SMART GRID ISLANDING, FAULT DETECTION AND … · 2019-05-04 · The standby generation, peak...
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International Journal of Mechanical Engineering and Technology (IJMET)
Volume 10, Issue 03, March 2019, pp. 1792–1805, Article ID: IJMET_10_03_181
Available online at http://www.iaeme.com/ijmet/issues.asp?JType=IJMET&VType=10&IType=3
ISSN Print: 0976-6340 and ISSN Online: 0976-6359
© IAEME Publication Scopus Indexed
SMART GRID ISLANDING, FAULT DETECTION
AND CLASSIFICATION WITH DISTRIBUTED
GENERATION BASED ON WAVELET
ALIENATION CURRENT SIGNALS APPROACH
Kamala Devi Kolavennu
Department of Electrical and Electronics Engineering
Bapatla Engineering College, Bapatla, Andhra Pradesh, India
Abdul Gafoor Shaik
Department of Electrical Engineering
IIT- Jodhpur, Rajasthan, India
ABSTRACT
The Distributed generation (DG) is gaining significant attention due to increase in the
demand for electricity. Distributed generations are mostly used with the association of power
distribution systems to energize local loads and network. Islanding is technically an undesirable
condition that demands necessary steps to reduce negative effects in maintaining stability of the
system. In the present work, alienation technique has been applied to detect and differentiate
islanding, faults and sudden load change and faults have been classified. A radial system with
four Distributed Generations (DFIG wind generator) connected to the source through common
coupling point (PCC) has been used for comprehensive study of this technique. Current signals
were decomposed with Daubechies (db1) wavelet in order to get approximate coefficients at
each bus. Coefficients of Alienation are computed by using the wavelet based approximations
over a length of half cycle moving window . The alienation coefficients were used to compute
Islanding index and fault index. The same indices were compared with threshold to differentiate
Islanding, faults and sudden load change. The proposed algorithm has been tested for various
incidence angles for both islanding condition and faults. This technique is established to be
robust in detecting islanding condition, faults and impact of sudden load change.
Key words: Distributed generation, Alienation coefficients, Distribution network,
load change, Islanding index, Wavelet transform
Cite this Article: Kamala Devi Kolavennu and Abdul Gafoor Shaik, Smart Grid
Islanding, Fault Detection and Classification with Distributed Generation Based on
Wavelet Alienation Current Signals Approach, International Journal of Mechanical
Engineering and Technology 10(3), 2019, pp. 1792–1805.
http://www.iaeme.com/IJMET/issues.asp?JType=IJMET&VType=10&IType=3
Kamala Devi Kolavennu and Abdul Gafoor Shaik
http://www.iaeme.com/IJMET/index.asp 1793 [email protected]
1. INTRODUCTION
Penetration of the distributed generation in power distribution networks increases rapidly in the
present days. Distributed generation (DG) is also known as non-centralized power generation
or dispersed generation which refers to the production of Electricity near the consumption place.
The resources used in distributed generation are renewable energy sources and cogeneration
i.e., production of heat and electricity simultaneously. DGs are having some advantageous
characteristics like free location in the network area, relatively small generated power, increased
reliability of the Grid, reduced transmission and distribution line losses, better voltage support
and power quality improvement[1].
The standby generation, peak shaving, utility grid enhancement, load management are
various applications of the distributed generation. However many technical issues and
difficulties arise in the association of DG units with the Grid. Islanding condition is one of the
most undesirable conditions intentionally or accidentally takes place in DGs. According to
IEEE STD 1547-2003, in islanding condition, there is accidental or intentional disconnection
of the grid from distribution network system and the distributed generation continuously feed
the network and local loads[2]. Due to this Islanding condition, various operational problems
arise related to power quality, safety hazard, voltage and frequency instability and damage to
system equipment [3, 4]. The unsynchronized reclosing of the grid to distribution system
may trigger damage to the power electronic conditioning equipment of the distributed
generation. The standard of IEEE 929-2000 specifies particularly the disconnection of
distributed generation once it is islanded [5] and this issue is addressed by IEEE STD 1547-
2003 [6].Islanding detection techniques are broadly classified into remote (central) and local
techniques. A detailed review on islanding has been given by Khamis, Aziah [7]. Remote
methods are associated with islanding detection methods on the utility side where as local
methods are associated with detection of islanding on DG side. Remote methods are used to
detect unintentional islanding by monitoring voltage and frequency parameters [8]. Remote or
central methods are independent of number of inverters, generator type, and system size and
penetration level. Local techniques for islanding detection are based on the measurement of the
system parameters on DG side such as voltage, frequency, current and harmonic distortion [9].
Comparative analysis of anti islanding technique depends on application and cost and ability of
occurrence of islanding on feeder has been presented by P. Deshbhratar, R. Somalwar and S.
G. Kadwane [10]. Local Islanding detection techniques are further classified into passive and
active technique methods, and hybrid technique methods [11, 12]. Anti-islanding technique
method has been introduced by J. Yim, C.P.Diduch, L. Chang on the basis of proportional
power spectral density as a formalised measure [13]. A new approach to islanding detection by
extracting the negative sequence component of the current and voltage has been presented by
S. R Samantha Ray and Trupti Mayee Pujhari[14]. K. Narayana presented a scheme on a
priority based load shedding to detect islanding in case of multiple DG units [15].Ahmad G.
AbdElkadar reported a new islanding technique for DFIG wind turbine by using artificial neural
network [16]. R. K. Ray, N. Kishore [17] proposed a wavelet and S-transform based scheme by
considering a negative sequence component of the voltage signal extracted at point of common
coupling.J. A. Laghari [18] developed an islanding detection technique by using average rate
of change of reactive power and load shift strategy.
The effectiveness of different fault detection methods were studied by S. S. Gururajapathy
H. Mokhilis like fuzzy logic, artificial intelligence, , Genetic algorithm etc, [19]. Transmission
line protection scheme based on Wavelets are proposed by Abdul Gafoor and Ramanarao [20].
Rathore and Shaik has proposed the protection schemes for transmission line from faults with
the use of wavelet based alienation technique [21, 22].A protection scheme has been introduced
by Masoud and Mahfouz for transmission lines based on alienation coefficients [23].
Smart Grid Islanding, Fault Detection and Classification with Distributed Generation Based on
Wavelet Alienation Current Signals Approach
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In deed there is a need to investigate a protective scheme which requires fast detection with
less computational complex. In this present work the proposed algorithm can detect islanding
and faults within quarter cycle.
2. THE ALIENATION ALGORITHM BASED ON WAVELETS
2.1. The Wavelet Transform
There is effective use of Wavelet transform to analyse transients of current and voltage signals
in frequency as well as time-band. To decompose the signal in high and low frequency bands a
set of basic functions called Wavelets, are used, which are acquired from a mother wavelet by
dilation and translation. Therefore, the incidence of each frequency and amplitude can be found
precisely. The Wavelet Transform is explained as a series of a function h (n) (high pass filter)
and g (n) (low pass filter). The scaling and wavelet functions can be described in equations
as follows.
∅(𝑡) = √2 ∑ ℎ(𝑛)𝜑(2𝑡 − 𝑛)(1)
Ψ(𝑡) = √2 ∑ 𝑔(𝑛)𝜓(2𝑡 − 𝑛) (2)
Where, g (n) = (-1) n h (1-n)
The factor √2 maintains the norm of the function for the time compression factor 2. The
time compression factor is generally correlates to the scale. The selection of mother wavelet is
based on the type of application. This paper used Daubachies wavelet which is suited for this
application to get best results.
2.2. Alienation Coefficients
In the suggested algorithm the current signals have been sampled over a half cycle.
Approximation coefficients are acquired by applying wavelets to these current signals The
alienation coefficient based on approximation decomposition (Coefficients) is calculated as:
𝐴𝐴 = 1 − 𝑝𝑎2 (3)
Where, pa is the coefficient of correlation calculated based on approximations. The
correlation coefficient based on approximation coefficient is calculated as
𝑝𝑎 =𝑁𝑠(∑ 𝑟𝑎𝑠𝑎)−(∑ 𝑟𝑎 ∑ 𝑠𝑎)
√[𝑁𝑠 ∑ 𝑟𝑎2−(∑ 𝑟𝑎)
2][𝑁𝑠 ∑ 𝑠𝑎
2−(∑ 𝑠𝑎)2 (4)
Where, Ns is the number of samples per half cycle, absolute value of samples at t0 is denoted
by ra .Absolute value of samples consider in previous moving window of half cycle is denoted
by sa. The variance between two signals is defined as the alienation coefficient. Its value is
between 0 and 1.
2.3. Weighted alienation coefficients
It is needed to apply the concept of weighted alienation coefficients to detect the transients of
faults at PCC when faults are computed at DGs and for load changes. Simple arithmetic gives
equal importance to all values in a series. In some cases, all the values in a series do not give
same weight age. In such cases weighted average is more suitable for calculations. The concept
of average of weighted Alienation coefficients is as follows. It is used to increase the relative
importance of any quantity (of our interest) with respect to other quantities. For which each
value is multiplied by a weight according to its importance. The weighted average for any input
x can be computed by using the following equation (5) and procedure.
Kamala Devi Kolavennu and Abdul Gafoor Shaik
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5
1
i
ix avg WiXi
(5)
i= Total number of inputs.
Xi is alienation coefficient at each bus of four DGs and PCC where, i = 1, 2,3,4,5.
Get Max (x1, x2, x3, x4, x5) = n.
Divide each alienation value of DGs and PCC by n to get weights. The weights will be
xi/n=wi where i=1 to 5.
Multiply every alienation coefficient of four DGs and PCC with their respective weights
(wi).Then get average of these values for all three phases.
Figure 1. Line diagram of the system
The single line diagram of proposed system is shown in Fig. 1. The base power is about 10
MVA. This system contain radial distribution system with 4 wind farms (DG units), which
connected through Point of Common Coupling (PCC) to the main supply system and it operates
at a power frequency of about 50 Hz. These DG units are connected at about a distance of 30
km with the distribution lines of pi-sections. The data of the DGs, generator, distribution lines
and loads and transformers are considered from Ref. [17].
The three phase currents at a point of common coupling of distribution line and DGs are
sampled at 6400 Hz. These samples are acquired over a moving window of half cycle length.
These current samples have been decomposed with a db1 wavelet to get approximation
coefficients of third level (A3). CA, the Alienation coefficient is evaluated by comparing the
approximate coefficients of the current window, with those of the previous window of same
polarity.
These two consecutive windows, under normal conditions, have similar set of
approximations, hence the Aa remains zero. But in the case of islanding, fault or any other
abnormal condition, the approximate coefficient of the current window should differ from those
Smart Grid Islanding, Fault Detection and Classification with Distributed Generation Based on
Wavelet Alienation Current Signals Approach
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of previous window of same polarity. Hence, the alienation coefficient would increase from
zero to a certain value indicating disturbances.
3. PROPOSED ALGORITHM
Table 1 Parameters adopted in the present work
S.NO COMPONENT SPECIFICATION
1. Generator Rated short circuit MVA=1000
Rated KV=120,Vbase=120kv,f=50Hz
2. Distributed generations(DGs)
(DG-1 to DG-4)
Six Doubly fed induction generators
(9MW) of each wind turbine of rating1.5MW
are joined to a 25kv grid through
a length of 30km, 25 kv feeder.
3.
Distribution lines 1 to 4
PI-Section,30km each, rated MVA=
20, Rated KV=25kv,Vbase=25kv, R0=
0.11530Ω/km,R1=0.4130Ω/km,L0=
1.05e-3H/km, L1=3.32e-3H/km,
C0=11.33e-009F/km,X1=5.01e-009
F/km.
4. Transformer T1
Rated MVA=25,Vbase=25kv,Rated
KV=120/25, X1=0.10p.u, R1=0.003750
p.u,Rm=500.00p.u, Xm=500.00 p.u.
5. TransformerT2 to
Transformer T5.
Rated MVA=10.00,rated kv=575v/25kv,
Vbase=25KV, X1=0.10, R1=0.003750
p.u, Rm=500.00 p.u, Xm=500.00 p.u,f=50hz
6. Load L-1 15MW,5MVAR.
7. Load L-2 to Load L-5 8.0MW,3MVAR.
Kamala Devi Kolavennu and Abdul Gafoor Shaik
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Figure 2. Flow chart of the proposed algorithm
Smart Grid Islanding, Fault Detection and Classification with Distributed Generation Based on
Wavelet Alienation Current Signals Approach
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4. RESULTS AND DISCUSSION
4.1. Comparison of islanding and load change
4.1.1. Detection of islanding
As per Fig.1 the single line diagram is modelled in Matlab / Simulink environment. The flow
chart of the present work is shown in Fig 2. The 6400 Hz sampling frequency is considered
with 128 samples per cycle. The simulation has been carried out for 25 cycles and run for 0.5
sec (25 cycles) and fault islanding and load change were simulated after 20 cycles (at 0.4sec).
The detection of islanding is illustrated in Fig.3 at various DGs by opening circuit breaker at
0.4sec at PCC. In islanding, fault and load changing the islanding index and fault indexes are
compared with the threshold value. The threshold value is set as 0.01 in case of islanding and
load change. Further, a threshold value of 0.4 at DGs and 0.15 at PCC were suitably considered
for detection and classification of faults. It has been observed that the islanding index of
islanding at every DG is greater than that of threshold and islanding index of load change at
every DG is found to be lesser than the threshold. The fault index was observed as higher than
the threshold for the fault and lower than the threshold for islanding. Fig.3(a), (b), (c), (d)
illustrate variation of islanding index above the threshold which indicate islanding condition at
DG-1, DG-2, DG-3, DG-4 for current signals which satisfies proposed algorithm.
Figure 3.Variation of islanding indexes with time at a) DG-1 located at 30km from PCC, b) DG-2 located at
60km from PCC, c) DG-3 located at 30km from PCC and d) DG-4 located at 60km from PCC.
4.1.2. The Variation of islanding incidence angle
The proposed algorithm has been tested at regular intervals of 300 by applying Islanding.
Variation of islanding indexes of three phases with incidence angle has been illustrated in Fig.
4. It is evident from graph that the islanding index is always greater than the threshold one for
various incidence angles at PCC which shows islanding condition.
Kamala Devi Kolavennu and Abdul Gafoor Shaik
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Table 2 Islanding Incidence Angle
Incidence Angle PHASE A PHASE B PHASE C I-TH
0° 0.03466 0.0144 0.0222 0.01
30° 0.033375 0.0255 0.0319 0.01
60° 0.013 0.0189 0.0369 0.01
90° 0.038 0.0255 0.04215 0.01
120° 0.0155 0.023 0.01442 0.01
150° 0.0331 0.0222 0.039 0.01
180° 0.0331 0.01422 0.02312 0.01
Figure 4.Variation of islanding index for different incidence angle at four DGs.
4.1.3. The Load changing
The effect of sudden load change at DG-1 on distribution network is observed. The effect of
load change is shown in Fig.5 in a distribution line at DG-1 at 0.4sec through a circuit breaker.
System at different levels of load increment on 3MVAR and 0.8 power factor base has been
added to the existing system load at similar time of 0.4 sec. Fig5 (a),5(b),5(c),5(d),5(e) show
the load change of 5% , 10%,20%, 25% and 30% and it is observed that the magnitude of
disturbance during load change is found to be less than that of threshold.
4.2. Comparison of Islanding and faults
4.2.1. Detection of islanding
Fig.6 demonstrates the detection of islanding at various DGs with threshold value 0.15 by
opening circuit breaker at 0.4sec at PCC. In order to compare islanding and fault , the fault
index value is set as 0.15. The transients of islanding occurred in between 0.01 and 0.15.
Islanding index and fault indexes are compared with the threshold value. It has been observed
that the fault index of islanding at every DG is lower than the threshold and fault index of faults
were observed as greater than the threshold value. Fig.6(a), (b), (c), (d),(e),(f) illustrate variation
of islanding index below the threshold which indicate islanding condition at DG-1, DG-2, DG-
3, DG-4.
0
0.01
0.02
0.03
0.04
0.05
0° 30° 60° 90° 120° 150° 180°
Wei
ghte
d a
lien
atio
n c
oef
fici
ents
Incidence angle
A B C I-TH
Smart Grid Islanding, Fault Detection and Classification with Distributed Generation Based on
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Figure 5. The effect of load changing in a distribution line at DG-1: (a). 5% load changing at DG-1,
(b). 10% load changing at DG-1, (c). 20% load changing at DG-1, (d). 25% load changing at DG-1,
(e). 30% load changing at DG-1
Figure 6.Variation of islanding indexes with time at a) DG-1 located at 30km from PCC, b) DG-2
located at 60km from PCC, c) DG-3 located at 30km from PCC and d) DG-4 located at 60km from
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PCC, e) Variation of Islanding index with time at DG-3 located at 35km from PCC and f) Variation of
Islanding index with time at DG-2 located at 50km from PCC.
4.2.2. Variation of islanding incidence angle
Islanding condition has been tested at regular interval of 300. The variation of islanding indexes
of three phases with incidence angle has been illustrated in Fig.7. It is evident from the graph
that the islanding index is always lower than the threshold one for various incidence angles
which shows the islanding condition
Figure 7. Variation of islanding indexes with islanding incidence angles at DG-1, b) DG-2, c) DG-3
and d)DG4
4.2.3. Detection and classification of faults
Figure 8 (a) AG fault at DG1 and (b) AG fault at PCC
Smart Grid Islanding, Fault Detection and Classification with Distributed Generation Based on
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Figure 9 (a) ABG fault at DG2 and (b) ABG fault at PCC
Figure 10 (a) AB fault at DG3 and (b) AB fault at PCC
Figure 11 (a) ABG fault at DG4 and (b) ABG fault at PCC
Simulation of faults has been done after 20-cycles for obtaining post fault transients for 5-
cycles. The performance of the proposed algorithm for different faults at a distance of 30 km
from PCC and DGs from each other at various DGs and PCC is demonstrated in Fig.8 to Fig.11.
Fig.8 shows variation of fault indexes of three phase currents with time at DG1 and PCC.
Transients due to faults at PCC occurred in between0.15 to 0.4 and at DGs transients obtained
above 0.4. Hence .Threshold value for identification of faults and their classification ihas been
set at 0.15 at PCC and 0.4 at four DGs. It has been observed from Fig. 8 (a) and (b) that the
fault index of phase A is greater than that of the threshold and for those of phase B and phase
C are lower than the threshold (F-TH). Thus the suggested scheme is identified and classified
as single line to ground fault (AG) at DG-1 and PCC. It has been illustrated from Fig. 9 (a) and
(b) that the fault index of phase A and phase B are above the threshold and that of phase C is
found to be below the threshold. Thus this fault is identified and classified as ABG fault at DG-
2 and its respective PCC. Fig.10(a) and (b) illustrate that the fault index of both phase A and
phase B are above threshold and phase C is below the threshold. Thus fault is recognized as AB
fault at DG-3 and its PCC. Fig.11(a) and (b) show that the fault index of all the three phases are
above threshold which is acknowledged as three phase fault. From the graphs it is observed that
the healthy phase never cross the threshold value and faulty phase crosses the threshold value.
Once fault index of any phase is greater than the threshold value, it is considered as faulty phase
even though the fault index is lower than the threshold for a moment after detecting the fault.
In the present work, fault was detected within quarter cycle at every DG and PCC.
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4.2.4. Variation of the fault incidence angles
To test the suggested algorithm at equal intervals of 300 faults have been simulated. The
difference of fault indexes of the three phases with the angle of fault incidence has been
illustrated in Fig 12. It is apparent from Fig 12(a) that the fault index of the faulty phases A
and B are greater than that of threshold for various angles of fault incidence for AB fault at DG-
1. It is illustrated from the Fig12 (b) to Fig 12(e) that the fault index of the faulty phase is higher
than that of threshold value and fault index of healthy phase is lower than the threshold value
for different fault incidence angles for AG fault atDG-2,ACG fault at DG-3, ABG fault at DG-
4 and ABCG fault at PCC.
Figure 12.Variation of fault index with fault incidence angle: (a) AB fault at DG-1, (b)AG fault at
DG-2, (c)ACG fault at DG-3, (d) ABG fault at DG-4, (e) ABCG fault at PCC.
Table 3. Fault detection time at different DGs for various faults
TYPE OF
FAULT
PHASE A PHASE B PHASE C
IS FAULT
PRESE
NT
DETECTI
ON
TIME(SE
C)
IS
FAULTPR
ESENT
DETECCTI
ON
TIME(SEC)
IS
FAULTP
RESENT
DETECTI
ON
TIME(SE
C)
AG atDG-1 YES 0.0025 NO N.A NO N.A
ABG at DG-2 YES 0.00125 YES 0.00125 NO N.A
AB at DG-3 YES 0.00375 YES 0.00125 NO N.A
ABCG at DG-4 YES 0.0025 YES 0.0025 YES 0.0025
The above table-3 and table-4 illustrate that the time required detecting fault from incidence
in seconds at DGs and PCC. From table-1 and table-2, it is clear that the fault is detected in
0.0025 sec from the incidence at both DG-1 and PCC in case of AG fault. It is evident that the
fault is detected within the quarter cycle in all types of faults at both DGs and corresponding
PCC.
Smart Grid Islanding, Fault Detection and Classification with Distributed Generation Based on
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Table 4. Fault detection time at PCC during the faults at various DGs
TYPE OF
FAULT
PHASE A PHASE B PHASE C
IS FAULT
PRESEN
T
DETECTI
ON
TIME(SE
C)
IS
FAULTPR
ESENT
DETECTIO
N
TIME(SEC)
IS FAULT
PRESEN
T
DETECTI
ON
TIME(SE
C)
AG at DG-1 YES 0.0025 NO N.A NO N.A
ABG at DG-2 YES 0.0025 YES 0.00125 NO N.A
AB at DG-3 YES 0.005 YES 0.00125 NO N.A
ABCG atDG-
4 YES 0.00375 YES 0.0025 YES 0.005
5. CONCLUSION
The suggested algorithm investigates the successful implementation of the wavelet transform
based alienation coefficient approach for effective detection of faults, islanding, and load
changing and further their comparison in the distribution system with the penetration of DGs.
Alienation coefficients over a quarter cycle clearly detect and localize the event. It has been
found that the islanding is greater than threshold value and load changing in a distribution line
is very less than the threshold. Faults are found to be greater than threshold value and islanding
condition is observed to be lower than the threshold value. Therefore, the proposed method is
successful, fast and reliable for the detection of faults, islanding, and load change.
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