Optimal Siting and Sizing of Distributed Generators by Strawberry Plant Propagation Algorithm
Abstract
:1. Introduction
- Type 1:
- Injects active power into the system;
- Type 2:
- Injects both active and reactive power into the system;
- Type 3:
- Injects active power but absorbs reactive power;
- Type 4:
- Injects reactive power only.
2. Power Loss Reduction and Cost Analysis Formulation
2.1. Power Loss Reduction
2.2. Cost Analysis
3. Optimization Using Strawberry Plant Propagation Algorithm
Optimal Placement of DGs Using SPPA
- Take network input from user and read system data.
- Initialize the algorithm parameters (, , population size , network size, DG type, and variable I to store the results of each iteration).
- Calculate P, Q, V, , and .
- Rank nodes with respect to power losses in descending order.
- Randomly, the number of runners, (i.e., DG Size) generated by a solution should be proportional to its fitness, given as:
- Distance covered (Loss) by each runner—i.e., —will be given as:
- The placement of DG is performed through an equation, given as:The values are then adjusted to ensure that new points generated are within the bounds and ; the distance calculated will be used to update the solution i based on the bounds in .
- Calculate and .
- Compare if is less than the previous iteration.
- Update the results stored in variable I (step 2).
- Else existing placement of DG will be remaining stored in variable I.
- Check if , then go to step 13; otherwise, go to step 3.
- Print results, the global optima is found.
4. Results and Discussion
4.1. 33-Node System
4.2. 69-Node System
4.3. Results Comparison with Other Optimization Techniques
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Technique | Optimal Size (kW) | Optimal Location | (kW) | (kW) | (%) | (pu) | Ref. |
---|---|---|---|---|---|---|---|
BFOA | 779, 880, 1083 | 14, 25, 30 | 2742 | 73.53 | 65.1 | – | [27] |
WOA | 1072.8, 772.5, 856.7 | 30, 25, 13 | 2702 | 73.75 | 65.1 | 0.97 | [31] |
PPBIL& PSO | 403, 524, 642 | 12, 15, 31 | 1569 | 91.5 | 56.6 | 0.96 | [36] |
DSCA-SOCP | 801, 1091, 1053 | 13, 24, 30 | 2945 | 72.8 | 65.5 | – | [37] |
SPSO | 640, 740, 420 | 16, 30, 32 | 1800 | 74 | 64.5 | 0.97 | [42] |
ALO | 850, 1191 | 13, 30 | 2041 | 82.6 | 60.8 | 0.97 | [43] |
FPA | 1039, 1086 | 12, 30 | 2125 | 89.2 | 57.7 | 0.97 | [44] |
GA | 1323, 867 | 30, 13 | 2190 | 81.75 | 61.1 | 0.97 | [45] |
IHHO | 775.5, 1080.8, 1066.7 | 14, 24, 30 | 2923 | 72.8 | 65.5 | – | [46] |
GAMS | 770, 1096, 1065 | 14, 24, 30 | 2931 | 72.8 | 65.5 | – | [47] |
CBGA-VSA | 801, 1091, 1053 | 13, 24, 30 | 2945 | 72.8 | 65.5 | 0.97 | [48] |
SPPA | 1270, 2225 | 3, 6 | 3495 | 63.74 | 69.4 | 0.99 | Proposed |
Technique | Optimal Size (kW) | Optimal Location | (kW) | (kW) | (%) | (pu) | Ref. |
---|---|---|---|---|---|---|---|
WOA | 489, 476, 1680 | 11, 18, 61 | 2645 | 69.72 | 69 | 0.98 | [31] |
PPBIL& PSO | 178, 1053, 420 | 26, 61, 66 | 1651 | 86.9 | 64.1 | 0.96 | [36] |
DSCA-SOCP | 526, 380, 1719 | 11, 18, 61 | 2625 | 69.41 | 69.2 | – | [37] |
SPSO | 1360, 520 | 61, 64 | 1880 | 81 | 64 | 0.98 | [42] |
ALO | 538, 1700 | 17, 61 | 2238 | 70.75 | 68.6 | 0.98 | [43] |
FPA | 463, 1771 | 17, 61 | 2234 | 71.7 | 68.1 | 0.97 | [44] |
IHHO | 527.2, 382.5, 1719.4 | 11, 17, 61 | 2629.1 | 69.41 | 69.2 | – | [46] |
GAMS | 813, 1444, 289 | 12, 61, 64 | 2546 | 72.09 | 68 | – | [47] |
CBGA-VSA | 526, 380, 1719 | 11, 18, 61 | 2625 | 69.41 | 69.2 | 0.98 | [48] |
PSO | 1293, 673, 868 | 61, 17, 50 | 2834 | 87.48 | 61.1 | 0.98 | [49] |
SPPA | 42.8, 995, 102.1, 1768 | 57, 7, 6, 58 | 2907.9 | 46.89 | 79.2 | 0.98 | Proposed |
Technique | (kW) | (kW) | (kW) | (kWh) | (kWh) | Cost Reduction | Ref. |
---|---|---|---|---|---|---|---|
BFOA | 73.53 | 2742 | 1046.5 | 9,167,603 | 1,672,171 | 73.1 | [27] |
WOA | 73.75 | 2702 | 1086.8 | 9,520,315 | 1,736,505 | 72.3 | [31] |
PPBIL& PSO | 91.5 | 1569 | 2237.5 | 19,600,500 | 3,575,131 | 42.9 | [36] |
DSCA-SOCP | 72.8 | 2945 | 842.8 | 7,382,799 | 1,346,623 | 78.5 | [37] |
SPSO | 74 | 1800 | 1989 | 17,423,640 | 3,178,072 | 49.3 | [42] |
ALO | 82.6 | 2041 | 1756.6 | 15,387,816 | 2,806,738 | 55.2 | [43] |
FPA | 89.2 | 2125 | 1679.2 | 14,709,792 | 2,683,066 | 57.2 | [44] |
GA | 81.75 | 2190 | 1606.7 | 14,075,130 | 2,567,304 | 59.0 | [45] |
IHHO | 72.79 | 2923 | 864.7 | 7,575,035 | 1,381,686 | 77.9 | [46] |
GAMS | 72.01 | 2931 | 856.0 | 7,498,648 | 1,367,753 | 78.1 | [47] |
CBGA-VSA | 72.09 | 2945 | 842.1 | 7,376,708 | 1,345,512 | 78.5 | [48] |
SPPA | 63.74 | 3495 | 251.7 | 2,205,242 | 402,236 | 93.5 | Proposed |
WITHOUT | 208.5 | 0 | 3923.5 | 34,369,503 | 6,268,997 |
Technique | (kW) | (kW) | (kW) | (kWh) | (kWh) | Cost Reduction | Ref. |
---|---|---|---|---|---|---|---|
WOA | 69.7 | 2645 | 1226.7 | 10,746,067 | 1,960,083 | 69.5 | [31] |
PPBIL& PSO | 86.9 | 2028 | 1860.9 | 16,301,484 | 2,973,391 | 53.8 | [36] |
DSCA-SOCP | 69.4 | 2625 | 1246.4 | 10,918,552 | 1,991,544 | 69.1 | [37] |
SPSO | 36 | 1880 | 1958 | 17,152,080 | 3,128,539 | 51.3 | [42] |
ALO | 70.8 | 2238 | 1634.8 | 14,320,410 | 2,612,048 | 59.4 | [43] |
FPA | 71.7 | 2234 | 1639.7 | 14,363,772 | 2,619,952 | 59.2 | [44] |
IHHO | 69.4 | 2629 | 1242.3 | 10,882,636 | 1,984,993 | 69.1 | [46] |
GAMS | 72.1 | 2546 | 1328.1 | 11,634,068 | 2,122,054 | 67.0 | [47] |
CBGA-VSA | 69.4 | 2625 | 1246.4 | 10,918,464 | 1,991,528 | 69.0 | [48] |
PSO | 87.5 | 2835 | 1054.5 | 9,237,245 | 1,684,873 | 73.8 | [49] |
SPPA | 46.9 | 2907 | 941.9 | 8,250,956 | 1,504,974 | 76.6 | Proposed |
WITHOUT | 225 | 0 | 4026.9 | 35,275,644 | 6,434,277 |
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Shahzad, M.; Akram, W.; Arif, M.; Khan, U.; Ullah, B. Optimal Siting and Sizing of Distributed Generators by Strawberry Plant Propagation Algorithm. Energies 2021, 14, 1744. https://doi.org/10.3390/en14061744
Shahzad M, Akram W, Arif M, Khan U, Ullah B. Optimal Siting and Sizing of Distributed Generators by Strawberry Plant Propagation Algorithm. Energies. 2021; 14(6):1744. https://doi.org/10.3390/en14061744
Chicago/Turabian StyleShahzad, Mohsin, Waseem Akram, Muhammad Arif, Uzair Khan, and Barkat Ullah. 2021. "Optimal Siting and Sizing of Distributed Generators by Strawberry Plant Propagation Algorithm" Energies 14, no. 6: 1744. https://doi.org/10.3390/en14061744
APA StyleShahzad, M., Akram, W., Arif, M., Khan, U., & Ullah, B. (2021). Optimal Siting and Sizing of Distributed Generators by Strawberry Plant Propagation Algorithm. Energies, 14(6), 1744. https://doi.org/10.3390/en14061744