A Novel Approach for Secure Hybrid Islanding Detection Considering the Dynamic Behavior of Power and Load in Electrical Distribution Networks
Abstract
:1. Introduction
- ➢
- Due to the mismatch between supply and demand, the performance of DGs can be unstable.
- ➢
- Due to unregulated islanding, distribution line maintenance staffs’ lives may be at risk.
- ➢
- After fault clearance, it is necessary to handle the resynchronization of DGs with the grid with safety regulation and extreme care.
- ➢
- A hybrid IDM has been modelled and developed based on the combination of two passive IDMs, namely ROCORP and ROCOAP, and LCS as an active IDM to detect islanding phenomena at PCC.
- ➢
- The proposed IDM’s performance has been validated in a PSCAD environment for various cases, such as islanding, fault analysis, quality factor, load variations, DG tripping, power mispatch and NDZ range.
- ➢
- The proposed IDM is applied at a PCC between DGs and an existing 11 kV Malaysian distribution network, which are modelled using the modules available from the PSCAD library.
- ➢
- Finally, a comparative study has been conducted based on islanding detection time and NDZ to prove the better performance and effectiveness of the proposed IDM.
2. Modelling of Proposed Hybrid Islanding Detection Strategy
2.1. Active Power Method
2.2. Reactive Power Method
2.3. IDM Final Stage including ROCOAP, ROCORP and LCS
3. Non-Detection Zone (NDZ) of the Proposed Method
4. Testbed under Study
5. Simulation Results
5.1. Case 1: Grid Supply Disconnected for Intentional Islanding Operation
5.2. Case 2: Varying Quality Factors
5.3. Case 3: Initiating the Connection of Varying Reactive Power
5.4. Case 4: Fault Analysis
5.5. Case 5: Starting of Induction Motor
5.6. Case 6: Zero Power Mismatch
5.6.1. Zero Active Power Mismatch
5.6.2. Zero Reactive Power Mismatch
5.6.3. Zero Total Power Mismatch
5.7. Case 7: DG Tripping
5.8. Comparison with Previous Islanding Detection Methods
5.8.1. Based on Islanding Detection Time
5.8.2. Based on NDZ
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
DG | Distributed Generator |
IEEE | Institute of Electrical and Electronics Engineers |
PCC | Point of Common Coupling |
NDZ | Non-Detection Zone |
SFS | Sandia Frequency Shift |
PMU | Phasor Measurement Units |
ROCOF | Rate of change frequency |
ROCOAP | Rate of change of active power |
ROCOV | Rate of change of voltage |
ANN | Artificial Neural Network |
PSCAD | Power System Computer Aided Design |
PV | Photovoltaic |
ANFIS | Adaptive Neuro-Fuzzy Inference System |
IEC | International Electrotechnical Commission |
PLL | Phase Lock Loop |
IDM | Islanding Detection Method |
PLC | Power Line Carrier |
ROCOP | Rate of change of Power |
ROCORP | Rate of change of reactive power |
LCS | Load Connecting Strategy |
ROCORV | Rate of change of regulator voltage |
SVM | Support Vector Machine |
SG | Synchronous Generator |
CB | Circuit Breaker |
Appendix A
System Parameter | Value |
---|---|
Voltage of grid | 132 kV |
Power capacity grid | 10 MVA |
Frequency of grid | 50 Hz |
Rated power of grid transformer | 50 MVA |
Voltage of Transformer (step-up) | 3.3/11 kV |
Voltage of Transformer (step-down) | 132/11 kV |
Ls | 1 mH |
Rs | 1 Ω |
Rated power of DG transformer | 2 MVA |
Load voltage | 11kV |
Synchronous generator rating | 1.8 MW |
PV generation | 1 MW |
Biomass Generator | 0.8 MW |
Load Bus | LoadActive Power (MW) | LoadReactive Power (MVar) |
---|---|---|
1 | 0.45 | 0.198 |
2 | 0.06645 | 0.039 |
3 | 0.061128 | 0.0378 |
4 | 0.36 | 0.126 |
5 | 0.232668 | 0.12 |
6 | 0.160716 | 0.09957 |
7 | 0.1948 | 0.09165 |
8 | 0.187557 | 0.11631 |
9 | 0.057213 | 0.035676 |
10 | 0.013548 | 0.009957 |
11 | 0.014025 | 0.008763 |
12 | 0.3 | 0.126 |
13 | 0.125454 | 0.075 |
14 | 0.062163 | 0.0384 |
15 | 0.051252 | 0.0375 |
16 | 0.074061 | 0.045 |
17 | 0.05262 | 0.033 |
18 | 0.151419 | 0.105 |
19 | 0.12918 | 0.0801 |
20 | 0.272244 | 0.1926 |
21 | 0.094762 | 0.04731 |
22 | 0.207957 | 0.10872 |
23 | 0.084666 | 0.0516 |
24 | 0.076044 | 0.0462 |
25 | 0.318322 | 0.129 |
26 | 0.179049 | 0.111 |
27 | 0.178356 | 0.108 |
28 | 0.241703 | 0.066 |
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Method | Advantage | Disadvantage | References |
---|---|---|---|
Remote IDMs | |||
Power line carrier | Real-time communication makes this method most accurate and reliable | Maintenance and implementation cost are very high. | [14,15] |
Phasor Measuring Units | Detection process does not require any extra device, so it is easy to implement | Shows less robustness to handle different types of signals across the network. | [16,17] |
Transfer Trip | It is a very simple concept to implement with a very small NDZ. | Maintenance and implementation cost are very high. | [18] |
Active IDMs | |||
Active and Reactive Power Injection | The detection accuracy is high due to the injection of powers. | The voltage at distribution side rises which is a concern. | [19] |
Active Frequency Drift | Balanced islanding conditions and small NDZ can be achieved. | Power quality degrades. | [20] |
Impedance Measurement | The method operates well because of the absence of NDZ | This method is not suitable for parallel inverter connection. | [21] |
Harmonic Signal Injection | During islanding, power balance can be achieved among generator and demand. | Detection time is high. | [22] |
Slip Mode Frequency Shift | This method has small NDZ. | Inaccurate in measurement due to the presence of phase shift parabola | [23] |
Sandia Frequency Shift (SFS) | Implementation is easy due to having very small NDZ. | Power system stability and quality are the concerns. | [24] |
Sandia Voltage Shift | Islanding detection speed is fast. | Power quality and transient response of the system get affected. | [25] |
Frequency Jump | Effective for non-parallel multi DGs. | Less efficient for parallel DGs. | [26] |
Virtual Capacitor and Inductor | Harmonics are lower at the output. | Power quality degrades. | [27] |
Passive IDMs | |||
Rate of change of Power (ROCOP) | Suitable for large power mismatch. | Selection of threshold values are difficult. | [28,29] |
Rate of change of Frequency (ROCOF) | Islanding detection speed is fast. | For small DGs, threshold values can be chosen accurately but for medium and large DGs it is difficult. | [30] |
Over/Under Voltage and Frequency | Low cost and implementation is easy. | Due to large NDZ, detection time is long. | [31] |
Change of Impedance | Suitable for small, medium and large DGs with large power mismatch. | Initialization of unwanted tripping is a concern. | [32] |
Voltage Unbalance | It can easily identify unbalance in the 3-phase system. | For a single-phase system, it is not suitable. | [33] |
ROCOF over ROCOP | Small power mismatch can be detected between load and DG | Threshold selection can cause incorrect detection. | [34] |
Phase Jump | Implementation is easy. | When the DG meets local demand, it fails to detect islanding condition. | [35] |
Hybrid IDMs | |||
Voltage and Reactive Power Shift | Fault tolerant capacity and robustness of the system improved. | Power system stability and quality are the concerns. | [36] |
SFS and Q-f Based Scheme | Voltage regulation, and power factor improved. | Selection of threshold values are difficult and power quality degrade. | [37] |
Positive Feedback and voltage unbalance | Tripping rate and false detection can be reduced. | For a single-phase system, it is not suitable. | [38] |
SFS and ROCOF | Suitable for multi-DG system along with high accuracy and fast detection. | Sometimes allocation of trip boundary is tricky. | [39] |
Rate of change of reactive power (ROCORP) and load connecting strategy (LCS) | It has fast detection speed. | Power system stability and quality are the concerns. | [40] |
ROCOF over ROCORP | Fast detection speed with high accuracy. | Selection of threshold values are difficult. | [41] |
Combined rate of change of voltage (ROCOV) and ROCORP | Small mismatch in power between DG and load can be easily detected. | Power system stability and quality are the concerns. | [42] |
Rate of change of regulator voltage (ROCRV) over ROCORP | It can easily detect small mismatch in power among DGs and load. | Selection of threshold values are difficult. | [43] |
Intelligent IDMs | |||
Fuzzy Logic | Suitable for multi-inverter-based DG system. It has good accuracy. | The results are dependent on a set of predefined rulesets. | [44] |
Adaptive network-based fuzzy inference system (ANFIS) | [45] | ||
Artificial Neural Network (ANN) | Suitable for multi-DG system along with high accuracy and fast detection. | Implementation and computation are difficult because of requirement of large database for training. | [46] |
Support Vector Machine (SVM) | [47] | ||
Decision Tree | [48] | ||
Signal Processing IDMs | |||
Wavelet Transform | It can operate in different bands of resolution due to variable size time frequency window. | Highly sensitive to noise signals. Computation time is very high. | [49] |
S-Transform | Due to combined frequency-dependent time, space and referenced local phase information, accuracy is good. | Computation time is very high. | [50,51] |
Mathematical Morphology | Through time-domain analysis, the noise in the data can be filtered. | Suitable only for single direction features and for randomly oriented features, it is not suitable. Computation time is very high. | [52] |
Hilbert–Haung Transform | Suitable for both nonlinear and nonstationary data analysis. | The method cannot disintegrate numerically for components which have frequency proportions near to unity. Implementation is difficult. | [53] |
Principle Component Analysis | Reduces data overfitting, removes correlated features, and improves visualization of data. | Information can be lost due to less interpretation of independent variables. | [54] |
Gauss-Newton Algorithm | Due to tidy error estimates, the accuracy is high. | High computation time and implementation cost is also high. | [55] |
Phaselet Algorithm | Fast estimation can be achieved by calculating the phasor of variable data. | Due to variable window size unwanted classification occurs during transients. | [56] |
Quality Factor (Qf) | R (Ω) | L (H) | C (F) | (MW/s) | (MVar/s) | Time (s) |
---|---|---|---|---|---|---|
1.8 | 2.304 | 0.00304 | 0.00231 | 0.30 | 0.15 | 3–3.08 |
2.5 | 2.304 | 0.00244 | 0.00231 | 0.28 | 0.19 | 3–3.02 |
3 | 2.304 | 0.00203 | 0.00288 | 0.20 | 0.08 | 3–3.05 |
Capacitor Switching (Qc) (MVar) | (MW/s) | (MVar/s) | Time (s) |
---|---|---|---|
0.5 | 0.25 | 0.03 | 3–3.04 |
1 | 0.43 | 0.04 | 3–3.03 |
1.5 | 0.40 | 0.03 | 3–3.03 |
Fault Type | Resistance (Ω) | (MW/s) | (MVar/s) | (MW/s) |
---|---|---|---|---|
L-L-L-G | 0.01 | 0.69 | 0.029 | 0.81 |
L-L-L-G | 0.02 | 0.71 | 0.030 | 0.71 |
L-L-G | 0.01 | 0.75 | 0.067 | 0.85 |
L-L-G | 0.02 | 0.73 | 0.068 | 0.87 |
L-L | 0.01 | 0.79 | 0.083 | 0.93 |
L-L | 0.02 | 0.79 | 0.079 | 0.91 |
L-G | 0.01 | 0.57 | 0.061 | 0.59 |
L-G | 0.02 | 0.57 | 0.058 | 0.63 |
Hybrid Islanding Detection Methods | Islanding Detection Time |
---|---|
Proposed method | 90 ms (5 cycles) |
Voltage and Reactive Power Shift [36] | 160 ms (8 cycles) |
ROCOF over ROCORP (df/dq) [41] | 200 ms (10 cycles) |
ROCOV and ROCORP [42] | 250 ms (15 cycles) |
ROCORV over ROCORP (dE/dq) [43] | 640 ms (32 cycles) |
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Jhuma, U.K.; Ahmad, S.; Ahmed, T. A Novel Approach for Secure Hybrid Islanding Detection Considering the Dynamic Behavior of Power and Load in Electrical Distribution Networks. Sustainability 2022, 14, 12821. https://doi.org/10.3390/su141912821
Jhuma UK, Ahmad S, Ahmed T. A Novel Approach for Secure Hybrid Islanding Detection Considering the Dynamic Behavior of Power and Load in Electrical Distribution Networks. Sustainability. 2022; 14(19):12821. https://doi.org/10.3390/su141912821
Chicago/Turabian StyleJhuma, Umme Kulsum, Shameem Ahmad, and Tofael Ahmed. 2022. "A Novel Approach for Secure Hybrid Islanding Detection Considering the Dynamic Behavior of Power and Load in Electrical Distribution Networks" Sustainability 14, no. 19: 12821. https://doi.org/10.3390/su141912821
APA StyleJhuma, U. K., Ahmad, S., & Ahmed, T. (2022). A Novel Approach for Secure Hybrid Islanding Detection Considering the Dynamic Behavior of Power and Load in Electrical Distribution Networks. Sustainability, 14(19), 12821. https://doi.org/10.3390/su141912821