WO2011056444A1 - Method for remote identification and characterization of hydrocarbon source rocks using seismic and electromagnetic geophysical data - Google Patents
Method for remote identification and characterization of hydrocarbon source rocks using seismic and electromagnetic geophysical data Download PDFInfo
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- G—PHYSICS
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- G—PHYSICS
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Definitions
- This invention relates generally to the field of hydrocarbon exploration, and more particularly to identification and characterization of hydrocarbon (oil, gas, and natural- gas liquids) source rocks in onshore and offshore sedimentary basins, using combined seismic and electromagnetic geophysical data acquired at or near the surface of the earth, sea, or seafloor.
- the invention also relates to subsurface formation interval seismic velocity, bulk density, and electrical resistivity measured from well logs in a borehole as means to calibrate the seismic and electromagnetic geophysical data.
- a key element in successful hydrocarbon exploration is the existence of adequate source rock in the basin, in terms of both total organic content (TOC) and level of organic metamorphism (LOM) or "maturity".
- TOC total organic content
- LOM level of organic metamorphism
- ALogR formation evaluation method
- the DeltaLogR method relies on first-order rock physics that predicts reduced vertical acoustic velocities (due to the presence of kerogen) and increased horizontal resistivities (reflecting kerogen content and in-situ generation of hydrocarbons) in organic - rich rocks as functions of TOC and LOM.
- the present invention is a method to perform DeltaLogR analyses in the absence of a well at the point under investigation, using seismic and electromagnetic geophysical data measured remotely.
- Source rocks typically occupy a relatively small fraction of total shale volume, and may not have clear seismic reflection boundaries within the shale interval, so their detection can be difficult.
- Known source rocks of commercial importance vary in thickness within a common range of about 30 to 300 meters. What is needed is a remote geophysical method, having at least moderate vertical resolution and accuracy that can identify and characterize source rocks in this thickness range, and that has a useful subsurface/sub-seafloor depth of investigation to 3000 meters or more. Given the increasingly limited commercial access to sedimentary basins due to several factors, remotely identifying source rock in unexplored areas would have substantial benefits for worldwide exploration opportunities.
- the present invention's method for combining seismic and electromagnetic geophysical data satisfies this need.
- DeltaLogR is a proven technique for identifying and calculating TOC in organic-rich rocks using well logs.
- the method employs the overlay of a log response scaled to represent total porosity (usually the sonic transit-time log) onto a scaled resistivity curve that preferably measures deep formation resistivity.
- the log resistivity that is measured is usually assumed to be the horizontal component, due primarily to the design of the borehole tool.
- the log sonic transit time that is measured is usually assumed to be the vertical component, again due primarily to the design of the borehole tool.
- the response scaling is performed using baselines for the logs in non-source clay-rich rocks such as shales, identified using primarily the gamma-ray (GR) log.
- GR gamma-ray
- the transit-time curve and the resistivity curve are scaled so that their relative magnitude is -100 micros econds/foot of transit time per two logarithmic resistivity cycles.
- the two curves are very nearly parallel and can be closely overlain, since both respond to porosity.
- a separation occurs between these curves due to two main effects: 1) the porosity curve responds to the presence of low-density low-velocity kerogen, and 2) the resistivity curve responds to the formation fluid.
- LOM organic metamorphism
- Figures 1A-C depict the solid and fluid components in hydrocarbon source and non-source rocks.
- Organic-rich rocks are assumed to be composed of three components: (1) the rock matrix, (2) the solid organic matter, and (3) the fluid(s) filling the pore space, typically water or oil/gas.
- Non-source rocks are composed primarily of only two components: the matrix and the fluid filling the pore space (Fig. 1A).
- Fig. IB In immature source rocks, solid organic matter and rock matrix make up the solid fraction, and formation water fills the pore space.
- Fig. IB formation water fills the pore space
- a portion of the solid organic matter is transformed to liquid (or gaseous) hydrocarbons, which move into the pore space, displacing the formation water (Fig. 1C).
- the magnitude of the curve separation in non- reservoir rock intervals is then calibrated to TOC and LOM from core samples and from empirical and/or statistical relationships from the same or similar sedimentary basins.
- the DeltaLogR method can thus be used to assess organic richness of subsurface formations in a wide variety of facies and lithologies as depicted in Figs. 2 and 3. Note that the gamma ray log in Fig. 2, which aids in interpretation of the depth intervals and confirms identification and elimination from the analysis of reservoir intervals, would normally not be available in situations where the Remote ALogR of the present invention is applied, because it is the organic -rich source intervals that are of interest.
- Fig. 2 and the resistivity curve (22) are scaled such that their relative scaling is -100 //sec/ ft (-328 //sec/m ) per two logarithmic resistivity cycles (i.e., a ratio of -50 /sec/ ft or -164 //sec/ffi to one resistivity cycle), as is indicated by the AT and ALogR scales at the bottom of Fig. 2.
- the two curves are overlain, i.e. baselined, in fine-grained, "non-source” rock intervals such as zones A and E in Fig. 2.
- a baseline condition exists when the two curves "track” or directly overlie each other over a significant depth range.
- zone A may extend upward for a considerable distance, but for display purposes, this is truncated in Fig. 2 leaving only the lower portion.
- DeltaLogR was that after the aforementioned scaling and baselining, the irregularities of intervals such as A and E match up very well. With the baseline established, organic-rich intervals can be recognized by separation and non-parallelism of the two curves, such as the intervals labeled "immature source” and “mature source” in Fig. 2. The separation between them, designated as AlogR in Fig. 2, can be measured at each depth increment. It may be noted that both zones C and F exhibit significant ALogR separation. It is difficult to differentiate the two zones from the sonic log alone, but the resistivity log distinguishes them.
- zone C the resistivity log shows no deviation from the baseline, but in zone F the resistivity increases, indicating that hydrocarbons have displaced water in the pore spaces, thereby increasing resistivity.
- zone F is mature source rock whereas zone C is immature source rock.
- the ALogR separation is linearly related to TOC and is a function of maturity.
- the ALogR separation can be transformed directly to a quantitative estimate of TOC if the maturity (in level of organic metamorphism units, LOM; see for example Hood et al, 1975) can be determined or estimated.
- LOM is obtained from a variety of sample analyses (e.g. vitrinite reflectance, thermal alteration index, or 7 max from RockEval pyrolysis), or from estimates of burial and thermal history. If the maturity (LOM) is incorrectly estimated, the absolute TOC values will be somewhat in error, but the vertical variability in TOC will be correctly represented.
- LOM maturity
- the dark line 31 should be used for maturity less than LOM 6.
- Immature source rock has LOM of 6 to 7 or less.
- the LOM range of approximately 7-1 1 indicates mature source rock, meaning that oil or gas should be present in the vicinity.
- Above LOM 1 1 is considered over-mature source rock; an example is shale gas.
- the DeltaLogR method works even in the over-mature source rock range, and therefore, as will be explained below, so does the present inventive method.
- an LOM in the 10-10.5 range should be used for LOM 1 1 or greater for estimating TOC; i.e., the portion of Fig. 3 below LOM ⁇ 10.5 should not be used.
- the DeltaLogR method is also known to work on coals except that that the calibration of ALogR to TOC will not be the same as for organic -rich shales. The coals are still easily recognized, but the DeltaLogR method will under-predict TOC in a coal if the calibration of Fig. 3 is used— e.g., DeltaLogR might predict TOC will be 20-30 wt%, whereas, the real TOC may be 60-80 wt%.
- LOM ⁇ 1 is called peat; LOM in the range 1-4.5 is called lignite coal; LOM in the range 4.5-7 is called sub-bituminous coal; LOM in the range 7.5-13 is called bituminous coal; and LOM > 13 is called anthracite coal.
- hydrocarbon source rock potential will be understood to include coal potential.
- a TOC value depth profile may be calculated from Figs. 2 and 3.
- the invention is a method for remotely assessing hydrocarbon source rock potential of a subsurface region, comprising: (a) obtaining electromagnetic field data representative of the subsurface region from a survey conducted above the subsurface region (step 121); (b) obtaining reflection data from a surface seismic survey of the subsurface region (step 122 - order relative to step 121 does not matter); (c) extracting a vertical profile of resistivity or its reciprocal, conductivity, from the electromagnetic data and a vertical profile of acoustic velocity or its reciprocal quantity, transit time, from the seismic reflection data, thus generating two profiles hereinafter called the resistivity profile and the transit time profile (step (123); and (d) evaluating depth intervals in the subsurface region for source rock potential based on differences between the two profiles and, optionally, on the character of the seismic reflection data (step 124).
- at least step (c) will be performed using a computer.
- Figs. 1A-C depict solid and fluid components in non-source and source rocks
- Fig. 2 is a schematic for interpretation of DeltaLogR well log responses in a variety of subsurface formations
- FIG. 3 shows calibration of TOC to LOM for the well-log-based DeltaLogR diagram tool, as disclosed in Passey et al. supra;
- Fig. 4 shows vertical accuracy and spatial resolution of a model ID resistivity profile, at two inversion bandwidths (0.0-0.25 Hertz and 0.0 - 1.0 Hertz);
- FIGs. 5A-B illustrate typical marine (A) and land (B) seismic data acquisition for subsurface geologic imaging and interval velocity determination;
- Fig. 6 depicts marine controlled-source electromagnetic (CSEM) data acquisition for subsurface resistivity determination
- Fig. 7 shows an anisotropic (VTI) shale (clay-sand) model containing depth- dependent TOC;
- Figs. 8A-D depict the changes in P-wave vertical and horizontal interval transit times (reciprocal velocities), and the horizontal and vertical resistivities, as TOC is varied using the VTI rock model shown in Fig. 7;
- Figs. 9A-D depict the changes in shear-vertical (Sv-wave) vertical and horizontal interval transit times (reciprocal velocities), and the horizontal and vertical resistivities, as TOC is varied using the VTI rock model shown in Fig. 7;
- Figs. 10A-D depict the changes in shear-horizontal (Sh-wave) vertical and horizontal interval transit times (reciprocal velocities), and the horizontal and vertical resistivities, as TOC is varied using the VTI rock model shown in Fig. 7;
- Fig. 11 is a schematic diagram of Remote DeltaLogR response from seismic and remote resistivity data, compared with DeltaLogR from well logs;
- Fig. 12 is a flow chart showing basic steps in one embodiment of the present inventive method.
- the present invention extends the well known DeltaLogR well-based method for estimating hydrocarbon source rock TOC, so that it is performed using seismic and electromagnetic geophysical data acquired remotely from the subsurface hydrocarbon source rock. Formation interval velocities derived from the seismic data, and formation resistivity data derived from the electromagnetic data (preferably controlled-source electromagnetic (“CSEM”) survey data), are used instead of well log sonic and resistivity data from wells, respectively, to produce a new Remote DeltaLogR (or "RDeltaLogR”) response.
- CSEM controlled-source electromagnetic
- This new response is interpreted in conjunction with the overall character of the seismic reflection data (including continuity, geometry, and reflection amplitude) in cross-section, map, and volume views to further distinguish source rock from hydrocarbon reservoir rocks that can also exhibit an RDeltaLogR response, and from fine-grained non-source rocks such as low TOC shales.
- the present inventive method uses the character in seismic reflection data of a target interval to differentiate potential organic-matter-rich rocks (ORRs) from potential hydrocarbon reservoir rocks, since both potential ORRs and hydrocarbon reservoirs have sonic-resistivity separation.
- ALogR uses only the local vertical P-wave (acoustic) velocity and horizontal resistivity as measured by borehole tools, and does not address anisotropy
- the present inventive method transcends both of these limitations.
- deriving the interval transit times from seismic data is significantly different from the directly measured sonic transit time in the borehole.
- Character in seismic reflection data includes the appearance of the thickness, continuity, geometry, and amplitude, along with their lateral rates of change of a target stratigraphic interval in cross-section, map, and volume views.
- organic rich rock (ORR) is the broadest term used to refer to the presence of organic carbon.
- Source rock is mature ORR. Potential source rock itself can be mature or immature. Mature source rock has evolved to the extent that hydrocarbons (oil or gas) have been produced, and they will be found either in the source rock interval or migrated to a nearby zone.
- ORRs have distinctive impedance contrasts because of the influence of organic-matter (kerogen) content on seismic velocity and rock density that can contrast significantly with surrounding non-ORRs (such as organic -matter-poor mudstones, siltstones, sandstones, evaporites, or carbonates).
- organic-matter kerogen
- non-ORRs such as organic -matter-poor mudstones, siltstones, sandstones, evaporites, or carbonates.
- the three-dimensional spatial distribution of their seismic character is a function of their depositional processes. They tend to have broadly distributive patterns, relatively low sediment accumulation rates, and relatively minor truncation and erosion, all indicating generally low levels of water bottom energy.
- ORRs may be relatively thin and may not always generate their own particular seismic response, they are associated with relatively thick intervals (100's of meters) of fine-grained rocks that share many of the same depositional attributes as the ORR interval. This contrasts sharply with the seismic character of coarse-grained stratal units that have more channelized patterns, relatively high sediment accumulation rates, and common occurrence of indicators of higher levels of water bottom energy, such as erosion and truncation.
- ORRs tend to have seismic reflections that have broader lateral continuity, parallel to sub-parallel geometry and distinctive amplitudes that vary laterally at the kilometer to tens-of-kilometers scale. Amplitudes tend to be relatively high where ORRs are interbedded with carbonates, well-cemented mudstones, or coarse-grained elastics. Amplitudes tend to be relatively low, but laterally consistent where ORRs are interbedded with organic -matter-poor mudstones or claystones. At a sub-regional scale, ORRs tend to be associated with downlap and onlap surfaces.
- ORRs tend to have broadly distributive or tabular patterns, commonly draping pre-existing geometries or thickening into subsiding low areas. They tend to thin laterally at the kilometer to tens-of-kilometer scale, except where truncated by an erosional surface. In the absence of truncation, thinning of ORRs tends to be associated with downlap or onlap geometric relations in reflection seismic data, but may result in a more pronounced seismic reflector due to concentration or amalgamation of organic matter. Coarse-grained reservoir-prone strata are distinguished by their generally channelized to narrowly distributive patterns, abrupt lateral changes in thickness, and common lateral termination by onlap or truncation.
- An advantage of the present inventive method is that it does not need well data from the exploration area of interest. However, if well data are available from another geologically similar area that can be extrapolated to the exploration area, including density log data, that can optionally be used to help calibrate the RDeltaLogR method in the exploration area.
- well data are available from another geologically similar area that can be extrapolated to the exploration area, including density log data, that can optionally be used to help calibrate the RDeltaLogR method in the exploration area.
- the seismic reflection method is the dominant technique for imaging geologic structure and stratigraphy within the earth, and estimating rock and fluid properties for the hydrocarbon industry.
- a large body of published literature describes this established seismic method and its applications, well known to practitioners of the geophysical art.
- Depictions of typical examples of the seismic reflection data acquisition method used both in a body of water and on land, are shown in Figs. 5A (water) and 5B (land).
- Fig. 5A a ship tows a seismic source followed by a streamer of seismic receivers.
- a vibrator source is being used, and a string of geophone receivers is shown, electrically connected to a recording truck.
- example raypaths are shown reflecting from subsurface interfaces, back up to the surface where they are recorded along with their arrival times.
- a critical aspect of the seismic method is determination of subsurface physical velocities associated with the propagation speeds of P and S-waves in the geologic formations. Seismic velocity estimation is essential for summing (or "stacking") data from an ensemble of receiver measurements made at different source-to-receiver distances, so as to construct an image of the reflection point in the subsurface from more than a single recording position.
- VTI vertically transverse isotropy
- Most methods used for seismic interval velocity estimation produce values for the horizontal component of the velocity. Estimates of vertical seismic interval velocity are obtained in a number of ways, ranging from simple scaling of the vertical value from the horizontal measured value, to complex imaging techniques such as anisotropic migration and anisotropic inversion.
- Seismic velocity and density estimates are then combined to estimate porosity, either using rock physics models or using mathematical inversion. It is important to note that the vertical resolution of seismic velocities is typically much less than the vertical spacing of individual reflectors (reflector resolution is theoretically l/4th of a vertical wavelength), since velocity information is contained mostly in the varying times of reflection arrivals in the multiple- trace ensemble ("gather") of responses, which is a low-frequency measurement.
- CSEM surveying has become an important geophysical tool for evaluating the presence of hydrocarbon-bearing reservoirs within the earth (Constable and Srnka, "An Introduction to Marine Controlled-Source Electromagnetic Methods for Hydrocarbon Exploration," Geophysics 72, pp. WA3-12 (2007)).
- a controlled electromagnetic transmitter is towed above or positioned between electromagnetic receivers on the seafloor, such as disclosed in U.S. Patent No. 6,603,313 to Srnka and PCT Patent Application Publication WO 2004/083898 by Eidesmo et al.
- Figure 6 illustrates the controlled-source electromagnetic data acquisition method in a body of water. The vessel is shown towing an electromagnetic source such as a horizontal electrical dipole 61.
- Receivers 62 are placed on the seafloor.
- the source emits a low frequency current signal that penetrates below the water bottom as indicated in the drawing,
- a signal path 63 is shown traversing a hydrocarbon-bearing layer 64, which will be characterized by elevated electrical resistivity, and then being detected by the receivers.
- Frequency-domain mathematical inversion is used by practitioners of the geophysical art to estimate subsurface resistivity values from CSEM data (Carazzone, "Three Dimensional Imaging of Marine CSEM Data,” 75th Annual International meeting, SEG Expanded Abstracts, (2005); and MacGregor, et al, "De-Risking Exploration Prospects Using Integrated Seismic and Electromagnetic Data - a Falkland Islands Case Study," The Leading Edge 26, 356-359 (2007)), particularly in offshore CSEM surveys in deep water.
- the method is useful because it produces resistivity models of the subsurface consistent with measured data, generally amplitude and phase of one or more measured components of the electric field at one or more frequencies for an array of receivers.
- ID One-dimensional
- 2D 2D
- 3D inversions of Maxwell's equations can be performed using a high-performance computer (usually with massively parallel architecture) to generate ID resistivity profiles, 2D resistivity swaths, and/or 3D resistivity volumes (respectively).
- a high-performance computer usually with massively parallel architecture
- magnetotelluric data has been discussed by, for example, Newman and Alumbaugh, "Three-Dimensional Magnetotelluric Inversion Using Non-Linear Conjugate Gradients," Geophysical Journal International 140, 410-424 (2000).
- the electrical resistivity of the subsurface is generally anisotropic or dependent on direction of the current (or signal). In most cases the resistivity is roughly uniform in all horizontal directions, so there is no azimuthally dependent anisotropy, but the resistivity is typically larger in the vertical direction. Such anisotropy is called vertically transverse isotropy (VTI).
- VTI vertically transverse isotropy
- Increased TOC due to kerogen in mature (i.e., hydrocarbon bearing) source rocks is known to increase the horizontal electrical resistivity of the rock (i.e. parallel to the bedding planes), for example as measured by conventional wireline or Logging- While-Drilling (LWD) or Measurement- While -Drilling (MWD) well logging tools. Increases in the vertical resistivity of the formation may be even more diagnostic of a high- LOM (mature) source rock than the horizontal resistivity values used in the standard DeltaLogR well log technique.
- moderately resistive geological bodies appear in the resultant subsurface resistivity images as spread-out or vertically diffuse (i.e., hundreds of meters thick), that are less resistive (i.e. 1 to 10 Ohm-m) bodies than the actual subsurface bodies.
- This is due in part to the low temporal frequencies required for surface electromagnetic data to penetrate significant distances into the earth (the electromagnetic skin-depth effect), and also to the resulting limited vertical and spatial resolution (Hohmann and Raiche, Chapter 8 - Inversion of Controlled-Source Electromagnetic Data, in Electromagnetic Methods in Applied Geophysics - Theory, 1, SEG, 469-504 (1987)).
- Electromagnetic wavelengths in the subsurface are generally ten times longer than seismic wavelengths at the same frequency, so the vertical electromagnetic resolution is generally much lower than the vertical seismic resolution. Because of this inherent low resolution, unconstrained electromagnetic inversion algorithms cannot produce resistivity images with sharp boundaries or recover true values of subsurface resistivity.
- Figure 4 demonstrates this using ID frequency-domain inversion of a model resistivity structure, for two ranges of input data frequencies, 0.0 to 0.25 Hertz and 0.0 to 1.0 Hertz. Further limitations on resolution arise from the fact that the measured data are limited by background noises, and are limited in area coverage by cost and time considerations. Both the horizontal and vertical resistivity are estimated in anisotropic inversion methods applied to CSEM and combined CSEM and MT data; see Jing et al, 2008, op. cit, which is incorporated herein by reference.
- the invention consists of the following steps, in three groupings. A more general statement of the invention with more basic steps is provided in the Summary of Invention section.
- CSEM controlled-source electromagnetic
- MT magnetotellurics
- the seismic grouping steps may be performed before or after the electromagnetic grouping steps.
- the source rock characteristics grouping steps are performed after both the seismic and electromagnetic steps have been performed.
- the scaling step and the baseline step differ as follows.
- the correct relative scaling of the time transit curve and the resistivity curve is known to be controlled in waterbearing shales by physical law. Empirical relationships such as Archie's Equation capture this relationship. Archie's equation relates porosity to resistivity (and water saturation), but acoustic velocity also depends on porosity. Thus physics dictates the correct relative scaling, which is that 1 log cycle of resistivity correspond approximately to 50 ⁇ / ft (164 ps /m ) of transit time.
- a theoretical basis for this particular relative scaling in water-filled, non- organic-rich shales is provided in the Appendix in Passey et al, supra, which is incorporated herein by reference.
- Baselining is shifting (relative to each other) the zero points of the two amplitude scales so that the two curves lie one on top of the other in depth intervals where no source rock is present. See zones A and E in Fig. 2 for examples of baselining. Such alignment is useful for helping recognition and quantitative assessment of intervals where source rock is present via contrasting separation between the two profiles. See zones B, C and F in Fig. 2 for examples of that. Although, scaling and baselining are used in preferred embodiments of the invention, neither is required. Any technique that compares a velocity-derived profile with a resistivity-derived profile and enables identification and classification of dissimilarities may be used.
- baselining approximately 70 % of all sedimentary rocks are shale, and of the shale, approximately 90-95 % is non-organic rich.
- depth ranges should be used for baselining.
- a single baselining may not be best in all situations depending upon how the geology changes with depth. In such cases, two or more different depth ranges might each be given separate baselinings.
- the baseline may shift when the geology changes from shale or clay to carbonate or marl.
- the DeltaLogR diagram tool such as Fig. 2 may use velocity directly as one scaled, baselined quantity, rather than computing the inverse of velocity to get transit time.
- the velocity scale increases in the reverse direction from the AT scale shown in Fig. 2, then the qualitative nature of the diagram is maintained, and the quantitative nature of the method is also maintained by appropriately converting the 50: 1 (or whatever other ratio may be used) scaling.
- conductivity may be the electrical property used instead of its reciprocal, resistivity. All such variations shall be deemed to be within the scope of the attached claims.
- the RDeltaLogR response may be formed using any of the four seismic interval transit times (reciprocated from their four respective seismic velocities) that exist within a vertically transversely-isotropic (VTI) section of rock, namely:
- Each combination of transit time and resistivity (such as vertical acoustic transit time overlaid with vertical resistivity) generally shows a different RDeltaLogR response, depending upon the rock type and pore content.
- RDeltaLogR Remote DeltaLogR
- VTI shale i.e. a clay-sand mixture
- PHI 5.0% and water saturation (100%)
- TOC total organic carbon content
- Figures 8A-D show the calculated changes in vertical P-wave (acoustic) interval transit-time PDTv (8A-B) and horizontal interval transit time PDTh (8C-D) in units of microseconds per foot, and the calculated changes in vertical (8B and 8D) and horizontal (8A and 8C) resistivity in units of Ohm-meters, (logarithmic scale) as TOC increases with depth in the model of Fig. 7.
- the largest calculated ALogR separations are for the combination of vertical P-wave transit time and vertical resistivity (Fig. 8B). In this modeled shale, this is the combination of transit-time and resistivity derived from the surface seismic and CSEM data respectively that would give the optimal RDeltaLogR response.
- Figures 9A-D show the calculated changes in shear-vertical (Sv-wave) vertical
- the calculated interval transit-time changes are the same for Sv-wave vertical (SVDTv) and Sv-wave horizontal (SVDTh) modes interval.
- a combination of either of these transit-time changes with the vertical resistivity changes (Figs. 9B and 9D), give the largest DeltaLogR response for the Sv-wave. However, both of these responses are smaller in magnitude than the combination of vertical P-wave transit-time and vertical resistivity (Fig. 8B).
- FIGs 10A-D show the calculated changes in shear-horiziontal (Sh-wave) vertical SHDTv (10A-B) and Sh-wave horizontal SHDTh (10C-D) interval transit-times in units of microseconds per foot, and the calculated changes in vertical (10B, 10D) and horizontal (10A, IOC) resistivity in units of Ohm-meters, (logarithmic scale) as TOC increases with depth in the model of Figure 7.
- the calculated interval transit-time change for Sh-wave vertical (SHDTv) combined with the vertical resistivity change (Fig. 10B), gives the largest DeltaLogR response for the Sh-wave. However, this response is smaller in magnitude than the combination of vertical P-wave transit-time and vertical resistivity (Fig. 8B).
- Figure 11 shows the modeled RDeltaLogR response for the combination of vertical resistivity and vertical acoustic (seismic P-wave) transit time, in a clastic rock (sands and shales) interval over approximately a 215 meter depth range, compared with the conventional well-based DeltaLogR response for the same interval.
- Fig. 1 1 also includes a gamma ray log on the left and a TOC profile on the right that was derived from the well log data using the DeltaLogR method.
- the RDeltaLogR profiles are the smooth curves 111 (transit time) and 112 (resistivity), whereas 113 is the sonic log and 114 the resistivity log.
- the horizontal resistivity data may be obtained from 3D cell-based (e.g. finite-difference) frequency-domain nonlinear inversion of a marine CSEM data set (see. M. Commer et al, “Massively Parallel Electrical-Conductivity Imaging of Hydrocarbons Using the IBM Blue Gene/L Supercomputer," IBM Journal of Research and Development 52, 93-104 (2008)), applied without explicit constraints on thickness or resistivity values. It will be understood by practitioners of electromagnetic modeling that such a characterization might be refined or re-sampled in order to improve the solution of Maxwell's equations at different frequencies.
- 3D iterative forward CSEM modeling (Green, et al., "R3M Case Studies: Detecting Reservoir Resistivity in Complex Settings," 75th Annual International Meeting, SEG Extended Abstracts (2005)) can also be used to generate the subsurface resistivity images.
- resistivity images are derived from electromagnetic data that have incomplete area coverage, or are lacking in some data aspect such as frequency content or electromagnetic data components, 2D or 2.5D inverted resistivity images can be used in the invention but these in general have lower accuracy and spatial resolution than the preferred 3D full-physics approach.
- the simulated vertical seismic P-wave interval velocity (reciprocal transit time) depicted in Fig. 11 would in practice preferably be derived from a 3D pre-stack acoustic anisotropic depth migration of a reflection data set.
- prestack elastic anisotropic depth migration may be applied to the seismic data in place of the acoustic method, although elastic anisotropic depth migration is more time-consuming and costly. Because of the much lower vertical resolution of the seismic and CSEM data as described previously herein, both the vertical resolution and the accuracy of the RDeltaLogR response are less than that obtained using the well-based DeltaLogR method, as can be seen from Fig. 11.
- BVW bulk volume water
- Sw water saturation
- Both source rock and reservoir rock will have hydrocarbons displacing water in at least some of the pore space, and hence are difficult to distinguish based on resistivity alone, i.e. both zones will show elevated resistivity as is the case in Fig. 11.
- Sonic logs respond to porosity, but there is an additional sonic component due to low-velocity organic matter, and this component is not seen by resistivity.
- it takes both sonic and resistivity measurements (or the RDeltaLogR equivalents), after scaling and baselining, to recognize and distinguish mature source rock (including shale gas) from a conventional hydrocarbon-bearing reservoir (sandstone or carbonate).
- a gamma ray log will help make the distinction between reservoir and source rock, as can readily be seen from Fig. 2 or Fig. 11, but in typical applications of the present invention, a gamma log will not be available.
- Preferred embodiments of the invention may have some or all of the following features.
- the subsurface is characterized electromagnetically by cells of anisotropic resistivity suitable for the 3D solution of Maxwell's equations of electromagnetism by the method of finite differences, using frequency-domain methods.
- a suitable anisotropic resistivity starting model is constructed using prior knowledge of the area, models for analogous geologic areas, plus reconnaissance CSEM data acquired in the area when these are available.
- the CSEM data are processed using multiple electric-field data components at all useful measured frequencies (determined using signal-to-noise criteria), supplemented by CSEM magnetic-field data and magnetotelluric data where such data meet quality and coverage criteria.
- the 3D inversion is performed on a massively parallel computer, and is conducted such that the final solution is fully converged (that is, further iterations produce negligible improvement in the misfit criteria (see Commer et al, 2008, op. cit.)). Values of vertical and horizontal resistivity at the targeted subsurface locations (positions and depths) are extracted from the final converged resistivity solution.
- the subsurface is characterized seismically by cells of anisotropic velocity and isotropic density suitable for the 3D solution of the elastic wave propagation equations by the method of finite differences, using time- domain methods.
- a suitable anisotropic velocity starting model is constructed using prior knowledge of the area, seismic models for analogous geologic areas, plus reconnaissance seismic (e.g. 2D) data acquired in the area when these are available.
- the seismic interval P-wave horizontal and vertical velocities are estimated by nonlinear inversion of the seismic data using a least-squares conjugate-gradient method on a massively parallel computer, to produce a 3D volume (image) of the velocity structure. Values of vertical and horizontal velocity at the targeted subsurface locations (positions and depths) are extracted from the final converged velocity solution.
- the processed and imaged seismic data are interpreted in 3D for the subsurface patterns, characteristics, and attributes that tend to indicate non-source and ORR source rock locations and depth intervals. These locations and depth intervals are used to support selection of the depth intervals in which the RDeltaLogR resistivity and velocity curves are base-lined, and to support identification of source rock intervals in the RDeltaLogR analysis, within the resolution of the geophysical data.
- Seismic reflection terminations and configurations are interpreted as stratification patterns, and are then used for recognition and correlation of depositional sequences, interpretation of depositional environment, and estimation of lithofacies (Mitchum, Vail, and Sangree, "Seismic Stratigraphy and Global Changes of Sea Level: Part 6. Stratigraphic Interpretation of Seismic Reflection Patterns in Depositional Sequences: Section 2. Application of Seismic Reflection Configuration to Stratigraphic Interpretation, Seismic Stratigraphy— Applications to Hydrocarbon Exploration," AAPG Memoir 26, 117- 133 (1977)).
- the unique properties of seismic reflections allow the direct application of geological concepts based on physical stratigraphy (Vail, Todd and Sangree, "Seismic Stratigraphy and Global Changes of Sea Level, Part 5: Chronostratigraphic Significance of Seismic Reflections, in Seismic Stratigraphy— Applications to Hydrocarbon Exploration," AAPG Memoir 26, 99-116 (1977).
- Seismic stratigraphy involves (1) seismic- sequence analysis: subdividing the seismic section into sequences that are the seismic expression of depositional sequences, i.e. stratigraphic units of relatively conformable, genetically related strata bounded by unconformities or their correlative conformities, and (2) seismic-facies analysis: analyzing the configurations of reflections interpreted as strata within depositional sequences to determine environmental setting and to estimate lithology (Vail and Mitchum, "Seismic Stratigraphy and Global Changes of Sealevel, in Seismic Stratigraphy— Applications to Hydrocarbon Exploration," AAPG Memoir 26, 49-212 (1977).
- Seismic-sequence analysis subdivides seismic sections into packages of concordant reflections (seismic sequences, interpreted as depositional sequences), that are separated by surfaces of discontinuity identified by systematic reflection terminations (Mitchum, Vail and Sangree, supra).
- terminations There are two fundamental types of terminations: lapout and truncation: lapout is the lateral termination of a stratum at its original depositional limit; truncation is the lateral termination of a stratum as a result of being cut off from its original depositional limit by erosion or deformation (Mitchum, Vail and Thompson III, "Seismic Stratigraphy and Global Changes of Sea Level: Part 2.
- Seismic facies analysis is the description, mapping, and geologic interpretation of seismic reflection parameters within a chronostratigraphic framework of sequence boundaries and downlap surfaces (after Mitchum, Vail, and Sangree, 1977 supra).
- the interpreter delineates the external form, internal reflection parameters, and three- dimensional associations of seismic facies units, and then can interpret the units in terms of environmental setting, depositional processes, and estimates of lithotype. This interpretation is always done within a stratigraphic framework of depositional sequences, to insure the analysis of genetically related strata.
- Basic-seismic facies information includes: 1) the relation of reflections to their upper and lower sequence boundaries (segments of onlap, downlap, toplap, truncation, and concordance; and direction of onlap and downlap); and 2) the dominant types of reflection configuration between upper and lower sequence boundaries (parallel, divergent, sigmoid, oblique, etc.).
- Subsurface intervals likely to contain fine-grained lithotypes tend to be recorded on seismic data by concordant reflections with no apparent truncation below and downlap or onlap above.
- the interval vertical resistivity curve in units of Ohm-meters is overlain on the vertical P-wave (acoustic) curve , reciprocated to sonic transit time in units of microseconds per foot, and scaled to the vertical resistivity curve as described herein above, with the two curves base-lined using the interpreted seismic data and the character of the resistivity and transit time curves.
- LOM is estimated using basin modeling, and the magnitude of the RDeltaLogR response is interpreted for total organic content (TOC) using the level of maturity (LOM) estimate. It is noted that when traditional well-based DeltaLogR is applied, the LOM estimate is made from measurements from well- derived samples or estimates from well log data. Using a method such as a basin model built on remote sensing data to estimate LOM in the present inventive method is consistent with the assumption that the value of the invention is best appreciated when no well information from the target area is available.
- shale-gas reservoir potential may also be estimated based on known empirical relationships between TOC content and shale-gas reservoir potential (e.g., Lewis et al., http://www.sipes-houston.org/Presentations/Pickens%20-%20Shale%20Gas.pdf (2004)) and between TOC content and hydrocarbon seal character (e.g., Dawson and Almon, "Top Seal Character and Sequence Stratigraphy of Selected Marine Shales in Gulf Coast Style Basins," Gulf Coast Association of Geological Societies Transactions 49, 190-197 (1999)).
- a particular modification and variation of the present invention is to use it to identify optimum locations for shale gas exploration, so-called shale gas "sweet spots”, by deriving additional information on the mechanical strength properties of the earth from seismic inversion methods, and then combining that information with determination of TOC as described in this invention, together with estimates of the total gas in place ("GIP") which correspond to the TOC determined within the shale gas reservoir.
- GIP total gas in place
- Methods such as elastic prestack inversion, as described previously in this document for determining interval velocity and density can be extended to use full- waveform seismic data (for example, reflections, refractions, direct waves, and multiples) in order to predict the ability to artificially fracture (by hydraulic or other means) the shale gas reservoir.
- This mechanical property is called fracability, and has a high value in shale gas reservoirs that can be easily fractured.
- Artificial fracturing increases the effective permeability and thus producibility of the shale gas. Generally, fracability increases as the rock becomes more brittle.
- the degree of brittleness can be described in terms of a brittleness index that is a function of the stiffness parameters Possion's ratio (v) and Young's modulus (E) of the rock. These two stiffness parameters are often converted to the Lame' parameters of incompressibility Lambda ( ⁇ ) and rigidity Mu ( ⁇ ) (Goodway, "AVO and Lame' constants for rock parameterization and fluid detection", CSEG RECORDER 26, 39-60, (2001)).
- the two Lame' constants are fundamental in the physics of elastic seismic waves propagation, and can be determined by seismic inversion techniques.
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Citations (5)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
WO2004083898A1 (en) | 2003-03-17 | 2004-09-30 | Electromagnetic Geoservices As | Method and apparatus for determining the nature of submarine reservoirs |
US7340348B2 (en) * | 2006-06-15 | 2008-03-04 | Kjt Enterprises, Inc. | Method for acquiring and interpreting seismoelectric and electroseismic data |
US20080143335A1 (en) * | 2005-10-04 | 2008-06-19 | Schlumberger Technology Corporation | Electromagnetic survey system with multiple sources |
US7391675B2 (en) * | 2004-09-17 | 2008-06-24 | Schlumberger Technology Corporation | Microseismic event detection and location by continuous map migration |
US20090039891A1 (en) * | 2003-06-10 | 2009-02-12 | Macgregor Lucy M | Electromagnetic surveying for hydrocarbon reservoirs |
Family Cites Families (21)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
US3975674A (en) * | 1972-09-29 | 1976-08-17 | Mceuen Robert B | Geothermal exploration method utilizing electrical resistivity and seismic velocity |
US4884455A (en) * | 1987-06-25 | 1989-12-05 | Shell Oil Company | Method for analysis of failure of material employing imaging |
US4994747A (en) * | 1988-01-14 | 1991-02-19 | Stolar, Inc. | Method and apparatus for detecting underground electrically conductive objects |
FR2630826B1 (en) | 1988-04-28 | 1994-03-25 | Institut Francais Petrole | METHOD FOR EVALUATING THE CONTENT OF SEDIMENTARY ROCKS IN ORGANIC MATTER FROM DATA RECORDED IN WELLS BY DIAGRAPHY PROBES |
US4862089A (en) * | 1988-09-23 | 1989-08-29 | Amoco Corporation | Method of magnetotelluric exploration using a zigzag array |
FR2674961B1 (en) | 1991-04-08 | 1994-05-20 | Institut Francais Petrole | METHOD FOR EVALUATING FROM ORGANIZATIONS THE ORGANIC CONTENT OF ROCKS ALONG A WELL. |
USH1524H (en) * | 1993-01-15 | 1996-04-02 | Exxon Production Research Company | Method for using electromagnetic grounded antennas as directional geophones |
US5563513A (en) * | 1993-12-09 | 1996-10-08 | Stratasearch Corp. | Electromagnetic imaging device and method for delineating anomalous resistivity patterns associated with oil and gas traps |
US6332109B1 (en) * | 1998-11-06 | 2001-12-18 | Stuart Nicholas Sheard | Geological data acquisition system |
MY131017A (en) * | 1999-09-15 | 2007-07-31 | Exxonmobil Upstream Res Co | Remote reservoir resistivity mapping |
GB0002422D0 (en) * | 2000-02-02 | 2000-03-22 | Norske Stats Oljeselskap | Method and apparatus for determining the nature of subterranean reservoirs |
US6351991B1 (en) * | 2000-06-05 | 2002-03-05 | Schlumberger Technology Corporation | Determining stress parameters of formations from multi-mode velocity data |
ES2218438T3 (en) * | 2000-08-14 | 2004-11-16 | Statoil Asa | METHOD AND APPLIANCE TO DETERMINE THE NATURE OF UNDERGROUND DEPOSITS. |
AP1809A (en) * | 2002-06-11 | 2007-12-18 | Univ California | Method and system for seafloor geological survey using vertical electric field measurement |
ATE526595T1 (en) * | 2002-06-28 | 2011-10-15 | Gedex Inc | SYSTEM AND METHOD FOR DETERMINING DENSITY DISTRIBUTION IN THE SUBSTRATE |
US7023213B2 (en) * | 2002-12-10 | 2006-04-04 | Schlumberger Technology Corporation | Subsurface conductivity imaging systems and methods |
US7502690B2 (en) | 2005-02-18 | 2009-03-10 | Bp Corporation North America Inc. | System and method for using time-distance characteristics in acquisition, processing, and imaging of t-CSEM data |
US7330790B2 (en) * | 2005-10-03 | 2008-02-12 | Seismic Sciences, Inc. | Method of seismo electromagnetic detecting of hydrocarbon deposits |
US7203599B1 (en) * | 2006-01-30 | 2007-04-10 | Kjt Enterprises, Inc. | Method for acquiring transient electromagnetic survey data |
US7450053B2 (en) * | 2006-09-13 | 2008-11-11 | Hexion Specialty Chemicals, Inc. | Logging device with down-hole transceiver for operation in extreme temperatures |
GB2473251B (en) | 2009-09-07 | 2013-09-18 | Statoilhydro Asa | Method of assessing hydrocarbon source rock candidate |
-
2010
- 2010-08-31 US US12/872,783 patent/US8729903B2/en active Active
- 2010-10-21 AU AU2010315650A patent/AU2010315650B2/en not_active Ceased
- 2010-10-21 WO PCT/US2010/053512 patent/WO2011056444A1/en active Application Filing
- 2010-10-21 EP EP10828791.3A patent/EP2499516A4/en not_active Withdrawn
- 2010-10-21 CA CA2778336A patent/CA2778336C/en not_active Expired - Fee Related
- 2010-11-08 AR ARP100104146A patent/AR078943A1/en active IP Right Grant
-
2012
- 2012-04-18 CL CL2012000986A patent/CL2012000986A1/en unknown
Patent Citations (5)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
WO2004083898A1 (en) | 2003-03-17 | 2004-09-30 | Electromagnetic Geoservices As | Method and apparatus for determining the nature of submarine reservoirs |
US20090039891A1 (en) * | 2003-06-10 | 2009-02-12 | Macgregor Lucy M | Electromagnetic surveying for hydrocarbon reservoirs |
US7391675B2 (en) * | 2004-09-17 | 2008-06-24 | Schlumberger Technology Corporation | Microseismic event detection and location by continuous map migration |
US20080143335A1 (en) * | 2005-10-04 | 2008-06-19 | Schlumberger Technology Corporation | Electromagnetic survey system with multiple sources |
US7340348B2 (en) * | 2006-06-15 | 2008-03-04 | Kjt Enterprises, Inc. | Method for acquiring and interpreting seismoelectric and electroseismic data |
Non-Patent Citations (8)
Title |
---|
GOODWAY ET AL.: "Practical applications of P-wave AVO for unconventional gas Resource Plays - I: Seismic petrophysics and isotropic AVO", CSEG RECORDER, 2006, pages 90 - 95 |
GOODWAY: "AVO and Lame' constants for rock parameterization and fluid detection", CSEG RECORDER, vol. 26, 2001, pages 39 - 60 |
HARRIS; MACGREGOR: "Enhancing the Resolution of CSEM Inversion Using Seismic Constraints", 77TH ANNUAL INTERNATIONAL MEETING, SEG EXPANDED ABSTRACTS, 2007 |
M. COMMER ET AL.: "Massively Parallel Electrical-Conductivity Imaging of Hydrocarbons Using the IBM Blue Gene/L Supercomputer", IBM JOURNAL OF RESEARCH AND DEVELOPMENT, vol. 52, 2008, pages 93 - 104 |
PASSEY ET AL.: "A Practical Model for Organic Richness from Porosity and Resistivity Logs.", THE AMERICAN ASSOCIATION OF PETROLEUM GEOLOGISTS BULLETIN., vol. 74, no. 12., December 1990 (1990-12-01), pages 1777 - 94. * |
See also references of EP2499516A4 * |
UM; ALUMBAUGH: "On the Physics of the Marine Controlled-Source Electromagnetic Method", GEOPHYSICS, vol. 72, 2007, pages WA13 - WA26, XP001504986, DOI: doi:10.1190/1.2432482 |
WEISS; CONSTABLE: "Mapping Thin Resistors and Hydrocarbons With Marine EM Methods, Part II - Modeling and Analysis in 3D", GEOPHYSICS, vol. 71, 2006, pages 321 - 332 |
Cited By (4)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
US9864086B2 (en) | 2012-06-25 | 2018-01-09 | Statoil Petroleum As | Saturation estimation using mCSEM data and stochastic petrophysical modeling |
CN110441813A (en) * | 2019-07-25 | 2019-11-12 | 中国石油大学(北京) | A kind of prediction technique of the distribution of lacustrine facies high quality source rock |
CN110646849A (en) * | 2019-11-01 | 2020-01-03 | 中南大学 | Matrix-fluid-fracture decoupling-based oil-bearing fracture reservoir inversion method |
CN110646849B (en) * | 2019-11-01 | 2021-01-15 | 中南大学 | Matrix-fluid-fracture decoupling-based oil-bearing fracture reservoir inversion method |
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Publication number | Publication date |
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US20110108283A1 (en) | 2011-05-12 |
EP2499516A1 (en) | 2012-09-19 |
CA2778336C (en) | 2018-01-02 |
AU2010315650B2 (en) | 2014-09-11 |
CL2012000986A1 (en) | 2012-11-09 |
AR078943A1 (en) | 2011-12-14 |
US8729903B2 (en) | 2014-05-20 |
CA2778336A1 (en) | 2011-05-12 |
AU2010315650A1 (en) | 2012-05-31 |
EP2499516A4 (en) | 2017-01-04 |
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