The present disclosure relates to drilling wellbores in subterranean formations. The present disclosure also relates to systems and methods for analyzing borehole productivity.
Oil prices continue to rise in part because the demand for oil continues to grow, while stable sources of oil are becoming scarcer. Oil companies continue to develop new tools for generating data from boreholes with the hope of leveraging such data by converting it into meaningful information that may lead to improved production, reduced costs, and/or streamlined operations.
Borehole imagery is a major component of the wireline business (for example, Schlumberger's FMI™, Formation MicroScanner, OBMI™ Tools), and an increasing part of the logging while drilling business (for example, Schlumberger's GeoVision™, RAB Resistivity-at-the-Bit, ARC5 Array Resistivity Compensated tools). While borehole imagery provides measurements containing abundant data about the subsurface, it remains a challenge to extract the geological and petrophysical knowledge contained therein. Yet, accurately characterizing the natural fracture porosity of a hydrocarbon reservoir is an essential step to assessing its productivity index and quantity of oil therein.
The present disclosure relates to methods and systems for analyzing raw data from borehole imagery tools, for example analyzing zonal resistivity maps generated from measurements of certain resistivity tools, and converting the data into information relating to well productivity.
In some embodiments, the methods involve estimating surface fracture per volume of rock from a borehole image taken in a borehole which has segments of fractures occupying one or more planes, wherein the estimation does not require defining the one or more planes bearing the segments. In some embodiments, the borehole image is in the form of a zonal resistivity map. In some embodiments, the method involves identifying linear segments corresponding to fractures from the borehole image, such as from the zonal resistivity map, sorting the segments into angular classes and generating a cumulated segment length distribution over the angular class, correlating the cumulated segment distribution with a theoretical segment length distribution for each of the angular classes to obtain the length of fracture surface of borehole contribution of each angular class, computing a surface fracture per volume of rock for each angular class from the length of fracture surface of borehole for each class, and summing together the surface fracture per volume of rock for each angular class to arrive at a total surface fracture per volume of rock. In further embodiments, the number of angular classes is nine, and each angular class spans about ten degrees (from 0-10 to 80-90). In some embodiments, the method involves generating a borehole image from data collected by a downhole tool, such as a resistivity tool, and then estimating surface of fracture per volume of rock from the data, wherein the data is correlated to segments of fractures and the estimation does not require defining planes in the borehole bearing the segments.
In some embodiments, the systems include: a downhole tool, such as a resistivity tool, for collecting data in a borehole from which information about segments corresponding to fractures in the subsurface may be derived; and, a processor including machine-readable instruction for estimating surface of fracture per volume of rock from the data (directly or indirectly), without defining the planes in the borehole bearing the segment. In some embodiments, the systems further include machine-readable instructions wherein the estimating includes reconstructing theoretical elliptical fractures from the segment data, calculating the length of fracture per segment per surface of borehole for each of the theoretical ellipses, and deriving a surface of fracture per volume of rock from each length of fracture segment per surface of borehole.
The identified embodiments are exemplary only and are therefore non-limiting. The details of one or more non-limiting embodiments of the invention are set forth in the accompanying drawings and the descriptions below. Other embodiments of the invention should be apparent to those of ordinary skill in the art after consideration of the present disclosure.
Unless defined otherwise, all technical and scientific terms used herein have the same meaning as is commonly understood by one of ordinary skill in the art to which this disclosure belongs. In the event that there is a plurality of definitions for a term herein, those in this section prevail unless stated otherwise.
Where ever the phrases “for example,” “such as,” “including” and the like are used herein, the phrase “and without limitation” is understood to follow unless explicitly stated otherwise. Therefore, “for example a mud turbine generator” means “for example and without limitation a mud turbine generator.”
The terms “comprising” and “including” and “involving” (and similarly “comprises” and “includes” and “involves”) are used interchangeably and mean the same thing. Specifically, each of the terms is defined consistent with the common United States patent law definition of “comprising” and is therefore interpreted to be an open term meaning “at least the following” and also interpreted not to exclude additional features, limitations, aspects, etc.
The terms “about” or “substantially” are meant to account for variations due to experimental error, or alternatively to permit deviations from the measured quantity or descriptor that don't negatively impact the intended purpose. All measurements or numbers are implicitly understood to be modified by the word about, even if the measurement or number is not explicitly modified by the word about.
The terms “wellbore” and “borehole” are used interchangeably.
The phrases “bottom hole assembly” and “downhole tool” are used interchangeably.
“Measurement While Drilling” (“MWD”) can refer to devices for measuring downhole conditions including the movement and location of the drilling assembly contemporaneously with the drilling of the well. “Logging While Drilling” (“LWD”) can refer to devices concentrating more on the measurement of formation parameters. While distinctions may exist between these terms, they are also often used interchangeably. For purposes of this disclosure MWD and LWD are used interchangeably and have the same meaning That is, both terms are understood as related to the collection of downhole information generally, to include, for example, both the collection of information relating to the movement and position of the drilling assembly and the collection of formation parameters.
Whenever the phrase “derived from” or “calculated from” or the like are used, “directly or indirectly” are understood to follow. Also, the phrases “estimating from the data” or “calculating from the data” are understood to mean “from the data or subset of the data.” By way of example, a borehole image contains an abundance of data about a borehole. In some embodiments, “estimating surface of fracture per volume of rock” first involves extracting and converting a subset of data—analyzing the data to identify segments, further analyzing which segments correspond to fractures, and estimating proceeds on only the subset of data extracted from the original set which corresponds to segments of fractures.
When a range of angles is provided herein, such as a range of from X degrees to Y degrees, the range is understood to include the lower number (“X”) and exclude the upper number (“Y”). Thus, the angular class spans the range of from about 20 degrees to about 30 degrees means that the angular class includes 20 degrees but excludes 30 degrees.
A drill string 12 is suspended within the wellbore 11 and includes a drill bit 105 at its lower end. The drill string 12 is rotated by a rotary table 16, energized by means not shown, which engages a kelly 17 at the upper end of the drill string. The drill string 12 is suspended from a hook 18, attached to a travelling block (also not shown), through the kelly 17 and a rotary swivel 19 which permits rotation of the drill string 12 relative to the hook 18.
Drilling fluid or mud 26 is stored in a pit 27 formed at the well site. A pump 29 delivers the drilling fluid 26 to the interior of the drill string 12 via a port in the swivel 19, inducing the drilling fluid to flow downwardly through the drill string 12 as indicated by the directional arrow 8. The drilling fluid exits the drill string 12 via ports in the drill bit 105, and then circulates upwardly through the region between the outside of the drill string 12 and the wall of the wellbore, called the annulus, as indicated by the direction arrows 9. In this manner, the drilling fluid lubricates the drill bit 105 and carries formation cuttings up to the surface as it is returned to the pit 27 for recirculation.
The drill string 12 further includes a bottomhole assembly (“BHA”), generally referred to as 100, near the drill bit 105 (for example, within several drill collar lengths from the drill bit). The BHA 100 includes capabilities for measuring, processing, and storing information, as well as communicating with the surface. The BHA 100 thus may include, among other things, one or more logging-while-drilling (“LWD”) modules 120, 120A and/or one or more measuring-while-drilling (“MWD”) modules 130, 130A. The BHA 100 may also include a roto-steerable system and motor 150.
The LWD and/or MWD modules 120, 120A, 130, 130A can be housed in a special type of drill collar, as is known in the art, and can contain one or more types of logging tools for investigating well drilling conditions or formation properties. The logging tools may provide capabilities for measuring, processing, and storing information, as well as for communication with surface equipment.
The BHA 100 may also include a surface/local communications subassembly 110, which may be configured to enable communication between the tools in the LWD and/or MWD modules 120, 120A, 130, 130A and processors at the earth's surface. For example, the subassembly may include a telemetry system that includes an acoustic transmitter that generates an acoustic signal in the drilling fluid (a.k.a. “mud pulse”) that is representative of measured downhole parameters. The acoustic signal is received at the surface by instrumentation that can convert the acoustic signals into electronic signals. For example, the generated acoustic signal may be received at the surface by transducers. The output of the transducers may be coupled to an uphole receiving system 90, which demodulates the transmitted signals. The output of the receiving system 90 may be coupled to a computer processor 85 and a recorder 45. The computer processor 85 may be coupled to a monitor, which employs graphical user interface (“GUI”) 92 through which the measured downhole parameters and particular results derived therefrom are graphically or otherwise presented to the user. In some embodiments, the data is acquired real-time and communicated to the back-end portion of the data acquisition and logging system. In some embodiments, the well logging data may be acquired and recorded in the memory in downhole tools for later retrieval.
The LWD and MWD modules 120, 120A, 130, 130A may also include an apparatus for generating electrical power to the downhole system. Such an electrical generator may include, for example, a mud turbine generator powered by the flow of the drilling fluid, but other power and/or battery systems may be employed additionally or alternatively.
The well-site system is also shown to include an electronics subsystem comprising a controller 60 and a processor 85, which may optionally be the same processor used for analyzing logging tool data and which together with the controller 60 can serve multiple functions. For example the controller 60 and processor 85 may be used to power and operate the logging tools such as the FMI™ tool mentioned below. The controller and processor need not be on the surface as shown but may be configured in any way known in the art. For example, alternatively, or in addition, as is known in the art, the controller and/or processor may be part of the MWD (or LWD) modules on which the FMI or other tool is positioned or may be on-board the tool itself.
In the methods and systems according to this disclosure, the electronics subsystem (whether located on the surface or sub-surface on or within the tool or some combination thereof) includes machine-readable instructions for estimating surface of fracture per volume of rock (P32) from data collected by appropriate logging tools.
Non-limiting examples of logging tools that may be part of the LWD or MWD modules 120, 120A, 130, 130A and may be useful for generating data useful in systems and methods according to embodiments of the present disclosure include the RAB™ resistivity-at-the-Bit tool, the ARC™ Array Resistivity Compensated tool, and the PERISCOPE™, which are all owned and offered through logging services by Schlumberger, the assignee of the present application. Non-limiting examples of wireline logging tools 230, which may be useful for generating data useful in systems and methods according to the present disclosure include the Formation Microresistivity Imager (FMI™) tool, also owned and offered through logging services by Schlumberger, the assignee of the present application. However, any tool that acquires data relating to fracture segments and from which the length and dip angle of the fracture segment may be extracted may be used in the systems and methods according to this disclosure.
The logging tools referred to in the previous paragraph may be used to generate borehole images of rock and fluid properties. In some embodiments, the tools provide high resolution and nearly complete borehole coverage images—which when “unrolled” and displayed from 0 to 360 degrees, indicate linear features intersecting that borehole as sinusoids. Assuming the images are oriented to geographic north, the amplitude and minimum of the sinusoids can be related to the dip and azimuth of the associated feature.
More specifically,
Borehole images are generally far more complex than is represented in
Josselin Kherroubi and colleagues at Schlumberger, the assignee of the present application, propose a method to automatically extract linear segments from borehole images and evaluate which of those segments belong to fractures. (See, J. Kherroubi, A Etchecopar: “Fracture Characterization from Borehole Image: A Quantified Approach,” AAPG Annual Convention & Exhibition, Denver USA 2009 and J. Kherroubi, “Automatic Extraction of Natural Fracture Traces from Borehole Images, 19th International Conference on Pattern Recognition (IAPR), Tampa, Fl, USA, 2008), which are both herein incorporated by reference in their entirety. However, the fracture surface to assess P32 cannot be directly calculated because the planes bearing the segments are not defined.
The present disclosure provides systems and methods for evaluating P32 after linear segments are extracted from borehole images. Although the Kherroubi et al. approach is mentioned herein for extracting segments of fractures from the borehole image, any methodology for extracting linear segments from the borehole image (or from the borehole data) and/or evaluating whether the segments correspond to fractures can be used as the basis for the further data analysis provided in this disclosure.
In general, in some embodiments, the methods herein are directed at estimating surface of fracture per volume of rock (P32) from a borehole image taken in a borehole, which includes data relating to segments of fractures occupying one or more planes, without the need for defining the one or more planes bearing the segments. In some embodiments, the borehole image is in the form of a zonal resistivity map such as can be generated with an FMI™, RAB™ or ARC™ tool as referenced above. In further embodiments, estimating P32 involves extracting linear segments corresponding to fractures from the borehole image (e.g. the zonal resistivity map), sorting the segments into angular classes (each angular class, as explained in more detail below, is a grouping of fracture apparent dips and segment angles spanning a predetermined range), generating an actual cumulated segment length distribution over the angular classes, correlating the actual cumulated segment distribution with a theoretical segment length distribution for each of the angular classes to obtain the length of fracture segment per surface of borehole (P21) contributions of each angular class (P21(x→y)), computing a P32 for each angular class (P32(x→y)) from each P21(x→y), and summing together the computed P32 for each class to arrive at a total P32(P32(tot)).
In general, in some embodiments, the systems according to the disclosure include: 1) a downhole tool that acquires data relating to fracture segments and from which the length and dip angle of the fracture segment may be extracted; and 2) a processor including machine-readable instructions for estimating surface of fracture per volume of rock (P32) from the data, without the need for defining the one or more planes bearing the segments. In further embodiments, the estimating involves reconstructing theoretical elliptical fractures from the segment data, calculating length of fracture segment per surface of borehole (P21) for each of the theoretical elliptical fractures, and deriving P32 from P21. In yet further embodiments, the processor further includes machine-readable instructions for calculating an actual distribution of cumulative fragment length by angular class and reconstructing theoretical elliptical fractures by correlating the actual distribution of cumulative fragment length with a theoretical distribution of fragment length for each angular class.
The theoretical segment length distribution means the segment length distribution for complete ellipses spanning an angular class. As a baseline, as shown in
As previously indicated, for convenience, the segment angles and the fracture apparent dips are gathered into angular classes. The “fracture apparent dip” is the apparent angle of the fracture with respect to the cross-sectional plane. In the example herein, as also previously indicated, angular classes are chosen to span the same width covering 10 degrees each. Therefore, there are nine angular classes ranging from 0-10 up to 80-90. The distribution of the segment length in these nine classes is unique for each fracture apparent dip, and is further independent of azimuth. As a person of skill may appreciate, 90 degrees itself is excluded from any class because that would correspond to a vertical fracture of infinite length. Therefore the range of a given class includes the lower boundary but excludes the upper boundary. In other words the class ranging, for example, from 20-30 degrees includes 20 degrees but excludes 30 degrees.
While
According to the present disclosure, P32 is estimated from actual cumulated segment length across angular class by using the theoretical distributions to reconstruct theoretical full ellipses from the collective actual segment fragments. More specifically, linear segments are extracted from the borehole image by any method, for example by the method of Kherroubi et al., referenced above. After the extraction is performed, an effort is made to identify which segments correspond to fractures, for example an interpreter filters and discriminates which of these segments correspond to fractures. The segments are then sorted with respect to the nine angular classes described above (or alternatively the number and type of classes chosen). The cumulated length for each class is then directly calculated, as shown in
After the actual cumulated segment length versus segment angular class is calculated, theoretical full ellipses are reconstructed and iteratively removed from the data set by correlating the theoretical distribution for each angular class (if it exists) within the actual data set and iteratively removing those theoretical sets from the data set.
More specifically, P21 is calculated for the whole segment population by summing the P21 contribution of each fracture apparent dip class. The individual contribution of each class is then evaluated.
1) Identify the highest apparent dip class. With reference to the actual segment distribution shown in
2) Compute the length of segments belonging to the fractures of the highest apparent dip class. As previously discussed, for a particular fracture dip class, we can generate the theoretical segment length distribution. From the borehole image, we also know the actual cumulated segment length in the highest angle class. Therefore, as shown in
3) Remove the correlated data from the actual data set. Once the cumulated length for the highest apparent dip class is classified (in step 2), it is removed from the actual distribution. See
4) Iteratively perform steps 1-3 for each angular class in descending order. The same process is iteratively carried out to assess the P21 from fractures in other apparent dip classes in an angular descending order. Thus, in this example, the process is next carried out for segments for the 60-70 degrees apparent dip class. (After identifying the highest dip class, step 1 becomes identify the next highest dip class.) A small proportion of segments may effectively remain unclassified at the end of the processing (i.e. they are orphan segments that are additional to the determined set of complete ellipses formed by all the other segments). These remainder segments are not included in the fractures surface (P32) calculation. However, because these orphan segments are few, any impact (if at all) on the approximation of P32 is generally acceptable and to the inventors knowledge still provides the best current approximation of P32.
5) Calculate P32(x→y). At the end of all the iterations, we have the P21 (the length of fracture segment per surface of borehole) contributions of each fracture apparent dip class, from which P32 (the surface of fracture per volume of rock) can be derived. A number of methods have been proposed to correlate P21 to P32 using a “correction coefficient” as follows: P32=P21*C. Thus, knowing this ratio (or correction coefficient) and the previously calculated P21 contribution of each fracture class, the individual P32 for each fracture apparent dip class is calculated as follows: P32(x→y)=P21(x→y)×Ratio(x→y).
Computation of Correction Coefficient to Account for Dip:
Let us consider a borehole cylinder of height H and radius Rb, intersected by a (fully-crossing) planar fracture of apparent dip dip, as shown in
Calculation of the Fracture Length Per Borehole Surface P21
The fracture trace on the borehole wall is a complete ellipse, which perimeter P can be approximated by the Ramanujan I formula as:
P≈π[3(a+b)−√{square root over ((3a+b)(a+3b))}{square root over ((3a+b)(a+3b))}] (1)
, where a is the great radius of the ellipse and b its small radius. In our particular case, those radii are expressed as:
Inserting these formulas in (1), we finally obtain:
, where f is a dimensionless coefficient, defined for
as:
f=3(1+cos(dip))−√{square root over ((3+cos(dip))(1+3 cos(dip)))}{square root over ((3+cos(dip))(1+3 cos(dip)))} (4)
The fracture length per borehole surface P21 is defined by:
where Sb denotes the surface of the borehole cylinder, expressed as:
S
b=2πRbH (6)
Inserting (3) and (6) into (5), we obtain a very good approximation of P21:
Calculation of the Fracture Surface Per Rock Volume P32
The surface S of the fracture is calculated from the usual formula expressing the surface of an ellipse:
S=πab (8)
Replacing again a and b by their respective expressions given in (2), we obtain:
The rock volume V initially present in the borehole cylinder before drilling is:
V
b
=πR
b
2
H (10)
The fracture surface per rock volume P32 is defined by:
Inserting (9) and (10) into (11), we obtain finally for P32:
Calculation of the P32/P21 Ratio
The correction coefficient, defined by C=P32/P21 is calculated from (7) and (12):
which finally results in:
It has to be noted that (14) is a very good approximation of the exact expression of the P32/P21 ratio (featuring a complete elliptical integral of the second kind) defined in Wang. Although in the particular example, the perimeter of an ellipse is approximated by the Ramanuhan I formula, any other formula providing an approximation of the perimeter of an ellipse, for example any other formula providing a very good approximation of the perimeter of an ellipse, can be used in the same manner to derive this coefficient.
The described methods for deriving P32 from P21 are exemplary only. Any method for analyzing the relationship between P32 and P21 can be used in accordance with the systems and methods of this disclosure.
6) Calculate P32(tot). The sum of all P32 individual contributions gives the overall (cumulated) P32 as follows: P32(tot)=Σ(P32(0→10)+ . . . +P32(80→90)).
A number of embodiments have been described. Nevertheless it will be understood that various modifications may be made without departing from the spirit and scope of the invention. Accordingly, other embodiments are included as part of the invention and may be encompassed by the attached claims. Furthermore, the foregoing description of various embodiments does not necessarily imply exclusion. For example, “some” embodiments or “other” embodiments may include all or part of “some”, “other” and “further” embodiments within the scope of this invention.
Number | Date | Country | Kind |
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12305162.5 | Feb 2012 | EP | regional |
Filing Document | Filing Date | Country | Kind |
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PCT/US2013/025806 | 2/13/2013 | WO | 00 |