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Article

A Methodology for the Calculation of Typical Gas Concentration Values and Sampling Intervals in the Power Transformers of a Distribution System Operator †

School of Industrial Engineering, University of Cantabria, Av. Los Castros s/n, 39005 Santander, Spain
*
Author to whom correspondence should be addressed.
This paper is an extended version of our paper published in https://ieeexplore.ieee.org/document/8930184.
Energies 2020, 13(22), 5891; https://doi.org/10.3390/en13225891
Submission received: 30 September 2020 / Revised: 30 October 2020 / Accepted: 5 November 2020 / Published: 12 November 2020

Abstract

:
Predictive maintenance strategies in power transformers aim to assess the risk through the calculation and monitoring of the health index of the power transformers. The parameter most used in predictive maintenance and to calculate the health index of power transformers is the dissolved gas analysis (DGA). The current tendency is the use of online DGA monitoring equipment while continuing to perform analyses in the laboratory. Although the DGA is well known, there is a lack of published experimental data beyond that in the guides. This study used the nearest-rank method for obtaining the typical gas concentration values and the typical rates of gas increase from a transformer population to establish the optimal sampling interval and alarm thresholds of the continuous monitoring devices for each power transformer. The percentiles calculated by the nearest-rank method were within the ranges of the percentiles obtained using the R software, so this simple method was validated for this study. The results obtained show that the calculated concentration limits are within the range of or very close to those proposed in IEEE C57.104-2019 and IEC 60599:2015. The sampling intervals calculated for each transformer were not correct in all cases since the trend of the historical DGA samples modified the severity of the calculated intervals.

Graphical Abstract

1. Introduction

Transmission System Operators (TSOs) and Distribution System Operators (DSOs) face asset maintenance management as a critical issue. DSOs and TSOs aim to operate the network reliably, and this is accomplished through good asset maintenance. The direction in asset maintenance is the application of predictive maintenance strategies [1,2,3] that allow foreseeing malfunctions or faults in assets.
Power transformers are critical assets within the network due to their function and the costs of replacement and maintenance [4,5,6], therefore they are the most important assets of DSOs and TSOs. Predictive maintenance for transformers intends to manage risk. Understanding the risk index as a function of the consequence of failure (CoF) and the probability of failure (PoF) [1,4,7,8,9]. The CoF is related to the location of the asset, so it can be assumed that it is fixed as long as the asset is not relocated. The PoF is obtained from the health index of the transformer, which is determined using the available variables obtained by field and laboratory tests, such as oil analysis, electrical tests and visual inspection. To obtain the most accurate health index, it is necessary to have a high number of parameters, the more the better.
Dissolved gas analysis (DGA) is an important parameter in the calculation of the transformer health index [4,10,11,12,13]. The use of online DGA monitoring equipment is the current trend, while specific laboratory analyses continue to be carried out [14,15]. Both types of measurements are performed either to establish a correlation of measurements between the DGA equipment and the laboratory results or because the DGA equipment only measures one or two gas concentrations. Online DGA monitoring equipment allows detecting or diagnosing incipient faults in the liquid or solid insulation of the transformer almost instantaneously [14,16,17]. Achieving a successful DGA program is a critical element; to achieve this, it is necessary to establish the appropriate alarm limits together with appropriate actions in the event of an alarm.
This paper updates a previous work [18] by applying the new IEEE guide [19]. In this study, the typical gas concentration values and the typical rates of gas increase for 195 transformers that are in service in the north of Spain were calculated based on the DGA results obtained in the laboratory to determine an optimal sampling interval for each transformer. The improvements over the previous work [18] were that the number of DGA samples used in this study was increased by 50, the results were compared with the new limits established in the IEEE guide [19] and the acetylene concentrations used to calculate their typical concentrations and increases were separated into two groups in a similar way as indicated in the IEC guide [15]. The first group included the DGA samples from transformers without OLTC or without communicating OLTC, while the second group consisted of the DGA samples from transformers with communicating OLTC.
The main objective of this study was to obtain the 90th and 95th percentiles of the typical gas concentrations values and the typical rates of gas increase and the optimal theoretical sampling intervals.
As the IEEE and IEC guides [15,19] indicate, not only should maintenance actions be performed within the limits established in the guides, but also electric utilities should calculate their own limits. The procedure to calculate the percentiles was the nearest-rank method [20,21,22,23]. The nearest-rank method is a very simple method, so the R software [24] and its quantile function were used to validate the results obtained. Subsequently, a brief comparison with the limits of the guidelines was performed.
Finally, the optimal theoretical sampling intervals from the calculated 90th percentiles and the pre-failure concentration values were calculated. The theoretical sampling intervals were compared with the sampling intervals that had actually been used by maintenance technicians. This last comparison presents a real view of what is currently done with respect to what the theory indicates.

2. Background Theory

The guides [15,19] propose limits for dissolved gas concentration in transformer oil to monitor and identify electrical or thermal faults. These limits are shown in Table 1, Table 2 and Table 3. The reference limits were determined for transformers with specific typologies under specific conditions of installation and location. Therefore, the maintenance of transformers by an electric utility can be supported within the limits of the standards. However, it cannot be fully achieved by following only these limits. Table 4 and Table 5 show the typical rates of gas increase presented in the IEEE [19] and IEC [15] guides.
Table 3 and Table 5 differentiate the acetylene values depending on the on-load tap-changer (OLTC). When talking about power transformers without OLTC or without communicating OLTC, the typical concentration and annual increase of acetylene are less than in the case of power transformers with communicating OLTC.
The guides [15,19] encourage electric utilities to calculate their own limits for both gas levels and annual increases in the concentration of gases. In [20,21,22,23], a method for calculating these limits is proposed. This method [20,21,22,23] uses a simplification of the percentile calculation, called the nearest-rank method. The nearest-rank method obtains the value below which a given percentage of samples falls. The method places each combustible gas in a column in increasing order; the 90th percentile of the typical gas concentration corresponds to row 0.9 n , where n is the total number of samples.
Another way to calculate the percentiles is to use the functions defined in software. For example, the R software [24] has the quantile function, which generates sample quantiles corresponding to the given probabilities. The probabilities vary from 0 to 1, correspond to the smallest and largest observation, respectively. There are nine types of quantile function in R software; each quantile type i is defined as follows:
Q [ i ] ( p ) = ( 1 γ ) x [ j ] + γ x [ j + 1 ]
where 1 i 9 , ( j m ) / n p < ( j m + 1 ) / n , x [ j ] is the jth order statistic, n is the sample size, the value of γ is a function of j = f l o o r ( n p + m ) and g = n p + m j and m is a constant determined by the sample quantile type [24].
The difference between using the nearest-rank method or the quantile function of R software is that the first one uses rounding to obtain the calculated range, while the second one obtains the percentiles by interpolation between contiguous values in the dataset in order to improve the accuracy.
From the gas limits obtained by any of the methods presented above, and the pre-failure values in [20,21,22], as shown in Table 6, it is possible to calculate the theoretical DGA sampling interval for each transformer of the electric utility. The theoretical DGA sampling interval is obtained by creating a graph. The pre-failure values associated with a theoretical DGA sampling interval of 1 h are placed on the left y-axis. The 90th percentile values of the typical gas concentrations associated with a theoretical one-year DGA sampling interval are placed on the right y-axis. The x-axis indicates the theoretical DGA sampling interval. All axes are logarithmic.
To achieve greater accuracy in the theoretical DGA sampling interval than that obtained from the graph, the following formula is used for each of the gases:
l o g G = a l o g t + l o g b
where G is the gas concentration obtained in the DGA result (ppm) and t is the theoretical DGA sampling interval (hours). a and b are obtained using Equation (2) with the pre-failure values for each gas ( G P ) and the 90th percentile values of the typical gas concentrations ( G T ) and t is the theoretical DGA sampling intervals of 1 h and one year, respectively.
The theoretical DGA sampling interval can also be obtained from the annual increases in the concentration of gases. As explained above, the annual increases in the concentration of gases are used instead of the 90th percentile values of the typical gas concentrations. The average pre-failure values of the annual increases in the concentration of gases collected in [20,21,22] are shown in Table 6.

3. Methodology

The methodology used in this study is made up of four steps, as shown in Figure 1.
Step 1: 
Data collection and cleaning
The first step is the acquisition of gas concentrations from the DGA results obtained in the laboratory. Next, the gas concentrations are reviewed and validated to identify abnormal concentration values, following the indications of the IEEE guide [19].
The acetylene concentration dataset is divided into two groups depending on the OLTC, since acetylene concentrations are different in both cases. Power transformers without OLTC or without communicating OLTC are in the first group, and those with communicating OLTC are in the second group.
Step 2: 
Application and comparison of methods
Once the dataset is validated, the 90th and 95th percentiles of typical gas concentrations and typical rates of gas increase are calculated using the nearest-rank method and the nine quantile function types of the R software.
The increase between consecutive DGA data from the same transformer is calculated and extrapolated an annualised value. These values are used to obtain the 90th and 95th percentiles of the typical rates of gas increase through the two methods.
The percentile results of the methods are compared to validate the nearest-rank method.
Step 3: 
Determination of percentiles and comparison with the guides.
Following the guide [19], the results of the nearest-rank method obtained in the previous step are rounded using the following rounding scheme:
1–10:Unit500–1000:Nearest 100
10–50:Nearest 51000–2500:Nearest 250
50–100:Nearest 102500–5000:Nearest 500
100–250:Nearest 25Above 5000:Nearest 1000
250–500:Nearest 50
Once rounded, these are the 90th and 95th percentiles of typical gas concentrations and typical rates of gas increase of the DSO transformer population.
Finally, these percentiles are compared with those indicated in the guides [15,19] (Table 1, Table 2, Table 3, Table 4 and Table 5).
Step 4: 
Determination of sampling interval of power transformers
Using the pre-failure values (Table 6) and the calculated 90th percentile of typical gas concentrations, the theoretical DGA sampling intervals of each power transformer are obtained through the creation of the graph explained above or the application of Equation (2). For each DGA sample, the sampling interval is obtained due to the 90th percentile of typical gas concentrations. For the same DGA sample, different DGA sampling intervals can be obtained due to gas concentrations, so the lowest sampling interval is chosen.

4. Study Characteristics

This study was performed using 417 laboratory DGA samples from 195 transformers of a DSO that were obtained between the end of 2017 and the middle of 2019. All 417 DGA samples were provided by a DSO. All samples were actual raw data, so data cleaning had to be done following the indications provided by the IEEE guide [19], as noted below. Figure 2 shows these transformers divided by age, voltage class and power rating. The voltage of 74 transformers is equal to or greater than 132 kV, which is not in the common range used in distribution networks; this is because these transformers are connected on the high voltage side to the transmission grid.
In addition, Figure 2 shows the number of transformers without OLTC, without communicating OLTC or with communicating OLTC. Power transformer with communicating OLTC means that there is an exchange of oil or gases between the main tank and the OLTC compartment, or between the respective oil conservators. The concentration limit of acetylene will differ depending on this classification, as is shown below. Another important classification is whether the transformer is sealed or air-breathing; however, it was not necessary to collect such information for this study because the DSO transformers in this case study were all air-breathing.
Figure 3 shows the DGA results ordered from lowest to highest gas concentration and the 90th percentile ranges of gas concentrations from the IEEE and IEC guides. The sampling interval is performed annually. In the case of high gas concentrations, the sampling interval is decreased to approximately six months, and it decreases to two months in the case of exceptional gas concentration values. The DGA data for acetylene concentrations were divided into two groups as explained above (Figure 3b,c).
The O 2 / N 2 ratios for all DGA samples were calculated because the IEEE guide [19] classifies the limits for concentrations and increases based on this ratio. All the calculated O 2 / N 2 ratios were greater than 0.2 except 10 out of 417 DGA samples which were lower; therefore, the results obtained in this study were compared with the limits in Table 1, Table 2 and Table 4 that have O 2 / N 2 ratio greater than 0.2.

5. Results

Following the methodology indicated in Section 3, the results explained in this section were obtained.
Step 1: 
Data collection and cleaning
From the validation performed, following the indications of the IEEE guide [19], 10 DGA samples were eliminated due to abnormal concentration values.
Acetylene concentrations were divided into two groups. In the group of transformers without OLTC or without communicating OLTC, 342 DGA samples were used, and, in the group of transformers with communicating OLTC, the remaining 65 DGA samples were used.
Step 2: 
Application and comparison of methods
The 90th and 95th percentiles of the typical gas concentration values and 90th and 95th percentiles of the typical rates of gas increase were calculated by the nearest-rank method and the nine quantile function types of the R software. Table 7 and Table 8 show the calculated percentiles.
Table 8 shows the ranges of the 90th and 95th percentiles of the typical gas concentration values and the 90th and 95th percentiles of the typical rates of gas increase returned by the quantile function. The lowest and highest values in Table 8 correspond to those obtained with Type 3 and Type 6 quantile algorithms, respectively. The results of the other seven types of quantile algorithm are within this range.
According to the results presented in Table 7 and Table 8, the values calculated using the nearest-rank method were within the ranges obtained through the R software, thus this method was adequate for this study.
Step 3: 
Determination of percentiles and comparison with the guides.
Following the guide [19], the results of the 90th and 95th percentiles of the typical gas concentration values and the typical rates of gas increase were rounded, as shown in Table 9.
Comparing the 90th percentile of the typical gas concentration values and the typical rates of gas increase calculated (Table 9) with the IEC limits [15] (Table 3 and Table 5), the values obtained are within the typical ranges, except the rate of acetylene increase in the transformers with communicating OLTC. Although this value is very high compared to the IEC limits, it is necessary to note that the rate of acetylene increase was calculated using a very small number of DGA samples.
The calculated values (Table 9) were compared with the concentration values published by the IEEE [19] (Table 1 and Table 2) using a general comparison because the results obtained in this study were not classified by transformer age owing to the low number of DGA samples. The values obtained for the 90th and 95th percentiles are very similar to those proposed by the guide [19] for methane, ethylene, acetylene (without OLTC or without communicating OLTC), carbon monoxide and carbon dioxide concentrations. The values obtained for the 90th percentiles of hydrogen and ethane are approximately four times higher than those listed in Table 1; those obtained for the 95th percentile are approximately double or triple those listed in Table 2. It was not possible to compare the acetylene concentrations of transformers with communicating OLTC due to the IEEE guide not considering it.
The 95th percentile of the typical rates of gas increase is similar to those collected by the IEEE (Table 4); except for the case with typical concentrations, the typical rate of hydrogen increase was much higher and the typical rate of ethane increase was slightly higher than the values shown in Table 4.
Figure 4 shows the location of the 90th and 95th percentile results on the historical distribution of DGA data. Most of the time the gas concentrations were concentrated on the left side of the distribution, while few samples were concentrated on the right side above the 90th and 95th percentiles.
Step 4: 
Determination of sampling interval of power transformers
Figure 5 shows the graph to calculate the theoretical DGA sampling interval from the latest DGA results. The graph was obtained from the pre-failure concentrations of each gas (Table 6) and the 90th percentile of the calculated typical gas concentrations (Table 9).
Using Equation (2) and the data in Table 6 and Table 9, gas concentrations relative to each sampling interval were obtained, as shown in Table 10. Table 11 shows the number of power transformers and their sampling interval for each type of gas. Some of the transformers had several gas concentrations above the 90th percentile values, so different sampling intervals would be obtained. In this case, the lowest sampling interval would be selected. The row of totals indicates the number of transformers that correspond to each sampling interval according to the results by the last DGA evaluation.

6. Discussion

As indicated in the results (Table 7 and Table 8), the nearest-rank method despite being a simple approach provides the results in the same range as those obtained with the quantile function of the R software. The validation of the nearest-rank method through the comparison of the results of the quantile function indicated that the results obtained using this method were considered reliable.
The most urgent theoretical sampling intervals obtained for each gas (Table 11) are discussed below. As mentioned, the same transformer could have different sampling intervals due to the different gas concentrations, from which the most restrictive sampling interval was selected. In this section, the critical sampling intervals obtained due to gas concentrations were evaluated even for the same transformer.
Table 12 shows the DGA samples from six power transformers with weekly and monthly sampling intervals due to the high hydrogen concentration obtained in the last DGA sample. As shown in Table 12, all six transformers had high hydrogen concentrations in all of their DGA samples and were stable. Therefore, it was decided that the next DGA sampling would be carried out in about six months to control the trend of the hydrogen concentration. Comparing the decision to perform the DGA sampling in half a year with the result obtained in this study, it turns out that this result is too restrictive with respect to the best practices performed by maintenance technicians based on the knowledge of the transformers and the network.
The high concentrations of methane forced the need for a daily sampling interval in one of the transformers and a weekly interval in four others, as shown in Table 13. Transformer 7 was 52 years old, and methane and ethane concentrations were high but stable in all its DGA samples. Thus, it was normal for their concentrations to be high. The methane concentration required the daily sampling interval, while the ethane concentration was the reason for the weekly sampling interval. Although the methane concentration was high, its next DGA sampling would be in approximately six months to control the trend of the gases.
The remaining four transformers did not have the methane concentration as high as the previous transformer. Transformers 8 and 10 were sampled in one year and Transformers 9 and 11 in half a year to control the trend of gases. The reasons for the reduced interval were the high concentrations of ethylene for Transformer 9 and the young age of only 10 years for Transformer 11.
Transformers 12–16, shown in Table 14, had acetylene concentrations in the 10–13 ppm range and they had no communicating OLTC. The low concentrations of acetylene were the reason for the weekly sampling intervals, since they are very far from the pre-failure concentration of acetylene. Their final sampling interval was approximately one year. Transformer 9 (Table 13) was in the same situation, its sampling interval was annual.
Transformers 17 and 18 (Table 14) had communicating OLTC, so the acetylene concentration values were high, as expected. Although these concentrations can be considered normal in transformers with communicating OLTC, the increase in acetylene concentration was high. The number of operations performed by the OLTCs of these transformers was in the range of 2000–4000 operations/year each, so the oil sampling of the OLTCs was programmed to confirm the communication between the main tank and the OLTC compartment. The next DGA sampling for Transformers 17 and 18 and their OLTCs was established in one year.
Table 15 shows the results of the new DGA samples of the transformers and their OLTCs. These samples were not used in the procedure described in this paper because they belonged to the next sampling campaign. These DGA samples were added to the study to serve as the basis for discussion of DGA results from transformers with communicating OLTC. Both OLTCs were of the arc-breaking in oil type with the diverter switch and tap selector in the same oil compartment. The gas pattern of the OLTCs oil samples shown in Table 15 indicated that the OLTCs operate normally. Since the solubility of acetylene is greater than the solubility of hydrogen, when electrical discharge is generated in the OLTC compartment (normal operation), acetylene spreads more quickly out of the OLTC tank. This results in the acetylene concentration being greater than the hydrogen concentration, as shown in the DGA samples of Transformers 17 and 18 (Table 14 and Table 15).
Transformers 4 and 5 (Table 12) were at the same stage with regard to acetylene concentrations; in this case, their next sampling was established in half a year to control the gas trend.
Table 16 shows the DGA samples from three power transformers with hourly and daily sampling intervals due to the high ethylene concentration obtained in the last DGA sample. The three transformers are old, 45–52 years, so it is normal for gas concentrations to accumulate over time; this occurs in Transformers 19 and 21. Transformer 9, shown in Table 13, was also in this situation. For these three transformers, the next DGA sampling was scheduled in six months to observe the gas trend. In Transformer 20, an increase in the ethylene concentration is observed, approximately 250 ppm/year, since both the concentration and the annual increase were far from the pre-failure values (Table 6). The maintenance technicians decided to carry out the next sampling in approximately six months to control the evolution of the ethylene concentration since this gas pattern may indicate the existence of a thermal fault (>700 C).
The transformers with the lowest sampling interval due to ethane concentration were Transformers 7 and 9 (Table 13), discussed above due to other gases. The next DGA sampling was established in these transformers in six months.
Finally, the concentrations of carbon monoxide and carbon dioxide are not taken into account in real life to establish the DGA sampling interval, so it was not necessary to show the concentrations of these transformers in this section.
As a summary of this section, it was established that all the calculated sampling intervals were too strict with respect to the sampling intervals that are carried out in real life. All the calculated sampling intervals were increased between six months and one year. It should be noted that the theoretical sampling intervals calculated in this paper were correct, but knowledge of the transformers and their operating conditions by maintenance technicians is essential to establish a good DGA sampling program.

7. Conclusions

This paper updates the results of a case study [18] to which the information in the new IEEE guide was applied [19]. This study presents the application and validation of the nearest-rank method to calculate the 90th and 95th percentiles of the typical gas concentration values and theoretical DGA sampling intervals for the transformers of a DSO.
The DGA dataset used in this study comes from 417 analyses of 195 power transformers. The DGA dataset was divided into two groups regarding acetylene concentrations due to OLTC. DGA samples from transformers without OLTC or without communicating OLTC were in the first group, while DGA samples from transformers with communicating OLTC were in the second group. This was done because the acetylene concentrations are different depending on the group to which the transformer belongs. It was observed that the new DGA data used for this paper made a significant change in the previous results. Due to this development, it is recommended that the outputs of this study are applied with caution. It is also recommended to update the results as new DGA data are collected.
The 90th and 95th percentiles of the typical gas concentrations limits and the 90th and 95th percentiles of the typical rates of gas increase resulting from this work are within or very close to the ranges suggested by the guides [15,19], except for hydrogen and ethane. The gas concentration limits and the rates gas increase for hydrogen and ethane at both percentiles were found to be significantly higher than the IEEE values. Although the percentiles of the typical rates of gas increase were in or close to the ranges proposed by the guides, it should be noted that the number of annualised increments used to calculate them was 217, a small number to establish the percentiles with certainty.
As a result of this case study, all transformers of a DSO were assigned new sampling frequencies. The sampling intervals obtained were a theoretical result based on the absolute value of the DGA sample; however, the trend of gas concentrations considering the age of the transformer must be carefully analysed before establishing an optimal sampling interval for each transformer. As discussed, all the theoretical sampling intervals obtained in this study were too strict when compared to what was actually done in the field. A more realistic adjustment of the calculation of sampling intervals relative to what is actually performed by maintenance technicians in the field could be a line of future research.
Although these results are correct, it must be noticed that the DGA dataset studied is small, 417 analyses from 195 transformers; therefore, this study should be repeated with a higher number of samples. With a more robust DGA sample dataset, this study could be repeated in accordance to the distribution of transformers presented in Figure 2.

Author Contributions

Conceptualisation and methodology, S.B., M.M. and A.A.; software, S.B.; validation, all authors contributed equally to this work; formal analysis, S.B., R.M. and A.L.; investigation and resources, all authors contributed equally to this work; data analysis, S.B.; writing—original draft preparation, review and editing, all authors contributed equally to this work; and funding acquisition, M.M. All authors have read and agreed to the published version of the manuscript.

Funding

This work was partially financed by the EU Regional Development Fund (FEDER) and the Spanish Government under RETOS-COLABORACIÓN RTC-2017-6782-3 and by the European Union’s Horizon 2020 research and innovation programme under grant agreement No. 864579 (FLEXIGRID).

Acknowledgments

The authors acknowledge support received from Viesgo.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

The following abbreviations are used in this manuscript:
CoFConsequence of failure
C 2 H 2 Acetylene
C 2 H 4 Ethylene
C 2 H 6 Ethane
C H 4 Methane
C O Carbon monoxide
C O 2 Carbon dioxide
DGADissolved gas analysis
DSODistribution system operator
H 2 Hydrogen
OLTCOn-load tap changer
PoFProbability of failure
TSOTransmission system operator

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Figure 1. Outline of the methodology followed.
Figure 1. Outline of the methodology followed.
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Figure 2. Power transformers according to: (a) age; (b) voltage class; and (c) power rating.
Figure 2. Power transformers according to: (a) age; (b) voltage class; and (c) power rating.
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Figure 3. Gas concentration data: (a) hydrogen; (b) acetylene (transformers without OLTC or without communicating OLTC); (c) acetylene (transformers with communicating OLTC); (d) methane; (e) ethane; (f) ethylene; (g) carbon monoxide; and (h) carbon dioxide.
Figure 3. Gas concentration data: (a) hydrogen; (b) acetylene (transformers without OLTC or without communicating OLTC); (c) acetylene (transformers with communicating OLTC); (d) methane; (e) ethane; (f) ethylene; (g) carbon monoxide; and (h) carbon dioxide.
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Figure 4. Distribution of gas concentrations and calculated 90th and 95th percentiles: (a) hydrogen; (b) acetylene (transformers without OLTC or without communicating OLTC), (c) acetylene (transformers with communicating OLTC); (d) methane; (e) ethane; (f) ethylene; (g) carbon monoxide; and (h) carbon dioxide.
Figure 4. Distribution of gas concentrations and calculated 90th and 95th percentiles: (a) hydrogen; (b) acetylene (transformers without OLTC or without communicating OLTC), (c) acetylene (transformers with communicating OLTC); (d) methane; (e) ethane; (f) ethylene; (g) carbon monoxide; and (h) carbon dioxide.
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Figure 5. Determination of DGA sampling intervals.
Figure 5. Determination of DGA sampling intervals.
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Table 1. Typical gas concentration (90th percentile) from IEEE C57.104-2019 [19] (ppm).
Table 1. Typical gas concentration (90th percentile) from IEEE C57.104-2019 [19] (ppm).
Gas O 2 / N 2 Ratio ≤ 0.2 O 2 / N 2 Ratio > 0.2
Transformer Age (Years)Transformer Age (Years)
Unknown1–910–30>30Unknown1–910–30>30
Hydrogen ( H 2 )80757510040404040
Methane ( C H 4 )90459011020202020
Ethane ( C 2 H 6 )90309015015151515
Ethylene ( C 2 H 4 )5020509050256060
Acetylene ( C 2 H 2 )11112222
Carbon monoxide ( C O )900900900900500500500500
Carbon dioxide ( C O 2 )9000500010,00010,0005000350055005500
Table 2. Typical gas concentration (95th percentile) from IEEE C57.104-2019 [19] (ppm).
Table 2. Typical gas concentration (95th percentile) from IEEE C57.104-2019 [19] (ppm).
Gas O 2 / N 2 Ratio ≤ 0.2 O 2 / N 2 Ratio > 0.2
Transformer Age (Years)Transformer Age (Years)
Unknown1–910–30>30Unknown1–910–30>30
H 2 20020020020090909090
C H 4 15010015020050606030
C 2 H 6 1757017525040304040
C 2 H 4 100409517510080125125
C 2 H 2 22247777
C O 1100110011001100600600600600
C O 2 12,500700014,00014,0007000500080008000
Table 3. Typical gas concentration (90th percentile) from IEC 60599-2015 [15] (ppm).
Table 3. Typical gas concentration (90th percentile) from IEC 60599-2015 [15] (ppm).
GasAll TransformersNot OLTCCommunicating OLTC
H 2 50–150
C H 4 30–130
C 2 H 6 20–90
C 2 H 4 60–280
C 2 H 2 2–2060–280
C O 400–600
C O 2 3800–14,000
Table 4. Absolute values of changes in level between successive laboratory DGA samples (95th percentile) from IEEE C57.104-2019 [19] (ppm).
Table 4. Absolute values of changes in level between successive laboratory DGA samples (95th percentile) from IEEE C57.104-2019 [19] (ppm).
Gas O 2 / N 2 Ratio ≤ 0.2 O 2 / N 2 Ratio > 0.2
H 2 4025
C H 4 3010
C 2 H 6 257
C 2 H 4 2020
C 2 H 2 Any increaseAny increase
C O 250175
C O 2 25001750
Table 5. Typical rates of gas increase (90th percentile) from IEC 60599-2015 [15] (ppm/year).
Table 5. Typical rates of gas increase (90th percentile) from IEC 60599-2015 [15] (ppm/year).
GasAll TransformersNot OLTCCommunicating OLTC
H 2 35–132
C H 4 10–120
C 2 H 6 5–90
C 2 H 4 32–146
C 2 H 2 0–421–37
C O 260–1060
C O 2 1700–10,000
Table 6. Average pre-failure values [20,21,22].
Table 6. Average pre-failure values [20,21,22].
Gas Concentration Values (ppm)Rates of Gas Increase (ppm/Year)
H 2 7251095
C H 4 4001825
C 2 H 6 9004015
C 2 H 4 8001825
C 2 H 2 450182
C O 210017,000
C O 2 50,000150,000
Table 7. Typical gas concentration values and rates of gas increase (90th and 95th percentile) calculated by the nearest-rank method (ppm and ppm/year, respectively).
Table 7. Typical gas concentration values and rates of gas increase (90th and 95th percentile) calculated by the nearest-rank method (ppm and ppm/year, respectively).
Gas Concentration ValuesRates of Gas Increase
90th95th90th95th
H 2 15319856.78168.02
C H 4 21489.979.97
C 2 H 6 731324.7521.96
C 2 H 4 498211.5930.05
C 2 H 2 a 151.623.81
C 2 H 2 b 16821999.55164.91
C O 509729151.69257.93
C O 2 465564921213.631549.36
a Transformers without OLTC or without communicating OLTC; b transformers with communicating OLTC.
Table 8. Typical gas concentration values and rates of gas increase (90th and 95th percentile) obtained with R software using Type 3 and Type 6 quantile algorithms (ppm and ppm/year, respectively).
Table 8. Typical gas concentration values and rates of gas increase (90th and 95th percentile) obtained with R software using Type 3 and Type 6 quantile algorithms (ppm and ppm/year, respectively).
Gas Concentration ValuesRates of Gas Increase
90th95th90th95th
H 2 153–154.4198–217.856.78–64.11168.02–196.19
C H 4 21–21.2489.97–10.4220.98–21.68
C 2 H 6 73–75132–133.84.75–5.3321.96–29.78
C 2 H 4 49–5182–82.611.59–13.9930.05–30.62
C 2 H 2 a 15–5.851.62–1.823.81–4.31
C 2 H 2 b 160–17021999.55–158.25164.91–276.01
C O 509–531.8729–732151.69–157.45257.93–269.88
C O 2 4655–4700.46492–6500.41213.63–1253.611820.49–2057.55
a Transformers without OLTC or without communicating OLTC; b transformers with communicating OLTC.
Table 9. Typical gas concentration values and rates of gas increase (rounded 90th and 95th percentile) calculated for DSO power transformers (ppm and ppm/year, respectively).
Table 9. Typical gas concentration values and rates of gas increase (rounded 90th and 95th percentile) calculated for DSO power transformers (ppm and ppm/year, respectively).
Gas Concentration ValuesRates of Gas Increase
90th95th90th95th
H 2 15020060175
C H 4 20501010
C 2 H 6 70125520
C 2 H 4 50801030
C 2 H 2 a 1524
C 2 H 2 b 175225100175
C O 500700150250
C O 2 4700600012501500
a Transformers without OLTC or without communicating OLTC; b transformers with communicating OLTC.
Table 10. Calculated sampling intervals based on the 90th of the typical gas concentration values (ppm).
Table 10. Calculated sampling intervals based on the 90th of the typical gas concentration values (ppm).
Hydrogen
( H 2 )
Methane
( CH 4 )
Ethane
( C 2 H 6 )
Ethylene
( C 2 H 4 )
Acetylene a
( C 2 H 2 )
Acetylene b
( C 2 H 2 )
Carbon
Monoxide
( CO )
Carbon
Dioxide
( CO 2 )
Sampling
Interval
Typical15020705011755004700annually
158227655 18052350669 months
169258562218855856306 months
1913210376320262367443 months
2314514110752277418978monthly
298742131671426493413,163weekly
41814036830353323127121,851daily
Pre-failure725400900800450450210050,000hourly
a Transformers without OLTC or without communicating OLTC; b transformers with communicating OLTC.
Table 11. Number of transformers per sampling interval based on the 90th of the typical gas concentration values.
Table 11. Number of transformers per sampling interval based on the 90th of the typical gas concentration values.
GasAnnually9 Months6 Months3 MonthsMonthlyWeeklyDailyHourly
Hydrogen ( H 2 )18221442
Methane ( C H 4 )178222641
Ethane ( C 2 H 6 )18052152
Ethylene ( C 2 H 4 )1763363 22
Acetylene a ( C 2 H 2 )147 666
Acetylene b ( C 2 H 2 )26 22
Carbon monoxide ( C O )17724291
Carbon dioxide ( C O 2 )17764521
TOTAL1319512201332
a Transformers without OLTC or without communicating OLTC; b transformers with communicating OLTC.
Table 12. Transformers DGA results with shorter sampling interval due to high hydrogen concentrations (ppm).
Table 12. Transformers DGA results with shorter sampling interval due to high hydrogen concentrations (ppm).
Sample
Date
Transf.
No.
Age
(Years)
H 2 CH 4 C 2 H 2 a C 2 H 2 b C 2 H 4 C 2 H 6 CO CO 2 Sampling
Interval
01/04/20191193104 4114101252581weekly
09/10/20183265 5918162193629
17/04/20182644 5723152443792
25/04/201923330420 121872296weekly
09/10/201831421 222532453
08/05/201834020 222212043
01/04/20193202603 1542461074monthly
28/01/20192311 142257980
08/05/20183582 722571080
01/04/201944924825 21912354625976monthly
17/10/201815720 14411354906253
17/04/201816817 11411584386492
28/01/201954824415 2198332862974monthly
09/10/201816415 1928223883482
08/05/201819813 1507933243181
25/04/2019646236223 33701531645monthly
28/01/2019269104 8551671563
09/10/2018311163 16732712019
08/05/201816873 8571541438
a Transformers without OLTC or without communicating OLTC; b transformers with communicating OLTC.
Table 13. Transformers DGA results with shorter sampling interval due to high methane concentrations (ppm).
Table 13. Transformers DGA results with shorter sampling interval due to high methane concentrations (ppm).
Sample
Date
Transf.
No.
Age
(Years)
H 2 CH 4 C 2 H 2 a C 2 H 2 b C 2 H 4 C 2 H 6 CO CO 2 Sampling
Interval
17/10/2018752571471 663126993080daily
08/05/2018561601 753267252716
15/06/2017541660 793546952621
24/05/201885218620 11558063527weekly
25/09/2017280 62154442504
09/04/2019931248513 8122471135403weekly
17/10/20182417417 10102861536325
24/05/2018852917 11272921615673
07/06/201910274930 1088862988weekly
17/10/201811870 1083833872
28/02/20189860 1078753543
25/09/20170590 1082773241
01/04/2019111029660 21581473167weekly
09/10/201828591 21321463408
01/02/201823620 21471663144
25/09/201711340 21211032409
a Transformers without OLTC or without communicating OLTC; b transformers with communicating OLTC.
Table 14. Transformers DGA results with shorter sampling interval due to high acetylene concentrations (ppm).
Table 14. Transformers DGA results with shorter sampling interval due to high acetylene concentrations (ppm).
Sample
Date
Transf.
No.
Age
(Years)
H 2 CH 4 C 2 H 2 a C 2 H 2 b C 2 H 4 C 2 H 6 CO CO 2 Sampling
Interval
19/06/2019122473211 22681708weekly
05/06/20184318 11511237
01/04/20191335543410 25784782342weekly
17/10/201880487 29875372724
17/04/201852353 29884562385
27/05/201914300115 23631535weekly
09/05/201820111 23671417
15/05/20191550198310 4116511,027weekly
24/05/20189824 45967375
15/05/201916461111 2058995weekly
24/05/2018310 1355827
09/10/20181735338 273358922506weekly
12/04/201854 125205491903
09/10/20181835258 2654118812449weekly
12/04/2018195 1262516482021
a Transformers without OLTC or without communicating OLTC; b transformers with communicating OLTC.
Table 15. New DGA results of Transformers 17 and 18 and their OLTCs (ppm).
Table 15. New DGA results of Transformers 17 and 18 and their OLTCs (ppm).
Oil Sample Origin H 2 CH 4 C 2 H 2 C 2 H 4 C 2 H 6 CO CO 2
Transformer 172951382915581422
OLTC4374661613264761326
Transformer 182452543915631910
OLTC1894278511951751926
Table 16. Transformers DGA results with shorter sampling interval due to high ethylene concentrations (ppm).
Table 16. Transformers DGA results with shorter sampling interval due to high ethylene concentrations (ppm).
Sample
Date
Transf.
No.
Age
(Years)
H 2 CH 4 C 2 H 2 a C 2 H 2 b C 2 H 4 C 2 H 6 CO CO 2 Sampling
Interval
01/04/201919523548 1076611481322312hourly
17/10/20184568 1258131941752691
17/04/2018112118 11110202271952853
07/06/201920451240 27435352868daily
08/05/2018140 22145644
01/04/2019215116841 159284672323166daily
17/10/201816235 137283702653440
17/04/201814430 100297982733462
a Transformers without OLTC or without communicating OLTC; b transformers with communicating OLTC.
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Bustamante, S.; Manana, M.; Arroyo, A.; Martinez, R.; Laso, A. A Methodology for the Calculation of Typical Gas Concentration Values and Sampling Intervals in the Power Transformers of a Distribution System Operator. Energies 2020, 13, 5891. https://doi.org/10.3390/en13225891

AMA Style

Bustamante S, Manana M, Arroyo A, Martinez R, Laso A. A Methodology for the Calculation of Typical Gas Concentration Values and Sampling Intervals in the Power Transformers of a Distribution System Operator. Energies. 2020; 13(22):5891. https://doi.org/10.3390/en13225891

Chicago/Turabian Style

Bustamante, Sergio, Mario Manana, Alberto Arroyo, Raquel Martinez, and Alberto Laso. 2020. "A Methodology for the Calculation of Typical Gas Concentration Values and Sampling Intervals in the Power Transformers of a Distribution System Operator" Energies 13, no. 22: 5891. https://doi.org/10.3390/en13225891

APA Style

Bustamante, S., Manana, M., Arroyo, A., Martinez, R., & Laso, A. (2020). A Methodology for the Calculation of Typical Gas Concentration Values and Sampling Intervals in the Power Transformers of a Distribution System Operator. Energies, 13(22), 5891. https://doi.org/10.3390/en13225891

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