The present application claims priority to EP Application No. 16306114.6, which was filed on Sep. 6, 2016, and is incorporated herein by reference in its entirety.
Wells are generally drilled into subsurface rocks to access fluids, such as hydrocarbons, stored in subterranean formations. The formations penetrated by a well can be evaluated for various purposes, including for identifying hydrocarbon reservoirs within the formations. During drilling operations, one or more drilling tools in a drill string may be used to test or sample the formations. Following removal of the drill string, a wireline tool may also be run into the well to test or sample the formations. These drilling tools and wireline tools, as well as other wellbore tools conveyed on coiled tubing, slickline, drill pipe, casing or other means of conveyance, are also referred to herein as “downhole tools.” A downhole tool may be employed alone or in combination with other downhole tools in a downhole tool string.
As will be appreciated, casing may be run into the well for structural support and for isolating fluids within the wellbore from certain formations (e.g., freshwater reservoirs) penetrated by the well. The casing can be cemented into place within the well. A cement job includes the design and the pumping of a cement slurry inside the well, with the objective of the right cement slurry placement. During a cement job, the cement slurry can be pumped down a casing string in a well, out the bottom of the casing string, and then up the annular space surrounding the casing string. The cement is then allowed to set in the annular space. Various parameters can have a negative impact on the success of a cement job, such as contamination of the cement slurry by drilling mud or poor centralization of the casing within the well. After the cement slurry is pumped into the annulus between the casing and the formation, a downhole tool (e.g., an acoustic logging tool) may be run into the cased well for evaluating the quality of the cement around the casing.
Certain aspects of some embodiments disclosed herein are set forth below. It should be understood that these aspects are presented merely to provide the reader with a brief summary of certain forms the invention might take and that these aspects are not intended to limit the scope of the invention. Indeed, the invention may encompass a variety of aspects that may not be set forth below.
As described in greater detail below, at least some embodiments of the present disclosure relate to separation of flexural and extensional mode components of a multi-modal acoustic signal, such as may be received by an acoustic logging tool performing cement evaluation. In one embodiment, a method includes emitting an ultrasonic pulse toward a casing within a well so as to excite a multi-modal Lamb wave within the casing, the multi-modal Lamb wave having flexural and extensional modes. The method also includes detecting acoustic signals generated by the multi-modal Lamb wave within the casing, and processing the detected acoustic signals to separate acoustic signals generated by the extensional mode from acoustic signals generated by the flexural mode. This processing includes filtering the detected acoustic signals with a first filter bank that filters the detected acoustic signals based on an estimated quality factor for the extensional mode and on dispersion characteristics of the extensional mode to produce a first set of coefficients. The processing also includes filtering the detected acoustic signals with a second filter bank that filters the detected acoustic signals based on an estimated quality factor for the flexural mode and on dispersion characteristics of the flexural mode to produce a second set of coefficients. Additionally, the processing includes selecting subsets of the first and second sets of coefficients and using the selected subsets of coefficients to predict an extensional mode waveform and a flexural mode waveform based on the estimated quality factors for the extensional and flexural modes.
In another embodiment, a method includes emitting an ultrasonic pulse so as to excite a multi-modal Lamb wave having flexural and extensional modes within a pipe and receiving acoustic signals generated by the multi-modal Lamb wave. The method also includes calculating phase velocity and group velocity curves for each of the flexural and extensional modes, as well as calculating a group delay time for each of the flexural and extensional modes. Further, the method includes defining filters based on estimated quality factors for the flexural and extensional modes, decomposing the received acoustic signals via the defined filters, and reconstructing estimates of flexural and extensional wave components of the multi-modal Lamb wave based on the decomposition of the received acoustic signals.
In an additional embodiment, an apparatus includes a downhole tool for acquiring data within a well. The downhole tool includes an acoustic transmitter and an acoustic receiver, which are positioned to allow the acoustic transmitter to emit acoustic signals outwardly from the downhole tool to generate a Lamb wave having flexural and extensional modes in a casing in the well and to allow the acoustic receiver to detect the Lamb wave when the downhole tool is positioned inside the casing. The apparatus also includes an analysis system for receiving data from the downhole tool and separating concurrent flexural and extensional mode components of the detected Lamb wave using quality factors for the flexural and extensional modes.
Various refinements of the features noted above may exist in relation to various aspects of the present embodiments. Further features may also be incorporated in these various aspects. These refinements and additional features may exist individually or in any combination. For instance, various features discussed below in relation to the illustrated embodiments may be incorporated into any of the above-described aspects of the present disclosure alone or in any combination. Again, the brief summary presented above is intended just to familiarize the reader with certain aspects and contexts of some embodiments without limitation to the claimed subject matter.
These and other features, aspects, and advantages of certain embodiments will become better understood when the following detailed description is read with reference to the accompanying drawings in which like characters represent like parts throughout the drawings, wherein:
It is to be understood that the present disclosure provides many different embodiments, or examples, for implementing different features of various embodiments. Specific examples of components and arrangements are described below for purposes of explanation and to simplify the present disclosure. These are, of course, merely examples and are not intended to be limiting.
When introducing elements of various embodiments, the articles “a,” “an,” “the,” and “said” are intended to mean that there are one or more of the elements. The terms “comprising,” “including,” and “having” are intended to be inclusive and mean that there may be additional elements other than the listed elements. Moreover, any use of “top,” “bottom,” “above,” “below,” other directional terms, and variations of these terms is made for convenience, but does not mandate any particular orientation of the components.
The present disclosure generally relates to acoustic tools, such as acoustic logging tools that may be used to evaluate cement about a casing in a well. More particularly, at least some embodiments relate to a technique for processing signals acquired by ultrasonic cement evaluation tools. In certain embodiments, the signals are ultrasonic multi-modal guided waves and the signals are separated into a sum of individual signals of zeroth-order symmetric and antisymmetric Lamb modes to improve the quantitative interpretation of measurements.
Turning now to the drawings, an apparatus 10 for evaluating cement quality in a well is depicted in
The monitoring and control system 18 controls movement of the downhole tool 12 within the well 14 and receives data from the downhole tool 12. The monitoring and control system 18 can include one or more computer systems or devices. The system 18 can receive data from the downhole tool 12, and this data can be stored, communicated to an operator, or processed. Although generally depicted in
The downhole tool 12 can take various forms, one example of which is depicted in
As described in greater detail below, the transducer 32 can emit an ultrasonic pulse toward the casing 24 so as to excite a multi-modal Lamb wave within the casing 24, while transducers 34 and 36 can measure the resulting signals. The transducers 32, 34, and 36 may be arranged obliquely to facilitate this Lamb wave excitation and measurement. For instance, the transducer 32 may be angled toward the transducers 34 and 36 at an angle of incidence (with respect to the normal of the casing 24), and the transducers 34 and 36 can also be oriented toward the transducer 32 at that angle of incidence. In at least one embodiment, the angle of incidence is selected so as to optimize the excitation and detection of a particular mode (e.g., a flexural mode) of the Lamb wave in the casing 24. The signals measured with the transducers 34 and 36 can be analyzed through various techniques, such as those described below, to facilitate cement evaluation by providing insight into the presence and condition of the cement 26 about the casing 24. Consequently, the acoustic logging tool of
The control and monitoring system 18 may be provided as a processor-based system, an example of which is depicted in
An interface 56 of the system 40 enables communication between the processor 42 and various input devices 58 and output devices 60. The interface 56 can include any suitable device that enables such communication, such as a modem or a serial port. In some embodiments, the input devices 58 include one or more sensing components of the downhole tool 12 (e.g., the transducers 34 and 36) and the output devices 60 include displays, printers, and storage devices that allow output of data received or generated by the system 40.
As generally noted above, various approaches can be used for cement evaluation using Lamb waves. By way of example, in the tool configuration depicted in
where d(near, far) is the distance between the two receivers. A non-parametric analysis method may be used for this approach, in which dictionaries DA0 and DS0 with moderate mutual coherence and specific to each individual mode are built, and analyzed signals are represented as a weighted sum of dictionary elements
x(t)=DA0α1|2(t)+DS0α2|2(t), t=0T (2)
Strictly speaking, the terminology of symmetric S0 and anti-symmetric A0 modes refers just to attenuation-free plate waves (Lamb waves) in vacuum, but the present disclosure adopts the convention of labeling those waves whose real wavenumbers follow the corresponding classical Lamb plate waves by the same mode names (S0 and A0).
In another approach, the tool 12 excites predominantly the zeroth-order symmetric mode S0, also called the extensional mode. This extensional mode is typically excited with a pulse center frequency lower that that used for exciting the A0 mode. The choice of mode, A0 versus S0, may be governed by considerations of spatial resolution, attenuation in the fluid, and sensitivity to the elastic properties of the cement. In analogy to the flexural mode approach, the measured signal can be represented again in the form of the weighted sum of equation (2). The results of dispersion relations for fluid-coupled plate waves can be used as approximations for the analysis of tube modes with a fluid- or solid-coupled external interface. This allows for the use of asymptotic wave mode solutions for each of the modes, A0 and S0, separately. The neglect of the shear-wave degree of freedom in the solid can yield results for the leaky tube modes with effective attenuation coefficients that lump together the shear- and compressional-wave attenuation pathways.
In another approach, the tool 12 emits an incident pulse from the transducer 32 toward the pipe 24 and concurrently excites both the zeroth-order anti-symmetric (flexural) mode A0 and the zeroth-order symmetric (extensional) mode S0 in the pipe 24. In at least some embodiments, the emitted pulse is centered on a frequency of 20 kHz to 400 kHz (and is centered on a frequency of 250 kHz in at least one embodiment). The configuration of the tool 12 can be adjusted to favor one mode over the other, but in some cases the adjustment cannot completely annihilate one of the two modes because of the tool operational range. Although the tool 12 is depicted in
In embodiments in which the detected signal is a composite of two distinct Lamb mode signals (e.g., concurrent flexural and extensional modes), the signal may be processed in any suitable manner to separate these two modes. One example of such processing is generally represented by flowchart 70 in
A filter bank is then created for each individual mode (block 74), with the design of the filter banks taking into account the quality factors and the dispersion characteristics of the individual modes. Signals may then be acquired (block 76), such as by either or both of transducers 34 and 36, and then decomposed (block 78) into series of coefficients using analysis filters of the filter banks. The separation of the signals into individual A0 and S0 signals (block 80) is then obtained by minimizing the error between the original signals and the sum of reconstructed individual signals, where the reconstructed individual signals can be provided as output of the synthesis filters applied to the optimized coefficients. In at least one embodiment, the separation technique includes selecting a subset of coefficients produced by filtering via the first filter bank and a subset of coefficients produced by filtering via the second filter bank, such as by applying a threshold to discard lower-level coefficients. The selected subsets of coefficients can then be used to predict extensional mode and flexural mode waveforms that are based on the estimated quality factors for the individual modes. This prediction can include fitting a sum of reconstructed extensional mode and flexural mode waveforms to the acquired acoustic signal. Additional details regarding such processing are provided below.
By way of explanation, it may be assumed, as a first approximation, that the acquired signal is the sum of two distinct, zeroth-order Lamb modes signals
x(t)=xA0(t)+xS0(t), t=0 . . . T (3)
and that xA0 and xS0 can be sparsely represented in two frames F1 and F2
x
A0(t)=F1w1* and xS0(t)=F2w2*, t=0 . . . T (4)
where wi* are the frame coefficients. For the specific problem of A0 and S0 separation, the frames F1 and F2 are respectively adapted to the Q-factor of A0 and S0, as the Q-factor is a discriminant factor of zeroth-order Lamb modes signals. The Q-factor can be estimated by the signal bandwidth evaluated at −6 dB below the maximum spectrum amplitude.
Given the Q-factors of A0 and S0, the frames F1 and F2 can be given by an iterated perfect reconstruction oversampled filter bank, which can include analysis and synthesis filter banks. Both the analysis and the synthesis filters can be defined using the Q-factor and the oversampling rate r
The perfect reconstruction property of the filter banks ensures that is F1F1T=I and F2F2T=I. One example of a perfect reconstruction oversampled filter bank is generally represented in
The two components can be estimated by solving the following minimization problem
where the coefficients λ1 and λ2 are two regularization parameters. The first term (l2 norm) is a fidelity term, ensuring that the decomposition has a small residual. The two other terms (l1 norms) ensure that the components have a sparse representation in their respective frames. The estimations of the two components may be given by {circumflex over (x)}1=F1w1* and {circumflex over (x)}2=F2w2*.
The problem (6) can be rewritten as an optimization problem under constraints
where μi are splitting variables and then solved by the split augmented Lagrangian shrinkage algorithm, which solves two minimization sub-problems
where k is the iteration index, μ is a penalty parameter, and dik are directions of minimization.
By way of example, tiling of the time-frequency plane is depicted in
where κm are the wavenumbers for modes m=A0, S0. To guide the decomposition by the dispersion curves, in at least one embodiment the phase of the filters H0 and H1 is modified (keeping the perfect reconstruction property) by replacing the filter Hk, k=0, 1 by
with the parameter γ in equation (11) defined as the group delay derivative (at each level of the decomposition)
where lpipe is the propagation distance in the pipe (e.g., casing 24) and δmud is the propagation time in drilling mud (or in some other transmission medium) in the pipe. The parameter γ rotates the main axes of the tiles by a certain angle. One example of such rotation is given in
As noted above, the A0 and S0 signals may be separated in any suitable manner. Another example of a method for separating such signals is generally represented by flowchart 90 in
The method can include computing αi and βi, i=1, 2 (e.g., using equation (5)), as represented in block 102, and solving Rayleigh-Lamb equations using asymptotic code, as represented in block 104. The method can also include computing phase and group velocity curves (via equations (9) and (10), for instance), as represented in block 106, as well as computing travel time (δmud) of an acoustic signal in a drilling mud or other logging fluid in the pipe 24, as represented in block 108. Additionally, the method represented by flowchart 90 includes computing group delay (δm) over a distance lpip, (e.g., using equation (13)) and computing a derivative of the group delay (e.g., ∂δm(ω)/∂ω, m=A0, S0), as represented in blocks 110 and 112.
Further, the method can include defining filters {tilde over (H)}1,i(ω), i=1, 2 with parameter γ (e.g., using equation (11)), as represented in block 114. It will be appreciated that the filters may be defined based on estimated Q-factors for the A0 and S0 waves, as described above. Further still, the method can include decomposing the acquired waveform via the defined filters, which can include solving an optimization problem (block 116), such as equation (8), in Nit iterations. Then, from the final wiN
The foregoing outlines features of several embodiments so that those skilled in the art may better understand aspects of the present disclosure. Those skilled in the art should appreciate that they may readily use the present disclosure as a basis for designing or modifying other processes and structures for carrying out the same purposes or achieving the same advantages of the embodiments introduced herein. Those skilled in the art should also realize that such equivalent constructions do not depart from the spirit and scope of the present disclosure, and that they may make various changes, substitutions and alterations herein without departing from the spirit and scope of the present disclosure.
Number | Date | Country | Kind |
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16306114.6 | Sep 2016 | EP | regional |