Optimum Placement of Distribution Generation Units in Power System with Fault Current Limiters Using Improved Coyote Optimization Algorithm
Abstract
:1. Introduction
Related Work
2. Analytical Modeling
Types of DG Units for Distribution Networks
- Type 1:
- In this type, active and reactive powers are capable by DGs.
- Type 2:
- Active power is managed by DGs only with a unity power factor, such as micro-turbines.
- Type 3:
- Reactive power is controlled by DGs, such as a synchronous compensator.
- Type 4:
- Consumption of reactive power with an injection of active power is a capability of DGs. This type includes a fixed-speed squirrel cage induction generator.
3. Methodology for Proper Allocation of DGs and FCLs
Novelties and Contribution of the Proposed ICOA
4. Results and Discussion
- Case 1:
- DGs working at a unity power factor and related to Type 3.
- Case 2:
- The power factor is kept constant for DGs, related to Type 1.
- Case 3:
- Controllable power factor technique is used for DGs.
5. Conclusions
Funding
Acknowledgments
Conflicts of Interest
References
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Mechanism | KW (Losses) | DG Size/Placement | Min Voltage (P.U) Bus |
---|---|---|---|
TA [8] | 89.214 | 0.5897(14), 0.189(18), 1.0146(21) | 0.968 |
FWA [16] | 98.3 | 0.633(17), 0.09(18), 0.947(27) | 0.964 |
HAS [15] | 96.76 | 0.5724(17), 0.107(18), 1.0462(19) | 0.967(24) |
BFOA [27] | 103.4 | 0.925(11), 0.863(16), 1.2(21) | 0.98(25) |
PSO [28] | 105.35 | 1.1768(8), 0.9816(13), 0.8297(24) | 0.98(21) |
GA [1] | 106.3 | 1.5(11), 0.4228(29), 1.0714(20) | 0.981(25) |
WCA [14] | 72.9 | 0.8546(14), 1.1017(24), 1.181(29) | 0.97(16) |
ICOA | 40.35 | 2(5), 4(11), 3(21) | 0.988(8) |
KW (Losses) | DG Size/Placement | Min Voltage (P.U) Bus | Power Factor | |
---|---|---|---|---|
Initial | 213.78 | - | 0.99(17) | - |
Case 2 | 17.54 | 0.8232(12), 1.1397(22), 1.12(26) | 0.994(7) | 0.84–0.85 |
Case 3 | 12.8 | 0.837(12), 1.124(22), 1.07(26) | 0.994(7) | 0.75–0.86 |
Framework | Losses (KW) | DG Size/Placement |
---|---|---|
ETAP-Bi Stage | 44.341 | 5.874(6), 8(16), 5.074(22) |
COA (One Stage) | 44.815 | 7.783(16), 5.6056(22), 5.8189(9) |
ICOA (One Stage) | 42.132 | 2(5), 4(11), 3(21) |
Network | 28-Bus System | ||
---|---|---|---|
Method | PSO | COA | ICOA |
Min(MW) | 0.817 | 0.0715 | 0.0690 |
Mean(MW) | 0.0758 | 0.0739 | 0.0701 |
Max(MW) | 0.0723 | 0.0794 | 0.0694 |
Std | 0.0026 | 0.0020 | 0.0013 |
Losses (KW) | DG Size (MW) and Location | DGu Power Factor | Min. Voltage Profile % (Bus) | ||
---|---|---|---|---|---|
Initial | 4871.6 | – | – | 80.34(28) | |
COA | Different power factor | 14.43 | 0.71245(14), 1.0379(24), 1.2004(27) | 0.85, 0.85, 0.85 | 99.2(8) |
Constant Power Factor | 11.7 | 0.7294(14), 1.0538(24), 1.0953(27) | 0.8951, 0.9024, 0.7302 | 99.2(8) | |
ICOA | Different power factor | 15.12 | 2(5), 4(11), 3(21) | 0.8951, 0.9024, 0.7302 | 99.12(7) |
Constant Power Factor | 10.34 | 2(5), 4(11), 3(21) | 0.85, 0.85, 0.85 | 99.12(7) |
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Alghamdi, H. Optimum Placement of Distribution Generation Units in Power System with Fault Current Limiters Using Improved Coyote Optimization Algorithm. Entropy 2021, 23, 655. https://doi.org/10.3390/e23060655
Alghamdi H. Optimum Placement of Distribution Generation Units in Power System with Fault Current Limiters Using Improved Coyote Optimization Algorithm. Entropy. 2021; 23(6):655. https://doi.org/10.3390/e23060655
Chicago/Turabian StyleAlghamdi, Hisham. 2021. "Optimum Placement of Distribution Generation Units in Power System with Fault Current Limiters Using Improved Coyote Optimization Algorithm" Entropy 23, no. 6: 655. https://doi.org/10.3390/e23060655
APA StyleAlghamdi, H. (2021). Optimum Placement of Distribution Generation Units in Power System with Fault Current Limiters Using Improved Coyote Optimization Algorithm. Entropy, 23(6), 655. https://doi.org/10.3390/e23060655