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Understanding Reservoir Architecture: Combining Continuous Fluid Facies Mapping, Pressure Measurements, Downhole Fluid Analysis, and Geochemical Analyses*
By
Daniel McKinney1, Hani Elshahawi1, Matthew Flannery1, Mohamed Hashem1, Lalitha Venkatramanan2, and Oliver Mullins2
Search and Discovery Article #40229 (2007)
Posted February 4, 2007
*Adapted from extended abstract prepared for presentation at AAPG 2006 International Conference and Exhibition, Perth, Australia, November 5-8, 2006
1Shell International, E&P, Houston, TX
2Schlumberger Oilfield Services, Houston, TX
Introduction
Identifying compartmentalization and understanding reservoir structure are of critical importance to reservoir development. Traditional methods of identifying reservoir compartmentalization, such as drill stem tests and extended well tests, often become impractical in deepwater settings with costs approaching the costs of new wells and emissions becoming increasingly undesirable. Thus, compartments often have to be identified by some other means. Identification of reservoir compartmentalization by pressure gradient analyses, downhole fluid analysis (DFA), and geochemical fingerprinting are all means for identifying barriers, with DFA being a recently introduced novel approach. Independently, each technique has its limitations, but, together, they are a powerful tool for providing insights into reservoir architecture. This paper presents two case studies where the authors have used these techniques in a single well penetration (i.e., vertical barrier identification) and comparison of data in two wells in the same structure (i.e., lateral variability).
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Case I: Assessment of Vertical Barriers in a Single Well Penetration
Figure 1 displays
the gamma ray, resistivity and
Several interesting features are observed in
Table 1. First, F and G appear to have
similar fluid
Application of Fluid Comparison Algorithm (FCA
described by Venkatramanan et al., 2006, and H. Elshahawi et al.,
2006) to analyze fluids G and J showed that
the fluid
The gentle composition or GOR gradient seen
between fluids J, H, and I is expected for an oil column in vertical
communication. Open-hole logs suggest that this vertical span is fairly
homogeneous. Analysis of gradient densities is in agreement with this
assessment. It is suggested that this part of the well is in vertical
communication. 13C/13C
ratio determination on the mud-gas methane isotopes across this interval
supports this interpretation; a clear increase in isotopic trend with
depth suggests increasing contribution from thermogenic-sourced methane
(Figure 2). The gradual decline in methane
concentration in the mud-gas indicates wetness increasing with depth
with no step-changes, supporting the gradual
The confirmation of vertical
compartmentalization between G and J and a compositional gradient
between J and I directly impacts reservoir modeling, reserves booking,
and development planning. Drainage projections and reserve calculations
cannot treat the whole interval as a continuous unit, and scope for
recovery could be significantly reduced. Gas injection and
Case II: Cross Well Application.
Figure 3 displays
a well schematic cartoon of Case II. In this example, there are two
suspected flow-barriers that intersect the main borehole and side-track,
as illustrated in Figure 4. To test the
presence of these barriers, the Application of FCA to analyze fluids in the main borehole led to a probability matrix shown in Table 2. As a rule of thumb, when the output probability of FCA is less than 0.5, we classify the two fluids being compared as being “statistically similar,” referring to downhole optical fluid properties being within the error-bar of the measurement. When the probability is between 0.5 and 0.95, the fluids are classified as “statistically indeterminate”, referring to the lack of clear optical distinction between the two fluids. From the probability matrix in Table 2, we infer that fluids #1A and #1B (across the top suspected barrier, see Figure 4) are statistically similar to each other. Similarly, fluids #2A and #2B and fluids #3A and #3B are statistically similar to each other. The differences between fluids #1B and #2B, which are above the second barrier, and fluids #3A and #3B, which are below the second barrier, are statistically indeterminate. Fluid differences (if any) can only be distinguished from other measurements.
Geochemical fingerprinting, which has
similarities to the FCA methodology by comparing variations in fluid
compositions, confirms these observations.
Figure 5A shows that the two fluid samples collected in the original
hole are nearly identical to one another on the spider plot. In
addition, pressure-gradient analysis does not indicate any obvious
discontinuities or possible barriers in the original hole. Two pieces of
data that do indicate the significance of these barriers are the
strontium residual salt analysis (SrRSA) and vertical interference
testing (VIT). SrRSA data (Figure 5B) show
clear changes in the 87Sr/87Sr ratio exactly where
the calcite streaks are evident on the logs; indicative of changes in
the paleo oil- Application of FCA to analyze fluids in the side-track yields the probability matrix shown in Table 3. Again, the fluids assayed in the side-track are statistically similar to each other in their optical properties. The fluids in the main-hole (first column) are compared to fluids in the side-track (first row) in Table 4. In this case, because different spectrometers were used to assay the fluids downhole, a larger uncertainty in the measurement ( e s = 0.02) was used in data analysis with FCA. Again, though, geochemical fingerprinting between fluids collected in the original hole and side-track are nearly identical (Figure 5B). Also, statistical analysis of the pressure gradients between the two wellbores does not indicate any significant difference that cannot be described by expected compositional grading. Thus, the sand unit is still expected to be in communication between the two wellbores. This may indicate some of the limitations of the FCA methodology in that variability observed in a given wellbore on the same MDT run is more easily interpreted compared to multiple runs and differing wellbores within a given field.
SummaryA practical problem that most oil companies face is determining the number of sampling stations because of the associated cost. They need to know if fluid A is different from fluid B before committing themselves to sampling and further detailed analysis in the laboratory. Careful pressure gradient analysis and FCA addresses this by providing a framework to quantify uncertainties and identify if fluids are statistically different, thus resulting in optimized sampling and a continuous downhole fluid log. In general, the integration of pressure data, DFA measurements including FCA analysis, and discrete fluid sampling provide valuable insights to reservoir architecture and compartmentalization issues.
References
Elshahawi, H., L. Venkataramanan, D. McKinney, M.
Flannery, O.C. Mullins, and M. Hashem, 2006, Combining continuous fluid
typing, wireline Venkataramanan, L., H. Elshahawi, D. McKinney, M. Flannery, and M. Hashem, and O.C. Mullins, 2006, Downhole fluid analysis and fluid comparison algorithm as an aid to reservoir characterization, during SPE Asia Pacific Oil & Gas Conference and Exhibition, 11-13 September, Adelaide, Australia: SPE Paper No. 100937-MS.
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