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Article

Measurement Uncertainty and Risk of False Compliance Assessment Applied to Carbon Isotopic Analyses in Natural Gas Exploratory Evaluation

by
Fabiano Galdino Leal
1,
Alexandre de Andrade Ferreira
1,
Gabriel Moraes Silva
2,
Tulio Alves Freire
1,
Marcelo Ribeiro Costa
1,
Erica Tavares de Morais
1,
Jarbas Vicente Poley Guzzo
1 and
Elcio Cruz de Oliveira
3,4,*
1
Research Center, Petrobras S.A., Rio de Janeiro 21941-915, Brazil
2
Center for Energy Resources Engineering, Department of Chemical and Biochemical Engineering, Technical University of Denmark, 2800 Kongens Lyngby, Denmark
3
Postgraduate Programme in Metrology, Pontifical Catholic University of Rio de Janeiro, Rio de Janeiro 22451-900, Brazil
4
Land Transportation and Storage, Measurement and Product Inventory Management, Logistics, Petrobras S.A., Rio de Janeiro 20231-030, Brazil
*
Author to whom correspondence should be addressed.
Molecules 2024, 29(13), 3065; https://doi.org/10.3390/molecules29133065
Submission received: 26 May 2024 / Revised: 22 June 2024 / Accepted: 25 June 2024 / Published: 27 June 2024
(This article belongs to the Special Issue Applications of Stable Isotope Analysis)

Abstract

:
The concept of uncertainty in an isotopic analysis is not uniform in the scientific community worldwide and can compromise the risk of false compliance assessment applied to carbon isotopic analyses in natural gas exploratory evaluation. In this work, we demonstrated a way to calculate one of the main sources of this uncertainty, which is underestimated in most studies focusing on gas analysis: the δ13C calculation itself is primarily based on the raw analytical data. The carbon isotopic composition of methane, ethane, propane, and CO2 was measured. After a detailed mathematical treatment, the corresponding expanded uncertainties for each analyte were calculated. Next, for the systematic isotopic characterization of the two gas standards, we calculated the standard uncertainty, intermediary precision, combined standard uncertainty, and finally, the expanded uncertainty for methane, ethane, propane, and CO2. We have found an expanded uncertainty value of 1.8‰ for all compounds, except for propane, where a value of 1.6‰ was obtained. The expanded uncertainty values calculated with the approach shown in this study reveal that the error arising from the application of delta calculation algorithms cannot be neglected, and the obtained values are higher than 0.5‰, usually considered as the accepted uncertainty associated with the GC-IRMS analyses. Finally, based on the use of uncertainty information to evaluate the risk of false compliance, the lower and upper acceptance limits for the carbon isotopic analysis of methane in natural gas are calculated, considering the exploratory limits between −55‰ and −50‰: (i) for the underestimated current uncertainty of 0.5‰, the lower and upper acceptance limits, respectively, are −54.6‰ and −50.4‰; and (ii) for the proposed realistic uncertainty of 1.8‰, the lower and upper acceptance limits would be more restrictive; i.e., −53.5‰ and −51.5‰, respectively.

Graphical Abstract

1. Introduction

The establishment of quality control protocols for a given analytical technique is crucial to guarantee the reliability of any provided information. This control can be translated into any systematic action that contributes to the increase of confidence in the analytical results and should be consistently associated with cost optimization as part of a robust laboratory management program [1]. Regarding the need to increase the reliability of analytical results, uncertainty measurement is one of the main metrological tools commonly associated with this requirement. Its application in Brazil is based on the international standard for the constant monitoring of data quality by national laboratories [2].
However, when it comes to the isotopic characterization of materials, the concept of uncertainty can be misleading, which can compromise assessments in forensic applications [3]. Most of the uncertainties presented/measured/inferred in previous publications are, in fact, only analytical uncertainties, strictly comprising sample preparation and analysis. For example, in work by Bulska et al. (2015) [4] and Bréas et al. (2007) [5], the authors calculate the expanded uncertainty (“quantity defining an interval about the result of a measurement that may be expected to encompass a large fraction of the distribution of values that could reasonably be attributed to the measurand” [6]) of the technique, but only analytical factors are included, without considering the uncertainty arising from the calculation procedure. This trend is widespread in the stable isotope literature, being reproduced even by manufacturers when reporting “uncertainties” from standards, which are actually experimental deviations from successive repetitions. When conducting a series of repeated analyses, only the variation of the steps between the sample and the integration is obtained. The uncertainty arising from the calculation steps of the δ 13 C values, which express the abundance of the isotope variation of the 13C in a sample, in parts per thousand, and the correction of these values, is poorly discussed. Only a few studies have been dedicated to the evaluation of the expanded uncertainty, considering that the calculation is a source of error as well. Most of the studies transmit the idea that the uncertainty of the analysis is limited to the technique itself, which is imprecise. They do not consider the corrections applied a posteriori to the measurement. This is because these corrections are not effectively introduced in the quality control protocols of the laboratories, as they do not need and/or cannot control the variation of the uncertainty from this source. A few examples of reported uncertainty values from the literature, in several matrices, are shown in Table 1. The range of these uncertainties is extensive, although the different analyzed matrices should be taken into consideration.
This variation can also be related to the calculation method, which will be further discussed. Regarding the isotopic characterization of gases (particularly light hydrocarbons-C1 to C3-and CO2, present in natural gases), there is a broad application related to petroleum exploration and production activities: the origin of these gases (biogenic versus thermogenic), correlate with possible source rocks, the degree of relative thermal evolution, and the possible secondary changes caused by biodegradation, secondary migration, secondary cracking, mixtures, or partial escape from accumulations [31]. This scenario can be more difficult to map when the measured value is overlapped between and close to the lower and upper acceptance limits and/or the measurement uncertainty is large when compared to these acceptance limits. Based on these assumptions, there may be an increased risk of false compliance assessment [32,33]. In other words, when a measurement result accompanied by its expanded uncertainty partially overlap the acceptance limits, the risk of false decisions is increased.
For diagnoses to be valid and support the geochemical interpretations about the gases associated with evaluating a particular petroleum system, it is crucial that the isotopic results are as reliable as possible and have an associated uncertainty compatible with those interpretations. Thus, from this uncertainty information, using the guard bands concept, lower and upper acceptance limits can be proposed to guarantee that there is no risk of false compliance for the carbon isotopic analysis in natural gas—the aim of this study.

2. Materials and Methods

In the present study, we have calculated the measurement uncertainty associated with the carbon isotope ratios determination of light hydrocarbons (C1–C3) and CO2 in natural gas samples. We first describe, step by step, all the calculations involved in the uncertainty determination, starting with the ratio between the peak areas of each compound present in the analyzed mixtures until the carbon isotopic ratio of these compounds. We also show the approach used to calculate the uncertainty and describe the analytical method used to analyze the gas samples.

2.1. Laboratory Method (GC-IRMS)

Isotope ratio mass spectrometry (IRMS) is used for the measurements of relative abundances of isotopes of an element in a particular sample in such a way that it makes possible the detection of slight differences in those abundances [34,35].
In this study, a gas chromatograph was coupled to the mass spectrometer to allow the previous separation of the components of the gas samples before the conversion of each one to CO2 molecules (combustion process), which, in turn, are directed to the isotopic measurements on the mass spectrometer through a continuous flow of helium. In the following section, a brief description of this analytical system is presented.

2.2. Test Method

For the carbon isotope analysis of light hydrocarbons in the range of C1 to C3 and CO2, a gas chromatograph (HP 7890 model, Agilent Technologies, Santa Clara, CA, USA) was used. It was equipped with a split/splitless injector (10:1 split ratio, helium flow of 1.7 mL min−1) and a Poraplot-Q chromatographic column (10 m × 0.32 mm × 10 μm), coupled to a mass spectrometer for isotopic ratio, model DeltaV Plus (Thermo Fisher Scientific, Waltham, MA, USA), via an interface for combustion maintained at 960 °C. The injections were made manually using syringes and with sample volumes varying between 10 and 200 microliters, according to the relative concentrations of the analytes. The δ13C values were calculated concerning the international standard Vienna PeeDee Belemnite (VPDB), using a secondary standard (a natural gas sample), calibrated against a standard prepared by the USGS (United States Geological Survey, Reston, VA, USA), considered a “primary” standard in this study. CO2 was used as the reference gas. All analyses were performed in triplicate.

2.3. Mathematical Models

In this section, the algorithms involved [35] in the GC-IRMS of the carbon isotope ratios determination in natural gas samples were separated by steps.
Step 1. Calculate the isotopic ratios observed among the peak areas, measured by the mass spectrometer. For this stage, one should divide the areas of the following masses (without amplification): 45 by 44 and 46 by 44, respectively, R C O 2 45 and R 46 C O 2 ; and their respective amplifications, R 45 C O 2 o b s e r v e d and R 46 C O 2 o b s e r v e d . These values are the variables measured directly by the mass spectrometer via integrating the electronic signal obtained. Alternatively, one can also get the electronic signal measured as a function of time and use its preferred integration method to calculate the areas. The amplifications are calculated according to Equations (1) and (2), considering the amplification constants 100 and 1000/3:
R 45 C O 2 o b s e r v e d = R 45 C O 2 × 100
R 46 C O 2 o b s e r v e d = R 46 C O 2 × 1000 3
Step 2. Provide the δ 13 C value of the reference peak. In this case, if the primary standard is being calculated, this value must be adjusted until the value of δ 13 C of the standard peak (obtained in step 14), given by the manufacturer, is the desired one. In the case of a sample, the δ 13 C value of the reference peak can be previously determined based on a study with a primary standard, and one should just provide it to proceed with the calculations.
Step 3. Calculate R 13 C O 2 , the carbon isotopic ratio 13C to 12C for the reference peak, from the equation presented in the methodology for calculating the isotopic ratio, Equation (3):
R 13 C O 2 = δ 13 C 1000 + 1 × R 13 C O 2 / V P D B
where
R 13 C O 2 is the carbon isotopic ratio in CO2;
R 13 C O 2 / V P D B is the isotopic ratio of the Vienna Pee Dee Belemnite (VPDB) standard [36].
Step 4. Calculate the fractional abundances for carbon 13 and 12, respectively, 13 F and 12 F , Equations (4) and (5), for the reference peaks:
F 13 C O 2 = R 13 C O 2 R 13 C O 2 + 1
F 12 C O 2 = 1 F 13 C O 2
Step 5. Calculate the oxygen isotopic ratios of masses 17 and 18, R 17 C O 2 and R 18 C O 2 , respectively, Equations (6) and (7), for the reference peak. Again, using the same mass balances, but this time considering the values of the constants a and K and the reasons already obtained, one performs the following calculations:
R 17 C O 2 = R 45 C O 2 R 13 C O 2 2
R 18 C O 2 = R 17 C O 2 K 1 / a
where
a is the regression coefficient of the ratio between the isotopic oxygen ratios 17 and 18 of several international isotopic water standards [34];
K is a constant characteristic of the relationship between 17 R and 18 R in a terrestrial oxygen reservoir [34].
Step 6. Calculate the fractional abundances of oxygens 18, 17, and 16, respectively, F 18 C O 2 , F 17 C O 2 and F 16 C O 2 , Equations (8)–(10), for the reference peak:
F 18 C O 2 = R 18 C O 2 R 18 C O 2 + 1
F 17 C O 2 = R 17 C O 2 R 17 C O 2 + 1
F 16 C O 2 = 1 F 18 C O 2 F 17 C O 2
Step 7. Calculate the fractional abundances of isotopes of CO2, 44 to 46, respectively, F 44 C O 2 , F 45 C O 2 and F 46 C O 2 , Equations (11)–(13), for the reference peak:
F 44 C O 2 = F 12 C O 2 × F 16 C O 2 × F 16 C O 2
F 45 C O 2 = F 13 C O 2 × F 16 C O 2 × F 16 C O 2 + 2 × F 12 C O 2 × F 16 C O 2 × F 17 C O 2
F 46 C O 2 = 2 × F 12 C O 2 × F 16 C O 2 × F 18 C O 2 + 2 × F 13 C O 2 × F 16 C O 2 × F 17 C O 2 + F 12 C O 2 × F 17 C O 2 × F 17 C O 2
Step 8. Calculate r R 45 C O 2 c a l c u l a t e d and r R 46 C O 2 c a l c u l a t e d ,   ratios calculated from the given δ value for reference peak, for the reference peak. In other words, one must calculate, from the calculations performed so far, what would be the theoretical ratios obtained in Equations (1) and (2), different from what was observed. It is important to note that these calculated ratios now influence the detector amplification, Equations (14) and (15):
r R 45 C O 2 c a l c u l a t e d = F 45 C O 2 F 44 C O 2 × 100
r R 46 C O 2 c a l c u l a t e d = F 46 C O 2 F 44 C O 2 × 1000 3
At this point, one has calculated ratios for masses 45 and 46, based on the abundances and what would be the ideal for the mass balance of the system. However, initially, supporting to Step 1, the observed ratios were previously calculated by the equipment.
Step 9. Calculate the correction factors 45 f and 46 f , respectively, for the masses 45 and 46. This observed difference exists, as the experimental system is not ideal, and it is essential that this non-ideality is included in the calculations, Equations (16) and (17):
45 f = r R 45 C O 2 c a l c u l a t e d r R 45 C O 2 o b s e r v e d
46 f = r R 46 C O 2 c a l c u l a t e d r R 46 C O 2 o b s e r v e d
From the next step, the calculations are performed specifically for each peak. To provide the uncertainty for each one, we will proceed here using the methane peak just for reference, as the method is the same for any chosen peak.
Step 10. Calculate the corrected ratios, R 45 C O 2 c o r r e c t e d and R 46 C O 2 c o r r e c t e d . The compensation between the calculated and observed ratios will be included in the calculations using a correction factor, calculated as the ratio between the theoretical (numerator) and the observed (denominator), Equations (18) and (19):
R 45 C O 2 c o r r e c t e d = r R 45 C O 2 c a l c u l a t e d × 45 f 100
R 46 C O 2 c o r r e c t e d = R 46 C O 2 c a l c u l a t e d × 3 × 46 f 1000
Step 11. Using the Newton–Raphson method [37], calculate the ratio R 18 C O 2 . Before starting the calculation, one removes the influence of the detectors on the obtained reasons. From the mass balances for the ratios R, one can obtain Equation (20):
f = 3 K 2 × ( R 18 C O 2 ) 2 a + 2 K × R 45 C O 2 c o r r e c t e d × ( R 18 C O 2 ) a + 2 × R 18 C O 2 R 46 C O 2 c o r r e c t e d = 0
Note that the only unknown in Equation (20) is R 18 C O 2 . Therefore, considering that the equation tends to zero in the solution, and considering that there is only one mathematical solution, one uses the Newton–Raphson method for the calculation of R 18 C O 2 , by means of numerical analysis. For that, one has Equation (20) as the objective function (which one wants zero value). One also needs the derivative of this equation in function of the desired variable, in this case, 18 R , given by Equation (21) [34]:
f R 18 C O 2 = 3 K 2 × 2 a × ( R 18 C O 2 ) 2 a 1 + 2 K × R 45 C O 2 × a × ( R 18 C O 2 ) a 1 + 2
Thus, from an initial estimate for ( R 18 C O 2 ) a , K being the iteration number in Equation (22), the method is applied until value convergence is reached under a very low desired tolerance, e.g., 10−1, to be sure that this numerical step will not represent a significant uncertainty source for the calculation, using Equation (22):
R 18 C O 2 K + 1 = R 18 C O 2 K f K ( f / R 18 C O 2 ) K
where R 18 C O 2 K is the value of R 18 C O 2 in the current iteration, R 18 C O 2 K + 1 is the value of R to be used in the next iteration, f K is the value of the objective function in the current iteration, and the same goes for the derivative.
Step 12. Using the values of the constants a, K and R 18 C O 2 , calculate the ratio R 17 C O 2 accordingly with Equation (23):
R 17 C O 2 = K   x   ( R 18 C O 2 ) a
Step 13. Calculate 13 R , Equation (24):
R 13 C O 2 = R 45 C O 2 c o r r e c t e d 2   x   R 17 C O 2
Step 14. Finally, calculate the isotopic ratio 13 C / 12 C , Equation (25):
δ 13 C = R 13 C O 2 R 13 C O 2 / V P D B 1 × 1000

2.4. Uncertainty Evaluation

The combined standard uncertainty is calculated from the expansion of the Taylor series (law of propagation of uncertainties–LPU). Assuming that an output quantity y ^ = f b 0 , b 1 , , b n   depends on input quantities b 0 , b 1 , , b n , where each bi is described by an appropriate probability distribution, the combined standard uncertainty takes the form of Equation (26), taking into account that the quantities are correlated with each other [6]:
u y ^ 2 = i = 1 n f b i 2 u i 2 + 2 i = 1 n 1 j = i + 1 n f b i f b j u i u j r i j
The type A uncertainty contributions relevant in this study are the standard deviations of the isotopic ratios and the variability of the quantities that are not explicit in the mathematical models, such as gas sample collection pressure, cylinder temperature, reactor temperature, operator, and time. This variability is calculated as a pooled standard deviation, s p o o l e d , Equation (27) and expressed in terms of intermediate precision, whose input data come from control charts, available in the Supplementary Materials.
s p o o l e d = n 1 1 s 1 2 + n 2 1 s 2 2 + + n m 1 s m 2 n 1 + n 2 + + n k m
where ni is the size of the group and m is the number of samples. The type B uncertainty contributions relevant to this study are those related to the constants. From the effective degrees of freedom (number of terms in a sum minus the number of restrictions to the terms of the sum), the appropriate coverage factor, k, is calculated in the t-Student table, Equation (28) [6]:
υ e f f = u c 4 ( y ^ ) i = 1 n u i 4 ( y ^ ) υ i
Finally, the expanded uncertainty, U y ^ , is given by Equation (29):
U y ^ = u c y ^ × k   ( for   a   certain   level   of   confidence )
The discussed uncertainty assessment described in this section refers solely and exclusively to analytical uncertainty. The contribution of sampling uncertainty is not part of the scope of this study.

2.5. The Use of Measurement Uncertainty in the Assessment of False Compliance Risk

In recent years, the use of uncertainty information in conformity assessment has been widespread in several areas of engineering and science, such as environment pollution [38,39], fuels [40,41,42], biofuels [43], industrial practices [44], drug and medicine analyses [45], pharmaceutical products [46,47], microbiology [48], and radiopharmaceutical activity [49,50].
A robust and updated approach to solve this issue is the use of guard bands (g) [33] that define rejection zones from delineated as specification limit L plus a value g (1.64 × standard uncertainty for a significance level of 5%). This statistical methodology can be very useful when there is/are partial overlap(s) between the measurement uncertainty and the lower and upper acceptance limits, Figure 1.
This statistical routine can be easily implemented using the Monte Carlo method (MCM), which is based on the generation of random data with known probability distributions.

3. Experimental 3.20 × 10−6

The initial input data for the calculation of uncertainty considered the isotopic analyses of the secondary standard (Supplementary Materials) and were based on:
(i)
Area values and experimental historical data of standard deviations (combined standard uncertainties) of isotopic ratios, u C R 45 C O 2 and u C R 46 C O 2 , Table 2:
(ii)
Study of variability in terms of intermediate precision whose data come from control charts in the period of July and August 2019. The standard deviations grouped by three different gas cylinders are shown in Table 3:
(iii)
Constants, Table 4:

4. Results and Discussion

Here, after detailing the calculation of uncertainties, this study compared these values with those in the literature. Finally, the risk of false conformity assessment applied to the isotopic analysis of C1 carbon in the exploratory assessment of natural gas was presented.

4.1. Calculation of Expanded Uncertainties by LPU (Law of Propagation of Uncertainties)

To verify the expanded uncertainty, a second internal secondary standard was analyzed, stored in a B1 cylinder of a mixture of 70% mol/mol of methane with 30% mol/mol of ethane, supplied by the company Air Liquide.
The first step is the calculation of the standard uncertainty of the ratios of the CO2 experimental areas:
u C R 45 C O 2 R 45 C O 2 2 = u A 45 C O 2 A 45 C O 2 2 + u A 44 C O 2 A 44 C O 2 2
u C R 45 C O 2 = 4.69821 × 10 6
u C r R 45 C O 2 = 100 × u 45 R = 100 × 4.69821 × 10 6 = 0.000469821
u C R 46 C O 2 R 46 C O 2 2 = u A 46 C O 2 A 46 C O 2 2 + u A 44 C O 2 A 44 C O 2 2
u C R 46 C O 2 = 3.26629 × 10 6
u C r R 46 C O 2 = 1000 3 × u R 46 C O 2 = 1000 3 × 3.26629 × 10 6 = 0.001088765
The next step is to calculate the combined standard uncertainty of R 13 C O 2 , u c R 13 C O 2 from the available information of δ 13 C (certificate) and the V P D B R value from the literature. δ 13 C value for this standard was −34.4 ± 0.00002, k = 2, for a confidence level of 95.4%.
u c 2 R 13 C O 2 = R 13 C O 2 δ 13 C × u δ 13 C 2 + R 13 C O 2 R 13 C O 2 / V P D B × u R 13 C O 2 / V P D B 2
u c 2 R 13 C O 2 = R 13 C O 2 / V P D B 1000 × u δ 13 C 2 + δ 13 C 1000 × u R 13 C O 2 / V P D B 2
u c R 13 C O 2 = 0.0111376 1000 × 0.0001 2 + 34.4 1000 × 0.0000016 2 = 1.54496 × 10 6
Calculation of standard uncertainties for carbon abundances, u c 12 C   and u c 13 C :
u c A 13 C O 2 = u R 13 C O 2 R 13 C O 2 + 1 2 = 1.54496 E 06 0.010795601 + 1 2 = 1.51213 E × 10 6 = u c A 12 C O 2
Calculation of standard uncertainties for oxygen ratios: u c R 17 C O 2   and u c R 18 C O 2 :
u c 2 R 17 C O 2 = R 17 C O 2 R 45 C O 2 × u R 45 C O 2 2 + R 17 C O 2 R 13 C O 2 × u R 13 C O 2 2
u c 2 R 17 C O 2 = u R 45 C O 2 2 2 + u R 13 C O 2 2 2
u c R 17 C O 2 = 4.69821 × 10 6 2 2 + 1.51213 × 10 6 2 2 = 2.47286 × 10 6
u c 2 R 18 C O 2 = R 18 C O 2 R 17 C O 2 × u R 17 C O 2 2 + R 18 C O 2 K × u K 2 + R 18 C O 2 a × u a 2
u c 2 R 18 C O 2 = R 17 C O 2 K 1 a a × 17 R × u R 17 C O 2 2 + R 17 C O 2 K 1 a a × K × u K 2 + R 17 C O 2 K 1 a × l n R 17 C O 2 K a 2 × u a 2
u c R 18 C O 2 = 3.45011 × 10 4 0.010272737 1 0.5279 0.5279 × 3.45011 × 10 4 × 2.47286 × 10 6 2 + 3.45011 × 10 4 0.010272737 1 0.5279 0.5279 × 0.010272737 × 0.00004103 2 + 3.45011 × 10 4 0.010272737 1 0.5279 × l n 3.45011 × 10 4 0.010272737 0.5279 2 × 0.0001 2 = 2.6899 × 10 5
Calculation of standard uncertainties for carbon abundances, u c F 16 C O 2 ,   u c F 17 C O 2 and u c F 18 C O 2 :
u c F 18 C O 2 = u R 18 C O 2 18 R + 1 2 = 2.6899 × 10 5 0.001488694 + 1 2 = 2.68023 × 10 5
u c F 17 C O 2 = u R 17 C O 2 R 17 C O 2 + 1 2 = 2.47286 × 10 6 3.45011 × 10 4 + 1 2 = 2.47105 × 10 6
u c 2 F 16 C O 2 = u c 2 F 18 C O 2 + u c 2 F 17 C O 2
u c F 16 C O 2 = 2.68023 × 10 5 2 + 2.47105 × 10 6 2 = 2.6916 × 10 5
Calculation of standard uncertainties for carbon abundances, u c F 44 C O 2 ,   u c F 45 C O 2 and u c F 46 C O 2 :
u c 2 F 44 C O 2 = F 44 C O 2 F 12 C O 2 × u 12 F 2 + F 44 C O 2 F 16 C O 2 × u F 16 C O 2 2
u c 2 F 44 C O 2 = ( F 44 C O 2 ) 2 × u F 12 C O 2 2 + F 12 C O 2 × 2 × F 16 C O 2 × u F 16 C O 2 2
u c F 44 C O 2 = 0.998043049 2 × 1.51213 × 10 6 2 + 0.98931969915 × 2 × 0.998043049 × 2.6916 × 10 5 2 = 5.31653 × 10 5
u c 2 F 45 C O 2 = F 45 C O 2 F 13 C O 2 × u F 13 C O 2 2 + F 45 C O 2 F 16 C O 2 × u 16 F 2 + F 45 C O 2 F 12 C O 2 × u F 12 C O 2 2 + F 45 C O 2 F 17 C O 2 × u F 17 C O 2 2
u c 2 F 45 C O 2 = ( F 16 C O 2 ) 2 × u 13 F 2 + 13 F × 2 × 16 F + 2 × 12 F × 17 F × u 16 F 2 + 2 × 16 F × 17 F × u 12 F 2 + 2 × 12 F × 16 F × u 17 F 2
u c 2 F 45 C O 2 = 0.998043049 2 × 1.51213 × 10 6 2 + ( 0.01068030085 × 2 × 0.998043049 + 2 × 0.98931969915 × 0.000344892 × 2.6916 × 10 5 ) 2 + 2 × 0.998043049 × 0.000344892 × 1.51213 × 10 6 2 + 2 × 0.98931969915 × 0.998043049 × 2.47105 × 10 6 2
u c F 45 C O 2 = 5.14008 × 10 6
u c 2 F 46 C O 2 = F 46 C O 2 F 12 C O 2 × u F 12 C O 2 2 + F 46 C O 2 F 16 C O 2 × u F 16 C O 2 2 + F 46 C O 2 F 18 C O 2 × u F 18 C O 2 2 + F 46 C O 2 F 13 C O 2 × u F 13 C O 2 2 + F 46 C O 2 F 17 C O 2 × u F 17 C O 2 2
u c 2 F 46 C O 2 = 2 × F 16 C O 2 × F 18 C O 2 × ( F 44 C O 2 ) 2 × u F 12 C O 2 2 + 2 × F 12 C O 2 × F 18 C O 2 + 2 × F 13 C O 2 × F 17 C O 2 × u F 16 C O 2 2 + 2 × F 12 C O 2 × F 16 C O 2 × u F 18 C O 2 2 + 2 × F 16 C O 2 × F 17 C O 2 × u F 13 C O 2 2 + 2 × F 13 C O 2 × F 16 C O 2 + F 12 C O 2 × 2 × F 17 C O 2 × u F 17 C O 2 2
u c 2 F 46 C O 2 = 2 × 0.998043049 × 1.61206 × 10 3 + 0.000344892 2 × 1.51213 × 10 6 2 + 2 × 0.98931969915 × 1.61206 × 10 3 + 2 × 0.010680301 × 0.000344892 × 9.27125 × 10 5 2 + 2 × 0.98931969915 × 0.998168627 × 2.1887 × 10 5 2 + 2 × 0.998043049 × 0.000344892 × 1.51213 × 10 6 2 + 2 × 0.000344892 × 0.998043049 + 0.98931969915 × 2 × 0.000344892 × 2.47105 × 10 6 2 u c F 46 C O 2 = 5.29197 × 10 5
Calculation of standard uncertainties for theoretical CO2 areas, u c r R 44 C O 2 and u c r R 46 C O 2 :
u C r R 45 C O 2 r R 45 C O 2 2 = u F 45 C O 2 F 45 C O 2 2 + u F 44 C O 2 F 44 C O 2 2
u C r R 45 C O 2 1.1486736882 2 = 5.14008 × 10 6 0.011319621 2 + 5.29197 × 10 5 0.985451388 2
u C r R 45 C O 2 = 0.0005254622
u C r R 46 C O 2 r R 46 C O 2 2 = u F 46 C O 2 F 46 C O 2 2 + u F 44 C O 2 F 44 C O 2 2
u C r R 46 C O 2 1.079340176 2 = 5.29197 × 10 5 0.003190912 2 + 5.31653 × 10 5 0.985451388 2
u C r R 46 C O 2 = 0.017907133
Calculation of standard uncertainties for CO2 correction factors, u c 45 f and u c 46 f :
u C 45 f 45 f 2 = u r R 46 C O 2 c a l c u l a t e d r R 46 C O 2 c a l c u l a t e d 2 + u r R 46 C O 2 o b s e r v e d r R 46 C O 2 o b s e r v e d 2
u C 45 f 1.000097037 2 = 0.0005254622 1.1486736882 2 + 0.000469821 1.148562235 2
u C 45 f = 0.000613729
u C 46 f 46 f 2 = u r R 46 C O 2 c a l c u l a t e d r R 46 C O 2 c a l c u l a t e d 2 + u r R 46 C O 2 o b s e r v e d r R 46 C O 2 o b s e r v e d 2
u C 46 f 0.779815704 2 = 0.017907133 1.079340176 2 + 0.001088765 1.384096487 2
u C 46 f = 0.012955871
Calculation of standard uncertainties for corrected CO2 areas, u C R 45 C O 2 c o r r e c t e d and u C R 46 C O 2 c o r r e c t e d , specifically for methane:
u C R 45 C O 2 c o r r e c t e d R 45 C O 2 c o r r e c t e d 2 = u r R 45 C O 2 c a l c u l a t e d r R 45 C O 2 c a l c u l a t e d 2 + u 45 f 45 f 2
u C R 45 C O 2 c o r r e c t e d 0.011413965 2 = 0.000535413 1.141285712 2 + 0.000613729 1.000097037 2
u C R 45 C O 2 c o r r e c t e d = 8.81674 × 10 6
u C R 46 C O 2 c o r r e c t e d R 46 C O 2 c o r r e c t e d 2 = u r R 46 C O 2 c a l c u l a t e d r R 46 C O 2 c a l c u l a t e d 2 + u 46 f 46 f 2
u C R 46 C O 2 c o r r e c t e d 0.003083435 2 = 0.001013351 1.318018532 2 + 0.012955871 0.779815704 2
u C R 46 C O 2 c o r r e c t e d = 5.12965 × 10 5
Calculation of standard uncertainty for corrected oxygen ratios, u c 18 R :
u c R 18 C O 2 = 0.000001 % × R 18 C O 2 = 0.00000001 × 0.001538049 = 1.53805 × 10 11
Calculation of the standard uncertainty of 17 R :
u c 2 R 17 C O 2 = R 17 C O 2 K × u K 2 + R 17 C O 2 R 18 C O 2 × u R 17 C O 2 2 + R 17 C O 2 a × u a 2
u c 2 R 17 C O 2 = ( R 18 C O 2 ) a × u K 2 + a   x   K   x   ( R 18 C O 2 ) a 1 × u R 18 C O 2 2 + K × ( R 18 C O 2 ) a × l n R 18 C O 2 × u a 2
u c 2 R 17 C O 2 = 0.001538049 0.5279 × 0.00004103 2 + 0.5279 × 0.010272737 × 0.001538049 0.5279 1 × 1.53805 × 10 11 2 + 0.010272737 × 0.001538049 0.5279 × l n 0.001538049 × 0.0001 2 u c R 17 C O 2 = 1.44114 × 10 6
Calculation of the standard uncertainty of R 13 C O 2 :
u c 2 R 13 C O 2 = u R 45 C O 2 c o r r e c t e d 2 + 2 × u R 17 C O 2 2
u c 2 R 13 C O 2 = 8.81674 × 10 6 2 + 2 × 1.36063 × 10 7 2
u c R 13 C O 2 = 9.27591 × 10 6  
Calculation of the standard uncertainty δ 13 C :
u c 2 δ 13 C = δ 13 C R 13 C O 2 × u R 13 C O 2 2 + δ 13 C R 13 C O 2 / V P D B × u R 13 C O 2 / V P D B 2
u c 2 δ 13 C = 1000 R 13 C O 2 / V P D B × u R 13 C O 2 2 + 1000 × 13 R ( R 13 C O 2 V P D B ) 2 × u R 13 C O 2 / V P D B 2
u c 2 δ 13 C = 1000 0.0111376 × 9.27591 × 10 6 2 + 1000 × 0.010741425 0.0111376 2 × 1.60000 × 10 6 2
u c δ 13 C = 0.844
From the information in Table 2, the same calculation is performed for ethane, propane, and CO2, Table 5:
The next step is to combine the standard uncertainties of the mathematical models, Table 5, with their respective intermediate precision, Table 3. As predicted in the literature, this latter contribution, the measurement of dispersion, expressed as intermediate precision, is one of the most relevant contributions to the measurement uncertainty [51]. These standard uncertainty values are the final combined standard uncertainties, Table 6.
Finally, the expanded uncertainties are calculated based on Equation (29) for a 95.45% confidence level when considering infinite degrees of freedom (k = 2), Equation (27). These uncertainties are shown in Table 7, associated with the δ13C values of the compounds of interest.
U δ 13 C = u c δ 13 C × k
The uncertainty results shown in Table 7 are more significant than that of 0.5‰, historically recommended by the manufacturer of the mass spectrometer for the analytical technique considered in this study. This relative increase suggests greater caution in geochemical interpretations that consider carbon isotopic ratio values using the compounds previously listed.

4.2. Comparison with Literature Data

It is important to note that the results of the calculated uncertainties presented in this report, Table 7, comprise two main contributions: one from the equipment and the established procedures, and the other from the calculation procedures outlined in this study.
Regarding natural gas analyses, it is common to spread the information that the measurement uncertainty for carbon isotopes in a natural gas matrix is around 0.5‰. This information is not exactly incorrect, but it is based on an incomplete approach. In fact, the experience of several laboratories shows that this is a reasonable value for a natural gas sample matrix when it is carried out in modern equipment, i.e., gas chromatography–isotope ratio mass spectrometer (GC-IRMS) for the analysis of carbon isotopes performed under minimal quality control conditions. The lack of reliability of this information derives from the fact that this uncertainty ignores a set of error sources that are propagated only after instrumental analysis, which are numerical corrections applied to the measured result.
In many case studies presented in the literature, gases interpreted to have the same origin and/or the same thermal maturity have, at the same time, a difference in their carbon isotopic composition for C1 greater than 0.5‰. In the analysis and interpretation of large isotopic gas data sets, interlaboratory variability and other uncertainties (for example, related to gas sampling and handling) are considered to have the least influence on the determination of general isotopic composition trends associated with the various natural geochemical processes [52]. The uncertainty in measuring the carbon isotopic ratios presented here suggests that the geochemical approach generally recognizes a compositional variability that is beyond the commonly reported 0.5‰ value.
In a general way for the considered technique, the possible variabilities that contribute to the analytical uncertainties can be summarized in the following topics [18]: (i) sample: heterogeneity, matrix variations; (ii) sample preparation: weighing (except for gases), extraction, derivatization, collection, storage; (iii) instrumental analysis: conversion to CO2, chromatographic separation, transfer through capillaries and valves; (iv) data collection by the equipment: ion current, electronic fluctuations, ion current ratios; (v) integration: software problems, background, time change, baseline choice; (vi) calculation of δ values: correction for 17O; (vii) correction on δ values: blank correction, linearity, electronic drift, memory effect; and (viii) scale calibration: adjustment in control chart, normalization procedures.
Comparing the expanded uncertainty calculated in this study (1.7–1.8‰) with the others shown in Table 1, there are clearly higher and lower values. This divergence should be seen with caution since it is not part of a systematic study and has no basis to clarify the differences found, as they may have different sources, such as intrinsic differences between matrices and the calculation methods used by each author, which is fundamental to understand for isotopes and may even differ for instruments of different manufacturers. However, it is worth noting that, of all the studies that applied the expanded methodology and that explicitly reported the inclusion of the uncertainty of the correction methods, only two had the greatest uncertainties found below 1.0‰. It is also important to note that there are other corrections that were not applied in this study, such as the blank corrections or the electronic drift. Their contributions to the accuracy and precision of the work should be appreciated in the future.
The correction method related to the contribution of 17O, highlighted in this study, has already been reviewed by several authors [53,54]. There are basically two types of correction: those based on Craig’s method (1957) [55], further developed by Santrock (1985) [31], called SSH, and the method proposed by IUPAC [34]. A review of these methods, including the problems found in the correction approach, is given by [34,53]. The authors detail the limitations of the SSH model and why a linear approximation method would be superior. However, commercial software does not adopt this IUPAC directive—the most recent methodology—and continues to apply the calculation method based on Craig (1957) [55] and Santrock et al. (1985) [35], the oldest method, which apparently introduces greater errors. The discussion of all those methods is beyond the scope of this work. However, this fact must be considered in future studies.
It should also be pointed out that the continuous flow (CF) and dual inlet techniques, both widely used in the literature and in several laboratories currently, have important differences between them. The former leads to higher background values, in addition to other problems, such as the requirement for a reference gas with higher pressure and more residual water in the system, degrading the reproducibility of the results. However, it has advantages that compensate for such limitations, such as the greater ease in the preparation step and injection of samples, the ability to measure more compounds from a complex mixture in the same injection, and the relatively lower required amounts of sample [10,56,57].
The discussions raised so far can be summarized in the following topics: (i) there is no uniformity in the presentation of stable isotope results; (ii) the matrices differences should be discussed considering a physical–chemical approach in such a way that uncertainties, in general, could be better understood and thus lowered; (iii) despite repeated attempts by international bodies such as IUPAC, there is still no consensus about the best 17O correction method; (iv) isotopic corrections are not applied in a standardized way. Issues like linearity correction, blank correction, and normalization are applied without clear criteria. Steps that could be followed regardless of the considered isotope technique or analytical laboratory; and (v) the uncertainty arising from calculations and subsequent corrections is often neglected, which does not directly affect the quality control of the analysis laboratory (when not included in the routine), but affects the derived application, such as food quality control or geological interpretation.
From the evaluation and comparison of the results obtained in this study with the ones reported in the literature, one can conclude that the uncertainty values and methodology presented here are reasonable and should be considered when used for interpretations of any nature.
The uncertainty range in the measurement of the carbon isotopic composition in gases (e.g., 1.8‰ for C1), although considerably more significant than the one usually reported in the geochemical literature (0.5‰), might have a limited impact on the set of interpretations, generally supported by general trends in the variation of isotopic compositions from many data and case studies.
The typically recognized compositional fields characterized by natural gases from different origins (biogenic, thermogenic, and abiotic) are usually distinguished by their typical isotopic range of compositions. However, it is known that there is an overlapping of isotopic values, and some limits are poorly defined from the typical biogenic (e.g., 70‰), thermogenic (e.g., 40‰) or abiotic (e.g., 10‰) gas compositions (e.g., C1 in Etiope and Lollar, 2013) [58]. In these scenarios, either the diagnosis of the origin or the estimates of mixtures between different end members would be affected by such an uncertainty range. In the case of studies involving fractionation factors (e.g., equilibrium temperature), those biases would be more noticeable, making the application tool useless. The uncertainty value of 1.8‰ (for C1) should be considered in the geochemical analysis and interpretation, notably in the study of specific cases, such as in areas of exploratory boundaries, where the compositional background of gas occurrences are still unknown or when isotopic measurements plot in intermediate domains, e.g., between −55‰ and −50‰, the approximate limit between biogenic and thermogenic gases [59,60]. In these scenarios, the diagnosis of origin and calculation of the approximate proportions of each contribution can be affected by such an uncertainty range.

4.3. Risk of False Compliance Assessment Applied to C1 Carbon Isotopic Analysis in Natural Gas Exploratory Evaluation

Here, the information on the measurement uncertainty is used to assess the compliance/non-compliance with the specification. In this study, both methane expanded uncertainties, the current value of 0.5‰ and the proposed value of 1.8‰ (Table 7), are divided by their respective coverage factor and multiplied by 1.64, considering a significance level of 5%.
Histograms with the mean value, its respective uncertainty, guard bands, and lower and upper acceptance limits were calculated. This study used Monte Carlo simulations with 100,000 pseudorandom values for carbon isotopic analysis of methane, and the risk of a false acceptance was assessed (Figure 2).
To guarantee that there were no risks of false compliance assessment applied to carbon isotopic analyses in natural gas exploratory limits, the lower and upper acceptance limits were calculated based on the band guard approach. Considering the underestimated current uncertainty of 0.5‰, the lower and upper acceptance limits were, respectively, −54.6‰ and −50.4‰, Figure 2a; on the other hand, using the proposed realistic uncertainty of 1.8‰, the lower and upper acceptance limits must be more restrictive, i.e., −53.5‰ and −51.5‰, Figure 2b respectively.

5. Conclusions

It was possible to increase metrological reliability by means of the determination of the measurement uncertainty associated with the isotopic values reported in this study. It is worth mentioning that the aspects related to (i) gas sampling (in the field), (ii) storage in the lab, (iii) manipulation of the samples by different technicians, and (iv) software operation and data processing are not being considered. This gap suggests a future study in which at least part of these aspects should be considered.
Finally, this study showed that many relatively small measurement uncertainty values are available in the literature without a clear explanation of whether it is exclusively related to the instrumental factors [61] or if it also reflects the uncertainty regarding measurement algorithms.
Furthermore, the measurement uncertainty of the carbon isotopic composition in gases reported here (e.g., 1.8‰ for C1), considerably greater than the one generally considered in the geochemical analyses (0.5‰), has an impact on the risk of false compliance assessment of the set of interpretations, generally supported by the general trends of isotopic composition variation using many data and literature case studies.
For these reasons, in the assessment of specific cases, mainly in exploratory frontiers, considering isotopic measurements with values comprised in intermediate compositional domains, and for other applications, e.g., the estimate of temperature equilibration, it is recommended that the uncertainty intrinsic to the calculation method should be incorporated into the corresponding geochemical interpretations.
As for future studies, the contribution of the sampling variability to the measurement uncertainty should be considered since this contribution can significantly affect the risk assessment.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/molecules29133065/s1. Table S1. The isotopic analyses of the secondary standard–cylinder A. Table S2. The isotopic analyses of the secondary standard–cylinder B. Table S3. The isotopic analyses of the secondary standard–cylinder C.

Author Contributions

Conceptualization, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; methodology, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; software, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; validation, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; formal analysis, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; investigation, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; resources, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; data curation, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; writing—original draft preparation, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; writing—review and editing, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; visualization, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; supervision, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; project administration, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O.; funding acquisition, F.G.L., A.d.A.F., G.M.S., T.A.F., M.R.C., E.T.d.M., J.V.P.G. and E.C.d.O. All authors have read and agreed to the published version of the manuscript.

Funding

The authors are thankful for the financial support provided by the scholarship from the Brazilian agency CNPq (305479/2021-0). This study was financed in part by the Coordination for the Improvement of Higher Education Personnel—Brazil (CAPES)—Finance Code 001.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Available data are presented in the manuscript.

Acknowledgments

This work was supported by the Division of Geochemistry, PETROBRAS Research and Development Center.

Conflicts of Interest

The authors declare no conflicts of interest.

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Figure 1. Acceptance and rejection zones for simultaneous upper and lower limits.
Figure 1. Acceptance and rejection zones for simultaneous upper and lower limits.
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Figure 2. Carbon isotopic analysis of methane conformity assessment with an expanded uncertainty of (a) 0.5‰ and (b) 1.8‰. p(AL)—probability density at the lower acceptance limit; p(AU)—probability density at the upper acceptance limit; AL—lower acceptance limit; AU—upper acceptance limit; TL—lower tolerance limit and TU—upper tolerance limit.
Figure 2. Carbon isotopic analysis of methane conformity assessment with an expanded uncertainty of (a) 0.5‰ and (b) 1.8‰. p(AL)—probability density at the lower acceptance limit; p(AU)—probability density at the upper acceptance limit; AL—lower acceptance limit; AU—upper acceptance limit; TL—lower tolerance limit and TU—upper tolerance limit.
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Table 1. Published studies associated with isotopic analyses with reported uncertainties (‰) in different matrices.
Table 1. Published studies associated with isotopic analyses with reported uncertainties (‰) in different matrices.
ReferenceUncertainty TypeAnalytical TechniqueCalculation MethodMatrixUncertainty (‰)
Wong et al., 1995 [7]Standard deviationGC-IRMSNot mentionedFatty acids0.07–0.58
Nørgaard et al., 2002 [8]Expanded (k = 2)GC-IRMSNot mentionedCO20.48
Russe et al., 2004 [9]Expanded complete (k = 2)GC-IRMSSeveral correctionsStandards0.08–0.25
Boyd et al., 2006 [10]Standard deviationGC-IRMSNot mentionedC10–C170.10–0.14
Zobitz et al., 2006 [11]Standard deviationGC-IRMSNot mentionedAir0.01–0.15
Lollar et al., 2007 [12]Expanded analytical (k = 2)FC-IRMS *Not mentionedNatural gas0.4–0.5
Santamaria-Fernandez et al., 2008 [13]Expanded complete (k = 2)MC-ICPMS ** and IRMSSSHDrug1.6
Cawley et al., 2009 [14]Expanded analytical (k = 2)GC-IRMSNot mentionedSteroids0.5
Munton et al., 2011 [15]Expanded complete (k = 2)GC-IRMSOwn 17O correctionSteroids0.21–1.4
Jones et al., 2013 [16]Standard deviationGC-IRMSWithout correctionsSugars0.01–0.57
Kornilova et al., 2015 [17]Standard deviationGC-IRMSSeveral correctionsVolatile organic compounds0.5
Bulska et al., 2015 [4]Expanded analytical (k = 2)GC-IRMSNot mentionedSteroids0.13–0.99
Dunn and Carter, 2018 [18]Expanded complete (k = 2)GC-IRMSSeveral correctionsHoney0.084–0.90
Srivastava et al., 2018 [19]Complete (k = 1)GC-IRMSSeveral correctionsStandards0.22–0.36
Felix et al., 2019 [20]95% confidence levelHS-SPME-GC-C-IRMS ***Two-point correctionEthanol fuel2.4–2.5
Strąpoć et al., 2020 [21]Standard deviationGC-IRMSNot mentionedNatural gas0.1–5.8
Xue et al., 2021 [22]Standard deviationEA-IRMS Not mentionedOrganic matter0.25–0.35
Thomazo et al., 2021 [23]Standard deviationGC-IRMSWithout correctionsCarbonates0.07–1.33
Rampazzo et al., 2022 [24]Standard deviationEA-IRMSNot mentionedAqueous samples0.3–2
Vernooij et al., 2022 [25]Standard deviationCF-IRMSSeveral correctionsPlants0.2
Srivastava, 2022 [26]Standard deviationDI-IRMS Cross-contamination correctionIsotopic reference materials0.011–0.021
Day et al., 2022 [27]Standard error of the meanIRMSMultiple point correctionsEastern rock lobster0.2
Leitner et al., 2023 [28]95% confidence levelGC-IRMSNot mentionedChlorinated ethenes 0.2–0.6
Dunn et al., 2015 [29]Expanded uncertainty (k = 2)EA-IRMSSeveral correctionsGlycine candidate reference material0.25
Dunn et al., 2015 [30]Standard uncertainty (k = 2)EA-IRMSSeveral correctionsPrimary reference material27 × 10−6
* Continuous flow–isotope ratio mass spectrometry; ** multicollector inductively coupled plasma mass spectrometry; *** headspace solid-phase microextraction gas chromatograph–combustion–isotope ratio mass spectrometry method; elemental analyzer-isotope ratio mass spectrometer; and dual-inlet isotope ratio mass spectrometry.
Table 2. Area ratios and their respective standard uncertainties.
Table 2. Area ratios and their respective standard uncertainties.
R 45 C O 2 u C ( R 45 C O 2 ) R 46 C O 2 u C ( R 46 C O 2 )
Reference0.011486 4.70 × 10 6 0.004152 3.27 × 10 6
Methane0.011413 5.35 × 10 6 0.003954 3.04 × 10 6
Ethane0.011524 4.14 × 10 6 0.003954 3.20 × 10 6
Propane0.011550 4.15 × 10 6 0.003980 3.22 × 10 6
CO20.011810 4.24 × 10 6 0.003980 3.22 × 10 6
Table 3. Intermediate precision data.
Table 3. Intermediate precision data.
MethaneEthanePropaneCO2
δ 13 C (‰)
0.3120.3580.3460.417
Table 4. Constants and their respective standard uncertainties.
Table 4. Constants and their respective standard uncertainties.
a0.5279 u a 0.0001 [34]
K0.010272737 u K 0.00004103 [35]
V P D B R 0.0111376 u V P D B R 0.0000016 [36]
Table 5. Standard uncertainties of mathematical models.
Table 5. Standard uncertainties of mathematical models.
MethaneEthanePropaneCO2
u c δ 13 C
0.8440.7920.7940.810
Table 6. Final combined standard uncertainties.
Table 6. Final combined standard uncertainties.
MethaneEthanePropaneCO2
u c δ 13 C
0.844 2 + 0.312 2 0.792 2 + 0.358 2 0.794 2 + 0.346 2 0.810 2 + 0.417 2
0.9000.8700.8660.911
Table 7. Carbon isotopic ratio values of C1 to C3 and CO2 and their respective expanded uncertainties.
Table 7. Carbon isotopic ratio values of C1 to C3 and CO2 and their respective expanded uncertainties.
MethaneEthanePropaneCO2
δ13C (‰)
39.2 ± 1.8 29.1 ± 1.7 27.1 ± 1.7 3.7 ± 1.8
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Leal, F.G.; de Andrade Ferreira, A.; Silva, G.M.; Freire, T.A.; Costa, M.R.; de Morais, E.T.; Guzzo, J.V.P.; de Oliveira, E.C. Measurement Uncertainty and Risk of False Compliance Assessment Applied to Carbon Isotopic Analyses in Natural Gas Exploratory Evaluation. Molecules 2024, 29, 3065. https://doi.org/10.3390/molecules29133065

AMA Style

Leal FG, de Andrade Ferreira A, Silva GM, Freire TA, Costa MR, de Morais ET, Guzzo JVP, de Oliveira EC. Measurement Uncertainty and Risk of False Compliance Assessment Applied to Carbon Isotopic Analyses in Natural Gas Exploratory Evaluation. Molecules. 2024; 29(13):3065. https://doi.org/10.3390/molecules29133065

Chicago/Turabian Style

Leal, Fabiano Galdino, Alexandre de Andrade Ferreira, Gabriel Moraes Silva, Tulio Alves Freire, Marcelo Ribeiro Costa, Erica Tavares de Morais, Jarbas Vicente Poley Guzzo, and Elcio Cruz de Oliveira. 2024. "Measurement Uncertainty and Risk of False Compliance Assessment Applied to Carbon Isotopic Analyses in Natural Gas Exploratory Evaluation" Molecules 29, no. 13: 3065. https://doi.org/10.3390/molecules29133065

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