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Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran /
International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622
www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323
1317 | P a g e
Analysis of Partial Discharge using Phase-Resolved (n-q)
Statistical Techniques
Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N.
Cheeran
Department of Electrical Engineering, Veermata Jijabai Technological Institute (VJTI), Mumbai
ABSTRACT
Partial discharge (PD) patterns are an
important tool for the diagnosis of high voltage
(HV) insulation systems. Human experts can
discover possible insulation defects in various
representations of the PD data. One of the most
widely used representations is phase-resolved
PD (PRPD) patterns. In order to ensure reliable
operation of HV equipment, it is vital to relate
the observable statistical characteristics of PDs
to the properties of the defect and ultimately to
determine the type of the defect. In this work,
we have obtained and analyzed phase-resolved
discharge patterns using parameters such as
mean, standard deviation, variance, skewness
and kurtosis.
Keywords - Partial Discharge, Phase-resolved,
Statistical parameters
1. INTRODUCTION
PD is a localized electrical discharge that
partially bridges the insulation between conductors
and which may or may not occur adjacent to a
conductor. [1] In general, PDs are concerned with
dielectric materials used, and partially bridging the
electrodes between which the voltage is applied.
The insulation may consist of solid, liquid, or
gaseous materials, or any combination of them. PD
is the main reason for the electrical ageing and
insulation breakdown of high voltage electrical
apparatus. Different sources of PD give different
effect on insulation performance. Therefore, PD
classification is important in order to evaluate the
harmfulness of the discharge. [2]
PD classification aims at the recognition of
discharges of unknown origin. For many years, the
process was performed by investigating the pattern
of the discharge using the well known ellipse on an
oscilloscope screen, which was observed crudely
by eye. Nowadays, there has been extensive
published research to identify PD sources by using
intelligent technique like artificial neural networks,
fuzzy logic and acoustic emission. [2]
The recent upsurge of research on PD
phenomena has been driven in part by development
of new fast digital and computer-based techniques
that can process and analyze signals derived from
PD measurements. There seems to be an
expectation that, with sufficiently sophisticated
digital processing techniques, it should be possible
not only to gain new insight into the physical and
chemical basis of PD phenomena, but also to define
PD ā€˜patternsā€™ that can be used for identifying the
characteristics of the insulation ā€˜defectsā€™ at which
the observed PD occur. [3] One of the undoubted
advantages of a computer-aided measuring system
is the ability to process a large amount of
information and to transform this information into
an understandable output. [4]
There are many types of patterns that can be
used for PD source identification. If these
differences can be presented in terms of statistical
parameters, identification of the defect type from
the observed PD pattern may be possible. As each
defect has its own particular degradation
mechanism, it is important to know the correlation
between discharge patterns and the kind of defect.
Therefore, progress in the recognition of internal
discharge and their correlation with the kind of
defect is becoming increasingly important in the
quality control in insulating systems. [4]
Researches have been carried out in recognition of
partial discharge sources using statistical
techniques and neural network. In our study, we
have tested various internal and external discharges
like void, surface and corona using statistical
parameters such as mean, standard deviation,
variance, skewness and kurtosis in phase resolved
pattern (n-q) and classified the partial discharge
source for unknown partial discharge data.
2. STATISTICAL PARAMETERS
The important parameters to characterize
PDs are phase angle Ļ†, PD charge magnitude q and
PD number of pulses n. PD distribution patterns are
composed of these three parameters. Statistical
parameters are obtained for phase resolved pattern
(n-q).
2.1. Processing of data (Ļ†, q and n)
Statistical analysis is applied for the
computation of several statistical operators. The
definitions of most of these statistical operators are
described below. The profile of all these discrete
distribution functions can be put in a general
function, i.e., yi=f(xi). The statistical operators can
be computed as follows:
Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran /
International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622
www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323
1318 | P a g e
ā€¦ā€¦ā€¦(1)
ā€¦ā€¦ā€¦(2)
ā€¦ā€¦ā€¦(3)
ā€¦ā€¦ā€¦(4)
Standard Deviation = ...ā€¦ā€¦(5)
where,
x = number of pulses n,
f(x) = PD charge magnitude q,
Ī¼ = average mean value of PD charge
magnitude q,
Ļƒ = variance of PD charge magnitude q
Skewness and Kurtosis are evaluated with
respect to a reference normal distribution.
Skewness is a measure of asymmetry or degree of
tilt of the data with respect to normal distribution.
If the distribution is symmetric, Sk=0; if it is
asymmetric to the left, Sk>0; and if it is
asymmetric to the right, Sk<0. Kurtosis is an
indicator of sharpness of distribution. If the
distribution has the same sharpness as a normal
distribution, then Ku=0. If it is sharper than the
normal then Ku>0 else it is flatter i.e. Ku<0. [5][6]
3. RESULTS AND DISCUSSIONS
Analysis involves determining unknown
PD patterns by comparing those with known PD
patterns such as void, surface and corona. The
comparison is done with respect to their statistical
parameters. [7]
3.1. Phase resolved patterns (n-q)
The phase resolved patterns n-q are
obtained for three known PD patterns: void, surface
and corona (as discussed in 3.1.1) and three
unknown PD patterns: data1, data2 and data3 (as
discussed in 3.1.2). For all the following plots, x-
axis is number of cycles (n) and y-axis is
magnitude of charge (q).
3.1.1. 2D distribution of n-q for known PD
patterns
Fig. 1(a), Fig. 1(b), Fig. 1(c), Fig. 1(d) and Fig.
1(e) are the n-q plot of mean, standard deviation,
variance, skewness and kurtosis for void discharge
respectively.
Fig. 1(a) Mean plot (n-q) of void discharge
Fig. 1(b) Standard deviation plot (n-q) of void
discharge
Fig. 1(c) Variance plot (n-q) of void discharge
Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran /
International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622
www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323
1319 | P a g e
Fig. 1(d) Skewness plot (n-q) of void discharge
Fig. 1(e) Kurtosis plot (n-q) of void discharge
Referring to Fig. 1(a), Fig. 1(b) and Fig. 1(c) of
void discharge, it can be seen there is a peak
occurring somewhere after 1500 cycle, which is a
void discharge and in Fig. 1(d) and Fig. 1(e) of
skewness and kurtosis, the value decreases at that
cycle where peak occurs.
Fig. 2(a), Fig. 2(b), Fig. 2(c), Fig. 2(d) and Fig.
2(e) are the n-q plot of mean, standard deviation,
variance, skewness and kurtosis for surface
discharge respectively.
Fig. 2(a) Mean plot (n-q) of surface discharge
Fig. 2(b) Standard deviation plot (n-q) of surface
discharge
Fig. 2(c) Variance plot (n-q) of surface discharge
Fig. 2(d) Skewness plot (n-q) of surface discharge
Fig. 2(e) Kurtosis plot (n-q) of surface discharge
In surface discharge, charges are distributed
uniformly over all cycles for mean, standard
deviation, variance, skewness and kurtosis as
shown in Fig. 2(a), Fig. 2(b), Fig. 2(c), Fig. 2(d)
and Fig. 2(e).
Fig. 3(a), Fig. 3(b), Fig. 3(c), Fig. 3(d) and Fig.
3(e) are the n-q plot of mean, standard deviation,
variance, skewness and kurtosis for corona
discharge respectively.
Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran /
International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622
www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323
1320 | P a g e
Fig. 3(a) Mean plot (n-q) of corona discharge
Fig. 3(b) Standard deviation (n-q) of corona
discharge
Fig. 3(c) Variance plot (n-q) of corona discharge
Fig. 3(d) Skewness plot (n-q) of corona discharge
Fig. 3(e) Kurtosis plot (n-q) of corona discharge
Referring to Fig. 3(a), Fig. 3(b) and Fig. 3(c) of
corona discharge, it can be seen the charges starts
occurring after 500 cycle increasing somewhere up
to 1200 cycle and then decreasing after 2000 cycle,
and in Fig. 3(d) and Fig. 3(e) of skewness and
kurtosis, the value decreases from 500 cycle till
2000 cycle.
3.1.2. 2D distribution of (n-q) for unknown PD
patterns
Fig. 4(a), Fig. 4(b), Fig. 4(c), Fig. 4(d) and Fig.
4(e) are the n-q plot of mean, standard deviation,
variance, skewness and kurtosis for data1
respectively.
Fig. 4(a) Mean plot (n-q) of data1
Fig. 4(b) Standard deviation plot (n-q) of data1
Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran /
International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622
www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323
1321 | P a g e
Fig. 4(c) Variance plot (n-q) of data1
Fig. 4(d) Skewness plot (n-q) of data1
Fig. 4(e) Kurtosis plot (n-q) of data1
In Fig. 4(a), Fig. 4(b), Fig. 4(c), Fig. 4(d) and
Fig. 4(e), the charges are uniformly distributed
similar to surface discharge. Hence, it can be
concluded that data1 is having surface discharge.
Fig. 5(a) Mean plot (n-q) of data2
Fig. 5(b) Standard deviation plot (n-q) of data2
Fig. 5(c) Variance plot (n-q) of data2
Fig. 5(d) Skewness plot (n-q) of data2
Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran /
International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622
www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323
1322 | P a g e
Fig. 5(e) Kurtosis plot (n-q) of data2
Fig. 5(a), Fig. 5(b), Fig. 5(c), Fig. 5(d) and Fig.
5(e) are the n-q plot of mean, standard deviation,
variance, skewness and kurtosis for data2
respectively. In these figures we can observe that
the charges are uniformly distributed similar to
surface discharge. Hence, it can be concluded that
data2 is having surface discharge.
Fig. 6(a), Fig. 6(b), Fig. 6(c), Fig. 6(d) and Fig.
6(e) are the n-q plot of mean, standard deviation,
variance, skewness and kurtosis for data3
respectively.
Fig. 6(a) Mean plot (n-q) of data3
Fig. 6(b) Standard deviation plot (n-q) of data3
Fig. 6(c) Variance plot (n-q) of data3
Fig. 6(d) Skewness plot (n-q) of data3
Fig. 6(e) Kurtosis plot (n-q) of data3
In Fig. 6(a), Fig. 6(b) and Fig. 6(c), there is a
occurrence of peak after 1500 cycle and in Fig.
6(d) and Fig. 6(e), the skewness and kurtosis value
decreases at that peak which is similar to void
discharge. Hence, it can be concluded that data3 is
void discharge.
3.2. Statistical parameters
After analysis we obtained the results
which are summarized in table 1 and table 2.
Table 1. Parameters of known PD patterns
Parameters void surface corona
Mean 13320.32 145.706 1.426
Standard
deviation
7553.716 126.009 1.139
Variance 1.64*108
17921.01 2.279
Skewness 3.66*10-17
0.809 0.26
Kurtosis 0.04878 2.442 0.966
Table 2. Parameters of unknown PD Patterns
Parameters data1 data2 data3
Mean 105.119 553.93 13320.32
Standard
deviation
97.966 698.3 7553.716
Variance 16714.23 4.94*105
1.64* 108
Skewness 0.692 1.939 -3.7*10-17
Kurtosis 2.004 6.31 0.04878
Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran /
International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622
www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323
1323 | P a g e
Fig. 7 is the statistical characteristics of mean,
standard deviation, variance, skewness and kurtosis
of void discharge against data3. Fig. 8(a), Fig. 8(b)
are the statistical characteristics of mean, standard
deviation, variance, skewness and kurtosis of
surface discharge against data1 and data2
respectively.
Fig. 7 Statistical Characteristics of data3 against
void discharge
Fig. 8(a) Statistical characteristics of data1 against
surface discharge
Fig. 8(b) Statistical characteristics of data2 against
surface discharge
4. OBSERVATIONS AND CONCLUSION
The following observations are made from
the results:
ļ‚· Plotting statistical parameters of void discharge
against data3 in Fig. 8 shows data3
characteristics overlaps void characteristics, it
can be concluded that data3 is void discharge.
ļ‚· Similarly, for surface discharge, data1 and
data2 characteristics (Fig. 8(a) and Fig. 8(b))
approximately fits surface discharge
characteristics, it can be concluded that data1
and data2 is surface discharge.
The analysis done from statistical parameters
are data1 is surface discharge, data2 is surface
discharge and data3 is void discharge. The analysis
using statistical parameters can be done for various
types of PD discharges.
From statistical parameters, the PD source
cannot be concluded accurately so it needs to be
applied to others classification methods such as
neural network, Fuzzy logic etc. as a pre-
processing parameters for getting accurate PD
source.
REFERENCES
[1] Partial Discharge Measurements, IEC
Publication 270, 1981.
[2] Nur Fadilah Ab Aziz, L. Hao, P. L. Lewin,
ā€œAnalysis of Partial Discharge
Measurement Data Using a Support
Vector Machine,ā€ The 5th Student
Conference on Research and
Development, 11-12 December 2007,
Malayasia.
[3] M. G. Danikas, ā€œThe Definitions Used for
Partial Discharge Phenomena,ā€ IEEE
Trans. Elec. Insul., Vol. 28, pp. 1075-
1081, 1993.
[4] E. Gulski and F. H. Kreuger, ā€œComputer-
aided recognition of Discharge Sources,ā€
IEEE Transactions on Electrical
Insulation, Vol. 27 No. 1, February 1002.
[5] N.C. Sahoo, M. M. A. Salama, R.
Bartnikas, ā€œTrends in Partial Discharge
Pattern Classification: A Surveyā€, IEEE
Transactions on Dielectrics and Electrical
Insulation, Vol. 12, No. 2; April 2005.
[6] C. Chang and Q. Su, ā€œStatistical
Characteristics of Partial Discharges from
a Rod-Plane Arrangementā€
[7] Namrata Bhosale, Priyanka Kothoke,
Amol Deshpande, Dr. Alice Cheeran,
ā€œAnalysis of Partial Discharge using
Phase-Resolved (Ļ†-q) and (Ļ†-n) Statistical
Techniquesā€, International Journal of
Engineering Research and Technology,
Vol. 2 (05), 2013,ISSN2278-0181.

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  • 1. Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran / International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323 1317 | P a g e Analysis of Partial Discharge using Phase-Resolved (n-q) Statistical Techniques Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran Department of Electrical Engineering, Veermata Jijabai Technological Institute (VJTI), Mumbai ABSTRACT Partial discharge (PD) patterns are an important tool for the diagnosis of high voltage (HV) insulation systems. Human experts can discover possible insulation defects in various representations of the PD data. One of the most widely used representations is phase-resolved PD (PRPD) patterns. In order to ensure reliable operation of HV equipment, it is vital to relate the observable statistical characteristics of PDs to the properties of the defect and ultimately to determine the type of the defect. In this work, we have obtained and analyzed phase-resolved discharge patterns using parameters such as mean, standard deviation, variance, skewness and kurtosis. Keywords - Partial Discharge, Phase-resolved, Statistical parameters 1. INTRODUCTION PD is a localized electrical discharge that partially bridges the insulation between conductors and which may or may not occur adjacent to a conductor. [1] In general, PDs are concerned with dielectric materials used, and partially bridging the electrodes between which the voltage is applied. The insulation may consist of solid, liquid, or gaseous materials, or any combination of them. PD is the main reason for the electrical ageing and insulation breakdown of high voltage electrical apparatus. Different sources of PD give different effect on insulation performance. Therefore, PD classification is important in order to evaluate the harmfulness of the discharge. [2] PD classification aims at the recognition of discharges of unknown origin. For many years, the process was performed by investigating the pattern of the discharge using the well known ellipse on an oscilloscope screen, which was observed crudely by eye. Nowadays, there has been extensive published research to identify PD sources by using intelligent technique like artificial neural networks, fuzzy logic and acoustic emission. [2] The recent upsurge of research on PD phenomena has been driven in part by development of new fast digital and computer-based techniques that can process and analyze signals derived from PD measurements. There seems to be an expectation that, with sufficiently sophisticated digital processing techniques, it should be possible not only to gain new insight into the physical and chemical basis of PD phenomena, but also to define PD ā€˜patternsā€™ that can be used for identifying the characteristics of the insulation ā€˜defectsā€™ at which the observed PD occur. [3] One of the undoubted advantages of a computer-aided measuring system is the ability to process a large amount of information and to transform this information into an understandable output. [4] There are many types of patterns that can be used for PD source identification. If these differences can be presented in terms of statistical parameters, identification of the defect type from the observed PD pattern may be possible. As each defect has its own particular degradation mechanism, it is important to know the correlation between discharge patterns and the kind of defect. Therefore, progress in the recognition of internal discharge and their correlation with the kind of defect is becoming increasingly important in the quality control in insulating systems. [4] Researches have been carried out in recognition of partial discharge sources using statistical techniques and neural network. In our study, we have tested various internal and external discharges like void, surface and corona using statistical parameters such as mean, standard deviation, variance, skewness and kurtosis in phase resolved pattern (n-q) and classified the partial discharge source for unknown partial discharge data. 2. STATISTICAL PARAMETERS The important parameters to characterize PDs are phase angle Ļ†, PD charge magnitude q and PD number of pulses n. PD distribution patterns are composed of these three parameters. Statistical parameters are obtained for phase resolved pattern (n-q). 2.1. Processing of data (Ļ†, q and n) Statistical analysis is applied for the computation of several statistical operators. The definitions of most of these statistical operators are described below. The profile of all these discrete distribution functions can be put in a general function, i.e., yi=f(xi). The statistical operators can be computed as follows:
  • 2. Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran / International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323 1318 | P a g e ā€¦ā€¦ā€¦(1) ā€¦ā€¦ā€¦(2) ā€¦ā€¦ā€¦(3) ā€¦ā€¦ā€¦(4) Standard Deviation = ...ā€¦ā€¦(5) where, x = number of pulses n, f(x) = PD charge magnitude q, Ī¼ = average mean value of PD charge magnitude q, Ļƒ = variance of PD charge magnitude q Skewness and Kurtosis are evaluated with respect to a reference normal distribution. Skewness is a measure of asymmetry or degree of tilt of the data with respect to normal distribution. If the distribution is symmetric, Sk=0; if it is asymmetric to the left, Sk>0; and if it is asymmetric to the right, Sk<0. Kurtosis is an indicator of sharpness of distribution. If the distribution has the same sharpness as a normal distribution, then Ku=0. If it is sharper than the normal then Ku>0 else it is flatter i.e. Ku<0. [5][6] 3. RESULTS AND DISCUSSIONS Analysis involves determining unknown PD patterns by comparing those with known PD patterns such as void, surface and corona. The comparison is done with respect to their statistical parameters. [7] 3.1. Phase resolved patterns (n-q) The phase resolved patterns n-q are obtained for three known PD patterns: void, surface and corona (as discussed in 3.1.1) and three unknown PD patterns: data1, data2 and data3 (as discussed in 3.1.2). For all the following plots, x- axis is number of cycles (n) and y-axis is magnitude of charge (q). 3.1.1. 2D distribution of n-q for known PD patterns Fig. 1(a), Fig. 1(b), Fig. 1(c), Fig. 1(d) and Fig. 1(e) are the n-q plot of mean, standard deviation, variance, skewness and kurtosis for void discharge respectively. Fig. 1(a) Mean plot (n-q) of void discharge Fig. 1(b) Standard deviation plot (n-q) of void discharge Fig. 1(c) Variance plot (n-q) of void discharge
  • 3. Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran / International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323 1319 | P a g e Fig. 1(d) Skewness plot (n-q) of void discharge Fig. 1(e) Kurtosis plot (n-q) of void discharge Referring to Fig. 1(a), Fig. 1(b) and Fig. 1(c) of void discharge, it can be seen there is a peak occurring somewhere after 1500 cycle, which is a void discharge and in Fig. 1(d) and Fig. 1(e) of skewness and kurtosis, the value decreases at that cycle where peak occurs. Fig. 2(a), Fig. 2(b), Fig. 2(c), Fig. 2(d) and Fig. 2(e) are the n-q plot of mean, standard deviation, variance, skewness and kurtosis for surface discharge respectively. Fig. 2(a) Mean plot (n-q) of surface discharge Fig. 2(b) Standard deviation plot (n-q) of surface discharge Fig. 2(c) Variance plot (n-q) of surface discharge Fig. 2(d) Skewness plot (n-q) of surface discharge Fig. 2(e) Kurtosis plot (n-q) of surface discharge In surface discharge, charges are distributed uniformly over all cycles for mean, standard deviation, variance, skewness and kurtosis as shown in Fig. 2(a), Fig. 2(b), Fig. 2(c), Fig. 2(d) and Fig. 2(e). Fig. 3(a), Fig. 3(b), Fig. 3(c), Fig. 3(d) and Fig. 3(e) are the n-q plot of mean, standard deviation, variance, skewness and kurtosis for corona discharge respectively.
  • 4. Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran / International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323 1320 | P a g e Fig. 3(a) Mean plot (n-q) of corona discharge Fig. 3(b) Standard deviation (n-q) of corona discharge Fig. 3(c) Variance plot (n-q) of corona discharge Fig. 3(d) Skewness plot (n-q) of corona discharge Fig. 3(e) Kurtosis plot (n-q) of corona discharge Referring to Fig. 3(a), Fig. 3(b) and Fig. 3(c) of corona discharge, it can be seen the charges starts occurring after 500 cycle increasing somewhere up to 1200 cycle and then decreasing after 2000 cycle, and in Fig. 3(d) and Fig. 3(e) of skewness and kurtosis, the value decreases from 500 cycle till 2000 cycle. 3.1.2. 2D distribution of (n-q) for unknown PD patterns Fig. 4(a), Fig. 4(b), Fig. 4(c), Fig. 4(d) and Fig. 4(e) are the n-q plot of mean, standard deviation, variance, skewness and kurtosis for data1 respectively. Fig. 4(a) Mean plot (n-q) of data1 Fig. 4(b) Standard deviation plot (n-q) of data1
  • 5. Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran / International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323 1321 | P a g e Fig. 4(c) Variance plot (n-q) of data1 Fig. 4(d) Skewness plot (n-q) of data1 Fig. 4(e) Kurtosis plot (n-q) of data1 In Fig. 4(a), Fig. 4(b), Fig. 4(c), Fig. 4(d) and Fig. 4(e), the charges are uniformly distributed similar to surface discharge. Hence, it can be concluded that data1 is having surface discharge. Fig. 5(a) Mean plot (n-q) of data2 Fig. 5(b) Standard deviation plot (n-q) of data2 Fig. 5(c) Variance plot (n-q) of data2 Fig. 5(d) Skewness plot (n-q) of data2
  • 6. Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran / International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323 1322 | P a g e Fig. 5(e) Kurtosis plot (n-q) of data2 Fig. 5(a), Fig. 5(b), Fig. 5(c), Fig. 5(d) and Fig. 5(e) are the n-q plot of mean, standard deviation, variance, skewness and kurtosis for data2 respectively. In these figures we can observe that the charges are uniformly distributed similar to surface discharge. Hence, it can be concluded that data2 is having surface discharge. Fig. 6(a), Fig. 6(b), Fig. 6(c), Fig. 6(d) and Fig. 6(e) are the n-q plot of mean, standard deviation, variance, skewness and kurtosis for data3 respectively. Fig. 6(a) Mean plot (n-q) of data3 Fig. 6(b) Standard deviation plot (n-q) of data3 Fig. 6(c) Variance plot (n-q) of data3 Fig. 6(d) Skewness plot (n-q) of data3 Fig. 6(e) Kurtosis plot (n-q) of data3 In Fig. 6(a), Fig. 6(b) and Fig. 6(c), there is a occurrence of peak after 1500 cycle and in Fig. 6(d) and Fig. 6(e), the skewness and kurtosis value decreases at that peak which is similar to void discharge. Hence, it can be concluded that data3 is void discharge. 3.2. Statistical parameters After analysis we obtained the results which are summarized in table 1 and table 2. Table 1. Parameters of known PD patterns Parameters void surface corona Mean 13320.32 145.706 1.426 Standard deviation 7553.716 126.009 1.139 Variance 1.64*108 17921.01 2.279 Skewness 3.66*10-17 0.809 0.26 Kurtosis 0.04878 2.442 0.966 Table 2. Parameters of unknown PD Patterns Parameters data1 data2 data3 Mean 105.119 553.93 13320.32 Standard deviation 97.966 698.3 7553.716 Variance 16714.23 4.94*105 1.64* 108 Skewness 0.692 1.939 -3.7*10-17 Kurtosis 2.004 6.31 0.04878
  • 7. Priyanka M. Kothoke, Namrata R. Bhosale, Amol Despande, Dr. Alice N. Cheeran / International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com Vol. 3, Issue 3, May-Jun 2013, pp.1317-1323 1323 | P a g e Fig. 7 is the statistical characteristics of mean, standard deviation, variance, skewness and kurtosis of void discharge against data3. Fig. 8(a), Fig. 8(b) are the statistical characteristics of mean, standard deviation, variance, skewness and kurtosis of surface discharge against data1 and data2 respectively. Fig. 7 Statistical Characteristics of data3 against void discharge Fig. 8(a) Statistical characteristics of data1 against surface discharge Fig. 8(b) Statistical characteristics of data2 against surface discharge 4. OBSERVATIONS AND CONCLUSION The following observations are made from the results: ļ‚· Plotting statistical parameters of void discharge against data3 in Fig. 8 shows data3 characteristics overlaps void characteristics, it can be concluded that data3 is void discharge. ļ‚· Similarly, for surface discharge, data1 and data2 characteristics (Fig. 8(a) and Fig. 8(b)) approximately fits surface discharge characteristics, it can be concluded that data1 and data2 is surface discharge. The analysis done from statistical parameters are data1 is surface discharge, data2 is surface discharge and data3 is void discharge. The analysis using statistical parameters can be done for various types of PD discharges. From statistical parameters, the PD source cannot be concluded accurately so it needs to be applied to others classification methods such as neural network, Fuzzy logic etc. as a pre- processing parameters for getting accurate PD source. REFERENCES [1] Partial Discharge Measurements, IEC Publication 270, 1981. [2] Nur Fadilah Ab Aziz, L. Hao, P. L. Lewin, ā€œAnalysis of Partial Discharge Measurement Data Using a Support Vector Machine,ā€ The 5th Student Conference on Research and Development, 11-12 December 2007, Malayasia. [3] M. G. Danikas, ā€œThe Definitions Used for Partial Discharge Phenomena,ā€ IEEE Trans. Elec. Insul., Vol. 28, pp. 1075- 1081, 1993. [4] E. Gulski and F. H. Kreuger, ā€œComputer- aided recognition of Discharge Sources,ā€ IEEE Transactions on Electrical Insulation, Vol. 27 No. 1, February 1002. [5] N.C. Sahoo, M. M. A. Salama, R. Bartnikas, ā€œTrends in Partial Discharge Pattern Classification: A Surveyā€, IEEE Transactions on Dielectrics and Electrical Insulation, Vol. 12, No. 2; April 2005. [6] C. Chang and Q. Su, ā€œStatistical Characteristics of Partial Discharges from a Rod-Plane Arrangementā€ [7] Namrata Bhosale, Priyanka Kothoke, Amol Deshpande, Dr. Alice Cheeran, ā€œAnalysis of Partial Discharge using Phase-Resolved (Ļ†-q) and (Ļ†-n) Statistical Techniquesā€, International Journal of Engineering Research and Technology, Vol. 2 (05), 2013,ISSN2278-0181.