A Quasi-Oppositional Heap-Based Optimization Technique for Power Flow Analysis by Considering Large Scale Photovoltaic Generator
Abstract
:1. Introduction
- A novel QOHBO technique is proposed to overcome the disadvantage of conventional power flow analysis.
- The impact of large-scale PVG on LF analysis is studied.
- The proposed method is able to provide multiple solutions that can be utilized for voltage stability analysis.
- The efficiency of the proposed technique is tested by applying it to ill-conditioned systems.
- Robustness of the algorithm is verified under maximum loadability limits and high R/X ratios.
2. Problem Formulation
2.1. Power Flow Problem
2.2. Power Flow Embedded with PVGs
3. Solution Methodology Using QOHBO
3.1. Basic Heap-Based Optimization Technique
3.2. Quasi-Oppositional Based Learning
4. LF Using QOHBO Technique
Algorithm 1 [28]. Main body of QOHBO technique |
5. Results and Discussion
Five bus system: | IEEE 14-bus system: | ||
6. Conclusions
- The proposed method has the ability to provide multiple solutions simultaneously. For instance, the proposed QOHBO has provided three solutions in a single run for the IEEE 14-bus system when compared to the single solution provided by the conventional NR method.
- The proposed method provides a solution to ill-conditioned systems where conventional techniques fail. For example, the proposed QOHBO has been able to provide a solution for ill-conditioned 13-bus system where conventional methods such as NRLF, FDLF, and GS failed to produce the solution.
- The proposed QOHBO method provides better performance under maximum loadability and higher R/X ratios conditions. This performance is further enhanced with the integration of PVG. For instance, the line resistance multiplier for the critical conditions provided by QOHBO with PVG has been increased by 1, i.e., 5.9, when compared to NRLF and QOHBO, without PVG, is 4.9.
- The computational efficiency of the proposed method is higher when compared to other techniques. For example, the time taken by the proposed QOHBO to provide solution to IEEE 14-bus system is 0.0129 s when compared to 0.0684 s provided by GA.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Appendix B
Appendix B.1. Opposite Vector
Appendix B.2. Quasi-Oppositional Vector
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Bus No. | Without Embedded PVG | With Embedded PVG | ||
---|---|---|---|---|
Voltage Magnitude (P.U.) | Voltage Angle (rad) | Voltage Magnitude (P.U.) | Voltage Angle (rad) | |
1 | 1.0400 | 0.0000 | 1.0400 | 0.0000 |
2 | 0.9614 | −0.1103 | 0.9621 | −0.0720 |
3 | 1.0200 | −0.0648 | 1.0200 | 0.0026 |
4 | 0.9203 | −0.1900 | 0.9203 | −0.1437 |
5 | 0.9683 | −0.1075 | 0.9692 | −0.0779 |
Bus No. | Without Embedded PVG | With Embedded PVG | ||
---|---|---|---|---|
Voltage Magnitude (P.U.) | Voltage Angle (rad) | Voltage Magnitude (P.U.) | Voltage Angle (rad) | |
1 | 1.0600 | 0.0000 | 1.0600 | 0.0000 |
2 | 1.0450 | −0.0870 | 1.0450 | −0.0620 |
3 | 1.0100 | −0.2224 | 1.0100 | −0.1818 |
4 | 1.0142 | −0.1790 | 1.0211 | −0.1267 |
5 | 1.0172 | −0.1530 | 1.0262 | −0.1000 |
6 | 1.0700 | −0.2516 | 1.0700 | −0.1033 |
7 | 1.0503 | −0.2313 | 1.0500 | −0.1553 |
8 | 1.0900 | −0.2313 | 1.0900 | −0.1553 |
9 | 1.0337 | −0.2589 | 1.0284 | −0.1706 |
10 | 1.0326 | −0.2625 | 1.0273 | −0.1635 |
11 | 1.0475 | −0.2591 | 1.0437 | −0.1356 |
12 | 1.0535 | −0.2665 | 1.0535 | −0.1223 |
13 | 1.0471 | −0.2672 | 1.0455 | −0.1271 |
14 | 1.0213 | −0.2804 | 1.0171 | −0.1695 |
Method | Test System | Load Multiplier | Solution |
---|---|---|---|
NRLF | IEEE 5-bus System | 1.91 | V(P.U.) = [1.0400 0.7914 0.9700 0.5566 0.7541] Angle (rad) = [0.0000 −0.5019 −0.5736 −0.8800 −0.4367] |
IEEE 14-Bus System | 3.6 | V(P.U.) = [1.0600 0.9950 0.9600 0.7436 0.7348 1.0200 0.8092 1.0400 0.7241 0.7386 0.8611 0.9364 0.8942 0.6964]; Angle (rad)= [0.0000 −0.5722 −1.3463 −1.0868 −0.9253 −1.5826 −1.4169 −1.4169 −1.5969 −1.6249 −1.6101 −1.6504 −1.6522 −1.7465]; | |
Proposed QOHBO | IEEE 5-bus System | 2 | V(P.U.)= [1.0400 0.8037 1.0200 0.5828 0.7606]; Angle (rad) = [0.0000 −0.5490 −0.6390 −0.9226 −0.4752]; |
IEEE 14-Bus System | 3.98 | V(P.U.) = [1.0600 1.0450 1.0100 0.7073 0.6798 1.0700 0.8002 1.0900 0.7044 0.7268 0.8784 0.9766 0.9269 0.6862]; Angle (rad) = [0.0000 −0.7270 −1.5901 −1.3247 −1.1363 −1.9355 −1.7197 −1.7197 −1.9291 −1.9654 −1.9573 −2.0046 −2.0052 −2.1044]; |
Solution Method | IEEE 5-Bus System | IEEE 14-Bus System |
---|---|---|
NRLF | 4.9 | 4.47 |
NRLF with Optimal multiplier [22] | - | 4.4225 |
Local search [22] | - | 4.4288 |
GA [22] | - | 4.4371 |
APSO [22] | - | 4.4371 |
Proposed QOHBO without PVG | 4.9 | 4.5 |
Proposed QOHBO with PVG | 5.9 | 4.9 |
Solution Method | IEEE 5-Bus System | IEEE 14-Bus System |
---|---|---|
NRLF | 0.012 | 0.043 |
NRLF with Optimal multiplier [22] | - | 0.0479 |
Local search [22] | 0.0428 | |
GA [22] | - | 0.0419 |
APSO [22] | - | 0.0419 |
Proposed QOHBO without PVG | 0.001 | 0.0418 |
Proposed QOHBO with PVG | 0.0001 | 0.0406 |
Bus No. | Proposed QOHBO-LF | NRLF [32] | FDLF [32] | GS [32] | ||||
---|---|---|---|---|---|---|---|---|
Voltage Magnitude (P.U.) | Voltage Angle (rad) | Voltage Magnitude (P.U.) | Voltage Angle (rad) | Voltage Magnitude (P.U.) | Voltage Angle (rad) | Voltage Magnitude (P.U.) | Voltage Angle (rad) | |
1 | 1.0000 | 0.0000 | NC | NC | NC | NC | NC | NC |
2 | 0.9745 | 0.0409 | ||||||
3 | 0.9426 | 0.0425 | ||||||
4 | 1.0630 | 0.1588 | ||||||
5 | 1.0442 | 0.0933 | ||||||
6 | 1.0672 | 0.1433 | ||||||
7 | 1.0177 | 0.2134 | ||||||
8 | 0.9430 | 0.2525 | ||||||
9 | 1.1000 | 0.1476 | ||||||
10 | 1.1000 | 0.1438 | ||||||
11 | 1.0000 | 0.0440 | ||||||
12 | 1.0370 | 0.1723 | ||||||
13 | 0.9693 | 0.0265 |
Bus No. | Solution 1 | Solution 2 | Solution 3 | |||
---|---|---|---|---|---|---|
Voltage Magnitude (P.U.) | Voltage Angle (rad) | Voltage Magnitude (P.U.) | Voltage Angle (rad) | Voltage Magnitude (P.U.) | Voltage Angle (rad) | |
1 | 1.0600 | 0.0000 | 1.0600 | 0.0000 | 1.0600 | 0.0000 |
2 | 1.0450 | −0.2598 | 1.0450 | −0.0870 | 1.0450 | −2.4130 |
3 | 1.0100 | −0.5856 | 1.0100 | −0.2224 | 1.0100 | −2.5765 |
4 | 0.5607 | −0.4967 | 1.0142 | −0.1790 | 0.8014 | −2.4474 |
5 | 0.4906 | −0.3076 | 1.0172 | −0.1530 | 0.6721 | −2.3380 |
6 | 1.0700 | −3.2109 | 1.0700 | −0.2516 | 1.0700 | −2.5282 |
7 | 0.5750 | −1.4133 | 1.0503 | −0.2313 | 0.9537 | −2.5039 |
8 | 1.0900 | −1.4133 | 1.0900 | −0.2313 | 1.0900 | −2.5039 |
9 | 0.4426 | −1.9847 | 1.0337 | −0.2589 | 0.9402 | −2.5299 |
10 | 0.4554 | −2.3885 | 1.0326 | −0.2625 | 0.9548 | −2.5344 |
11 | 0.7016 | −2.9596 | 1.0475 | −0.2591 | 1.0075 | −2.5326 |
12 | 0.9857 | −3.2113 | 1.0535 | −0.2665 | 1.0465 | −2.5439 |
13 | 0.9215 | −3.1658 | 1.0471 | −0.2672 | 1.0331 | −2.5429 |
14 | 0.5129 | −2.7932 | 1.0213 | −0.2804 | 0.9613 | −2.5556 |
Solution Method | 5-Bus System | IEEE 14-Bus System | Ill-Conditioned 13-Bus System |
---|---|---|---|
NRLF | 0.0282 s | 0.0522 s | - |
FDLF [1] | 0.0518 s | 0.0776 s | - |
NRLF with Optimal multiplier [22] | 0.0365 s | 0.0632 s | - |
Local search [22] | 0.0360 s | 0.585 s | - |
GA [22] | 0.0372 s | 0.0684 s | - |
PSO method [1] | 0.0318 s | 0.0603 s | - |
APSO [22] | 0.0370 s | 0.0598 s | - |
PSO with update [1] | 0.0498 s | 0.0601 s | - |
Proposed QOHBO | 0.0105 s | 0.0129 s | 0.0101 s |
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Basetti, V.; Rangarajan, S.S.; Kumar Shiva, C.; Verma, S.; Collins, R.E.; Senjyu, T. A Quasi-Oppositional Heap-Based Optimization Technique for Power Flow Analysis by Considering Large Scale Photovoltaic Generator. Energies 2021, 14, 5382. https://doi.org/10.3390/en14175382
Basetti V, Rangarajan SS, Kumar Shiva C, Verma S, Collins RE, Senjyu T. A Quasi-Oppositional Heap-Based Optimization Technique for Power Flow Analysis by Considering Large Scale Photovoltaic Generator. Energies. 2021; 14(17):5382. https://doi.org/10.3390/en14175382
Chicago/Turabian StyleBasetti, Vedik, Shriram S. Rangarajan, Chandan Kumar Shiva, Sumit Verma, Randolph E. Collins, and Tomonobu Senjyu. 2021. "A Quasi-Oppositional Heap-Based Optimization Technique for Power Flow Analysis by Considering Large Scale Photovoltaic Generator" Energies 14, no. 17: 5382. https://doi.org/10.3390/en14175382
APA StyleBasetti, V., Rangarajan, S. S., Kumar Shiva, C., Verma, S., Collins, R. E., & Senjyu, T. (2021). A Quasi-Oppositional Heap-Based Optimization Technique for Power Flow Analysis by Considering Large Scale Photovoltaic Generator. Energies, 14(17), 5382. https://doi.org/10.3390/en14175382