Optimal Location and Sizing of Photovoltaic-Based Distributed Generations to Improve the Efficiency and Symmetry of a Distribution Network by Handling Random Constraints of Particle Swarm Optimization Algorithm
Abstract
:1. Introduction
- i.
- Photovoltaic PV distributed generation, as well as constant load, is all factored into the RDG sizing and allocation problem.
- ii.
- The stochastic characteristics are achieved by using appropriate probability density functions (PDFs).
- iii.
- The Particle Swarm optimization algorithm (PSO), a metaheuristic algorithm, is used to determine the optimal solution with high exploitation potential and exploration aptitude.
- iv.
- The FBSM load flow approach is used to calculate the number of power losses and voltage profiles or symmetry/asymmetry in the voltages.
- v.
- PVDG is injected into the RDS at its optimal location and sizing to minimize the active power loss, reactive power loss, cost savings, and improve the voltage profile.
- vi.
- To show the effectiveness and performance of the proposed model, an IEEE 33 RDS is considered.
- vii.
- The simulation results of the proposed technique are compared with those of recently available algorithms in the literature.
2. Methodology
3. Problem Formulation
3.1. Objective Function
3.2. Constraints
3.2.1. Equality Constraints
3.2.2. Inequality Constraints
- Voltage Limitation.
- For keeping a proper stable voltage magnitude or voltage symmetry of the whole IEEE 33-bus network, the absolute voltage value at all nodes of the distribution system should meet the defined constraints.
- Current Limitation.
- For keeping a proper current flow in all branches, it should not exceed the rated limit. The absolute value of the current at all nodes of the RDS should meet the defined constraints.
- Thermal line restriction:
- The thermal line restriction condition is mentioned in Equation (9).
3.3. Photovoltaic (PV)-Based DG Model
4. Particle Swarm Optimization (PSO) Algorithm
- is the present search point and Tk+1 is the changed search point.
- is the present velocity and Vk+1 is the changed velocity.
- are weighing coefficients.
- are random numbers [0, 1]; ; inertia weight is and [37]. K and are present and the maximum iteration number, respectively.
5. Results and Discussion
5.1. Performance Analysis of IEEE 33-Bus Power System without PVDG
5.2. Performance Analysis of IEEE 33-Bus Power System with PVDG
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Subject | without PVDG | with PVDG |
---|---|---|
Total Active Power loss (kW) | 206.95 | 91.75 |
Total Reactive Power loss (kVAR) | 137.46 | 64.79 |
Loss decrement in Pi | - | 55.66% |
Loss decrement in Qi | - | 52.85% |
Minimum Voltage V (p.u.) | 0.9116@bus 18 | 0.9575@bus 18 |
Maximum Voltage V (p.u.) | 0.9970@bus 2 | 0.9985@bus 2 |
Cost of losses ($) | 108,772.92 | 48,223.4 |
Saving ($/year) | - | 60,549.12 |
Total DG (Size@Location) | - | 2440 kW@bus 9 |
Execution time (s) | - | 3.254238 |
Author | Year | Control Algorithm | Min. Voltage Improved@Bus | Reduction in Active Power Loss (%) | Reduction in Reactive Power Loss (%) | Execution Time (s) | Maximum Cost Savings (USD) |
---|---|---|---|---|---|---|---|
Remha et al. [11] | 2017 | FFA | 0.9412@18 | 47.39% | - | - | - |
T. Matlokosti [12] | 2017 | GA | 0.9175@18 | 46.65% | - | - | - |
E.S. Ali [38] | 2017 | ALOA | 0.9503@18 | 51.15% | 42.88% | - | $56,726.5 |
M. Khasanov [16] | 2019 | TLABC | 0.94237@18 | 47.37% | 42.891% | - | $52,536.3 |
M. Khasanov [25] | 2020 | AEO | 0.94237@18 | 47.37% | - | - | - |
V Janamala [27] | 2020 | PFA | 0.9424@18 | 47.38% | 42.89% | 25.342 | - |
J. Urinby [26] | 2021 | DE | 0.95836@18 | 47.38% | - | - | - |
Rekha C. M. [13] | 2022 | PSO | 0.9180@17 | 49.28% | 32.38% | - | - |
Proposed System | 2023 | PSO | 0.9575@18 | 55.66% | 52.78% | 3.254238 | $60,527.12 |
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Ali, M.A.; Bhatti, A.R.; Rasool, A.; Farhan, M.; Esenogho, E. Optimal Location and Sizing of Photovoltaic-Based Distributed Generations to Improve the Efficiency and Symmetry of a Distribution Network by Handling Random Constraints of Particle Swarm Optimization Algorithm. Symmetry 2023, 15, 1752. https://doi.org/10.3390/sym15091752
Ali MA, Bhatti AR, Rasool A, Farhan M, Esenogho E. Optimal Location and Sizing of Photovoltaic-Based Distributed Generations to Improve the Efficiency and Symmetry of a Distribution Network by Handling Random Constraints of Particle Swarm Optimization Algorithm. Symmetry. 2023; 15(9):1752. https://doi.org/10.3390/sym15091752
Chicago/Turabian StyleAli, Muhammad Abid, Abdul Rauf Bhatti, Akhtar Rasool, Muhammad Farhan, and Ebenezer Esenogho. 2023. "Optimal Location and Sizing of Photovoltaic-Based Distributed Generations to Improve the Efficiency and Symmetry of a Distribution Network by Handling Random Constraints of Particle Swarm Optimization Algorithm" Symmetry 15, no. 9: 1752. https://doi.org/10.3390/sym15091752
APA StyleAli, M. A., Bhatti, A. R., Rasool, A., Farhan, M., & Esenogho, E. (2023). Optimal Location and Sizing of Photovoltaic-Based Distributed Generations to Improve the Efficiency and Symmetry of a Distribution Network by Handling Random Constraints of Particle Swarm Optimization Algorithm. Symmetry, 15(9), 1752. https://doi.org/10.3390/sym15091752