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Using the
Continuous NMR Fluid
Properties
Scan to Optimize Sampling with Wireline
Formation Testers*
Chanh Cao Minh1, Peter Weinheber1, Wich Wichers1, Adriaan Gisolf1, Emmanuel Caroli2, Francois Jaffuel2, Yannick Poirier2, Davide Baldini3, Marisa Sitta3, and Loris Tealdi3
Search and Discovery Article #40434 (2009)
Posted August 10, 2009
*Adapted from expanded abstract prepared for AAPG International Conference and Exhibition, Cape Town, South Africa, October 26-29, 2008.
1Schlumberger ([email protected] )
2Total
3ENI
One of the most important objectives of fluid sampling using
wireline formation testers (WFT) is to ensure that representative samples of
the different
fluids
encountered in the formation are obtained. Usually the
wireline or LWD petrophysical logs will guide the sample acquisition program.
This typically means that resistivity and nuclear logs are used to infer basic
fluid types, caliper log is used to verify that the borehole is suitable for
sampling, and NMR logs are used to gauge if permeability is sufficient for a
sample to be taken. However these logs are not able to capture variations in
the hydrocarbon column to allow the operator to ensure that all representative
fluids
are sampled. The most important information, a continuous
fluids
type
and property log, is still not widely used in the industry.
Modern NMR logging tools can deliver – in addition to conventional porosity and permeability information – a continuous fluid log of oil, gas, water and OBM filtrate (OBMF) at multiple depths of investigation. The radial fluid profiling allows discrimination of OBMF versus native oil. Additionally, within the hydrocarbon column the NMR measurements can be used to provide continuous logs of oil viscosity and gas-oil ratio (GOR). With this information acquired before the sampling operation, it is easier to ensure that a full suite of representative samples are acquired and that we do not indulge in needless over sampling. When NMR data is acquired after the sampling operation, the continuous logs of viscosity and GOR can be calibrated with WFT data to provide fluid information in places where WFT did not sample.
uIdentification of Oil from OBMF uDownhole Fluid Analysis with WFT Tools uExample 1: uExample 2: Hydrocarbon ID in Tight Formations
uIdentification of Oil from OBMF uDownhole Fluid Analysis with WFT Tools uExample 1: uExample 2: Hydrocarbon ID in Tight Formations
uIdentification of Oil from OBMF uDownhole Fluid Analysis with WFT Tools uExample 1: uExample 2: Hydrocarbon ID in Tight Formations
uIdentification of Oil from OBMF uDownhole Fluid Analysis with WFT Tools uExample 1: uExample 2: Hydrocarbon ID in Tight Formations
uIdentification of Oil from OBMF uDownhole Fluid Analysis with WFT Tools uExample 1: uExample 2: Hydrocarbon ID in Tight Formations
uIdentification of Oil from OBMF uDownhole Fluid Analysis with WFT Tools uExample 1: uExample 2: Hydrocarbon ID in Tight Formations
uIdentification of Oil from OBMF uDownhole Fluid Analysis with WFT Tools uExample 1: uExample 2: Hydrocarbon ID in Tight Formations
uIdentification of Oil from OBMF uDownhole Fluid Analysis with WFT Tools uExample 1: uExample 2: Hydrocarbon ID in Tight Formations
uIdentification of Oil from OBMF uDownhole Fluid Analysis with WFT Tools uExample 1: uExample 2: Hydrocarbon ID in Tight Formations
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Traditionally,
resistivity and nuclear logs are used to estimate porosity, F and water saturation Sw prior to WFT operations.
However, what are missing are continuous hydrocarbon type and
Hydrocarbon type is usually inferred from well logs or from prior field knowledge. Sometimes, large density-neutron separation allows us to distinguish gas from oil but, in other cases, lithological effects could mask it. Hydrocarbon type can also be interpreted from pressure gradient plots. However, a reliable pressure gradient needs sufficient and well-spaced points that might be difficult in thinly laminated beds, or where there is a thin gas cap above the oil zone or a thin oil ring below the gas zone. Also, Jackson et al. (2007) have shown that the technique might not be reliable in case of a compositional gradient and or compartmentalized reservoirs.
It
is known from laboratory measurements that NMR can estimate oil viscosity
(Kleinberg and Vinegar, 1996) and GOR (Lo et al., 2000). In oilfield
applications, multi-dimensional NMR measurements are used to investigate
fluid type and
Identification of Oil from OBMF
Theoretically, both OBM filtrate and native oil are stable
chemical compounds that are in thermodynamic equilibrium. In a closed
thermodynamic system, an external work must be exerted to perturb the
equilibrium and change the state of the
Most OBM filtrates encountered in deepwater West Africa have a
T2 between 500 ms and 1500 ms at downhole conditions. We use the equation:
Downhole Fluid Analysis with WFT Tools
Cao Minh et al 2008 give a good summary of using spectroscopic
based measurements for hydrocarbon differentiations. Additionally, a new
sensor recently introduced for WFT tools is a vibrating rod density-viscosity
sensor. (O’Keefe et al. 2007) This sensor measures the density of the
fluid by the vibration of a mechanical resonator in the flowline. The
resonant frequency of the vibrating element decreases as the fluid density
increases and the quality factor will decreases as viscosity increases.
Sensor characterization is performed using standard reference
Example
1:
The first example is shown in Figure 2. The gamma ray and resistivity curves in
tracks 1 and track 2 show several hydrocarbon-bearing and water-bearing
sands. Track 3 and track 4 show viscosity and GOR from NMR (black) and from
the WFT DV sensor (green) respectively. Although the NMR viscosity and GOR
curves are continuous, their computation is blanked out over the intervals
where the hydrocarbon volume is less than the noise level; typically about 1
pu. The three tracks to the right show the NMR
1. The large viscosity, GOR variations imply that the sands have different oils and therefore, compartmentalization is possible. 2. The oils appear to divide into three general types: a. Darker oils above ~950 m with viscosities in the 20 cp or higher range and GOR ~90 m3/m3. b. Slightly lighter oils from ~950 m to 1200 m with viscosities in the 5 cp range and GOR ~100 m3/m3. c. Lighter oils below ~1200 m with viscosities in the 1 cp range and GOR ~150 m3/m3. 3.
The thin-bedded sands above 750
m are oil-bearing with the same viscosity ~20 cp as the oil in the thick sand
below at 750 m. The top of the oil column is at 700 m. It would be difficult
to determine the hydrocarbon type and 4. The thin-bedded sands below 1300 m are oil-bearing with the same viscosity ~1 cp and GOR ~150 m3/m3 as the oil measured by WFT below at 1480 m and 1590 m. 5. The viscosity and GOR profiles imply at least 3 distinct hydrocarbon-charging phases have occurred in the reservoirs.
In the case of this example considerable operational flexibility was realized. The viscosity mapping provided by the NMR measurements was able to guide the MDT sampling operations. Additionally the viscosity contrast between the upper and lower zones implied a significant economic consequence and early recognition of this was critical for optimizing the subsequent DST evaluation.
Example 2: Hydrocarbon ID in Tight Formations
Figure 3
shows in track 1
well-defined pressure gradients in the water and oil zones. Additionally, an
OWC determined by the intersection of the oil and water gradients fits nicely
where one would pick an OWC from the resistivity log shown in Track 4.
However, above ~575 m TVD
An NMR log was run in this well and the results are
presented in the D-T2 maps to the right in Figure 3.
The WFT results are corroborated by NMR results for the water and oil zones.
In the lower two D-T2 maps, where the fluid type is known, it is possible to
qualify and interpret the oil signal from the OBMF filtrate. We then extend
the interpretation to the upper part of the
Figure 4 shows an example of a heavy oil application. The high viscosity oils can be seen from the short relaxation time highlighted by the yellow ellipses in T2 time (track 1), T1 time (track 2), and an absence of diffusion in track 3. The diffusion log in track 3 shows multiple OWCs. Since the heavy oil components overlap with the bound water components we use a special technique (Cao Minh et al. 2006) to compute the oil volume (green area in track 4), viscosity (black curve in track 5) and GOR (cyan curve in track 6) assuming that the water saturation estimated from the deep resistivity is at irreducible level in the heavy oil zones. Two WFT oil samples were recovered. At 213 m, the measured viscosity is 92 cp. At 221 m, the measured viscosity is 13 cp. These are plotted in track 5 as green dots.
We
have shown that modern NMR logs and WFT go hand in hand to provide critical
NMR is best run before WFT to determine the most
suitable points for pretesting and sampling and as well the points to avoid.
It also gives a look-ahead picture of the degree of complexity of the fluid
column. Knowing in advance if the fluid column is generally homogenous or
heterogeneous can ensure that the
We
conclude that the addition of the continuous NMR fluid
The authors wish to express appreciation to Total, ENI and Schlumberger for permission to publish this paper. We would like to also thank the many anonymous reviewers.
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