High Impedance Fault Detection in Medium Voltage Distribution Network Using Discrete Wavelet Transform and Adaptive Neuro-Fuzzy Inference System
Abstract
:1. Introduction
2. System Modelling
Background of Wavelet Analysis
- CWT requires a large number of scales to show the signal components, which makes it useless for online application.
- CWT is highly redundant transform as its wavelet coefficients contain more information than necessary.
- CWT provides the region where the fault occurs, but DWT localize the fault more efficient.
- DWT preserve all the information of the function with minimum number of wavelet coefficients.
- Computational time is faster for DWT analysis.
- Construction of CWT inverse is more difficult.
3. Proposed HIF Detection Methodology
3.1. Discrete Wavelet Transform
3.1.1. Choice of Mother Wavelet
3.1.2. Feature Extraction
4. Intelligence-Based Classifier
4.1. Fuzzy Logic System
- Step 1:
- Define the problem and classify the data i.e., SD values
- Step 2:
- Define the input and output fuzzy sets with variable name.
- Step 3:
- Define the type of member function for each variable.
- Step 4:
- Frame the rules.
- Step 5:
- Built and test the system.
- Step 6:
- Tune and validate the system.
- If (S1 is normal) and (S2 is normal) and (S3 is normal) then (trip output is Normal)
- If (S1 is fault) and (S2 is fault) and (S3 is fault) then (trip output is ABC fault)
- If (S1 is ground) and (S2 is ground) and (S3 is normal) then (trip output is ABG fault)
- If (S1 is normal) and (S2 is ground) and (S3 is ground) then (trip output is BCG fault)
- If (S1 is ground) and (S2 is normal) and (S3 is ground) then (trip output is ACG fault)
- If (S1 is ground) and (S2 is normal) and (S3 is normal) then (trip output is AG fault)
- If (S1 is normal) and (S2 is ground) and (S3 is normal) then (trip output is BG fault)
- If (S1 is normal) and (S2 is normal) and (S3 is ground) then (trip output is CG fault)
- If (S1 is fault) and (S2 is fault) and (S3 is normal) then (trip output is AB fault)
- If (S1 is normal) and (S2 is fault) and (S3 is fault) then (trip output is BC fault)
- If (S1 is fault) and (S2 is normal) and (S3 is fault) then (trip output is AC fault)
- If (S1 is HIF) and (S2 is normal) and (S3 is normal) then (trip output is HIF fault at Phase A)
- If (S1 is normal) and (S2 is HIF) and (S3 is normal) then (trip output is HIF fault at PhaseB)
- If (S1 is normal) and (S2 is normal) and (S3 is HIF) then (trip output is HIF fault at Phase C)
4.2. Adaptive Neuro Fuzzy Inference System
- It is capable of handling complex and nonlinear problems even if the targets are not given.
- The learning duration of ANFIS is very short than Neural Network (NN) which implies that ANFIS reaches the target faster than neural network.
- Reduces the complexity of the problem, in case of system with huge amount of data.
- In training of the data, ANFIS gives result with minimum total error compared to other type of NN.
- IF x1 is A1
- AND x2 is A2
- AND xm is Am
- THEN y = f (x1, x2, …, xm)
5. Results and Discussion
5.1. Matlab Simulation Results for Different Cases
5.2. DWT Analysis
5.3. Comparative Analysis
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviation
Variables | Explanation |
D1 to D5 | Detailed coefficients of level 1 to 5 |
A5 | Approximate coefficients of level 5 |
LG | Line to ground fault |
LL | Line to Line fault |
LLG | Double line to ground fault |
LLLG | Three phase fault |
HIF | High impedance fault |
SD | Standard Deviation |
Db9 | Daubichies’s mother wavelet |
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Detailed Coefficient Levels | Frequency Band kHz |
---|---|
D1 | 5 to 2.5 |
D2 | 2.5 to 1.25 |
D3 | 1.25 to 0.625 |
D4 | 0.625 to 0.3125 |
D5 | 0.3125 to 0.15625 |
S.No | Fault Type | Assigned Output |
---|---|---|
1 | No fault | 0 |
2 | HIF in phase C | 0.2 |
3 | HIF in phase B | 0.3 |
4 | HIF in phase A | 0.4 |
5 | LLL-G | 0.5 |
6 | LG (AG) | 0.6 |
7 | LG (BG) | 0.7 |
8 | LG (CG) | 0.8 |
9 | LL (AB) | 0.9 |
10 | LL (BC) | 1.0 |
11 | LL (AC) | 1.1 |
12 | LLG (ABG) | 1.2 |
13 | LLG (BCG) | 1.3 |
14 | LLG (ACG) | 1.4 |
Cases | Power System Distribution | SD Values of If |
---|---|---|
1 | Normal Case | |
Phase A | 21 | |
Phase B | 20.3 | |
Phase C | 19.0 | |
2 | HIF | |
Phase A | 20.33 | |
Phase B | 19.0 | |
Phase C | 0.264 | |
3 | Three Phase Fault | |
Phase A | 0.3467 | |
Phase B | 0.3477 | |
Phase C | 0.341 | |
4 | LL Fault | |
Phase A | 0.0113 | |
Phase B | 0.0132 | |
Phase C | 0.0105 | |
5 | LG Fault | |
Phase A | 0.0127 | |
Phase B | 0.02 | |
Phase C | 0.0227 | |
6 | LLG Fault | |
Phase A | 0.0115 | |
Phase B | 0.0143 | |
Phase C | 0.0255 |
State | Fault with Various Rf | S1 | S2 | S3 | FUZZY Output | Remarks | ANFIS Output | Remarks |
---|---|---|---|---|---|---|---|---|
Normal | Normal | 20.33 | 21.22 | 23 | Normal | ✓ | Normal | ✓ |
3 Phase Fault | ABC/20 Ohm | 40.33 | 41.54 | 46 | ABC | ✓ | ABC | ✓ |
ABC/40 Ohm | 31.38 | 33 | 35.98 | ABC | ✓ | ABC | ✓ | |
ABC/60 Ohm | 28 | 27.74 | 27 | ABC | ✓ | ABC | ✓ | |
LLG Fault | ABG/20 Ohm | 30 | 34.5 | 23 | ABG | ✓ | ABG | ✓ |
ABG/40 Ohm | 29 | 30 | 22.45 | ABG | ✓ | ABG | ✓ | |
ABG/60 Ohm | 28.42 | 28.88 | 21 | ABG | ✓ | ABG | ✓ | |
BCG/20 Ohm | 20.03 | 34.76 | 34 | BCG | ✓ | BCG | ✓ | |
BCG/40 Ohm | 20 | 32 | 31 | BCG | ✓ | BCG | ✓ | |
BCG/60 Ohm | 19.55 | 27 | 29 | BCG | ✓ | BCG | ✓ | |
ACG/20 Ohm | 34.45 | 23.33 | 35.1 | ACG | ✓ | ACG | ✓ | |
ACG/40 Ohm | 32 | 22.3 | 31 | ACG | ✓ | ACG | ✓ | |
ACG/60 Ohm | 29 | 20 | 28 | ACG | ✓ | ACG | ✓ | |
LG fault | AG/20 Ohm | 40.33 | 23 | 22.64 | AG | ✓ | AG | ✓ |
AG/40 Ohm | 35 | 21 | 20.06 | AG | ✓ | AG | ✓ | |
AG/60 Ohm | 29.98 | 19 | 20 | AG | ✓ | AG | ✓ | |
BG/20 Ohm | 21 | 47 | 20.06 | BG | ✓ | BG | ✓ | |
BG/40 OHMS | 18 | 37 | 18.63 | BG | ✓ | BG | ✓ | |
BG/60 Ohm | 19.73 | 30 | 22 | BG | ✓ | BG | ✓ | |
CG/20 Ohm | 18.6 | 23 | 47 | CG | ✓ | CG | ✓ | |
CG/40 Ohm | 19.18 | 22 | 34.98 | CG | ✓ | CG | ✓ | |
CG/60 Ohm | 21 | 20.87 | 29.61 | CG | ✓ | CG | ✓ | |
LL Fault | AB/20 Ohm | 45.55 | 46.7 | 21 | AB | ✓ | AB | ✓ |
AB/40 Ohm | 40 | 37 | 20.1 | AB | ✓ | AB | ✓ | |
AB/60 Ohm | 34 | 32 | 23 | ABG | ✕ | AB | ✓ | |
BC/20 Ohm | 21 | 45 | 44 | BC | ✓ | BC | ✓ | |
BC/40 Ohm | 20.45 | 36 | 37 | BC | ✓ | BC | ✓ | |
BC/60 Ohm | 24 | 32 | 29.24 | BCG | ✕ | BC | ✓ | |
AC/20 Ohm | 45 | 23 | 46.9 | AC | ✓ | AC | ✓ | |
AC/40 Ohm | 35.55 | 22.1 | 36 | AC | ✓ | AC | ✓ | |
AC/60 Ohm | 32 | 21 | 29 | ACG | ✕ | AC | ✓ | |
HIF Fault | HIF A/75 Ohm | 8 | 21 | 22.2 | HIF A | ✓ | HIF A | ✓ |
HIF A/50 Ohm | 11 | 20.09 | 23.4 | HIF A | ✓ | HIF A | ✓ | |
HIF A/40 ohm | 14.5 | 19 | 24 | NORMAL | ✕ | HIF A | ✓ | |
HIF B/75 Ohm | 21 | 9 | 20.01 | HIF B | ✓ | HIF B | ✓ | |
HIF B/50 Ohm | 20.09 | 12.4 | 23.05 | HIF B | ✓ | HIF B | ✓ | |
HIF B/ 40 Ohm | 19 | 14 | 22 | Normal | ✕ | HIF B | ✓ | |
HIF C/75 Ohm | 18.76 | 21 | 8.13 | HIF C | ✓ | HIF C | ✓ | |
HIF C/50 Ohm | 19.61 | 20.19 | 12.09 | HIF C | ✓ | HIF C | ✓ | |
HIF C/40 Ohm | 20.08 | 19.89 | 15.5 | Normal | ✕ | HIF C | ✓ |
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Share and Cite
Veerasamy, V.; Abdul Wahab, N.I.; Ramachandran, R.; Mansoor, M.; Thirumeni, M.; Lutfi Othman, M. High Impedance Fault Detection in Medium Voltage Distribution Network Using Discrete Wavelet Transform and Adaptive Neuro-Fuzzy Inference System. Energies 2018, 11, 3330. https://doi.org/10.3390/en11123330
Veerasamy V, Abdul Wahab NI, Ramachandran R, Mansoor M, Thirumeni M, Lutfi Othman M. High Impedance Fault Detection in Medium Voltage Distribution Network Using Discrete Wavelet Transform and Adaptive Neuro-Fuzzy Inference System. Energies. 2018; 11(12):3330. https://doi.org/10.3390/en11123330
Chicago/Turabian StyleVeerasamy, Veerapandiyan, Noor Izzri Abdul Wahab, Rajeswari Ramachandran, Muhammad Mansoor, Mariammal Thirumeni, and Mohammad Lutfi Othman. 2018. "High Impedance Fault Detection in Medium Voltage Distribution Network Using Discrete Wavelet Transform and Adaptive Neuro-Fuzzy Inference System" Energies 11, no. 12: 3330. https://doi.org/10.3390/en11123330