Effective Utilization of Distributed Power Sources under Power Mismatch Conditions in Islanded Distribution Networks
Abstract
:1. Introduction
Ref# | Author(s)/Year | Objective Function(s) | Optimization Technique(s) | Operation Mode(s) |
---|---|---|---|---|
[11] | Ahmad Eid (2022) | Active and reactive power loss, voltage deviation, and stability | Jellyfish search algorithm | Grid-connected |
[12] | Mouwaf et al. (2022) | Active power loss, voltage deviation, and stability | Chaotic bat algorithm | Grid-connected |
[13] | Leghari et al. (2022) | Active power loss and voltage deviation | Best–worst optimizers | Grid-connected |
[14] | Naderipour et al. (2021) | Costs of energy loss, installation, and maintenance | Spotted hyena optimizer | Grid-connected |
[15] | Malik et al. (2020) | Active power loss, voltage deviation, and voltage stability index | Multiobjective particle swarm optimization | Grid-connected |
[16] | Tolabi et al. (2020) | Active power loss, voltage stability, and operational cost | Thief and police algorithm | Grid-connected |
[17] | Almabsout et al. (2020) | Active power loss | Enhanced genetic algorithm | Grid-connected |
[18] | Manikanta et al. (2019) | Active power loss | Quantum-inspired evaluation algorithm | Grid-connected |
[19] | Sambaiah and Jayabarathi (2019) | Active power loss, voltage deviation, voltage stability index, installation and maintenance costs of DGs and capacitors, and gas emissions | Salp swarm algorithm | Grid-connected |
[20] | Lotfi et al. (2018) | Active power loss | Particle swarm optimization and genetic algorithm | Grid-connected |
[21] | Mehmood et al. (2018) | Energy loss index, voltage enhancement index, and investment cost index | Elitist speciation-based genetic algorithm | Grid-connected |
[22] | Dixit et al. (2017) | Active power loss | Gbest-guided artificial bee colony | Grid-connected |
[23] | Biswas et al. (2017) | Active and reactive power loss | Multiobjective evolutionary algorithm based on the decomposition | Grid-connected |
[24] | Ghanegaonkar and Pande (2017) | Active power loss, energy loss, and capacitor switching events | Particle swarm optimization | Grid-connected |
[25] | Kumar et al. (2017) | Active power loss, voltage deviation, and voltage stability index | Multiobjective particle swarm optimization | Grid-connected |
[26] | Muthukumar and Jayalalitha (2016) | Active power loss | Hybrid harmony search—particle artificial bee colony algorithm | Grid-connected |
[27] | Khodabakhshian and Andisghae (2016) | Cost of losses | Intersect mutation differential evolution | Grid-connected |
[28] | Jannat and Savic (2016) | Voltage deviation and installed reactive power capacity | Non–dominated sorting genetic algorithm | Grid-connected |
[29] | Lalitha et al. (2016) | Active power loss and voltage deviation | Symbiotic organisms search | Grid-connected |
[30] | Andebili (2016) | Investment and maintenance costs of DGs and capacitors, cost of energy loss, and risk cost | Genetic algorithm | Grid-connected |
[31] | Ghaffarzadeh and Sadeghi (2016) | The benefit of reductions in active power loss, reactive power loss, and power purchased from the grid | Biogeography-based optimization algorithm | Grid-connected |
[32] | Pereira et al. (2016) | Investment costs of DGs and capacitors and system’s operation costs | Hybrid Tabu search-Chu-Beasly genetic algorithm | Grid-connected |
[33] | Kayal and Chanda (2016) | Active power loss, voltage stability factor, network security index, economic index, and annual carbon dioxide emission | Non-dominated sorting multiobjective particle swarm optimization | Grid-connected |
[34] | Khan et al. (2015) | Active power loss and voltage deviation | Binary collective animal behavior optimization algorithm | Grid-connected |
[35] | Zeinalzadeh et al. (2015) | Active power loss, voltage stability index, and sections current index | Genetic algorithm | Grid-connected |
[1] | Gholami et al. (2015) | Costs of energy loss, peak power loss, and capacitors | Genetic algorithm | Grid-connected and islanded |
[36] | Jain et al. (2014) | Active power loss, reactive power loss, voltage profile, and gas emissions | Modified particle swarm optimization | Grid-connected |
[37] | Mahari and Mahari (2014) | Active power loss | Discrete imperialistic competition algorithm | Grid-connected |
[38] | Syed and Injeti (2014) | Active power loss | Backtracking search algorithm | Grid-connected |
[39] | Hosseinzadehdehkordi et al. (2014) | Investment and operation costs of capacitors and cost of power/energy loss | Differential evolution | Grid-connected |
[40] | Aman et al. (2013) | Active power loss | Particle swarm optimization | Grid-connected |
[41] | Musa et al. (2013) | Active power loss | Particle swarm optimization | Grid-connected |
[42] | Manafi et al. (2013) | Active power loss | Differential evolution and particle swarm optimization | Grid-connected |
[43] | Karimi et al. (2012) | Investment and operation costs of capacitors and cost of power/energy loss | Differential evolution | Grid-connected |
[2] | Wang and Zhong (2011) | Voltage profile | Optimal power flow | Grid-connected and islanded |
[44] | Zou et al. (2009) | Investment costs for DG and capacitors | Particle swarm optimization | Grid-connected |
[45] | Zou et al. (2008) | Costs of DG units, capacitors, energy loss, and distribution system reliability | Particle swarm optimization | Grid-connected |
- A methodology correlating the effective utilization of the DG and capacitor units under autonomous operation mode is proposed for the scenario where the power supply is less than the power demand;
- A bi-objective minimization function, incorporating the accessible power generation’s under-utilization and active power loss reduction, is established to optimize the islanded distribution network’s operation during power supply and demand imbalance events.
2. Problem Formulation
2.1. Power Loss
2.2. Accessible Generation Capacity’s Utilization
2.3. Constraints
2.4. Decision Variables
2.5. Modeling of DGs’ Power Output
2.6. Modeling of Capacitors’ Power Output
3. Proposed Methodological Framework to Optimize the Autonomous Network’s Operation
- Step 1.
- Define the base power, base voltage, load data, and line data for the selected distribution network.
- Step 2.
- Calculate the starting values of the objective functions, the active power loss in this case, by running the base case load flow for all the solutions of the starting population.
- Step 3.
- Set the JA’s parameters, nPop and MaxItr, and the parameters of the optimization problem, n (number of design variables) and Ud and Ld (upper and lower bounds).
- Step 4.
- Initialize the starting population with random values of the design variables.
- Step 5.
- Execute the power flow to compute the value of the objective function for each search agent of the starting population.
- Step 6.
- Find out the cost function values to determine the best and worst solutions.
- Step 7.
- Update the solutions of the current population, based on known best and worst solutions, as per Equation (23).
- Step 8.
- Carry out the power flow for each new solution vector and determine the cost function’s updated values.
- Step 9.
- Compare the new updated cost function values with the previous values for each solution. Adopt the new solution if it is superior to the old one; else, stick with the old solution. Create the new population replacing the old one.
- Step 10.
- Stop the optimization process if the maximum iteration count is completed. Otherwise, repeat steps 6 to 9. Finally, report the obtained final optimum solutions of DG–capacitor sizes and locations.
- Step 11.
- Disconnect the distribution network from the grid and identify the available maximum active and reactive power generations for the autonomous distribution network.
- Step 12.
- Specify a value for the DG–capacitor combination’s working power factor, (Equation (24)).
- Step 13.
- Gradually increase the active and reactive power demands of the load while keeping the source power factor constant at .Let Po,i, Qo,i be the initial active and reactive power demands of load connected at bus i, which are assumed as 50% of PDG,available and QCap,available.
- Step 14.
- Stop adding to the load demand, if
- Step 15.
- Compute the cost function value as Equation (18).
- Step 16.
- For the next value, repeat steps 12 to 15.
- Step 17.
- Compare the values of the cost function acquired at each and display the best solution value of .
4. Results and Discussion
- Case 1:
- DG–capacitor couple supplying power at a power factor of 0.93 (i.e., at the maximum bound).
- Case 1:
- DG–capacitor couple supplying power at (also termed as ).
- Case 3:
- DG–capacitor couple supplying power to the load at the load power factor ().
- Case 4:
- DG–capacitor couple supplying power at a power factor of 0.8 (i.e., at the minimum bound).
4.1. Optimal DG and Capacitor Unit Allocation for Grid-Integrated 33-Bus and 69-Bus Distribution Networks
4.2. 33-Bus Autonomous Distribution Network
4.3. 69-Bus Autonomous Distribution Network
5. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Parameters | 33-Bus Test System | 69-Bus Test System |
---|---|---|
DG size in MW (bus location) | 2.54 (bus 6) | 1.8285 (bus 61) |
Capacitor size in MVAR (bus location) | 1.26 (bus 30) | 1.3 (bus 61) |
Power losses before DG and capacitor integration, MW | 211 | 225 |
Power losses after DG and capacitor integration, MW | 58.452 | 23.171 |
Minimum bus voltage (p.u.) before DG and capacitor integration, @ bus | 0.9038 (bus 18) | 0.9092 (bus 65) |
Minimum bus voltage (p.u.) after DG and capacitor integration, @ bus | 0.9538 (bus 18) | 0.9725 (bus 27) |
Available power generation from DG and capacitor in MVA | 2.835 | 2.244 |
Distribution networks’ total load demand in MVA | 4.369 | 4.660 |
Available generation from distributed power units (percentage of network load) | 64.90% | 48.15% |
Quantity | Case 1 | Case 2 | Case 3 | Case 4 |
---|---|---|---|---|
Total power collectively produced by DG and capacitor in MVA | 2.731 | 2.835 | 2.392 | 2.100 |
Load’s total power consumption in MVA | 2.677 | 2.782 | 2.352 | 2.067 |
Operating power factor of the DG–capacitor combination | 0.93 | 0.896 (pfsource) | 0.85 (pfload) | 0.8 |
Real power loss in MW | 0.047 | 0.045 | 0.034 | 0.028 |
Operating efficiency of the islanded distribution network | 98.02% | 98.13% | 98.33% | 98.43% |
Total power produced by DG and capacitor units (percentage of network load) | 62.30% | 64.89% | 54.75% | 48.07% |
The load portion supplied with accessible power generation (percentage of network load) | 61.27% | 63.68% | 53.83% | 47.31% |
Under-utilization of mounted distributed generation capacity (percentage of network load) | 2.59% | 0.0% | 10.14% | 16.82% |
Under-utilization of mounted distributed generation capacity (percentage of available power generation) | 3.99% | 0.0% | 15.63% | 25.93% |
Minimum voltage in p.u. (@ bus) | 0.975 (bus 18) | 0.974 (bus 18) | 0.979 (bus 18) | 0.981 (bus 18) |
Quantity | Case 1 | Case 2 | Case 3 | Case 4 |
---|---|---|---|---|
Total power collectively produced by DG and capacitor in MVA | 1.966 | 2.244 | 2.237 | 2.167 |
Load’s total power consumption in MVA | 1.923 | 2.190 | 2.182 | 2.117 |
Operating power factor of the DG–capacitor combination | 0.93 | 0.815 (pfsource) | 0.816 (pfload) | 0.8 |
Real power loss in MW | 0.0409 | 0.0532 | 0.0531 | 0.0496 |
Operating efficiency of the islanded distribution network | 97.81% | 97.59% | 97.59% | 97.69% |
Total power produced by DG and capacitor units (percentage of network load) | 42.19% | 48.15% | 48.09% | 46.50% |
The load portion supplied with accessible power generation (percentage of network load) | 41.27% | 47.00% | 46.93% | 45.43% |
Under-utilization of mounted distributed generation capacity (percentage of network load) | 5.88% | 0.00% | 0.06% | 1.65% |
Under-utilization of mounted distributed generation capacity (percentage of available power generation) | 12.23% | 0.00% | 0.13% | 3.43% |
Minimum voltage in p.u. (@ bus) | 0.958 | 0.954 | 0.954 | 0.956 |
(buses 17–27) | (buses 19–27) | (buses 20–27) | (buses 19–27) |
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Leghari, Z.H.; Hassan, M.Y.; Said, D.M.; Kumar, L.; Kumar, M.; Tran, Q.T.; Sanseverino, E.R. Effective Utilization of Distributed Power Sources under Power Mismatch Conditions in Islanded Distribution Networks. Energies 2023, 16, 2659. https://doi.org/10.3390/en16062659
Leghari ZH, Hassan MY, Said DM, Kumar L, Kumar M, Tran QT, Sanseverino ER. Effective Utilization of Distributed Power Sources under Power Mismatch Conditions in Islanded Distribution Networks. Energies. 2023; 16(6):2659. https://doi.org/10.3390/en16062659
Chicago/Turabian StyleLeghari, Zohaib Hussain, Mohammad Yusri Hassan, Dalila Mat Said, Laveet Kumar, Mahesh Kumar, Quynh T. Tran, and Eleonora Riva Sanseverino. 2023. "Effective Utilization of Distributed Power Sources under Power Mismatch Conditions in Islanded Distribution Networks" Energies 16, no. 6: 2659. https://doi.org/10.3390/en16062659
APA StyleLeghari, Z. H., Hassan, M. Y., Said, D. M., Kumar, L., Kumar, M., Tran, Q. T., & Sanseverino, E. R. (2023). Effective Utilization of Distributed Power Sources under Power Mismatch Conditions in Islanded Distribution Networks. Energies, 16(6), 2659. https://doi.org/10.3390/en16062659