Optimal Allocation and Sizing of Battery Energy Storage System in Distribution Network Using Mountain Gazelle Optimization Algorithm
Abstract
:1. Introduction
2. Contributions
- This study introduces the Mountain Gazelle Optimizer (MGO), a novel metaheuristic optimization technique inspired by the behaviour of mountain gazelles, to solve the BESS placement and sizing problem in distribution networks. The algorithm effectively identifies optimal BES locations and sizes while considering real-time grid conditions.
- A hybrid approach combining MGO with MILP is proposed to address the technical constraints of BES optimization, such as power balance and voltage regulation. This integration ensures the solution is both optimal in terms of BES sizing and placement as well as feasible from an operational standpoint within the distribution network.
- Unlike existing studies that focus on static placement and sizing, this research incorporates dynamic control of BES charging and discharging strategies over a 24 h period. The proposed strategy mitigates reverse power flow during peak solar generation, improves voltage regulation, and reduces system losses during peak load periods.
- Although the MGO algorithm was introduced in 2022 [32], it has not yet been applied to BES placement and sizing problems in the literature. The implementation of the MGO is relatively straightforward, necessitating only fundamental mathematical programming skills to adapt the algorithm to a variety of optimization problems. The results presented demonstrate that MGO outperforms other established optimization algorithms, such as Grey Wolf Optimizer (GWO) and Whale Optimization Algorithm (WOA), in terms of convergence speed and overall optimization performance, offering a more effective solution for large-scale, dynamic distribution networks.
3. Mathematical Modelling
3.1. Objective Function
3.2. Set of Constraints
3.3. Proposed Solution Method
3.3.1. Primary Stage: MILP
Charging/Discharging Strategy
Matrix Formulation
3.3.2. Secondary Stage
Territory Solitary Males (TSM)
Maternity Herds (MH)
Bachelor of Male Herds (BMH)
Migration in Search of Food (MSF)
Algorithm 1: Secondray stage algorithm: MGO |
Data: Data reading and assignment of MGO parameters for = 1:24 do
Report the best fitness value |
4. Simulation Test System
- The batteries are charging in such a way that they charge during peak PV generation to stop the reverse power flow to the grid.
- The batteries collectively discharge during the evening peak load period to support the grid.
- While Bat 1 and Bat 2 have similar profiles of charging and discharging heavily during peak PV and peak demand period, Bat 3 has a more uniform profile.
5. Conclusions
- The proposed methodology significantly improves the voltage profile across the network. For instance, at the peak load period (8 p.m.), the voltage at bus number 8 improves from 0.9495 p.u. (base case) to 0.9528 p.u. using the MGO algorithm, representing a 0.348% improvement. This improvement is superior to that achieved by other optimization algorithms, such as Grey Wolf Optimizer (GWO), Whale Optimization Algorithm (WOA), and Cuckoo Search Algorithm (CSA).
- The integration of BESs optimally located and sized leads to a reduction in system losses. The total system loss for a 24 h period in the base case scenario is 49.0701 kW, which is reduced by 8.473% (4.16 kW) with the application of MGO. Other algorithms (GWO, WOA, and CSA) show reductions in losses ranging from 7.33% to 7.42%.
- The BESs are allocated to buses where voltages exceed predefined limits, ensuring the grid is supported and the voltage remains within acceptable ranges. The optimal locations correspond to areas of the grid that experience overvoltage or undervoltage issues, improving overall network stability.
- MGO demonstrates superior convergence behaviour, achieving a minimum fitness value of 47.260 after 47 iterations, as compared to GWO, WOA, and CSA. In particular, WOA shows signs of becoming trapped in local minima, leading to suboptimal performance.
- MGO outperforms other optimization algorithms (GWO, WOA, CSA) in both voltage profile improvement and system loss reduction. MGO achieves the lowest fitness value (47.260), indicating superior performance in optimizing BES placement, sizing, and operational dispatch.
6. Limitations and Future Research Directions
6.1. Limitations
- Single-Stage System: The current methodology is based on a daily operational horizon and does not consider the dynamic nature of BESS dispatch over a longer period (e.g., seasonal variations in load and generation). The study does not account for real-time adjustments in the operation of BESSs.
- Scalability: While the proposed methodology has been tested on an Australian distribution feeder, it may face scalability issues when applied to larger or more complex networks with a higher number of buses and BESSs. The computational complexity of the two-stage optimization approach could increase significantly as the system size grows.
- Grid Stability Under Extreme Conditions: The optimization is performed based on typical grid operation conditions. However, extreme weather events or unexpected load peaks could significantly impact the performance of the proposed methodology in real-world conditions. The current approach does not account for such contingencies.
6.2. Future Research Directions
- Incorporating Uncertainty and Forecasting: Future research can explore incorporating forecasting errors and uncertainties in renewable energy generation and load demands. Stochastic optimization techniques or robust optimization methods could be integrated to account for these uncertainties and provide more reliable solutions.
- Extended Time Horizons and Dynamic Operation: Expanding the methodology to account for longer time horizons, such as weekly, monthly, or even seasonal periods, would allow for more accurate planning and dispatch of BESs. Additionally, dynamic control strategies that can adjust to real-time grid conditions and BESS state of charge could be investigated.
- Hybrid and Advanced Metaheuristic Algorithms: The study utilizes the Mountain Gazelle Optimization (MGO) algorithm for optimization, which shows superior performance compared to other algorithms. However, hybrid optimization techniques that combine MGO with other algorithms, such as Genetic Algorithms or Particle Swarm Optimization, could be explored to further improve the optimization results and robustness, especially in larger networks.
- Integration with Grid Expansion Planning: Future studies could explore the integration of BESS optimization with grid expansion planning, where the placement and sizing of energy storage systems are considered along with other grid infrastructure decisions, such as the placement of transformers and conductors.
- Considering Real-World Constraints: Further research could include additional real-world constraints, such as market-based constraints (e.g., cost of electricity, market participation). This would provide a more realistic framework for the practical implementation of BESSs in distribution networks.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Ref. | Optimized Variables | Algorithms | Objective Function |
---|---|---|---|
[16] | Size + Location | Modified non-dominated sorting genetic algorithm (NSGA) | Minimize power loss and improve voltage profile |
[17] | Size + Location + Scheduling | Mixed integer linear programming (MILP) | Minimize power loss |
[8] | Number + Size + Location | Voltage sensitivity analysis | Improve voltage profile |
[18] | Size + Location | Whale optimization algorithm (WOA) | Minimize power loss |
[19] | Size + Location | Improved Cayote optimization algorithm (ICOA) | Minimize power loss |
[20] | Location | Multi-objective evolutionary algorithm (MOEA) | Minimize energy not supplied, load loss, load cost, voltage drop. |
[21] | Size + Location | Improved non-dominated sorting genetic algorithm-II (NSGA-II) | Minimize power loss and voltage fluctuations |
[22] | Location | Voltage sensitivity index factor (VSIF) | Minimize annual energy loss and overvoltage |
[23] | Size + Location | Binary Grey wolf optimization (BGWO) | Improve voltage and frequency stability |
[24] | Size + Location | Genetic algorithm(GA) | Minimize cost |
[25] | Location | Genetic algorithm (GA) | Minimize cost |
[26] | Size + Location | Genetic algorithm (GA) | Minimize power loss and cost |
[27] | Size + Location | Hybrid multi-objective particle swarm optimization | Minimize cost and improve voltage profile |
[28] | Size + Location | Enhanced opposition firefly algorithm (EOFA) | Minimize power loss and voltage deviation |
[29] | Size | Improved bat algorithm (IBA) | Minimize cost |
[30] | Location | Artificial bee colony algorithm (ABCA) | Minimize power loss, voltage deviation, line loading |
[31] | Size | Improved harmony search algorithm (IHSA) | Minimize cost |
Battery Technology | |||
---|---|---|---|
Lead-acid | >0.97 | 0.9220 | 0.8943 |
Lithium-ion | >0.97 | 0.9487 | 0.9202 |
LiFePO4 | >0.97 | 0.9747 | 0.9454 |
Method | Buses | Sizes | Fitness Value | |
---|---|---|---|---|
Capacity (kW) | Capacity (kWh) | |||
Base | 49.0101 | |||
GWO | [19 8 21] | [9.5 2.78 20] | [40 15.3 40] | 47.302 |
WOA | [19 8 16] | [13.36 1.96 0.14] | [40 7.51 38.07] | 47.322 |
CSA | [19 19 16] | [9.4 6.34 7.61] | [40 21.45 16.67] | 47.352 |
Proposed methodology | [19 8 21] | [13.38 15.26 8.98] | [40.00 30.19 40.00] | 47.260 |
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Mumtahina, U.; Alahakoon, S.; Wolfs, P. Optimal Allocation and Sizing of Battery Energy Storage System in Distribution Network Using Mountain Gazelle Optimization Algorithm. Energies 2025, 18, 379. https://doi.org/10.3390/en18020379
Mumtahina U, Alahakoon S, Wolfs P. Optimal Allocation and Sizing of Battery Energy Storage System in Distribution Network Using Mountain Gazelle Optimization Algorithm. Energies. 2025; 18(2):379. https://doi.org/10.3390/en18020379
Chicago/Turabian StyleMumtahina, Umme, Sanath Alahakoon, and Peter Wolfs. 2025. "Optimal Allocation and Sizing of Battery Energy Storage System in Distribution Network Using Mountain Gazelle Optimization Algorithm" Energies 18, no. 2: 379. https://doi.org/10.3390/en18020379
APA StyleMumtahina, U., Alahakoon, S., & Wolfs, P. (2025). Optimal Allocation and Sizing of Battery Energy Storage System in Distribution Network Using Mountain Gazelle Optimization Algorithm. Energies, 18(2), 379. https://doi.org/10.3390/en18020379