Evaluating
Water
-Flooding
Incremental Oil Recovery Using Experimental Design, Middle Miocene to Paleocene
Reservoirs, Deep-
Water
Gulf of Mexico*
By
Richard Dessenberger1, Kenneth McMillen2,
and Joseph Lach1
Search and Discovery Article #40256 (2007)
Posted September 5, 2007
*Adapted from extended abstract
prepared for presentation at AAPG Annual Convention, Long Beach, California,
April 1-4, 2007
1Knowledge
Reservoir, 1800 West Loop South, Suite 1000, Houston, TX 77027 ([email protected])
2Consultant
and Knowledge Reservoir, Sonoma, CA 95476, and Knowledge Reservoir, 1800 West
Loop South, Suite 1000, Houston, TX 77027
Abstract
Many deep-
water
Gulf of Mexico
discoveries and field development plans of the past five years involve middle
Miocene to Paleocene reservoirs with lower porosity and permeability resulting
from compaction and cementation. Middle Miocene fields and discoveries include
Atlantis, Neptune, K-2, and Shenzi. Eocene-Paleocene fields and discoveries
include Great White, St Malo, Jack, and Cascade. In this setting, rock
compaction may be less important as a production drive mechanism, and aquifer
support (possibly augmented by
water
flooding) assumes more significance.
Porosity and permeability decrease is related to greater burial depth and
compaction as well as temperature-related cementation. Structural styles of
these fields include compressional anticlines, turtle structures, and sub-salt
three-way dip closures. Some of these structures are highly compartmentalized by
faulting.
We used an experimental design
approach to analyze dynamic simulation of two static models loosely based on the
stratigraphy and reservoir properties from a thick-bedded middle Miocene
reservoir (e.g., Tahiti Field) and a thinner-bedded Paleocene (e.g., Great White
Field). Modeled variables included geological parameters (structural dip,
faulting, facies, and aquifer size), reservoir parameters (absolute permeability
and heterogeneity), fluid properties and production variables.
The results of the
dynamic simulation were evaluated using Experimental Design. The interpretation
process involved five steps: identifying uncertainty parameters and ranges,
running simulations for a wide variety of parameters, generating relationships
of recovery factor as a function of uncertainty, identifying parameter
importance, and
determining
incremental oil recovery due to
water
injection. For
these experiments, the incremental recovery for aquifer-supported fields is
small with a P50 value of 7%. Key
water
-flooding variables are depofacies,
aquifer size, permeability, fault transmissibility, and oil
saturation
. The
least important are bed dip, injection voidage-replacement, and PVT properties.
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Figure and Table Captions
Introduction
and Problem Statement
Many deep- water Gulf of Mexico (GoM)
discoveries of the past five years are in water depths greater than
4000 feet and in older Tertiary reservoirs of middle Miocene to
Paleocene age. Middle Miocene fields and discoveries include
Atlantis, Tahiti, Neptune, K-2, Thunder Horse, and Shenzi.
Eocene-Paleocene fields and discoveries include Great White,
Trident, St Malo, Jack, and Cascade. Structural styles of these
lower slope fields include compressional anticlines, turtle
structures and sub-salt three-way dip closures against salt faces (Figures
1 and 2). Some of these reservoirs
are highly compartmentalized by faulting. In this setting, rock
compaction may be less important as a production drive mechanism,
and aquifer support (possibly augmented by water flooding) assumes
more significance. Porosity and permeability decrease is related to
greater burial depth and compaction as well as temperature-related
cementation.
Much of the production experience in the
deep- water Gulf of Mexico is from upper Miocene through Pleistocene
reservoirs. The characteristics observed in these reservoirs and
fields are summarized as follows:
-
Pay often
consists of stacked reservoirs.
-
Permeability,
porosity, and oil properties are good, resulting in high flow
rates.
-
Reservoirs are
overpressured.
-
Rock compaction
is a primary drive mechanism.
-
Aquifer influx is
also often present.
The above reservoir characteristics result
in high primary recovery factors and only a few developments have
included waterflooding ; e.g., Lobster and Petronius.
By contrast, older middle Miocene to
Paleocene reservoirs are characterized by the following:
-
Reservoirs are
often at greater subsea depths: 20,000 to 30,000 ft.
-
Reservoirs often
have high pressure (>15,000 psi) and temperature (>180oF).
-
Turbidite
deposition was in coalescing basin floor fans; i.e., sheet
sands.
-
Seismic imaging
of subsalt reservoirs is often poor.
-
Reservoirs are
consolidated, cemented and have low rock compressibility.
-
Increased
diagenesis in sands with volcaniclastic components reduces
compressibility.
-
Paleogene
reservoirs have lower porosity and permeability.
-
Primary recovery
factors are expected to be lower due to lower reservoir
properties and less compressibility.
-
Water injection
may be necessary to increase reservoir recovery.
The requirement for water injection to
supplement reservoir drive energy, to improve oil rate, and to
maintain oil production rates is of primary consideration in
development planning for the new, ultra-deep water discoveries. The
objective of this study was to quantify the incremental oil recovery
potential for a range of the reservoir properties observed in these
new middle Miocene through Paleocene discoveries.
Probabilistic
Modeling
A parametric simulation study was
performed using experimental design to calculate increment oil
recovery due to water injection and to identify the influence of
parameters on recovery factor. The experimental design workflow is
summarized below:
-
Define
uncertainty parameters and ranges.
-
Set-up the
experimental design matrix.
-
Run the
simulation cases defined in the matrix.
-
Perform a
multivariate regression to develop a linear relationship between
recovery factor and uncertainty parameters (called the “proxy”
equation).
-
Generate an
“S-curve” for recovery factor using a proxy equation.
A total of eleven uncertainty parameters
were used in the parametric study. The parameters and range of
uncertainty for each are detailed in Table1.
Both static and dynamic parameters were considered.
The geologic uncertainty parameters
incorporated into the static models include: structural dip,
faulting, facies, aquifer size, and reservoir parameters (absolute
permeability and heterogeneity). Dynamic uncertainty parameters
include: fluid properties, water injection variables (timing and
injection rates), and relative permeability variables (residual oil
saturation and endpoints). Two static models were constructed based
on the stratigraphy and reservoir properties from a thick-bedded
middle Miocene reservoir (e.g., Tahiti Field) and a thinner-bedded
Paleocene (e.g., Great White Field, Figure 3).
Geocellular and dynamic simulation models were built with 200 x 200
ft cells having a thickness of 5 ft. Simple depofacies consisting of
sheet, distal sheet, channel and shale were populated, and reservoir
properties were distributed in these depofacies. Upscaled depofacies
and properties are compared to the wireline logs in
Figure 4, and a cross section showing
injector and producer well locations in the dynamic model is shown
in Figure 5. Permeability distributions
were generated for three different Dykstra- Parson’s coefficients;
0.27, 0.6, and 0.8. Porosity-permeability cross-plots are shown in
Figure 6. Three different fluids were
considered with GOR (API) of 1,800 scf/stb (35° API), 1,100 scf/stb
(30°API), and 500 scf/stb (27° API).
Experimental design matrices were
generated for both primary and water flood scenarios, based on the
eleven uncertainty parameters. Eighteen primary cases and
twenty-seven water flood cases were run. Proxy equations for both
primary and water flood oil recovery were generated from the
simulation results.
Cumulative probability functions,
“S-curves,” of oil recovery for both primary and water flood were
calculated from the proxy equations using Monte-Carlo simulation (Figure
7). P50 oil recovery is 30% for primary and 37% for water flood,
yielding incremental recovery of 7% of OOIP. As expected,
incremental recovery for water flood is larger when primary recovery
is low and lower when primary recovery is high. It is important to
focus on incremental oil recovery rather than absolute recovery
factor due to the modeling of a single producer-injector well pair.
The key parameters impacting water flood performance are depofacies
and net-to-gross (representing thief zones or limited connectivity),
and aquifer size (Figure 8). Secondary
parameters impacting water flood performance are permeability,
faulting, residual oil saturation , and relative permeability
endpoints. The least important parameters are beddip, injection
voidage-replacement-ratio, and PVT properties.
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