Predicting
Sandstone
Reservoir System Quality and Example of Petrophysical Evaluation*
Dan J. Hartmann, Edward A. Beaumont, and Edward Coalson
Search and Discovery Article #40005 (2000)
*Adaptation and revision for online presentation of part of Chapter 9, Predicting Reservoir System Quality and Performance, by Dan J. Hartmann and Edward A. Beaumont, in Exploring for Oil and Gas Traps, Edward A. Beaumont and Norman H. Foster, eds., Treatise of Petroleum Geology, Handbook of Petroleum Geology, 1999.
Predicting
Sandstone
Porosity and
Permeability
Sandstone
Diagenetic Processes
Effect of Composition and Texture
on
Sandstone
Diagenesis
Hydrology and Sandstone
Diagenesis
Influence of Depositional Environment on Sandstone
Diagenesis
Predicting Sandstone
Reservoir Porosity
Predicting Sandstone
Permeability
from
Texture
Estimating Sandstone
Permeability
from
Cuttings
Example of Petrophysical Evaluation: Evaluation of Saturation Profiles
Setting and Structure of the Sorrento Field
Morrow Lithofacies and Pore Types
Sorrento Water Saturation Calculations
Petrophysical Analysis of Sorrento Field Wells
Water Saturation Profile for Sorrento Field
Figure 1.
Porosity-depth plot for sandstones
from
two wells with different
geothermal gradients.
From
Wilson, 1994a; courtesy SEPM.
Figure 2. Effects
of sediment composition on mechanical stability and chemical stability.
From
Loucks et al., 1984; courtesy AAPG.
Figure 4. Eh-pH
diagram, showing the approximate distribution of various types of subsurface
fluids.
From
Shelley, 1985; courtesy W.H. Freeman and Co.
Figure 5.
General trend of increasing dissolved solids in subsurface fluids with
increasing depth
From
Shelley 1985; courtesy W.H. Freeman and Co.
Figure 6.
Factors controlling
sandstone
diagenesis.
From
Stonecipher et al., 1984;
courtesy AAPG.
Figure 8.
Typical diagenetic pathways for warm and wet nonmarine sediments.
From
Burley et al., 1985; courtesy Blackwell Scientific.
Figure 9.
Porosity-depth plot of various formations in U.S. Gulf Coast region.
From
Loucks et al., 1984; courtesy AAPG.
Figure 10.
Provenance controls on porosity evolution.
From
Surdam et al., 1989;
courtesy RMAG.
Figure 11.
Effects of near-surface diagenesis on
sandstone
porosity.
From
Surdam et al.,
1989; courtesy RMAG.
Figure 12.
Effects of mechanical diagenesis on
sandstone
porosity.
From
Surdam et
al., 1989; courtesy RMAG.
Figure 13.
Diagenetic and burial history for Brent Group sandstones.
From
Wilson,
1994b; courtesy SEPM.
Figure 14.
Use of burial history in predicting
sandstone
porosity.
From
Hayes, 1983;
courtesy AAPG.
Figure 15.
Effect of grain size on
permeability
and porosity.
From
Coalson et al.,
1990.
Figure 16.
Porosity-
permeability
relationships for kaolinite-, chlorite-, and
illite-emented sandstones.
From
North, 1985; courtesy Allen & Unwin.
Figure 17.
Types of clay-mineral occurrences and pore geometry.After Neasham, 1977;
courtesy SPE.
Figure 18.
Types of detrital clay in
sandstone
. After Wilson and Pittman, 1977;
courtesy Journal of Sedimentary Petrology.
Figure
19. SEM photographs of pore types IA, IB, IC, ID in sandstones.
From
Sneider and
King, 1984; courtesy AAPG.
Figure
20. SEM photographs of pore types
II and III in sandstones.
From
Sneider and King, 1984; courtesy AAPG.
Figure
21. Location map of Sorrento Field;
structure on base of the Pennsylvanian.
From
Sonnenberg, 1985; courtesy RMAG.
Figure
22. Structure map with outline of valley fill. Modified
from
Sonnenberg, 1985;
courtesy RMAG.
Figure
23. Ka/F cross plot for well
11 (Figure 22).
From
Hartmann and Coalson, 1990; courtesy RMAG.
Figure
24. Family of capillary-pressure
curves.
From
Hartmann and Coalson, 1990; courtesy RMAG.
Figure
25. Pickett plot for data
from
well
11 (Figure 22).
From
Hartmann and Coalson, 1990; courtesy RMAG.
Figure
26. Petrophysical data for well 11
(Figure 22).
From
Hartmann and Coalson, 1990; courtesy RMAG.
Figure
27. Bulk-volume-water (Buckles)
plot for well 11 (Figure 22).
From
Hartmann and Coalson, 1990; courtesy RMAG.
Figure
28. Petrophysical characteristics
of well 4 (Figure 22).
From
Hartmann and Coalson, 1990; courtesy RMAG.
Figure
29. Petrophysical characteristics of well 8 (Figure 22).
From
Hartmann and
Coalson, 1990; courtesy RMAG.
Figure
30. Petrophysical characteristics of well 1 (Figure 22).
From
Hartmann and
Coalson, 1990; courtesy RMAG.
Figure
31. Sw-elevation plot for wells 4, 8, 11 (Figure 22).
From
Hartmann
and Coalson, 1990; courtesy RMAG.
Table 2.
Major diagenetic processes and their impact on porosity. From
Surdam et
al. (1989).
Table 3. Cements in sandtones, associated water chemistry, and derivation.
Table 4. Cements vs. facies/environments.
Table 5.
Range in values of parameters Scherer (1987) used in his analysis of
sandstone
reservoirs.
Table 6. Characteristics of pore types I, II, and III.
The economic success of any prospect ultimately depends on reservoir system performance. The reservoir system controls two critical economic elements of a prospect: (1) the rate and (2) the amount of hydrocarbons recovered. In geologic terms, pore type and pore-fluid interaction are the most important elements determining reservoir system performance. Understanding how reservoir systems behave on a petrophysical basis helps us predict reservoir system behavior in wildcat situations.
The
interrelationship of reservoir porosity, permeability
, thickness, and lateral
distribution determines reservoir system quality. Although quality
prediction
is
most effective with large amounts of superior data, useful predictions can still
be made
from
very limited data. This article discusses methods for predicting
the quality of
sandstone
reservoir systems.
Sandstones and carbonates are the dominant reservoir rocks. Although quite similar, they are different. Table 1 (after Choquette and Pray, 1970) compares variables affecting reservoir system quality for sandstones vs. carbonates.
Predicting
Sandstone
Porosity and
Permeability
General Statement
An effective
method of predicting sandstone
reservoir system porosity and
permeability
is (1)
to predict
sandstone
porosity and
permeability
at deposition and then (2) to
predict the probable changes to porosity and
permeability
as the
sandstone
was
buried. Since other texts (Barwis et al., 1989; Galloway and Hobday, 1983) cover
the impact of depositional environment on porosity and
permeability
, this
subsection concentrates on predicting porosity and
permeability
by considering
the effects of diagenesis.
This section contains the following topics:
Sandstone
Diagenetic Processes
Diagenesis alters
the original pore type and geometry of a sandstone
and therefore controls its
ultimate porosity and
permeability
. Early diagenetic patterns correlate with
environment of deposition and sediment composition. Later diagenetic patterns
cross facies boundaries and depend on regional fluid migration patterns (Stonecipher
and May, 1992). Effectively predicting
sandstone
quality depends on predicting
diagenetic history as a product of depositional environments, sediment
composition, and fluid migration patterns.
Diagenetic Processes
Sandstone
diagenesis occurs by three processes:
-
Cementation
-
Dissolution (leaching)
-
Compaction
Cementation destroys pore space; grain leaching creates it. Compaction decreases porosity through grain rearrangement, plastic deformation, pressure solution, and fracturing.
Diagenetic Zones
Surdam et al. (1989) define diagenetic zones by subsurface temperatures. Depending on geothermal gradient, depths to these zones can vary. Table 2 summarizes major diagenetic processes and their impact on pore geometry.
Effect of Temperature
Depending on
geothermal gradient, the effect of temperature on diagenesis can be significant.
Many diagenetic reaction rates double with each 10oC increase (1000
times greater with each 100oC) (Wilson, 1994a). Increasing
temperatures increase the solubility of many different minerals, so pore waters
become saturated with more ionic species. Either (1) porosity-depth plots of
sandstones of the target sandstone
that are near the prospect area or (2)
computer models that incorporate geothermal gradient are probably best for
porosity predictions.
Figure 1 is a
porosity-depth plot for sandstones from
two wells with different geothermal
gradients. The well with the greater geothermal gradient has correspondingly
lower porosities than the well with lower geothermal gradient. At a depth of
7000 ft, there is a 10% porosity difference in the trend lines.
Effect of Pressure
The main effect of pressure is compaction. The process of porosity loss with depth of burial is slowed by overpressures. Basing his findings mainly on North Sea sandstones, Scherer (1987) notes sandstones retain approximately 2% porosity for every 1000 psi of overpressure during compaction. He cautions this figure must be used carefully because the influence of pressure on porosity depends on the stage of compaction at which the overpressure developed.
Effect of Age
In general,
sandstones lose porosity with age. In other words, porosity loss in sandstone
is
a function of time. According to Scherer (1987), a Tertiary
sandstone
with a
Trask sorting coefficient of 1.5, a quartz content of 75%, and a burial depth of
3000 m probably has an average porosity of approximately 26%. A Paleozoic
sandstone
with the same sorting, quartz content, and burial depth probably has
an average porosity of approximately 13%.
Effect of
Composition and Texture
on
Sandstone
Diagenesis
Composition and Diagenesis
Composition
affects sandstone
diagenesis in two ways:
-
The higher the quartz content, the greater the mechanical stability (less compaction occurs).
-
The higher the variety of minerals, the lower the chemical stability (more cementation or dissolution occurs).
Sandstones with abundant lithics, feldspars, or chert have less occlusion of porosity by quartz overgrowths and more secondary porosity through dissolution of less stable grains. The ratio of quartz to ductile grains is key to compaction porosity loss.
Sediment Composition and Provenance
Provenance determines sand grain mineralogy and sediment maturity. Mechanical and chemical weathering affects sand grains during transportation. The final product reflects the origin, amount of reworking, and transport distance.
For example,
sandstones derived from
subduction trench margins are generally mineralogically
immature. They often contain terrigenous detritus with abundant volcaniclastics
and pelagic material. Sandstones derived
from
the margin of a cratonic basin
tend to be mineralogically and texturally mature and contain reworked
sedimentary detritus.
Figure 2 summarizes the effects of sediment composition on mechanical stability and chemical stability.
Influence of Grain Size on Porosity and Diagenesis
Sorting and grain
size are textural parameters that intuitively might seem to have the same
effects on the porosity of a reservoir system sandstone
. Studies show, however,
that porosity is largely independent of grain size for unconsolidated sand of
the same sorting (Beard and Weyl, 1973). Size does affect
permeability
; the
finer the sand, the lower the
permeability
.
Permeability
indirectly affects
porosity through diagenesis. Stonecipher et al. (1984) suggest that slow fluid
fluxes, resulting
from
low
permeability
, promote cementation; rapid fluxes
promote leaching. In rapid fluxes, solutes do not remain in pore spaces long
enough to build local concentration that promotes precipitation of cement. In
slow fluxes, they do. Also, size affects the surface area available for
diagenetic reactions: the finer the grain size, the greater the grain surface
area for a volume of sediment or rock.
Influence of Sorting on Porosity
Sorting and porosity strongly correlate in unconsolidated sandstones (Beard and Weyl, 1973). The better the sorting, the higher the porosity. The initial porosities of wet, unconsolidated sands show a range of 44-28% porosity for well-sorted vs. poorly sorted grains. Well-sorted sands tend to have a higher percentage of quartz than do poorly sorted sands, and they tend to maintain higher porosities during burial than poorly sorted sands. Poorly sorted sands have more clay matrix and nonquartz grains.
Hydrology and
Sandstone
Diagenesis
Type of Water Flushes
Much diagenesis occurs in open chemical systems whose initial chemistry is set at deposition. After that, the chemistry of the system changes as flowing water moves chemical components through pores and causes either leaching or cementation of grains. Diffusion also moves chemicals in and out of rocks, although at significantly lower rates. During deep burial, chemical systems close and diagenesis is primarily by pressure solution and quartz overgrowths (Wilson and Stanton, 1994).
Galloway (1984) lists three types of flow of water in a basin:
-
Meteoric flow--water infiltrates shallow portions of a basin
from
precipitation or surface waters. Deeper infiltration occurs
from
(a) eustatic sea level changes and/or (b) tectonic elevation of basin margins.
-
Compactional flow--compaction expels water upward and outward
from
the pores of sediments.
-
Thermobaric flow--water moves in response to pressure gradients caused by generation of hydrocarbons, release of mineral-bound water, and/or increased heat flow.
Figure 3 shows the water movement processes mentioned above.
Pore-Water Chemistry
Depositional
environment and climate control initial pore-water chemistry of a sandstone
.
When the rock is buried below the level of meteoric groundwater influence,
pore-water chemistry changes as a result of two things:
-
Increasing mineral solubility due to increasing temperatures.
-
Acidic fluids released by maturing organic-rich shales or organic matter in
sandstone
. Acidic pore water leaches carbonate cement and grains.
Eh-pH Graph
Figure 4 is an Eh-pH diagram, showing the approximate distribution of various types of subsurface fluids.
Pore-water Chemistry and Cements
Table 3 lists
common sandstone
cements and the water chemistry associated with precipitation.
Subsurface Dissolved Solids
Figure 5 shows the general trend of increasing dissolved solids in subsurface fluids with increasing depth.
Influence of
Depositional Environment on Sandstone
Diagenesis
Depositional
environment influences many aspects of sandstone
diagenesis. The flow chart (Figure
6) shows the interrelationship of depositional environment with the many
factors controlling
sandstone
diagenesis.
Sediment
Texture
and Composition
Depositional environment affects sediment composition by determining the amount of reworking and sorting by size or hydraulic equivalence. Sediments that have a higher degree of reworking are more mechanically and chemically stable. The energy level of depositional environments affects sorting by size or hydraulic equivalence and consequently produces different detrital mineral suites (Stonecipher and May, 1992).
For example, different facies of the Wilcox Group along the Gulf Coast of Texas have different compositions that are independent of their source area (Stonecipher and May, 1992). Wilcox basal fluvial point bar sands are the coarsest and contain the highest proportion of nondisaggregated lithic fragments. Prodelta sands, deposited in a more distal setting, contain fine quartz, micas, and detrital clays that are products of disaggregation. Reworked sands, such as shoreline or tidal sands, are more quartzose.
Depositional Pore-Water Chemistry
Depositional
pore-water chemistry of a sandstone
is a function of depositional environment.
Marine sediments typically have alkaline pore water. Nonmarine sediments have
pore water with a variety of chemistries. In nonmarine sediments deposited in
conditions that were warm and wet, the pore water is initially either acidic or
anoxic and has a high concentration of dissolved mineral species (Burley et al.,
1985).
Marine Pore-Water Chemistry
Marine water is
slightly alkaline. Little potential for chemical reaction exists between normal
marine pore water and the common detrital minerals of sediments deposited in a
marine environment. Therefore, diagenesis of marine sandstones results from
a
change in pore-water chemistry during burial or the reaction of less stable
sediment with amorphous material (Burley et al., 1985).
Marine Diagenesis
The precipitation of cements in quartzarenites and subarkoses deposited in a marine environment tends to follow a predictable pattern beginning with clay authigenesis associated with quartz and feldspar overgrowths, followed by carbonate precipitation. Clay minerals form first because they precipitate more easily than quartz and feldspar overgrowths, which require more ordered crystal growth. Carbonate cement stops the further diagenesis of aluminosilicate minerals.
Figure 7 summarizes typical diagenetic pathways for marine sediments.
Nonmarine Pore-Water Chemistry and Cements
Nonmarine pore-water chemistry falls into two climatic categories: (1) warm and wet or (2) hot and dry. The chemistry of pore waters formed in warm and wet conditions is usually acidic or anoxic with large concentrations of dissolved mineral species. The interaction of organic material with pore water is a critical factor with these waters. The depositional pore water of sediments deposited in hot and dry conditions is typically slightly alkaline and dilute.
Figure 8 shows typical diagenetic pathways for warm and wet nonmarine sediments.
Cements
Table
4, compiled
from
data by Thomas (1983), shows the cements that generally characterize
specific depositional environments.
Diagenesis and Depositional Pore Waters
In the Wilcox of the Texas Gulf Coast, certain minerals precipitate as a result of the influence of depositional pore-water chemistry (Stonecipher and May, 1990):
-
Mica-derived kaolinite characterizes fluvial/distributary-channel sands flushed by fresh water.
-
Abundant siderite characterizes splay sands and lake sediments deposited in fresh, anoxic water.
-
Chlorite rims characterize marine sands flushed by saline pore water.
-
Glauconite or pyrite characterizes marine sediments deposited in reducing or mildly reducing conditions.
-
Illite characterizes shoreline sands deposited in the mixing zone where brackish water forms.
-
Chamosite characterizes distributary-mouth-bar sands rapidly deposited in the freshwater-marine water mixing zone.
Predicting
Sandstone
Reservoir Porosity
We might have the
impression that abundant data and powerful computer models are necessary for
porosity prediction
. They help. But even with sparse data, by using a little
imagination we can predict ranges of porosity. This section presents different
methods of predicting
sandstone
porosity. Choose the method(s) most appropriate
to your situation.
Porosity-Depth Plots
A pitfall of
using porosity-depth plots for porosity prediction
is that regression
relationship averages out anomalies and complicates predictions of unusually
porous sandstones. Use porosity-depth plots for porosity
prediction
with
caution. If enough porosity data are available to make a meaningful plot, keep
the "data cloud" on the plot in order to view the ranges of porosity at
different depths. In a frontier exploration setting, the usefulness of
porosity-depth plots may be limited if global data sets must be used.
Figure 9 presents an example of regression porosity-depth plots for different formations in U.S. Gulf Coast region. Unfortunately it does not include the raw data, so we cannot see porosity variations within each formation. Formations on the left side of the plot, like the Vicksburg, tend to be quartz cemented. Formations on the right side, like the Frio (areas 4-6), tend to be clay cemented.
Equation
for Porosity Prediction
Scherer (1987)
studied the cores of 428 worldwide sandstones and listed the most important
variables for predicting sandstone
porosity:
-
Percentage of quartz grains
-
Sorting
-
Depth of burial
-
Age
Using regression analysis, he developed the following equation:
Porosity = 18.60 + (4.73 x in quartz) + (17.37/sorting) - (3.8 x depth x 10-3) - (4.65 x in age)
where:
Porosity = percent of bulk volume
In quartz = percent of solid-rock volume
Sorting = Trask sorting coefficient
Depth = meters
In age = millions of years
The equation can
be used with a high degree of confidence in uncemented to partly cemented
sandstones. But if the reduction of porosity by cement exceeds 2.1% bulk volume,
then corrections need to be made based on local sandstone
quality
characteristics. Numbers for percent solid volume quartz and sorting may be
difficult to obtain. Use 75% for percent solid volume quartz and 1.5 for sorting
when these values are not known.
Table 5 shows numbers that Scherer (1987) developed by his analysis of reservoir sandstones.
Predicting Effects of Diagenesis on Porosity
Sandstone
porosity
prediction
is a matter of estimating original composition and
subsequent diagenesis. Use the steps and action presented below to predict
sandstone
porosity.
Step / Action
-
Estimate the original composition of the
sandstone
from
provenance (use Figure 10) and depositional environment.
-
Estimate the effects of near-surface diagenetic processes (see Figure 11).
-
Estimate the effects of mechanical diagenetic processes (see Figure 12).
-
Estimate the effects of intermediate and deep burial diagenesis, especially with respect to the creation of secondary porosity.
-
Using information collected in steps 1 through 4, predict the final porosity ranges using burial history (next procedure).
Predicting Effect of Provenance on Diagenesis
Use Figure 10 to predict the effect of original sediment composition on subsequent diagenesis.
Estimating Effect of Near-Surface Diagenesis
Use Figure 11 to estimate the effects of near-surface diagenesis (depth to point where temperature reaches 80oC).
Predicting Effect of Mechanical Diagenesis
Use Figure 12 to
predict the effects of mechanical diagenesis on sandstone
porosity.
Using Burial History to Predict Porosity
Reconstructing
burial history aids sandstone
porosity
prediction
. A burial history diagram
integrates tectonic and hydrologic history with diagenetic evolution to predict
sandstone
porosity. The steps, with recommended action, given below for
predicting porosity
from
burial history and are illustrated in Figure
13.
Step / Action
-
Construct a burial history diagram for the formation of interest in the prospect area.
-
Plot the tectonic history of the basin in the prospect area along the lower x-axis.
-
Plot the hydrologic history of the prospect area along the lower x-axis. Use the tectonic history to infer the hydrologic history of the prospect.
-
Plot the porosity curve by combining concepts of diagenetic processes with burial and hydrologic histories of the prospect.
Example of Using Burial History
Figure 13 is an example of a diagram showing diagenetic and burial history for the Brent Group sandstones, North Sea. Line thicknesses indicate relative abundance of diagenetic components.
Figure 14 is an
example of sandstone
porosity
prediction
using burial history.
Analog Porosity
Analog porosity values for different depositional environments can help us predict the porosity of reservoir system rocks when the target formation is unsampled within the basin. Analog values, however, may have wide ranges within facies and subfacies of depositional environments. Therefore, we should use care when applying analog data.
Predicting
Sandstone
Permeability
from
Texture
Pore type, pore
geometry, and fluid properties are critical factors affecting permeability
.
Sandstone
texture
directly affects pore type and geometry. Knowing what textures
and fluids to expect, as well as what authigenic clays might be present, can
help us predict
permeability
.
Effects of Pore Type and Geometry
Pore type,
defined by pore throat size (i.e., macroporosity), directly controls rock
permeability
. Pore throat size limits flow capacity. Pore geometry also affects
permeability
, but not as much. The rougher the surface of the pore, the more
difficult for fluid to flow through the pore and the lower the
permeability
.
Sandstone
texture
affects
permeability
as follows:
Figure 15 shows
how grain size affects permeability
and porosity.
Rules of Thumb for Gas vs. Oil
Use the following
rules of thumb for permeability
for oil vs. gas reservoirs:
-
At >10 md, the reservoir can produce oil without stimulation.
-
At >1 md, the reservoir can produce gas without stimulation.
-
At 1-10 md, the reservoir probably requires stimulation for oil production.
Effect of Authigenic Clays
Pore-bridging
clays, like illite, decrease porosity slightly but can destroy sandstone
permeability
. Discrete particle clay, like kaolinite, lowers porosity and
permeability
only slightly. Figure 16 compares porosity-
permeability
relationships for kaolinite-, chlorite-, and illite-cemented sandstones. Note
there is no significant change in porosities, but permeabilities range over four
orders of magnitude.
Pore Geometry and Clay Minerals
Figure 17 shows
pore lining and discrete particle clays that decrease porosity and permeability
only slightly in contrast to pore-bridging clays, which decrease porosity
slightly but substantially lower
permeability
.
Detrital Clay and Permeability
Detrital clays
can be part of sandstone
matrix or grains. As matrix, detrital clays can
obliterate
permeability
. Detrital grains of clay are often ductile and can be
compacted into pore spaces during burial. The percentage of detrital clay in a
rock determines
permeability
. Figure 18 shows different types of detrital clays
in a
sandstone
.
Effect of Quartz Overgrowths
In general, as
quartz cement precipitates, the pore-pore throat size ratio approaches 1 (Hartmann
et al., 1985). Throats are reduced less than pore space; therefore, permeability
is affected less than porosity. During cementation, the size of the pore spaces
between the pore-filling crystals decreases until it approaches the size of the
pore throats. Throats become more tabular or sheet-like.
Sandstone
porosity may
be quite low (<5%) and still have some
permeability
(<10 md) where
cemented with quartz.
Effect of Fractures
Fractures enhance
the permeability
of any
sandstone
reservoir. Fractures are especially important
for improving the
permeability
of
sandstone
reservoirs with abundant
microporosity or disconnected dissolution porosity.
Predicting from
Texture
and Clay Content
Predicting
sandstone
reservoir
permeability
is possible as long as we realize that
potential errors may be large. Any process that decreases pore throat size
decreases
permeability
, so predict accordingly. Use steps, with recommended
action below, to help predict
sandstone
reservoir
permeability
.
Step / Action
-
Estimate grain size, sorting, and porosity using the depositional environment. For example, if a reservoir is a beach sand, it should be fine- to medium-grained and well sorted with well-rounded quartz grains.
-
Apply information
from
Step 1 to the porosity-
permeability
-grain size plot (Figure 15). Use porosity and grain size
from
sandstone
to estimate the
permeability
on the chart.
-
If the
sandstone
is poorly sorted or is cemented, then discount
permeability
downward.
-
Determine if authigenic clay is present. If so, what kind: pore lining, discrete particle, or pore throat bridging? Adjust
permeability
downward according to clay type present.
-
Determine if detrital clay is present using depositional environment (i.e., high energy = low clay content). If detrital clay is likely, then expect
permeability
to be low.
Estimating
Sandstone
Permeability
from
Cuttings
Sneider and King
(1984) developed a cuttings-based method of permeability
estimation. Where
cuttings are available,
permeability
estimates can be made by examining the
surfaces of cuttings for petrophysical
permeability
indicators. Estimates of the
permeability
for a particular formation can be extended into areas without data
in order to predict
permeability
.
Basis
Sneider and
others at Shell Oil Company developed a methodology for estimating permeability
from
cuttings by calibrating
permeability
measured
from
cores with rock-pore
parameters described in cuttings. Cores of known
permeability
were ground up
until chips
from
the core were the size of cuttings. By using comparators made
from
core chips, they estimated formation
permeability
from
cuttings with
surprising accuracy. Although Sneider and King (1984) describe the method for
estimating
sandstone
permeability
from
cuttings (presented below), procedures
could just as easily be developed to predict
permeability
of carbonates
from
cuttings.
Petrophysical Description
From
examination
of cuttings,
sandstone
permeability
can be predicted using the following
petrophysical descriptions:
-
Grain size and sorting
-
Degree of rock consolidation
-
Volume percent of clays
-
Pore sizes and pore interconnections
-
Size and distribution of pore throats
Sneider’s Pore Classification for Clastics
Sneider and King
(1984) developed a simple method of classifying pore types from
cuttings. The
classification of clastic rock pore types
from
cuttings is made by comparing
pore types with production tests and log analysis. The pore types are as
follows:
Type / Description
-
Rocks with pores capable of producing gas without natural or artificial fracturing.
-
Rocks with pores capable of producing gas with natural or artificial fracturing and/or interbedded with type I rocks.
-
Rocks too tight to produce at commercial rates even with natural or artificial fracturing.
Table 6 lists the characteristics of pore types I, II, and III.
Examples of Pore Type I
The SEM photographs in Figure 19 are examples of rocks with types IA, IB, IC, and ID. Note the amount and connectivity of pore space of each subclass.
Pore Types II and III
The SEM photographs in Figure 20 are examples of rocks with types II and III. Note the amount and connectivity of pore space of each subclass.
Procedure: Predicting
Sandstone
Permeability
The procedure
below, with steps and recommended action, is for predicting the permeability
of
sandstones
from
cuttings using 20x magnification (
from
Sneider and King, 1984).
Step / Action
-
Estimate grain size and sorting using standard size-sorting comparators, thin section and SEM photomicrographs, and rock photographs.
-
Estimate volume percentages using Terry-Chillingar charts made for volume estimates.
-
Estimate consolidation using the scheme described in the preceding table.
-
Describe the visible and pinpoint porosity and interconnectedness.
-
Estimate
permeability
from
rocks on comparators and/or using rock characteristics described in the preceding table. (Comparators can be made or purchased.)
-
Predict
permeability
for the formation in prospective areas where petrophysical characteristics are believed to be similar
Example of Petrophysical Evaluation: Evaluation of Saturation Profiles
General Statement
This section shows how saturation profiles can be used to understand the distribution of water saturations within a field or prospect.
The
case study presented here is a summary of a larger study of the Sorrento field,
southeast Colorado, by Hartmann and Coalson (1990). This study of cores and logs
from
four field wells shows how multiple oil-water contacts and apparent
anomalies in saturation profiles in the Sorrento field were due to multiple flow
units
from
two separate reservoirs. The study helps us understand shows and
water saturations in wells outside Sorrento and therefore is useful for finding
other traps in the same formation.
This section contains the following topics:
-
Setting and Structure of the Sorrento Field
-
Morrow Lithofacies and Pore Types
-
Sorrento Water Saturation Calculations
-
Petrophysical Analysis of Sorrento Field Wells
-
Water Saturation Profile for Sorrento Field
Setting and Structure of the Sorrento Field
Index Map
The Sorrento field is in southeastern Colorado on the north flank of the Las Animas Arch. The map (Figure 21) shows the location of the Sorrento field. Structure is contoured on the base of the Pennsylvanian.
Morrow Structure Map
The
Sorrento field reservoir is Pennsylvanian Morrow valley-fill sandstones. As
shown in Figure 22, structure contours on a marker bed above
the Morrow Sandstone
reflect the irregular thickness of the
sandstone
body and a small structural nose and closure. The oil column is 70 ft (20 m) and
exceeds structural closure. This is a combination structural-stratigraphic trap.
Fluvial sandstones lap onto marine shale at the margins of the valley, forming
lateral seals.
In
Figure 22, circled wells represent Marmaton wells; triangles, Mississippian
wells; and large X’s, study wells. The rest of the oil wells produce from
the
Morrow. Each unit in the grid is 1 sq mi.
Morrow Lithofacies and Pore Types
By
studying core and log data from
one well (well 11, see Figure
22), we see a
picture of a clastic reservoir with wide heterogeneity in total porosities,
pore-throat sizes, and capillary pressures. In addition, the depositional
environment of these sandstones (fluvial valley fill and
sandstone
) indicates
they probably have limited lateral continuity within the valley-fill complex.
Reservoir Lithologic Description
Morrow
sandstones in the Sorrento field are slightly shaly, range in grain size from
very coarse to fine, and are poorly sorted. As a consequence, pores and pore
throats also have wide ranges in size. Hand-sample petrography indicates the
dominant porosity is intergranular micro- to megaporosity. Clay crystals create
minor intercrystalline microporosity in larger pores. Moldic (cement solution?)
porosity also may be present but is minor.
Reservoir
Porosity and Permeability
Morrow
sandstones in Sorrento field have a wide range in porosity and permeability
.
Maximum observed porosity (F) is 20-22%,
but more typical values are 10-15%. Air permeabilities (Ka) are as
great as 1-2 darcies but more commonly are 200-500 md.
In a Ka/F crossplot for well 11 (Figure 23), dots and polygons represent measured Ka/F values. Curves are the graphical solution of Winland’s r35 equation (Pittman, 1992) and represent equal r35 values (port size).
The
crossplot shows a large variation in port size for the samples from
well 11.
Areas between dashed lines group points into beds with similar port size, or
flow units.
Extrapolated Capillary Pressure Curves and Pore Types
No
capillary pressure measurements were available for this study. They were
estimated y plotting r35 values on a semilog crossplot of fluid
saturation vs. capillary pressure. A capillary pressure curve for each sample
passes through its correlative r35 value. Calculations of r35
for well 11 indicate a large variety of capillary pressures and pore types. Pore
types for the Morrow samples from
this well are mega, macro, and micro.
The
numbers on the curves in Figure 24 correspond to the numbers on the Ka/F
crossplot on Figure 22. Minimum water saturations (“immobile” water)
estimated from
log calculations let us extrapolate the Pc curves into
low Sw ranges.
Sorrento Water Saturation Calculations
Method
Density logs were the primary source of porosity values. Matrix density appears to be about 2.68 g/cc, based on core-measured grain densities (consistent with the presumed mineralogy of the sandstones). Crossplot porosities were not used to avoid introducing a systematic error in these variably shaly sandstones (Patchett and Coalson, 1982).
Pickett Plot
Formation-water
resistivities and water saturations were estimated from
Pickett plots. The
inferred cementation exponent (m) is 1.8 because of the presence of clays,
well-connected solution pores (e.g., James, 1989; Muller and Coalson, 1989), or
pyrite (Krystinik, L., personal
communication). Formation factors measured on core samples
from
well 1 support
this interpretation.
The
Pickett in Figure 25 shows data from
well 11. The number labels represent the
flow units
from
Figure 24.
Saturation Exponents, n
Saturation
exponents (n) measured on samples from
well 1 showed variations that relate to
pore geometry. Microporous siltstones displayed n greater than 2, indicating
either very tortuous pore systems or incomplete saturation by brine during
testing. Saturation exponents were less than 2 in the best porosity type. This
implies the reservoir is somewhat shaly. However, n was assumed equal to 2 for
log calculations because the lab data were not far
from
that value and because
lab measurements of saturation exponents are notoriously difficult.
Petrophysical Analysis of Sorrento Field Wells
Well 11 Flow Units
Flow
units were determined in well 11 by plotting and grouping routine core data. The
top and bottom of the Morrow (flow units A and 5) are microporous,
low-permeability
sandstones that are wet but too tight to produce. Between these
are 30 ft (8.5 m) of meso- to macroporous
sandstone
(flow units 1-4).
All
pertinent petrophysical data for well 11 are summarized on Figure
26. Sandstone
descriptors found on porosity logs are as follows:
VF = very fine grained |
C = coarse grained |
SLTY = silty |
F = fine grained |
VC = very coarse grained |
SLT = siltstone |
M = medium grained |
SHY= shaly |
SH = shale |
Subsea elevation of -1,030 ft (-314 m) is marked in the depth track.
Well 11 Water Saturations
Flow
unit 4 is macroporous but wet (Sw = 100%); this indicates an
oil-water contact. Flow unit 3 is macroporous and has intermediate water
saturation (Sw = 70%). This looks like a transition zone. Flow units
2 and 1 are mesoporous and are at immobile water saturation (Sw =
45%). This is verified by the well testing about 100 bo/d and 300 Mcfg/d (16 m3
oil and 8,500 m3 gas per day) with no water from
perforations in
these flow units and by a bulk-volume-water plot following. This lack of water
production is remarkable, considering that the well lies only about 25 ft (7 m)
above the free water level.
Figure 27 is the bulk-volume-water (Buckles) plot for well 11.
Well 4
Well
4 hit the Morrow near the top of the oil column. It had the lowest saturations
and best flow rates of all the wells studied, even though it had the thinnest
reservoir. This is because it contained rock with large pore throats (r35
up to 50m) that was fully saturated with
oil (Sw = 25-30%). The well tested 230 bo/d and 387 Mcfg/d (37 m3
oil and 11,000 m3 gas per day). Initial production was 51 bo/d and
411 Mcfg/d (8 m3 oil and 12,000 m3 gas per day). The difference could
be due to a loss of reservoir thickness near the well bore, judging from
the
thinness of the reservoir.
Figure 28 summarizes the petrophysical characteristics of well 4.
Well 8
Wells 8 and 1 both are interpreted as encountering transition zones, based on porosity types and log-calculated saturations. Well 8 encountered the Morrow just above the water level. Pore throats are meso- to macroporous. The two upper flow units probably are close to immobile water saturation. However, the two basal zones (3 and 4) have high saturations of mobile water. This explains why the well cut water on initial potential testing. This water production should increase with time as the water leg rises.
Figure 29 summarizes the petrophysical characteristics of well 8.
Well 1
Well 1 (Figure 30) is similar to well 8, except that flow unit 2 of well 1 shows an anomalous low resistivity. The interval tested 32 bo/d and 15 Mcfg/d (5 m3 oil and 425 m3 gas per day) with no water. Therefore, the zone by definition is at immobile water saturation (Swi = 40%). The discrepancy suggests that the log resistivity was too low due to bed resolution problems. If true resistivity is 9 ohm-m2/m (used for the calculation), then the true water saturation is less than 40%.
Caveat
While
these petrophysical methods of analyzing wells are reliable and widely
applicable in water-wet reservoirs, there is at least one source of potential
error: the assumption that there are no lithologic changes that affect
log-calculation parameters without affecting permeability
-porosity
relationships. Examples include vuggy or fracture porosity and variable shale
effects. If such changes occur, then we must modify the relationships between
calculated saturations and producibility.
Water Saturation Profile for Sorrento Field
General Statement
Morrow
sandstone
reservoirs reportedly display multiple oil-water contacts in several
fields in the area (Sonnenberg, personal communication). Reliably recognizing
separate reservoirs in a field requires considering capillary pressures, heights
above free water, and observed water saturations. One convenient way to do this
is to plot water saturation against structural elevation while differentiating
pore throat sizes.
Sw-Elevation Plot
An Sw-elevation plot (Figure 31) for study wells 4, 8, and 11 defines a trend of decreasing water saturation with increasing height. Well 1 is not on the same trend. Differences in water saturation attributable to differences in capillary pressures are apparent but are not great enough to explain the discrepancy. Ignoring possible hydrodynamic effects, the difference in trends probably represents two separate oil columns and therefore two reservoirs.
Barwis,
J.H., J.G. McPherson, and J.R.J. Studlick, 1989,
Sandstone
Petroleum Reservoirs: New York, Springer-Verlag, 583 p. Contains case
histories of fields with reservoirs that represent each of the major
depositional environments.
Beard,
D.C., and P.K. Weyl, 1973, Influence of texture
on porosity and
permeability
of
unconsolidated sand: AAPG Bulletin, vol. 57, no. 2, p. 349-369.
Burley, S.D., J.D. Kantorowicz, and B. Waugh, 1985, Clastic diagenesis, in P.J. Brenchley and B.P.J. Williams, eds., Sedimentology: Recent Developments and Applied Aspects: London, Blackwell Scientific Publications, p. 189-228.
Choquette, P.W., and L.C. Pray, 1970, Geologic nomenclature and classification of porosity in sedimentary carbonates: AAPG Bulletin, vol. 54, no. 2, p. 207-250. Classic reference for basic concepts regarding carbonate porosity.
Coalson,
E.B., D.J. Hartmann, and J.B. Thomas, 1990, Applied Petrophysics in Exploration
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var. pages.
Galloway,
W.E., 1984, Hydrogeologic regimes of sandstone
diagenesis, in D.A. McDonald and
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Galloway,
W.E., and D.K. Hobday, 1983, Terrigenous Clastic Depositional Systems:
Applications to Petroleum, Coal, and Uranium Exploration: New York, Springer-Verlag,
438 p. Summarizes reservoir characteristics of major sandstone
depositional
environments, especially with respect to sand body geometries.
Harrison, W.J., and R.N. Tempel, 1993, Diagenetic pathways in sedimentary basins, in A.D. Horbury and A.G. Robinson, eds., Diagenesis and Basin
Hartmann,
D.J., and E.B. Coalson, 1990, Evaluation of the Morrow sandstone
in Sorrento
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W.F. von Drehle, and G.W. Martin, eds., Morrow Sandstones of Southeast Colorado
and Adjacent Areas: RMAG Symposium, p. 91-100.
Hayes,
J.B., 1983, Sandstone
diagenesis as an exploration tool: AAPG Clastic Diagenesis
School, June 27-July 1, Monterey, California.
James,
S.W., 1989, Diagenetic history and reservoir characteristics of a deep Minnelusa
reservoir, Hawk Point field, Powder River basin, Wyoming, in E.B. Coalson, S.S.
Kaplan, C.W. Keighin, C.A. Oglesby, and J.W. Robinson, eds., Petrogenesis and
Petrophysics of Selected Sandstone
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Muller,
M.M., and E.B. Coalson, 1989, Diagenetic and petrophysical variations of the
Dakota sandstone
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Kaplan, C.W. Keighin, C.A. Oglesby, and J.W. Robinson, eds., Petrogenesis and
Petrophysics of Selected
Sandstone
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Neasham,
J.W., 1977, The morphology of dispersed clay in sandstone
reservoirs and its
effect on
sandstone
shaliness, pore space, and fluid flow properties:
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Patchett,
J.G., and E.B. Coalson, 1982, The determination of porosity in sandstone
and
shaly
sandstone
, part 2: effects of complex mineralogy and hydrocarbons: 23rd
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E.D., 1992, Relationship of porosity to permeability
to various parameters
derived
from
mercury injection-capillary pressure curves for
sandstone
: AAPG
Bulletin, vol. 76, no. 2, p. 191-198.
Scherer,
M., 1987, Parameters influencing porosity in sandstones: a model for sandstone
porosity
prediction
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Shelley, R.C., 1985, Elements of Petroleum Geology: San Francisco, W.H. Freeman, 449 p.
Sneider, R.M., and H.R. King, 1984, Integrated rock-log calibration in the Elmworth field, Alberta, Canada: part I: reservoir rock detection and characterization, in J.A. Masters, ed., Elmworth--Case Study of a Deep Basin Gas Field: AAPG Memoir 38, p. 205-214.
Sonnenberg,
S.A., 1985, Tectonic and sedimentation model for Morrow sandstone
deposition,
Sorrento field area, Denver basin, Colorado: The Mountain Geologist, October, p.
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S.A., and J.A. May, 1990, Facies controls on early diagenesis: Wilcox Group,
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S.A., R.D. Winn, Jr., and M.G. Bishop, 1984, Diagenesis of the Frontier
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geometry,
texture
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Sandstone
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in Clastic Rocks: SEPM Short
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and pressure have on diagenesis of sandstones. A good reference for predicting
sandstone
reservoir system quality.
_____,
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in Clastic
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