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Article

Improving the Total Organic Carbon Estimation of the Eagle Ford Shale with Density Logs by Considering the Effect of Pyrite

1
Department of Petroleum Engineering, University of Louisiana at Lafayette, Lafayette, LA 70504, USA
2
Department of Geosciences and Geological and Petroleum Engineering, Missouri University of Science and Technology, Rolla, MO 65409, USA
3
Department of Mechanical Engineering, University of Louisiana at Lafayette, Lafayette, LA 70504, USA
*
Author to whom correspondence should be addressed.
Minerals 2018, 8(4), 154; https://doi.org/10.3390/min8040154
Submission received: 20 February 2018 / Revised: 2 April 2018 / Accepted: 8 April 2018 / Published: 12 April 2018

Abstract

:
Pyrite is a common mineral with a higher density than most other minerals in the Eagle Ford Shale formation. Hence, if pyrite is not considered in the total organic carbon (TOC) estimation, based on density logs, it may lead to errors. In order to improve the accuracy of the TOC estimation, we propose an updated TOC estimation method that incorporates the concentration of pyrite and organic porosity. More than 15 m of Eagle Ford Shale samples were analyzed using Rock-Eval pyrolysis, X-ray fluorescence (XRF), and X-ray diffraction (XRD). TOC, elemental concentration, and mineralogical data were analyzed for a better understanding of the relationship between the concentration of TOC and pyrite content in the Eagle Ford formation. An updated petrophysical model—including parameters such as organic pores, solid organic matter, inorganic pores, pyrite, and inorganic rock matrix without pyrite—was built using the sample data from the Eagle Ford. The model was compared with Schmoker’s model and validated with the Eagle Ford field data. The results showed that the updated model had a lower root mean square error (RMSE) than Schmoker’s model. Therefore, it could be used in the future estimation of TOC in pyrite-rich formations.

1. Introduction

Total organic carbon (TOC) is a fundamental parameter that is critical in evaluating the hydrocarbon generating potential of source rocks [1]. TOC can be obtained directly from Rock-Eval pyrolysis or similar experiments in a laboratory, or it can be obtained indirectly from well logging techniques, such as density logs. Geophysical methods are possible because, in most cases, increasing concentrations of organic matter in a rock directly affects the rock’s physical properties by lowering density, slowing sonic velocity, increasing radioactivity (as several radioactive elements are associated with organic matter), and raising hydrogen contents. The geophysical TOC estimation methods can be divided into two categories: single-well log methods and multi-well logs methods, as shown in Table 1.
Overall, the geophysical property that is most widely applied in identifying source rocks and estimating TOC is anomalously high gamma-ray values [2,3,4,5,6]. Schmoker [3] proposed a relationship between total gamma-ray intensity and organic richness in Devonian-age Appalachian shales. Although a valuable approach, it was concluded that the gamma ray method significantly underestimated organic richness in some intervals. Moreover, established relationships between TOC and gamma-ray intensity often changed from one region to the next. Fertl [4,5] summarized the potassium, thorium, and uranium distributions in shales, suggesting correlations between these elements and elemental ratios (U, Th, K, and Th/U), and organic richness. This approach is also valuable, but has to be calibrated for the region of interest. Estimating TOC with density logs is another well-accepted method [7,8,9,10,11]. Equations, including bulk density, have been derived in building petrophysical models containing different components of the shale formation. For example, Schmoker [7,8] estimated the organic carbon of the Bakken Formation, based on density data, with a four-component shale system assumption. Alfred and Vernik [11] took maturation-induced pores in kerogen and inorganic pores into consideration and estimated organic content and total porosity based on density data.
Zhao [12] established a clay indicator to reflect the clay content using density and neutron logs and then overlaid the scaled clay indicator curve on the gamma-ray curve to help estimate the TOC value. The Passey’s ΔlogR method [13] is a graphical porosity–resistivity overlay technique, which was developed in 1990 and is still widely used. It was originally developed using acoustic compressional slowness but also worked with density or compensated neutron measurements. Wang [14] and Zhao [15] improved the TOC estimation accuracy through a revised ΔlogR method. The revisions included replacing the level of maturity (LOM) with Tmax, making the slope and the values of resistivity and porosity of the baseline rock vary with depth, and so on. Autric [19] used resistivity and sonic logs to evaluate the organic richness. Since the presence of organic matter has had an impact on various petrophysical logs, Mendelson et al. [16] used a multivariate regression analysis to predict TOC with a combination of logs, including sonic, density, neutron, and gamma-ray logs. The derived equations could only be applied to specific wells or locations, since no similarities among multivariate equations were observed in the different wells [20]. The application of artificial intelligence techniques (neural networks, support vector machines, etc.) have also been successfully used in the prediction of TOC concentrations. Artificial intelligence techniques are more advanced than simple regression techniques or statistical correlations, but require large data sets with complicated regression computations [18].
It is challenging when many of the above mentioned methods are applied in shale formations with large amounts of heavy minerals, such as pyrite (FeS2). Pyrite becomes a problem in formation evaluation when it occurs in sufficiently large quantities and its distinctive physical properties influence downhole log responses [21,22]. Clavier [23] mentioned that the measured rock resistivity is influenced by the distribution of pyrite and the frequency of resistivity logging tools. Pyrite has a high mass and electron density, such that it can distort the readings of density and neutron logs, which are frequently calibrated to typical silicate or carbonate mineralogy [24]. Witkowsky [25] achieved a good correlation between TOC and sulfur in the Haynesville Shale and showed that the high volume percent of pyrite greatly affected the grain density and resistivity. To address this challenge, we used the Eagle Ford Shale as an example to develop an advanced method for estimating TOC, which considered pyrite concentration.

2. Experimental Methods

More than 15 m of the Eagle Ford core samples, including samples from the upper and lower Eagle Ford formation, were analyzed with X-ray fluorescence (XRF), X-ray diffraction (XRD), and Rock-Eval pyrolysis experiments. The top section of the underlying Buda Limestone was also tested since it could be seen as a boundary of limestone with the lowest TOC content.
Elemental concentrations of Mg, Al, Si, Ti, Cr, Mn, Fe, Zn, P, V, Ni, Ca, Cl, K, Rb, Sr, and Mo were measured using hand-held XRF Analyzers (Thermo Fisher Scientific, Waltham, MA, USA). Standard samples and replications of several points were tested to ensure the accuracy and repeatability of the XRF experimental results.
The mineralogy of the samples was identified using a MiniFlex 600 X-ray diffractometer (Rigaku, Tokyo, Japan) instrument. The bulk samples were ground into a fine powder by a ball mill and then filled in a sample holder. The X-ray tube was set at 40 kV and 15 mA and the sample powder was scanned over the range of 5–85°. The equipment performance was checked routinely with Standard Reference Material 640e (SRM 640e) silicon power and a Si setting jig.
Approximately 55 mg of the rock powder from each sample was used for analysis on the Rock-Eval 6 analyzer from Vinci Technologies (Nanterre, France). During pyrolysis, the crushed rock samples were heated from 300 °C to 650 °C at a rate of 25 °C/min in a helium atmosphere. The parameters, which included TOC, S1 (free oil and gas, mg HC/g rock), S2 (hydrocarbon generated during thermal cracking of the sample kerogen, mg HC/g rock), S3 (CO and CO2 from the thermal cracking of oxygen-bearing functional groups within the kerogen, mg CO2/g rock), and Tmax (temperature of the maximum hydrocarbon generation, °C), were measured and recorded. After pyrolysis, the samples were automatically transferred to an oxidation oven to measure the residual carbon and mineral carbon.

3. Pyrolysis Results of the Eagle Ford Shale Samples

The pyrolysis results of the Eagle Ford Shale samples are presented in Appendix A. These data were used for the interpretation of the kerogen type, source rock generative potential, and degree of maturation [26,27,28,29].
It can be seen from the modified van Krevelen diagram (Figure 1) that the hydrogen index (HI) and oxygen index (OI) of the measured Eagle Ford samples were very low. The Eagle Ford organic rich shales were originally dominated by Type II kerogen [30,31], but most of the generative potential of these samples was lost because they were overly mature [28,32]. With increasing maturation, HI and OI of kerogen decreased. During the maturation process, a large amount of hydrocarbon was produced and expelled from kerogen.
As is shown in Figure 2a, the lower Eagle Ford samples were excellent source rocks with good petroleum potential (i.e., high S1 + S2), while the upper Eagle Ford samples were very good source rocks with fair hydrocarbon generative potential. It is clear that these Eagle Ford samples had entered the post-mature zone for hydrocarbon generation (Figure 2b).

4. Relationship between TOC and Pyrite in the Eagle Ford

Pyrite (FeS2) is a common heavy mineral that indicates reducing conditions. It is formed through the reaction between reactive iron and H2S that is produced by a bacterial sulfate reduction in anoxic water columns or in pore waters of sediments [33].
The correlation between Fe and S (determined via XRF) and the changes of concentrations of Fe and S with depth in shale samples are revealed in Figure 3 and Figure 4. It can be seen that there are some zones of excess S relative to Fe. The pyrite concentration can be estimated by assuming that all of the Fe is in the form of pyrite. This is a reasonable assumption because there is consistently more than enough S to combine with all of the Fe to form pyrite, and a strong correlation exists between the two elements that fit the pyrite formula (Figure 3). Figure 4 shows the obvious cyclic changes in Fe, S, and the estimated pyrite concentrations with regard to depth, corresponding to the changes of gamma-ray intensity. These cyclic changes of pyrite and residual S reflected the changing degrees of anoxia and regressive/transgressive ocean cycles [34]. Additionally, the measured pyrite content from the XRD analysis was close to the estimated pyrite content, based on Fe concentration, and showed a similar cyclic trend.
Through the XRD analyses, the pyrite content was measured in the upper and lower Eagle Ford Shale samples. It is illustrated in Figure 5 that there is a positive linear relationship between the amount of pyrite and TOC in the upper and lower Eagle Ford Shale formation. The top of the Buda Limestone section was also taken into consideration because it acted as the boundary with the lowest TOC content.

5. Petrophysical Model Considering Pyrite and Organic Porosity

Schmoker’s four-component system rock model [8] is a widely used model for estimating organic content using density logs. Schmoker’s model includes the following assumptions: (1) the volume-weighted average density of grain and pore fluid can be estimated accurately; (2) pore space includes all of the organic and inorganic pores in the rock matrix.
Here we developed an updated model where the rock was divided into five constituent parts, including organic pores, solid organic matter, pyrite, inorganic pores, and rock matrix without pyrite. Pyrite was broken out from the matrix since the pyrite content had a positive linear relationship with the TOC value, while other minerals in the rock matrix were not closely related to the concentration of TOC. This relationship was used to develop the updated model. With the assumption that the fluids in the organic and inorganic pores were hydrocarbons and water, respectively, the parameters of the petrophysical model were summarized (Figure 6).
V k + V nk + V py = 1
where Vk, Vnk, and Vpy are the volume fractions of organic matter, inorganic rock without pyrite, and pyrite, respectively, dimensionless.
The bulk density can be expressed as follows:
ρ b = V k ϕ k ρ hc + V k ( 1 ϕ k ) ρ k + V py ρ py + V nk ϕ nk ρ w + V nk ( 1 ϕ nk ) ρ nk
where φk is the volume fraction of the organic pores in the organic matter, dimensionless; φnk is the volume fraction of the inorganic pores in the inorganic rock without pyrite, dimensionless; ρhc, ρk, ρpy, ρw, and ρnk are the densities of hydrocarbon in the organic pores, solid organic matter, pyrite, water in inorganic pores, and other rock matrix, respectively, g/cm3.
Parameter Vnk can be removed by substituting Equation (1) into Equation (2):
ρ b = V k ϕ k ρ hc + V k ( 1 ϕ k ) ρ k + V py ρ py + ( 1 V k V py ) ϕ nk ρ w + ( 1 V k V py ) ( 1 ϕ nk ) ρ nk
Equation (3) can be rearranged as follows:
ρ b = V k [ ϕ k ρ hc + ( 1 ϕ k ) ρ k ϕ nk ρ w ( 1 ϕ nk ) ρ nk ] + V py [ ρ py ϕ nk ρ w ( 1 ϕ nk ) ρ nk ] + ϕ nk ρ w + ( 1 ϕ nk ) ρ nk
Total organic carbon is expressed as follows:
TOC = V k [ ϕ k ρ hc + ρ k ( 1 ϕ k ) ] R ρ b
where R is the ratio of the mass of organic matter to the mass of organic carbon, dimensionless.
The relationship between the pyrite content and TOC can be identified through laboratory experiments, as shown in Figure 5. When TOC and Wpy are expressed as fractions, the values of a and b are 0.67 and 0.0122 for the Eagle Ford formation, respectively.
W py = aTOC + b
Since Vpy is used in Equation (1) to Equation (4), the relationship between Vpy and Wpy needs to be derived to apply the correlation between pyrite content and TOC.
V py = ρ b ρ py W py
Combining Equation (6) and Equation (7) gives the following:
V py = ρ b ρ py ( aTOC + b ) .
Finally, the relation between TOC and bulk density is achieved by substituting Vk in Equation (5) and Vpy in Equation (8) into Equation (4).
TOC = ρ b Pb ρ b / ρ py Q ρ b RN / M + aP ρ b / ρ py
where
M = ϕ k ρ hc + ρ k ( 1 ϕ k )
N = ϕ k ρ hc + ( 1 ϕ k ) ρ k ϕ nk ρ w ( 1 ϕ nk ) ρ nk
P = ρ py ϕ nk ρ w ( 1 ϕ nk ) ρ nk
Q = ϕ nk ρ w + ( 1 ϕ nk ) ρ nk

6. Discussion

The updated petrophysical model was compared with Schmoker’s model and validated with the Eagle Ford field data.
The average porosity of the Eagle Ford Shale in the condensate wet gas window and dry gas window was around 8% [35]. By plugging the porosity and density data, shown in Figure 7, into Equation (9), the organic content of the Eagle Ford Shale was estimated over the range of organic porosity from 10% to 30%. The calculated TOC value, based on the improved model, was then compared with the measured TOC.
In Schmoker’s model, TOC was estimated with bulk density, organic density, and the volume-weighted average of grain and pore fluid density. The plot of Schmoker’s model was calculated based on Equation (14). The parameters that were used to calculate TOC included the organic matter density (1.2 g/cm3), matrix density (2.73 g/cm3), porosity (8%), and the R ratio between organic matter and organic carbon (1.3).
TOC = [ ( 100 ρ o ) ( ρ 0.9922 ρ mi 0.039 ) ] / [ R ρ ( ρ o 1.135 ρ mi + 0.675 ) ]
ρ mi = ρ m ( 1 ϕ ) + ρ w ϕ
Figure 7 and Table 2 present a comparison of TOC results given by the Schmoker’s model and the updated model. The root mean square error (RMSE) was employed to evaluate the performance of these two models. The results showed that the updated model had a better estimation performance than Schmoker’s model, since the RMSE of the updated model was 0.983, which was 62% less than the RMSE value of the Schmoker’s model (2.572). In the TOC estimation of the upper Eagle Ford formation, the RMSE of the updated model was 53% lower than that of the Schmoker’s model. Meanwhile, the RMSE of the updated model was 64% lower than that of the Schmoker’s model in the lower Eagle Ford formation, showing that the updated model had a higher accuracy than the Schmoker’s model in the lower Eagle Ford.

7. Conclusions

An updated model was developed in this study for predicting TOC from bulk density data. The results can be used in the evaluation of source rocks, especially in pyrite-rich formations. The following main conclusions have been drawn:
  • Based on the Rock-Eval experimental results, the Eagle Ford samples in this study were in the post-mature zone. The samples were very good to excellent source rocks with fair to good potential for oil and gas generation.
  • There were cyclic changes in Fe and S concentrations, as well as in the pyrite content, corresponding to the trend of gamma-ray log and reflecting changes in degrees of anoxia. A positive linear relationship between pyrite and TOC in the Eagle Ford Shale was identified.
  • In the updated model for estimating TOC, pyrite content and organic porosity were taken into consideration. The shale rock was divided into five constituent parts, including organic pores, solid organic matter, pyrite, inorganic pores, and rock matrix without pyrite.
  • Comparison between the TOC results calculated from the two models showed that the updated model had a better estimation performance than Schmoker’s model, as reflected by reduced RMSE.

Acknowledgments

We are grateful for the support from Statoil for their help in providing core samples and relevant data. We would also like to thank Yinfeng Xu for her help with the XRD, XRF, and pyrolysis experiments.

Author Contributions

M.M. and D.B. conceived and designed the experiments; S.J. performed the experiments and drafted the paper; J.L. revised the paper.

Conflicts of Interest

The authors declare no conflict of interest.

Nomenclature

Rratio of weight of organic matter to weight of organic carbon, dimensionless
Vkvolume fraction of organic matter in rock sample, dimensionless
Vnkvolume fraction of inorganic parts without pyrite in rock sample, dimensionless
Vpyvolume fraction of pyrite in rock sample, dimensionless
Wpyweight percent of pyrite in rock sample, dimensionless

Greek Terms

φkvolume fraction of organic pores in organic matter, dimensionless
φnkvolume fraction of inorganic pores in inorganic rock without pyrite, dimensionless
ρbbulk density, g/cm3
ρpydensity of pyrite, g/cm3
ρnkdensity of inorganic rock matrix without pyrite, g/cm3
ρkdensity of solid organic matter, g/cm3
ρhcdensity of hydrocarbon, g/cm3
ρwdensity of water, g/cm3

Appendix A

Table A1. Pyrolysis results of the Eagle Ford samples. HI—hydrogen index; OI—oxygen index; TOC—total organic carbon.
Table A1. Pyrolysis results of the Eagle Ford samples. HI—hydrogen index; OI—oxygen index; TOC—total organic carbon.
FormationDepth (m)S1
(mg/g)
S2
(mg/g)
TmaxHIOITOC (%)Mineral Carbon
Upper Eagle Ford Shale13,6121.961.34544882.717.26
13,613.332.311.514635672.719.1
13,614.422.750.9946740102.459.05
13,615.672.092.194725763.817.21
13,616.753.392.564766563.957.29
Lower Eagle Ford Shale13,792.086.113.14875435.697.93
13,792.796.122.724744346.275.81
13,793.638.363.324774856.975.75
13,794.336.693.294825046.557.21
13,7956.413.624845037.186.13
13,795.465.792.884774147.035.73
13,7966.253.674845137.236.23
13,796.57.273.614774857.56.31
13,797.386.853.044744247.235.8
13,798.586.793.524794647.66.32
13,799.335.092.434716243.92.81
13,800.176.531.754734663.798.96
13,810.175.863.064773927.835.77
13,812.587.043.54784338.146.58
13,8135.622.584816064.279.75
13,813.677.222.524775134.918.9
13,813.928.552.254785064.529.7
13,815.56.662.194754554.869.01
13,816.427.593.184805555.837.6
13,817.337.523.224804746.96.94
13,817.836.513.474814647.556.01
13,818.676.273.134754247.485.2
13,8197.423.334784747.065.66
13,819.756.6334485655.327.59
13,820.255.391.94694344.438.28
13,821.253.981.894644674.078.2
Buda Limestone Formation13,907.251.010.924573442.742.23
13,908.253.51.564793344.755.25
13,9100.430.2643557630.4610.35
13,915.830.240.1742644560.3911.16
13,9170.250.16422551210.2910.68
13,9180.780.74446103600.729.84

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Figure 1. Modified van Krevelen diagram of the Eagle Ford Shale samples.
Figure 1. Modified van Krevelen diagram of the Eagle Ford Shale samples.
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Figure 2. Source rock potential and maturation of the Eagle Ford (EF) Shale. (a) Plot of total organic carbon (TOC) versus petroleum potential; (b) plot of production index versus Tmax.
Figure 2. Source rock potential and maturation of the Eagle Ford (EF) Shale. (a) Plot of total organic carbon (TOC) versus petroleum potential; (b) plot of production index versus Tmax.
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Figure 3. Correlation between Fe and S concentrations in the Eagle Ford Shale (depth ranges from 13,790 ft to 13,825 ft).
Figure 3. Correlation between Fe and S concentrations in the Eagle Ford Shale (depth ranges from 13,790 ft to 13,825 ft).
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Figure 4. Changes of Fe and S concentrations, pyrite content, and residual S, corresponding to the gamma ray intensity changes in the Eagle Ford Shale (depth ranges from 13,790 ft to 13,825 ft). XRF—X-ray fluorescence.
Figure 4. Changes of Fe and S concentrations, pyrite content, and residual S, corresponding to the gamma ray intensity changes in the Eagle Ford Shale (depth ranges from 13,790 ft to 13,825 ft). XRF—X-ray fluorescence.
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Figure 5. Positive linear relationship between pyrite and TOC in the Eagle Ford Shale.
Figure 5. Positive linear relationship between pyrite and TOC in the Eagle Ford Shale.
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Figure 6. Petrophysical model of the shale formation.
Figure 6. Petrophysical model of the shale formation.
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Figure 7. Comparison between the updated model and Schmoker’s model.
Figure 7. Comparison between the updated model and Schmoker’s model.
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Table 1. Summary of log-based total organic carbon (TOC) estimation methods.
Table 1. Summary of log-based total organic carbon (TOC) estimation methods.
CategoriesMethodExplanations References
Single-well log methods(1) Natural Gamma-Ray LogThis is the earliest way to identify source rocks from well logs. Quantification of TOC using only the gamma-ray log leads to high levels of uncertainty.[2,3]
(2) Spectral Gamma-Ray LogThis reflects the amounts of uranium and potassium in the rock. The relationship between spectral gamma-ray and TOC can be inconsistent.[4,5,6]
(3) Density Log This method involves the development of petrophysical models of shale formations and associated equations relating TOC and bulk density. [7,8,9,10,11]
Multi-well logs methods(4) Clay IndicatorThis method overlays the scaled clay indicator curve (difference of neutron and density porosities) on the gamma-ray log.[12]
(5) ΔlogR and Revised ΔlogR MethodThis method is widely used in shale formation evaluation. It combines the porosity log with resistivity log data and takes maturation into consideration.[13,14,15]
(6) Multivariate FittingIn this method, linear relationships between TOC and various petrophysical log data are identified. Although generally accurate for the formation of interest, the results are not transferable to other shale formations.[16,17]
(7) Artificial Intelligence TechniqueThis method examines nonlinear relationships between TOC and well log data. This technique requires a large database and heavy computational work.[18]
Table 2. Root mean square error (RMSE) analysis of TOC estimations based on Schmoker’s model and the updated model.
Table 2. Root mean square error (RMSE) analysis of TOC estimations based on Schmoker’s model and the updated model.
FormationSchmoker’s ModelUpdated Model
Upper Eagle Ford1.6200.762
Lower Eagle Ford3.0151.098
Eagle Ford2.5720.983

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Jiang, S.; Mokhtari, M.; Borrok, D.; Lee, J. Improving the Total Organic Carbon Estimation of the Eagle Ford Shale with Density Logs by Considering the Effect of Pyrite. Minerals 2018, 8, 154. https://doi.org/10.3390/min8040154

AMA Style

Jiang S, Mokhtari M, Borrok D, Lee J. Improving the Total Organic Carbon Estimation of the Eagle Ford Shale with Density Logs by Considering the Effect of Pyrite. Minerals. 2018; 8(4):154. https://doi.org/10.3390/min8040154

Chicago/Turabian Style

Jiang, Shuxian, Mehdi Mokhtari, David Borrok, and Jim Lee. 2018. "Improving the Total Organic Carbon Estimation of the Eagle Ford Shale with Density Logs by Considering the Effect of Pyrite" Minerals 8, no. 4: 154. https://doi.org/10.3390/min8040154

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