it fit all the pads?), event contrast (does it fit a resistivity change?), bedding index (abundance of bedding surfaces in a given depth interval), stratification index (abundance of bed boundaries in a given depth interval), image activity (is the image homogeneous or not?). These are then up-scaled and interpolated to conventional log sampling rate.
The interpreters’ role becomes critical when it comes to combining the lithology from conventional wireline logs with the texture and bedding information from EBI. In effect, this boils down to highlighting and optimizing the relationship between raw mineralogy, image features, and core facies. The use of contingency tables quantifies this relationship and model quality.
The model can be propagated over all relevant wells with appropriate
data sets. Ideally, further comparison should be performed using a cored
well kept aside for the purpose of a blind test. Figure 4 shows a
complete data set and modeling results: conventional wireline log curves
(left side),
A continuous description of the well-bore is obtained in terms of
geological facies using core descriptions as a reference, and both
Beyond the calculation of a synthetic facies column, the process leads to the production of a homogeneous database containing conventional logs and EBI, available for further geological and reservoir studies (e.g., permeability modeling, fracture interpretation, helping seismic and structural understanding using dipmeter trends).
Ye, S., Rabiller, P., and Keskes, N., 1997, Automatic
high resolution sedimentary dip detection on Ye, S., and Rabiller, P., 2000, A new tool for electro-facies analysis: Multi-resolution graph-based custering - SPWLA 41st annual symposium. Leduc, J.P., et al., 2002, FMI based sedimentary facies modeling, Surmont lease (Athabasca, Canada). |