Estimating Pore Throat Size in Sandstones from
Routine Core-Analysis Data
Edward D. Pittman
Search and Discovery Article #40009 (2001)
Adaptation for online presentation of article entitled “Relationship of
Porosity and Permeability
to Various Parameters Derived
from
Mercury
Injection-Capillary Pressure Curves for
Sandstone
” by the same author in AAPG
Bulletin, V. 76 , 1992, p. 191-198.
Pore aperture size estimated from
mercury injection tests has been used to
evaluate seals for traps and to explain the locations of stratigraphic
hydrocarbon accumulations. However, mercury injection tests are expensive and
therefore not abundant. This paper develops empirical equations for estimating
certain pore aperture size parameters
from
routine core analysis. The
relationship of porosity, uncorrected air
permeability
, and various parameters
derived
from
mercury injection-capillary pressure curves was established using
multiple regression on a database of 202 samples of
sandstone
from
14 formations
that range in age
from
Ordovician to Tertiary. These
sandstone
formations vary
in composition and
texture
.
A series of empirically derived equations also permits the calculation of
pore aperture radii corresponding to mercury saturation values that range from
10 to 75% in increments of five. This makes it possible to construct a
calculated pore aperture radius distribution curve using porosity and
permeability
from
core analysis.
Figure 1. Presentation of mercury
injection-capillary pressure data. Often this is presented as a semilog plot.
The threshold pressure, as defined graphically by Katz and Thompson (1987),
corresponds to the inflection point at which the curve becomes convex upward.
The displacement pressure (Pd) was defined by Schowalter (1979) as
the pressure at a mercury saturation of 10%.
Figure 2. A log-log hyperbolic plot of mercury injection data following
Thomeer (1960) and Swanson (1981). Thomeer used the values of the asymptotes in
his mathematical description. The 45o-line is tangent to the
hyperbola at the apex. Some mercury curves have no apex.
Figure 3. A semilog mercury injection plot with pore size plotted on the
logarithmic axis.
Figure 4. A plot of Hg saturation/capillary pressure versus Hg saturation, as
a means of determining the apex of Thomeer's (1960) hyperbola. This is a more
accurate method than the one depicted on Figure 2.
Figure 5. Plot of calculated pore aperture corresponding to the apex
(equation 9) versus pore aperture of graphically derived apex (Figure 4).
Figure 6. Comparison of measured (mercury injection) and calculated
(equations, Table 1) pore aperture radius distribution curves for the same
sample.
Figure 7. (A) Plot of mercury saturation versus mercury saturation divided by
pressure, used to determine apex. If an apex exists for this sample, it must be
at a saturation of <10%. (B) Semilog plot of pore aperture radii versus
cumulative mercury saturation. Mercury injection data that do not have an apex
yield cumulative curves that are essentially straight or slightly concave
upward. The even distribution of pore radii on a histogram using log2
classes indicates the lack of a dominant modal class or classes. If a modal
class exists, it is at a saturation of <10%; Wall Creek
Sandstone
, 13.8%
porosity and 1.1 md
permeability
.
Click here to see slideshow and overlay of figures 7 and 8.
Figure 8. (A) Plot of mercury saturation versus mercury saturation divided by
pressure, showing an apex at a saturation of 28%. (B) Semilog plot of pore
aperture radii versus cumulative mercury saturation. The corresponding histogram
(log[2] classes) has a modal pore aperture class between 1.41 and 1.0
micrometers and a weak secondary modal class
from
0.125 to 0.088 micrometer. The
coarser mode corresponds to the apex, which is where the pores occur that are
capable of dominating flow; Terry
Sandstone
, 16.4% porosity and 1.8 md
permeability
.
Click here to view overlay sequence of figures 7 and 8.
Reservoir engineers and petrophysicists are interested in how permeability
and porosity relate to pore aperture size and pore aperture size distribution,
primarily so they can estimate
permeability
. Exploration geologists have been
interested in using pore aperture size derived
from
mercury injection data to
evaluate the sealing capacity of cap rocks (e.g., Smith, 1966; Berg, 1975). In a
water-saturated rock, hydrocarbon migration and entrapment result
from
the
opposing interplay of buoyancy pressure and capillary pressure. Following
expulsion
from
a source rock, hydrocarbons migrate through carrier beds when a
hydrocarbon filament has been established through the pores of the rock. If one
can determine the pressure required to establish a connected hydrocarbon
filament through the largest interconnected water-saturated pore throats, one
can calculate the vertical hydrocarbon column required to migrate hydrocarbons (Schowalter,
1979). This displacement pressure is important to hydrocarbon migration and
entrapment .
The pore aperture size that corresponds to displacement pressure can be
determined from
a mercury injection test. However, often, one may want to know
this information when mercury injection tests are unavailable because of cost
considerations, lack of core, or insufficient core material (e.g., small chips
or thin slabs) to permit sampling. Therefore, a readily available estimation of
displacement pressure,
from
other data such as porosity and
permeability
, would
be helpful.
Another parameter of interest is the pore aperture that corresponds to the apex of a hyperbola on a log-log mercury injection plot. This parameter has the potential for delineating stratigraphic traps in the same manner as the pore aperture corresponding to the 35th percentile of a cumulative mercury saturation curve, which was developed by H. D. Winland, Amoco Production Company.
The purpose of this paper is to (1) review previous efforts to relate
permeability
, porosity, and mercury injection-capillary pressure data; (2)
present empirical relationships among porosity, uncorrected air
permeability
,
and the pore aperture size that corresponds to the displacement pressure and the
apex of a hyperbola on a log-log mercury injection plot; and (3) present
empirically derived equations that permit construction of a pore aperture radius
distribution curve using porosity and
permeability
data.
Washburn (1921) first suggested the use of mercury injection as a laboratory method for determining the pore aperture size distribution in porous rocks. The Washburn equation can be expressed as:
Pc=-2 gcosq/r
(1)
where Pc = capillary pressure (dynes/cm2), g
= surface tension of Hg (480 dynes/cm), q
= contact angle of mercury in air (140o), and r = radius of pore
aperture for a cylindrical pore. Thus, r (mm)=
107/Pc (psia).
Van Brakel et al. (1981) discussed some of the problems of mercury
porosimetry. One source of error in measuring rock porosity is that the pores
are not necessarily cylindrical. Purcell (1949) was instrumental in developing
mercury injection techniques, and equation 1 has been the basis of further work
by many authors. Capillary pressure versus mercury saturation commonly is
plotted on arithmetic or semilog plots (Figure 1), although the saturation scale
sometimes is reversed so that it increases from
right to left.
Entry pressure, displacement pressure, and threshold pressure are terms
referring to the initial part of the mercury injection curve. The entry pressure
on a mercury injection-capillary pressure plot is the point on the curve where
the mercury first enters the pores of the rock. This point is indicative of the
largest pore aperture size (Robinson, 1966). This parameter often is vague and
difficult to determine because the sample size and surface irregularities of the
rock relative to pore geometry create a boundary condition that affects the
low-mercury saturation part of the curve. Schowalter (1979) recognized this
problem and pointed out that the important aspect for evaluating seals for traps
is to determine the pressure required to form a connecting filament of
nonwetting fluid th ough the largest connected pore apertures of the rock. He
measured this pressure by making electrical conductivity readings during mercury
injection and found the mercury saturation ranged from
4.5 to 17%. Schowalter
(1979) wanted a pragmatic approach to use on existing mercury injection data
where electrical conductivity measurements were not available. Therefore, he
defined the term displacement pressure as the pressure at 10% mercury
saturation, for use in evaluation of hydrocarbon entrapment. Katz and Thompson
(1986, 1987) defined threshold pressure as the pressure at which mercury forms a
connected pathway across the sample. Katz and Thompson (1987) indicated that the
measured threshold pressure corresponded graphically to the inflection point on
a mercury injection plot. On Figure 1, this is where the mercury injection curve
becomes convex upward.
Wood's metal, an alloy of bismuth that contains lead, tin, and cadmium and
has a melting point of 70oC, has been used by various workers as a
nonwetting medium for injection into pores of rocks. Dullien and Dhawan (1975)
showed that injecting mercury and Wood's metal yielded similar injection curves.
Molten Wood's metal can be cooled and crystallized at any desired injection
pressure. One can evaluate the nature of the pore geometry occupied by Wood's
metal using various techniques. Dullien and co-workers (e.g., Dullien and Dhawan,
1974) have used photographic methods employing quantitative stereology of Wood's
metal to characterize pores, which consist of a series of bulges and necks.
Dullien (1981) has compared pore size distributions derived from
quantitative
stereology and mercury porosimetry. The mercury injection technique indicates a
greater quantity of small pores than does the quantitative stereology technique.
Swanson (1977) established the position on the mercury injection curve that represents a continuous, well-interconnected pore system through the rock. He used a porosimeter with a heating coil and molten Wood's metal to illustrate visually the distribution of the nonwetting phase at various pressures. After having been injected at a low pressure, the cooled and crystallized Wood's metal had a spotty distribution in the rock. With increasing injection pressure, the nonwetting phase entered smaller pore apertures and the volume of the Wood's metal increased. Eventually, an injection pressure was reached whereby the Wood's metal occupied pore sizes that effectively interconnected the total major pore system that dominates fluid flow. Swanson (1977, p. 2498) noted that at this point, "the mercury saturation expressed as percent of bulk volume is indicative of that portion of the space effectively contributing to fluid flow." Swanson (1977) determined that on a mercury injection curve, this point corresponded to the apex of the hyperbola of a log-log plot. In Figure 2, the 45o-line is tangent to the hyperbola at the apex.
Thomeer (1960) developed a mathematical description of capillary pressure and
mercury saturation, and first plotted mercury injection data as a log-log plot.
This plot yields a curve that approximates a hyperbola (Figure 2). The location
of the hyperbola with respect to the x and y axes is defined by the position of
the two asymptotes. Thomeer called these the extrapolated displacement pressure
(Pd on the y axis) and the bulk volume occupied by mercury at
infinite pressure (VbP[infinity] on the x axis). The shape of the
hyperbola is related to pore geometry, which leads to Thomeer's pore geometrical
factor (G). G is based on the possibility of a family of hyperbolic curves
having G values from
zero to 10, with low values constituting larger and
better-sorted pore apertures and h nce indicating better reservoir
characteristics. Not all curves, however, are hyperbolic and suitable for
assignment of G values. Thomeer (1960) showed graphically that a relationship
exists among air
permeability
, (Vb)P[infinity]/ Pd, and G,
and that pore geometry affects
permeability
and mercury injection.
Swanson (1981) developed the following relationship based on 319 clean
sandstone
and carbonate samples:
Kair = 339(SHG/Pc)apex 1.691 (2)
where Kair is air permeability
(md), SHG is the bulk
volume mercury saturation (%), and Pc is capillary pressure (psi)
corresponding to the apex of a hyperbolic log-log mercury injection plot. This
equation for Kair has a standard deviation of 1.96x. Swanson also
showed a similar relationship for brine
permeability
(md) at 1000 psi effective
stress. This relationship was based on 56 clean
sandstone
and carbonate samples:
Kbrine = 355 (SHG / Pc)[apex] {2.005} (3)
which had an improved standard deviation of 1.67x. The advantage of using
stressed liquid permeability
is that overburden pressure and the gas slippage
effect are taken into account. Swanson (1981) showed the relationship between
stressed brine
permeability
and unstressed air
permeability
to be
Kbrine = 0.292Kair 1.186 (4)
Swanson (1981) also developed a nomograph based on equation 3, which uses the
apex of the hyperbola of a log-log plot such as Figure 2. This nomograph permits
direct estimation of brine permeability
from
mercury injection data.
Swanson (1981) showed that the apex was the same for core plug data and
simulated drill cuttings (i.e., crushed rock from
sample adjacent to the plug).
This suggests that useful mercury injection data might be obtained
from
drill
cuttings. Other workers also have expressed the opinion that useful mercury
injection tests could be run on drill cuttings (Purcell, 1949; Ghosh et al.,
1987).
Katz and Thompson (1986, 1987) reported the following relationship:
K = 1/226 (lc 2} (s/so) (5)
where K = air permeability
(md), lc = characteristic pore size
(i.e., the calculated pore size {micrometers} for threshold pressure at which
mercury forms a connected pathway through the sample), and (s/so
= ratio of rock conductivity to conductivity of formation water.
This equation follows percolation theory arguments (e.g., Ambegaokar et al.,
1971), which are applicable to systems characterized by a broad distribution of
conductances with only short-range correlations. Seeburger and Nur (1984) showed
that the pore spaces of many reservoir rocks have a random, broad distribution
of pore sizes, which suggests that transport through pores must be understood in
terms of a broad distribution of local conductances (Katz and Thompson, 1987).
Equation 5 is applicable to sandstones and carbonates and appears to provide a
good estimate of permeability
(Thompson et al., 1987). This approach, however,
requires a rock sample, laboratory measurement of threshold pressure, and
measurement of rock and formation water conductivity.
Yuan and Swanson (1989) used a method of rate-controlled mercury porosimetry in which the injection rate is kept constant and the mercury pressure is monitored. Fluctuations in the mercury meniscus may occur because of varying degrees of constriction along the flow path. This enabled the researchers to resolve the pore space of a rock into pore bodies and pore throats. This technique appears promising for improving our understanding of pore geometry.
H. D. Winland (Amoco Production Company), who was interested in sealing
potential, developed an empirical relationship among porosity, air permeability
,
and the pore aperture corresponding to a mercury saturation of 35% (r35)
for a mixed suite of sandstones and carbonates. Winland ran regressions for
other percentiles (30, 40, and 50), but the best correlation (highest R) was the
35th percentile. No explanation was given for why the 35th percentile gave the
best correlation. His data set included 82 samples (56
sandstone
and 26
carbonate) with low permeabilities that were corrected for gas slippage and 240
other samples with uncorrected permeabilities. The Winland equation was used and
published by Kolodzie (1980):
Log r35 = 0.732 + 0.588 Log Kair - 0.864 Log f (6)
where r35 is the pore aperture radius corresponding to the 35th
percentile, Kair is uncorrected air permeability
(md), and q
is porosity (%).
Hartmann and Coalson (1990) correlated Winland's r35 values with pore type and reservoir quality. Winland favored plotting cumulative percent mercury saturation versus pore aperture radii on semilog paper, putting pore aperture radii on the log scale (Figure 3).
Winland also showed, through several field examples, that r35
could be used to delineate commercial hydrocarbon accumulations of stratigraphic
traps. One of Winland's examples was the Terry Sandstone
at Spindle Field,
Colorado. Pittman (1989), using some of the same cored wells as Winland, showed
that the net feet of
sandstone
having an r35 greater than 0.5 mm
was useful for delineating the trap. Updip dry holes have no net
sandstone
with
an r35 >0.5 mm; whereas, a
good well in the field has 39 ft (11.9 m) of net
sandstone
with an r35
>0.5 mm.
Two hundred and two porosity and uncorrected air permeability
analyses were
available in the Amoco Research Center files on plugs that had also been used
for mercury injection tests of sandstones
from
14 formations. The porosities and
permeabilities of the data set ranged
from
3.3 to 28.0% and 0.05 to 998 md,
respectively. These formations, which range in age
from
Ordovician to Tertiary,
include Simpson, Delaware, Tensleep, Nugget, Cotton Valley, Muddy, Mesaverde,
Terry, First Wall Creek, Second Wall Creek, Frontier, Montrose, Vicksburg, and
Frio sandstones. Lithologically, these sandstones include sublitharenites,
subarkoses, and quartz arenites in a modified Dott classification (Pettijohn et
al., 1987). Argillaceous sandstones, clean permeable sandstones, and clean but
tightly cemented sandstones are represented. The size of the sample suite
coupled with the wide range in porosity and
permeability
, the diverse
composition, and the variable
texture
of the sandstones suggests this should be
a representative sample set for reservoir sandstones.
The threshold pressure and displacement pressure were determined graphically
from
the mercury injection curves, and the corresponding pore aperture radii
were calculated using equation 1. The apex was determined graphically for each
mercury injection curve by plotting mercury saturation pressure divided by
mercury saturation on the y axis against mercury saturation on the x axis
(Figure 4). Six of the 202 samples were nonhyperbolic and lacked an apex. Pore
aperture radii corresponding to the 10th, 15th, 20th, 25th, 30th, 35th, 40th,
45th, 50th, 55th, 60th, 65th, 70th, and 75th percentiles of mercury saturation
were also determined. A Statistical Analysis System (SAS) multiple regression
program was used to establish various empirical relationships.
The graphical expression of the threshold pressure (Katz and Thompson, 1986),
which is the inflection point of the curve, was determined for all mercury
injection curves. For some samples, the inflection point was vague and difficult
to determine. Using the radius of the pore aperture corresponding to the
threshold pressure (rthresh in micrometers) as the dependent variable
in a multiple regression involving uncorrected air permeability
(K in md), and
porosity (f in %) yielded:
Log rthresh = 0.137 + 0.479 Log K - 0.143 Log f. (7)
This equation has a correlation coefficient of 0.900.
A relationship among the pore size corresponding to Schowalter's (1979)
displacement pressure (rPd in micrometers), uncorrected air
permeability
(K in md), and porosity (phi in %), was established by a multiple
regression with log rPd as the dependent variable:
Log rPd = 0.459 + 0.500 Log K - 0.385 Log f (8)
This equation has a correlation coefficient of 0.901.
Based on a multiple regression with log rapex as the dependent
variable, the relationship among the pore size corresponding to the apex (rapex
in micrometers), uncorrected air permeability
(K in md), and porosity (f
in %) is:
Log rapex = -0.117 + 0.475 Log K - 0.099 Log f (9)
This equation yields a correlation coefficient of 0.919. The porosity term is not statistically significant in this equation. A regression excluding porosity as a variable also has an R of 0.919 and yields:
Log rapex = -0.226 + 0.466 Log K (10)
where rapex is in micrometers and K is uncorrected air
permeability
in millidarcys.
A graph of log rapex calculated from
equation 9 plotted against
graphically determined rapex (Figure 4) is shown in Figure 5. This
plot has a correlation coefficient of 0.931. The mean apex for the 196
sandstones had a mercury saturation of 36%.
Winland's approach of using multiple regression analysis to develop an
empirical equation for calculating the pore throat that corresponds to the 35th
percentile was extended to a spread of mercury saturation percentiles (Table 1).
For the lower percentiles of mercury saturation (10-35), the porosity term is
not statistically significant and the pore aperture sizes could be predicted
equally well using only permeability
in the regression to develop an equation.
The porosity term is statistically significant for the higher percentiles of
mercury saturation (40-75). The reason for this is unknown. For simplicity,
however, all the empirical equations in Table 1 include a porosity term. In
Table 1, note that the correlation coefficient, R, decreases at increasingly
higher percentiles. One can construct a partial pore aperture size distribution
curve
from
the equations in Table 1, recognizing that the accuracy would
diminish above the 55th percentile. For most sandstones, this would cover the
important part of the curve. Regressions for pore apertures corresponding to
mercury saturation percentiles
from
10 to 55% had R values above 0.900. Figure 6
shows measured (via mercury injection) and calculated (equations, Table 1) pore
aperture radius distribution curves for the same sample.
Using permeability
as the dependent variable yielded the following empirical
relationships:
(a) Log K = -0.861 + 1.185 Log f + 1.627 Log rapex (11)
with an R of 0.928. In this equation, K is uncorrected air permeability
(md),
f is porosity (%), and rapex
is the pore radius corresponding to the apex (mm).
(b) Log K = -1.221 + 1.415 Log f + 1.512 Log r25 (12)
yielded the best correlation coefficient, an R of 0.939. For equation 12, K
is uncorrected air permeability
(md), f
is porosity (%), and r25 is the pore aperture corresponding to the
25th percentile of saturation on a cumulative mercury injection plot.
Sediments deposited in an aqueous environment have an affinity for water and
are water-wet. After oil becomes trapped in a reservoir, polar organic compounds
may adhere to the rock surface and through time make the rock oil-wet or
partially oil-wet. However, for the purposes of migration and entrapment of
hydrocarbons, rocks are considered to be water-wet. Following generation and
expulsion of hydrocarbons from
a source rock, the hydrocarbons move through a
carrier bed as a nonwetting phase displacing water. Eventually, the hydrocarbons
reach a position where the capillary pressure exceeds the opposing buoyancy
pressure generated by the hydrocarbon column, and the hydrocarbons are trapped.
To evaluate migration and entrapment of hydrocarbons, it is necessary to
identify the pore aperture size that would lead to entrapment. Ideally, this
would be the threshold pressure, as measured in the laboratory by Katz and
Thompson (1987), at which the mercury provides an interconnecting thread across
the core plug to establish electrical conductivity. This approach, however,
precludes the use of existing mercury injection tests. If porosity and
permeability
values
from
a core analysis are available, the pore aperture size
corresponding to the displacement pressure can be predicted using equation 8.
The threshold pressure as defined by Katz and Thompson (1986, 1987), would be
more accurate than the displacement pressure as defined by Schowalter (1979).
However, the graphical determination of threshold pressure, which is required
for working with existing "old" data, is inaccurate, and thus equation
7 does not appear to be an improvement over equation 8. Calculation of
displacement pressure pore radii
from
porosity and
permeability
values has the
advantage of providing data throughout the cored interval instead of being
limited to results
from
sparse mercury injection tests.
Berg (1975) recognized the limitations of sparse mercury injection test data.
He developed an empirical equation to estimate grain size from
porosity and
permeability
and then determined pore aperture radii by incorporating grain size
in another equation. He states that this method "gives only a crude
approximation of dominant pore size for natural sandstones" (Berg, 1975, p.
947). The empirical equations developed in this paper are an improvement over
the approach used by Berg because these equations do not require estimation of
grain size.
The pore aperture corresponding to the apex of the hyperbola on a log-log
mercury injection plot is of significance because it represents the pore
apertures that interconnect to form what Swanson (1981) referred to as an
effective pore system that dominates flow. Six of the 202 samples (2.9%) were
nonhyperbolic and lacked an apex. These six samples ranged in porosity and
permeability
from
8.8 to 20.0% and 0.09 to 3.0 md, respectively. The
permeability
, however, was typically low (mean = 1.14 md). All of these samples
had mercury injection curves that yielded essentially straight or slightly
concave-upward curves when plotted on a semilog plot (e.g., Figure 7). Note that
this type of sample has no dominant modal pore aperture size class on the
histogram (Figure 7). If a dominant class and corresponding apex exist, that
class is probably in the <10% mercury saturation range. Samples with an apex
have mercury injection curve shapes that are co vex-upward through most of the
curve on a semilog plot (e.g., Figure 8). The apex corresponds to the dominant
pore aperture class on the histogram (Figure 8).
The mean mercury saturation for the apex of Amoco's 196 sandstones was 36%, which is very close to the 35% that Winland used to delineate hydrocarbon accumulations in stratigraphic traps. Perhaps Winland found the best correlation to be for r35 because that is where the average modal pore aperture occurs and where the pore network is developed to the point of serving as an effective pore system that dominates flow in the sense described by Swanson (1981), based on his studies involving injection of Wood's metal.
A limited test of the applicability of equation 9 for apex radii was made in
two wells previously studied in the Terry Sandstone
stratigraphic trap at
Spindle Field (Pittman, 1989). Results showed a favorable comparison between
equation 9 and H. D. Winland's r35 (equation 6). An updip dry hole
had no net feet of
sandstone
having a pore aperture of >0.5 mm
using both equations. The calculated mean pore aperture size was 0.314 mm
for apex and 0.326 micrometer for r35. A producing well had 40 and 39
net ft (12.2 and 11.9 m) of
sandstone
having a pore aperture >0.5 mm,
respectively, using apex and r35 equations. The calculated mean
aperture radius for this producing well was 0.741 mm
for apex and 0.671 mm for r35.
Thus, both equations appear to serve equally well for distinguishing
nonproductive
from
productive wells for this trap.
Porosity and uncorrected air permeability
from
routine core analysis can be
used to estimate displacement pressure for use in the equations presented by
Schowalter (1979), and to estimate the pore aperture size of the apex for use in
delineating traps in a manner similar to the way r35 has been used.
Among 196 sandstone
samples
from
14 formations, the mean apex of log-log
mercury injection plots was at a mercury saturation of 36%. The empirically
derived relationships among uncorrected air
permeability
(K in md), porosity (f
in %), and the pore aperture radius (mm)
corresponding to the displacement pressure and apex, respectively, can be
expressed as
Log rPd = 0.459 + 0.500 Log K - 0.385 Log f
And
Log rapex = -0.117 + 0.475 Log k - 0.099
Log f.
Because these equations are based on uncorrected air permeabilities, the use
of corrected permeability
values, which would be smaller, would produce a
misleadingly smaller pore-aperture-size calculation.
The empirically derived equations of Table 1 correspond to mercury
saturations from
10 to 75%, and permit the construction of a calculated
pore-aperture-radius distribution curve that is based on porosity and
uncorrected air
permeability
.
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Department of Geosciences, University of Tulsa, Tulsa, Oklahoma 74104 (at the time of publication in AAPG Bulletin); now Sedona, Arizona..
The statistical analyses were done while the author was employed by Amoco
Production Company using data in the Research Center files. Unpublished work by
H. D. Winland, Amoco Production Company, provided the inspiration for this
paper. One hundred-three of the 202 samples were from
the Winland sample suite.
I thank M. O. Traugott, D. R. Spain, and J. B. Thomas for their thoughtful and
helpful reviews of the manuscript.