Optimal Individual Phase Voltage Regulation Strategies in Active Distribution Networks with High PV Penetration Using the Sparrow Search Algorithm
Abstract
:1. Introduction
2. Benefit and Challenge of Smart Inverter Volt-Var Control in DNs
2.1. Function of Smart Inverter
2.2. Volt–Var Control for Voltage Variation Reduction
2.3. Volt-Var Control Curve Setting
3. Sample System and Problem Description
3.1. Sample DNs and Simulation Scenarios
3.2. Objective Functions
3.3. Constraints
4. Proposed Approach and Solution Framework
4.1. Metaheuristic Algorithm
4.2. Sparrow Search Algorithm
4.3. Solution Framework
5. Numerical Results and Discussion
5.1. Voltage Variation
5.2. Zero and Negative Sequence Voltage Unbalance
5.3. Tap Changing
5.4. Results and Discussion
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Reference | Method | Objective Function | Control Strategy/Devices |
---|---|---|---|
[14] | Short-term operational method | Minimizing the number of switching operations and power curtailment | Voltage control, network reconfiguration, and power curtailment |
[15] | Metamodel-based global optimization methods | Minimize network voltage deviation and power loss | Dispatch distributed generators and energy storage systems |
[16] | Real power capping method | Fairly distributing the real power curtailments | Setting the power caps for PV inverters |
[17] | Probabilistic optimal strategy | Minimize voltage deviation | Utilizing PV generators as capacitors and inductors and coordinate with substation transformer on-load tap changer (OLTC) |
[18] | Multistage volt–var optimization algorithm | Minimize the curtailment of PV inverter output | Control voltage regulators, capacitor banks, and OLTC transformers to regulate voltage |
[19] | Reactive power-based control strategy | Improve voltage unbalance and voltage regulation | Communication links between PV inverters to exchange information |
[20] | real-time method | compensate fast voltage fluctuations | Coordinate step voltage regulator, PV inverter and battery energy storage system |
[21,22,23,24] | Sensitivity-based voltage control strategy, optimal capacity allocation strategy, and mathematical programing model | Minimize voltage fluctuations and mitigate voltage unbalance | Battery energy storage system |
Number | Algorithm | Solution | Calculation Time (s) |
---|---|---|---|
1 | Particle Swarm Optimization | 500.4533 | 1.763311 |
2 | Bacterial Foraging Optimization | 1881.848 | 161.7007 |
3 | Cat Swarm Optimization | 1616.839 | 16.95562 |
4 | Artificial Bee Colony | 1687.319 | 2.31785 |
5 | Fireworks Algorithm | 874.7588 | 6.671301 |
6 | Bat Algorithm | 125.4193 | 1.734487 |
7 | Social Spider Optimization | 41.2206 | 2.118863 |
8 | Grey Wolf Optimizer | 6.393672 | 1.664644 |
9 | Social Spider Algorithm | 24.93394 | 1.769286 |
10 | Ant Lion Optimizer | 100.0107 | 14.05951 |
11 | Moth Flame Optimization | 2203.492 | 1.706515 |
12 | Elephant Herding Optimization | 18.83527 | 1.852681 |
13 | Whale Optimization Algorithm | 2.861351 | 1.783804 |
14 | Bird Swarm Algorithm | 14.53802 | 1.678526 |
15 | Spotted Hyena Optimizer | 213.2286 | 3.040973 |
16 | Swarm Robotics Search And Rescue | 228.944 | 3.718125 |
17 | Grasshopper Optimisation Algorithm | 493.2859 | 3.931606 |
18 | Moth Search Algorithm | 2014.994 | 0.896199 |
19 | Nake Mole-rat Algorithm | 14.59282 | 1.693511 |
20 | Bald Eagle Search | 14.50522 | 4.956734 |
21 | Pathfinder Algorithm | 14.56558 | 3.901061 |
22 * 3 | Sailfish Optimizer | 2.92 × 10−8 | 17.08235 |
23 * 2 | Harris Hawks Optimization | 0.002945 | 1.496736 |
24 | Manta Ray Foraging Optimization | 14.46316 | 3.267328 |
25 * 1 | Sparrow Search Algorithm | 5.34 × 10−6 | 1.846647 |
Equipment Name | Equipment Operation Times | |
---|---|---|
Volt–Var Control with Fixed Settings | Volt–Var Control with Optimized Settings | |
SCB1 | 0 | 0 |
SCB2 | 0 | 0 |
SCB3 | 0 | 0 |
SCB4 | 0 | 0 |
VR1a | 1 | 0 |
VR1b | 2 | 0 |
VR1c | 2 | 1 |
VR2a | 28 | 1 |
VR2b | 8 | 0 |
VR2c | 3 | 0 |
VR3a | 18 | 3 |
VR3b | 7 | 2 |
VR3c | 4 | 1 |
VR4a | 18 | 2 |
VR4b | 16 | 3 |
VR4c | 15 | 3 |
Total | 122 | 16 |
Objective Function | Fitness Value | Max ∆V/ Average ∆V | Max Vbus/ Min Vbus | Max V0/V1/ Average V0/V1 | Max V2/V1/ Average V2/V1 | N |
---|---|---|---|---|---|---|
Fixed settings | - | 2.83%/ 0.20% | 1.0559 pu/ 0.9402 pu | 3.32%/ 1.08% | 3.16%/ 0.82% | 122 |
(8) | 3.63 | 2.47%/ 0.11% | 1.0519 pu/ 0.9401 pu | 3.08%/ 0.94% | 3.05%/ 0.82% | 34 |
(9) | 6.29 | 2.96%/ 0.14% | 1.0529 pu/ 0.9402 pu | 2.47%/ 0.76% | 2.52%/ 0.54% | 53 |
(7) | 16 | 2.73%/ 0.11% | 1.0509 pu/ 0.9325 pu | 2.87%/ 0.83% | 2.72%/ 0.67% | 16 |
(16) | 12.00 | 2.71%/ 0.11% | 1.0529 pu/ 0.9384 pu | 2.66%/ 0.83% | 2.44%/ 0.67% | 24 |
PV Information and Control Settings | |||||
---|---|---|---|---|---|
Location (Bus) | Rated (kW) | V1–V2 (Pu in Phase A/B/C) | Location (Bus) | Rated (kW) | V1–V2 (Pu in Phase A/B/C) |
M1125917 | 111 | 0.99–1.03/0.99–1.07/0.91–1.02 | M1026780 | 297 | 0.96–1.03/0.91–1.04/0.98–1.02 |
M1047316 | 153 | 0.91–1.05/0.95–1.06/0.91–1.01 | E183473 | 48 | 0.94–1.08/0.99–1.09/0.94–1.08 |
R20703 | 24 | 0.93–1.05/0.97–1.07/0.93–1.07 | R42247 | 177 | 0.96–1.08/0.95–1.07/0.96–1.01 |
M1047737 | 18 | 0.91–1.07/0.92–1.01/0.92–1.05 | L3197646 | 162 | 0.93–1.08/0.97–1.07/0.9–1.04 |
L2933135 | 222 | 0.99–1.04/0.99–1.06/0.96–1.02 | L3207907 | 27 | 0.97–1.07/0.98–1.05/0.97–1.02 |
L2973167 | 99 | 0.94–1.03/0.98–1.01/0.97–1.03 | N1136666 | 69 | 0.95–1.07/0.92–1.03/0.98–1.08 |
L3254218 | 195 | 0.94–1.06/0.94–1.07/0.91–1.04 | M1026769 | 159 | 0.94–1.04/0.97–1.01/0.92–1.01 |
M1069509 | 27 | 0.96–1.07/0.95–1.09/0.96–1.02 | N1136354 | 45 | 0.96–1.07/0.91–1.03/0.93–1.03 |
M1027055 | 27 | 0.94–1.08/0.91–1.02/0.97–1.09 | E206217 | 255 | 0.96–1.09/0.91–1.05/0.97–1.08 |
M3763618 | 33 | 0.94–1.05/0.95–1.05/0.92–1.06 | 190–8581 | 84 | 0.98–1.08/0.92–1.07/0.94–1.05 |
L3048206 | 288 | 0.99–1.04/0.92–1.06/0.98–1.05 | F739845 | 186 | 0.98–1.07/0.96–1.07/0.97–1.09 |
M1166376 | 30 | 0.93–1.05/0.92–1.01/0.96–1.04 | L2766741 | 174 | 0.96–1.08/0.94–1.06/0.97–1.02 |
M1089196 | 195 | 0.94–1.05/0.96–1.09/0.97–1.04 | N1145954 | 15 | 0.97–1.07/0.92–1.09/0.96–1.08 |
L3066814 | 294 | 0.98–1.07/0.95–1.06/0.95–1.03 | Q16483 | 45 | 0.91–1.06/0.95–1.04/0.9–1.03 |
L3142049 | 144 | 0.93–1.05/0.92–1.03/0.92–1.03 | M1125969 | 168 | 0.91–1.1/0.97–1.03/0.99–1.08 |
N1136354 | 99 | 0.93–1.06/0.96–1.07/0.96–1.04 | L3181545 | 18 | 0.99–1.02/0.95–1.06/0.98–1.04 |
L3160107 | 282 | 0.97–1.02/0.92–1.08/0.97–1.01 | N1138607 | 264 | 0.91–1.07/0.94–1.08/0.97–1.01 |
E206209 | 39 | 0.92–1.07/0.98–1.04/0.99–1.06 | M1026670 | 255 | 0.98–1.02/0.96–1.04/0.96–1.07 |
M1186065 | 81 | 0.91–1.05/0.93–1.02/0.92–1.03 | Q1301 | 276 | 0.97–1.07/0.94–1.06/0.98–1.04 |
M1026333 | 216 | 0.92–1.02/0.95–1.09/0.91–1.07 | M1108500 | 180 | 0.95–1.07/0.97–1.03/0.91–1.04 |
M4362177 | 87 | 0.96–1.01/0.96–1.06/0.93–1.08 | M1009763 | 228 | 0.99–1.03/0.93–1.04/0.92–1.04 |
M1047737 | 204 | 0.92–1.09/0.92–1.09/0.92–1.09 | L3142049 | 294 | 0.97–1.06/0.99–1.01/0.98–1.01 |
M1186072 | 48 | 0.98–1.04/0.93–1.06/0.99–1.03 | M1089201 | 54 | 0.92–1.02/0.93–1.02/0.95–1.09 |
L3081380 | 228 | 0.94–1.05/0.98–1.02/0.95–1.04 | M1142828 | 210 | 0.99–1.05/0.95–1.03/0.95–1.08 |
L2860490 | 237 | 0.99–1.04/0.92–1.04/0.92–1.07 | L3120484 | 63 | 0.93–1.03/0.95–1.03/0.94–1.07 |
P827527 | 222 | 0.98–1.01/0.98–1.06/0.93–1.02 | L2766741 | 123 | 0.96–1.09/0.9–1.08/0.95–1.04 |
M1026920 | 291 | 0.99–1.05/0.94–1.09/0.92–1.01 | L2691967 | 168 | 0.99–1.01/0.97–1.08/0.99–1.08 |
M1108535 | 96 | 0.98–1.07/0.93–1.02/0.93–1.09 | M1069498 | 99 | 0.94–1.07/0.92–1.05/0.98–1.04 |
M1166376 | 114 | 0.93–1.02/0.99–1.05/0.93–1.09 | N1138604 | 84 | 0.98–1.06/0.92–1.05/0.97–1.09 |
M1166374 | 234 | 0.94–1.04/0.99–1.07/0.92–1.01 | L2786266 | 249 | 0.92–1.09/0.93–1.04/0.96–1.06 |
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Lee, Y.-D.; Lin, W.-C.; Jiang, J.-L.; Cai, J.-H.; Huang, W.-T.; Yao, K.-C. Optimal Individual Phase Voltage Regulation Strategies in Active Distribution Networks with High PV Penetration Using the Sparrow Search Algorithm. Energies 2021, 14, 8370. https://doi.org/10.3390/en14248370
Lee Y-D, Lin W-C, Jiang J-L, Cai J-H, Huang W-T, Yao K-C. Optimal Individual Phase Voltage Regulation Strategies in Active Distribution Networks with High PV Penetration Using the Sparrow Search Algorithm. Energies. 2021; 14(24):8370. https://doi.org/10.3390/en14248370
Chicago/Turabian StyleLee, Yih-Der, Wei-Chen Lin, Jheng-Lun Jiang, Jia-Hao Cai, Wei-Tzer Huang, and Kai-Chao Yao. 2021. "Optimal Individual Phase Voltage Regulation Strategies in Active Distribution Networks with High PV Penetration Using the Sparrow Search Algorithm" Energies 14, no. 24: 8370. https://doi.org/10.3390/en14248370
APA StyleLee, Y.-D., Lin, W.-C., Jiang, J.-L., Cai, J.-H., Huang, W.-T., & Yao, K.-C. (2021). Optimal Individual Phase Voltage Regulation Strategies in Active Distribution Networks with High PV Penetration Using the Sparrow Search Algorithm. Energies, 14(24), 8370. https://doi.org/10.3390/en14248370