1. Field of the Invention
The present invention is related to the field of data processing methods for oil well logging and sampling. More specifically, the present invention relates to methods for determining properties of hydrocarbon mixtures and crude oils including molecular composition, molecular size, molecular weight, and molecular carbon number using nuclear magnetic resonance (NMR) data.
2. Background Art
Oil well logging and sampling tools include nuclear magnetic resonance (NMR) instruments. NMR instruments can be used to determine properties of earth formations, such as the fractional volume of pore space, the fractional volume of mobile fluid filling the pore space, and the porosity of earth formations. In addition, NMR data may be used to assess the content of brine and hydrocarbons in the formation. General background of NMR well logging is described in U.S. Pat. No. 6,140,817, assigned to the assignee hereof.
The signals measured by nuclear magnetic resonance (NMR) logging tools typically arise from the selected nuclei present in the probed volume. Because hydrogen nuclei are the most abundant and easily detectable, most NMR logging tools are tuned to detect hydrogen resonance signals (from either water or hydrocarbons). These hydrogen nuclei have different dynamic properties (e.g., diffusion rate and tumbling/rotation rate) that are dependent on their environments, such as the chemical structure and size of the molecules in which they reside. The different dynamic properties of these nuclei manifest themselves in different nuclear spin relaxation times (i.e., spin-lattice relaxation time (T1) and spin-spin relaxation time (T2); spin-lattice relaxation is also referred to as longitudinal relaxation, and spin-spin relaxation as transverse relaxation). For example, molecules in viscous oils cannot diffuse or tumble as fast as those in light oils. As a result, they have relatively short relaxation times. These observations suggest that NMR data (e.g., relaxation times) can provide information on molecular properties of hydrocarbons in the earth formations.
One aspect of the invention relates to methods for estimating molecular properties such as composition, size, carbon number and weight in a mixture (e.g., crude oils) from NMR data. A method for determining molecular properties in a mixture of hydrocarbons includes measuring NMR data of the mixture using an NMR tool or a laboratory NMR instrument; deriving at least one parameter for each observed constituent in the mixture from the NMR data; and calculating a molecular property for each observed constituent in the mixture from the at least one parameter. Methods according to some embodiments of the invention use correlations between relaxation times and molecular properties and/or between diffusion rates and molecular properties.
Other aspects of the invention would become apparent from the following description, the drawings, and the claims.
The NMR logging device 30 can be any suitable nuclear magnetic resonance logging device; it may be one for use in wireline logging applications as shown in
A schematic representation of some of the components of an NMR logging device 30 is illustrated in
In
Several NMR parameters may be measured that can be used to derive formation properties. Most NMR logging operations measure the spin-lattice (longitudinal) relaxation times (T1) and/or spin-spin (transverse) relaxation times (T2) of hydrogen nuclei. In addition, some NMR logging tools may provide a ratio of T1/T2 directly, and other NMR tools may provide diffusion constants (D). These NMR data (T1, T2, T1/T2, and D) are all applicable to the embodiments of the present invention, though the following discussion uses T2 relaxation times to illustrate the present invention.
Various pulse sequences are available for measuring the NMR relaxation times. For example, T1 relaxation may be measured using an inversion-recovery or a simple spin-echo pulse sequence or any of their derivatives. The T2 relaxation is often measured from a train of spin-echoes that are generated with a series of pulses such as the Carr-Purcell-Meiboom-Gill (CPMG) pulse sequence or some variant of this. The CPMG pulse sequence is well known in the art. (See Meiboom, S., Gill, D., 1958, “Modified Spin Echo Method for Measuring Nuclear Relaxation Times,” Review of Scientific Instruments, 29, 688-91). As illustrated in
As shown in
Once NMR data (e.g., T1, T2 relaxation times, T1/T2 ratio, or diffusion rates) are collected, they are analyzed with an inversion method to derive the earth formation information. Any of the inversion methods known in the art are suitable. For example, U.S. Pat. No. 5,291,137, issued to Freedman and assigned to the same assignee hereof, discloses a “windows” processing method. This “window” processing method is suitable for most NMR data analysis.
Transverse (T2) relaxation in liquid is mainly through dipole-dipole interactions, which are influenced by the dynamic properties of the molecules (e.g., diffusion rates and molecular tumbling rates) and the fluids (e.g., viscosity). Thus, NMR data (especially, T2) may be used to provide information on the compositions of the fluids and the properties of the constituents (e.g., molecular sizes). While NMR data can be used to provide detailed information on individual constituents and their properties, most prior art NMR data analysis methods only focus on macroscopic properties of earth formation, such as where the hydrocarbon and brine zones are, porosity of the earth formations, and fractional volumes of pore space; few have focused on a more detailed analysis of properties of individual constituents (e.g., molecular size distributions) within a particular fluid.
As discussed earlier, NMR relaxation rates are dependent on dynamic properties of the molecules and the fluids. Thus, NMR data may be used to derive the diffusion rates and tumbling rates of the molecules. Because the molecular diffusion rates and tumbling rates are sensitive to molecular sizes as well as viscosity of the fluids, NMR data may be used to derive information concerning the composition of crude oils in terms of molecular sizes. Determining molecular property information from NMR data requires the relaxation time and/or diffusion rate distributions of the hydrocarbon fraction of the reservoir and/or borehole fluids. A suitable technique for obtaining these distributions in mixtures containing both hydrocarbons and water is the Magnetic Resonance Fluid (MRF) characterization method as disclosed in U.S. Pat. No. 6,229,308 B1 issued to Freedman. This patent is assigned to the same assignee hereof and is hereby incorporated by reference.
The MRF method invokes a Constituent Viscosity Model (CVM), which relates relaxation time and diffusion rates to constituent viscosities whose geometric mean is identical to the macroscopic fluid viscosity. The validity of the CVM was established by Freedman et al. using laboratory data acquired on live and dead hydrocarbon mixtures and crude oils. These results were reported by Freedman et al. in paper number 63214 entitled “A New NMR Method of Fluid Characterization in Reservoir Rocks: Experimental Confirmation and Simulation Results” presented at the 2000 Society of Petroleum Engineers Annual Technical Conference and Exhibition meeting.
While the MRF method would be used as an example in the following discussion of how to derive NMR parameters for individual constituents, one skilled in the art will appreciate that other similar methods may be used without departing from the scope of the invention. In situations where uncontaminated hydrocarbon samples are available, NMR parameters such as relaxation time and diffusion rate distributions may be estimated without applying the MRF method.
Using the CVM, the MRF method is capable of deriving distribution of constituent viscosities in fluid mixtures containing crude oils. The constituent viscosities are directly related to the distribution of NMR relaxation times measured on bulk crude oil samples and they reflect the complex composition of crude oils as a mixture of many different types of hydrocarbon molecules. The use of constituent viscosities simplifies the inversion by providing a single set of parameters for characterizing the crude oil distributions of bulk relaxation times and diffusion constants. The MRF technique provides improvements in all aspects of the standard NMR analysis, including estimates of total porosity, free-fluid and bound-fluid porosity, T2 distributions, and permeability in shaly sands.
In deriving constituent viscosities, the MRF method uses a general spin-echo relaxation model for a formation containing brine, hydrocarbons, and oil-based mud filtrate (OBMF). OBMF is commonly used in drilling the borehole. As shown in
where the first, second, and third terms are brine, hydrocarbons, and OBMF signals, respectively. This three-phase model explicitly accounts for contributions from individual constituents in brine and hydrocarbon phases, but only assumes an average relaxation time distribution in the OBMF phase. The simplified term for OBMF is justified because experimental measurements in OBMF have shown that NMR relaxation time distributions for individual constituents in OBMF are very narrow and can be described by a single exponential.
The apparent transverse (dipole-dipole) relaxations in any of the three phases modeled in Equation (1) include inherent transverse relaxation and relaxation due to self diffusion of molecules in the static magnetic field gradient Gp. For unrestricted diffusion in a uniform magnetic field gradient in the brine, the apparent transverse relaxation rates can be written as,
Here, T2,1 in the first term on the right-hand side are a set of relaxation times that represent the sum of surface and bulk relaxation of the brine phase. The second term is the contribution to the relaxation rate from diffusion, where γH=2π*4258 G−1 s−1 is the proton gyromagnetic ratio and Dw(T) is the temperature dependent self diffusion coefficient of water in units of cm2/s. Note that Equation (2) assumes an unrestricted diffusion and a uniform magnetic field gradient Gp. One skilled in the art will appreciate that corrections to Dw(T) for the effects of restricted diffusion and to Gp for the effects of internal rock gradients can be applied if appropriate.
Similarly, the apparent transverse relaxation rates in the native oil (T2,o (ηk,p)) can be written in the form,
where T2,o(ηk) is the bulk relaxation time associated with amplitude bk in the hydrocarbon relaxation time distribution, and Do(ηk) is a viscosity dependent diffusion constant. The hydrocarbon (crude oil) is usually a non-wetting phase and is not affected by surface relaxation. Crude oils are mixtures consisting of many different types of hydrocarbon molecules of varying sizes, shapes and molecular weights. See, for example, McCain, W. D., The Properties Of Petroleum Fluids, Penn Well Publishing Co., Second Edition, Chapter 1, 1990. A molecular-level distribution of constituent viscosities (ηk) is assumed to exist in crude oils. This assumption is based on experimental data that there exists a distribution of relaxation times in crude oils.
The measured viscosity (ηo) reflects a macroscopic transport property of the crude oil that determines its flow properties and is the quantity that is used in hydrodynamic transport equations like the Navier-Stokes equation. Morriss et al showed that, for a suite of dead (i.e., not containing dissolved solution gas) crude oils, there exists a strong correlation between the logarithmic mean relaxation times of their constituents and the measured viscosities. See Morriss et al., Hydrocarbon Saturation And Viscosity Estimation From NMR Logging In The Belridge Diatomite, Paper C presented at the 35th Annual Meeting Of The Society Of Professional Well Logging Analysis, 1994. The macroscopic viscosity (ηo) of live crude oils is empirically related to the logarithmic mean (({overscore (T)}2,o)logm) of the transverse relaxation time distributions by a constitutive equation of the form,
where a is an empirically determined constituent constant that has been determined by Morriss, et al. to be around 250 (i.e., a≅250 Ks−1cp−1), for ({overscore (T)}2,o)logm in seconds centipoise and T the temperature in degrees Kelvin. Thus,
The empirically derived function f(GOR) accounts for live oils (those containing dissolved solution gas) and has been discussed by Freedman et al. in paper number 63214 entitled “A New NMR Method of Fluid Characterization in Reservoir Rocks: Experimental Confirmation and Simulation Results” presented at the 2000 Society of Petroleum Engineers Annual Technical Conference and Exhibition meeting.
The ηk in Equation (3) are microscopic viscosities that reflect the complex composition of crude oils. Analogously with the above equation, the constituent viscosities are assumed to be related to the components in the relaxation time distribution via the same equation,
The logarithmic mean of relaxation time is defined as,
with
where bk are the No amplitudes in the crude oil bulk relaxation time distribution. Substituting Equations (4) and (5) into Equation (6) would yield the macroscopic viscosity of the crude oil, ηo, which is the logarithmic mean of the individual microscopic viscosities, ηk:
where {overscore (b)}k is the “concentration” of the mixture constituent with viscosity ηk. The macroscopic viscosity ηo is similar to the high temperature limit for the viscosity of a mixture according to the “Arrenhius mixing rule” see A. Bondi, Physical Properties of Molecular Crystals, Liquids, and Glasses, pp. 348-349, 1968.
The dependence of the relaxation times on viscosity and temperature in Equations (4) and (5) is consistent with the experimental observations and theoretical predictions of Bloembergen, Purcell, and Pound, Relaxation Effects in Nuclear Magnetic Resonance Absorption, Physical Review, vol. 73, no. 7, pp. 679-712, 1948.
Stokes-Einstein diffusion theory predicts that diffusivity is related to temperature and viscosity according to the equation: D=kT/6πηR, where k is the Boltzmann constant, R is the radius of the spherical particle, and T is the temperature in degrees Kelvin. Similar to the Stokes-Einstein equation, the self-diffusion constants for the crude oils, Do, and for constituents in the crude oil, Do(ηk), are assumed to have the same dependence on T/ηk. Therefore, for crude oils,
where b is a constant, Do is the measured crude oil diffusion constant in cm2/s, and T is the temperature in degrees Kelvin. The empirical constitutive constant for crude oils, b=5.05×10−3 cm2s−1 cpK−1, is given by Freedman et al. in paper number 63214 entitled “A New NMR Method of Fluid Characterization in Reservoir Rocks: Experimental Confirmation and Simulation Results,” presented at the 2000 Society of Petroleum Engineers Annual Technical Conference and Exhibition meeting.
Analogously to the relationship between the macroscopic diffusion constant (Do) and the macroscopic viscosity (ηo), the microscopic constituent diffusion constants of crude oil mixtures are related to the microscopic constituent viscosities (effective viscosities) according to the following equation:
Equation (8) implies that there exists at the molecular level a distribution of diffusion constants in the crude oil mixture analogous to the distribution of relaxation times. These distributions of diffusion constants and relaxation times can be derived from the measured NMR data by iteratively fitting a model as shown in Equation (1) to these data using the method disclosed in U.S. Pat. No. 6,229,308 B1.
The above-described MRF method is just one way to obtain the distributions of the diffusion constants and the relaxation times. The MRF method is particularly appropriate when NMR data are obtained from mixed fluids (e.g., water, drilling fluid filtrates, and oil). If the oil sample is not contaminated with other fluids (e.g., crude oils), there would be no need to apply the MRF method to obtain the distributions of diffusion constants and the relaxation times.
Once the distribution of the diffusion constants and the relaxation times are estimated, they can be used to further derive the molecular properties of the individual constituents according to embodiments of the present invention. Molecular properties as used herein refer to molecular size, carbon number, and weight, i.e., those properties related to physical dimensions of the molecules. For example, assuming a spherical molecule with a radius of R, the individual diffusion constant is related to the radius R (hence, the molecular size) according to the Stokes-Einstein equation: Do=kT/6πηR, where Do is the observed diffusion constant, k is the Boltzmann constant, T is the temperature in degrees Kelvin, and η is the viscosity in centipoise.
Therefore, to derive molecular size information from the NMR data, the relaxation times (T2k) and diffusion rates (Dk) of individual molecules (indexed by k) in a hydrocarbon mixture can be approximated as
where Nk is the number of carbon atoms in the kth constituent, a′(T) and b′(T) are functions of temperature, T, η is the fluid viscosity, and α′, β′, φ′ and θ′ are (as yet) unknown exponents. Note that these expressions are generalizations of the Stokes-Einstein and Bloembergen relations for diffusion and spin relaxation of spherical particles in liquids. Equation (9) includes a factor that represents the gas/oil ratio (GOR). This is included because it is known that GOR is an important parameter in determining the relaxation time dependence on viscosity and temperature. See Lo et al., Relaxation Time And Diffusion Measurements of Methane And N-Decane Mixtures, The Log Analyst, pp. 43-46, November-December, 1998; see also U.S. Pat. No. 6,229,308 B1. Within the context of the CVM approach, the denominators of Equations (9) and (10) are proportional to constituent viscosities.
With the approximations in Equation (9) and (10), it is tempting to assume that the exponents α′ and φ′ are equal to 1 and then make some correlation between Nk and molecular “radius,” R, to mimic the ideal spherical particle expressions. Such assumption suggests a dependence on the inverse of ηR for D and on the inverse of ηR3 for T2. However, this approach immediately fails for mixtures because it implies that the geometric mean of the Nk distribution is independent of the details of the mixture. This contradiction follows directly when the expressions in Equations (4) and (7) are respectively substituted into the constituent Equations (9) and (10).
By incorporating empirical results concerning the relation between viscosity and the geometric mean relaxation times and diffusion rates, i.e., T2LM and DLM are linearly dependent on T/η, Equations (9) and (10) can be reformulated as,
Note that Equations (11) and (12) are obtained from Equations (9) and (10) simply by introducing the empirical expressions, T2LM=a′T/ηf(GOR) and DLM=b′T/η, re-ordering the variables, and defining a new set of exponents (unprimed).
Equations (11) and (12) indicate that if the exponents, α, β, φ, and θ, are known, the Nk (carbon number) may be obtained from the geometric means of T2 and D (i.e., T2LM and DLM). Because relationships shown in Equations (11) and (12) are not dependent on the exact natures of the individual constituents in the mixture, it should be possible to derive these exponents, α, β, φ, and θ, using a simple model mixture system. Once these exponents are derived, they may be used in other systems of similar compositions.
As an example, rough estimates for the exponents, α, β, φ, and θ, which would be useful in other hydrocarbon mixture systems, can be derived from an experimental mixture of squalene (C30) and hexane (C6). For this mixture, GOR=0 and f(GOR)=1. Data for the pure squalene (C30) and hexane (C6) and three mixtures of these two components at 30° C. are given in Table 1. Note that any suite of hydrocarbon samples, including crude oils, may be used to derive such parameters.
Once the T2, T2LM, D, DLM values for squalene (C30) and hexane (C6) are available, they can be plugged into Equations (11) and (12) to produce the rough estimates of the exponents, α, β, φ, and θ. From the dataset shown in Table 1, suitable exponents and pre-multiplying functions are determined, and the expressions for Nk (at 30° C.) as shown in Equations (11) and (12) are simplified as:
Equations (13) and (14) can be used to estimate molecular sizes of individual constituents in a similar mixture. Using Equations (13) and (14) and the measured relaxation and diffusion data shown in Table 1, the Nk values for the squalene-hexane system are given in Table 2.
As shown in Table 2, reasonable values for Nk can be obtained using either relaxation times or diffusion rates. It should be noted that Equations (13) and (14) and the example used here are merely intended to illustrate the basic concept of how to obtain these values; they should not limit the invention. One skilled in the art will appreciate that the derived exponents in the above example were rounded to give simple half-integer fractions for simplicity. Alternative optimized values may be derived which should provide better estimates for Nk. However, as shown in the above example, even with the simplified rough estimates, the Nk values can be obtained with reasonable accuracy. Therefore, the rough estimate approach as shown here should be sufficient for most situations.
The pre-multipliers, 650 and 0.04, in Equations (13) and (14), respectively, in principle are valid only at the measurement temperature of 30° C. However, the temperature dependence of these values is relatively weak (approximately T1/2 with T in degrees Kelvin). Thus, these values may be used in a temperature range around 30° C. For crude oils, the optimum exponents and pre-multipliers might differ slightly from those derived for simple bi-component mixtures. Equations (13) and (14) are not strictly compatible with the CVM equations because T2k and Dk depend differently on Nk and η. The diffusion constants Dk, as shown in Equation (14), exhibit a weaker dependency on Nk than do the relaxation times, T2k, as shown in Equation (13). This result agrees qualitatively with the ideal spherical particle relations. In view of the many approximations and assumptions implicit in this kind of model, any resulting “carbon number” (or molecular size) distribution should probably be regarded as an approximate indicator rather than a definitive and accurate breakdown of molecular composition.
Equations (9)-(12) should be regarded as particular implementations of the method. Alternative mathematical expression relating relaxation times and diffusion rates with molecular size, carbon number or other constituent property could also be derived and calibrated to hydrocarbon mixtures. It is also feasible to determine molecular properties from measured NMR data using model independent pattern recognition methods such as neural networks. In this approach, there are no model dependent equations (e.g., equations 13 and 14). Instead a “training data set” of molecular properties versus NMR and diffusion properties is used to train a neural network to predict molecular properties given NMR data on a sample outside of the training set. Any commercially available neural network software (such as that available from the Mathworks, Inc. at www.mathworks.com) may be adapted to determine molecular properties without the need to invoke model equations. These methods might also incorporate additional data derived from other measurements, for example NMR spectroscopy or optical analysis.
Once the NMR data are collected, they are analyzed using an inversion method to derive individual constituent dynamic parameters (e.g., T1, T2, T1/T2, and diffusion constants; process 42 in FIG. 5). As discussed earlier, the MRF method or any similar method may be used for this purpose. Note that the MRF technique and the extension to it described herein are able to provide real-time information on reservoir fluids (e.g., viscosity, molecular composition) that at present can only be provided by lengthy pressure-volume-temperature (PVT) analysis performed in laboratories.
Finally, the individual constituent dynamic parameters (e.g., T1, T2, T1/T2, and diffusion constants) may be used to derive the molecular size information (process 43 in FIG. 5). As discussed above, the molecular sizes can be correlated with the transverse relaxation times and the diffusion constants according to Equations (11) and (12). The exponents in these equations can be estimated using a model mixture having similar components and/or properties (i.e., hydrocarbons) under similar conditions (e.g., temperature). Rough estimates of these components (“empirical parameters”) would be sufficient. Having these exponents, Equations (11) and (12) may be simplified to those like Equations (13) and (14). The individual constituent dynamic parameters (e.g., T1, T2, T1/T2, and diffusion constants) in the mixture of interest derived from process 42 may then be used to calculate the molecular sizes of constituents (or their distribution in the mixture).
Curves A1-A3 were analyzed with methods of the invention and the resultant molecular weight distributions are shown as curves B2-D2 in
Although the example in
While the invention has been described using limited examples, those skilled in the art, having the benefit of this disclosure, will appreciate that other methods can be devised without departing from the scope of the invention as disclosed herein. Accordingly, the scope of the invention should be limited only by the attached claims.
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