Optimum Battery Depth of Discharge of Stand-alone Hybrid System Using the MOPSO Method
DOI:
https://doi.org/10.65405/.v10i37.654الكلمات المفتاحية:
Stand-alone PV-battery system, Multi-objective Optimization, MOPSO method, Loss of load probability, Cost of energyالملخص
This paper presents an optimized design of a Standalone Solar PV/Battery (SSPVB) system to
address energy reliability and cost efficiency challenges in off-grid environments. The proposed
system integrates a Multi-Objective Particle Swarm Optimization (MOPSO) approach and validates
the results using the Non-Dominated Sorting Genetic Algorithm II (NSGA-II). The optimization
process aims to minimize both the Cost of Energy (COE) and Loss of Load Probability (LLP),
while examining the effects of Battery Depth of Discharge (DOD) on system reliability and
lifecycle cost. Results indicate that an optimal DOD of approximately 70% yields a COE of 0.2059
USD/kWh with zero LLP, demonstrating strong reliability and cost-effectiveness. Comparative
analysis shows that both MOPSO and NSGA-II methods achieve consistent outcomes, with
MOPSO exhibiting faster convergence. The study provides valuable insights into optimal battery
sizing for stand-alone systems, contributing to modern optimization practices in renewable energy
applications.
التنزيلات
المراجع
[1] M. Bergey, "Village electrification: hybrid systems," in Wind energy
applications and training symposium, 1993.
[2] Mohamad Izdin Hlal, Vigna K Ramachandaramurthy, Ameen Sarhan, Aref
Pouryekta, and Umashankar Subramaniam, “Optimum Battery Depth of
Discharge for Off-grid Solar PV- Battery System” Journal of Energy
Storage, vol. 26, December 2019, pp. 100999.
[3] Mohamad Izdin Hlal, Vigna K. Ramachandaramurthy, Sanjeevikumar
Padmanaban, Hamid Reza Kaboli, Aref Pouryekta, Tuan Ab Rashid bin Tuan
Abdullah. “NSGA-II and MOPSO based optimization for sizing of hybrid PV /
wind / battery energy storage system”, International Journal of Power
Electronics and Drive System (IJPEDS).Vol. 10, No. 1, March 2019, pp.
463~47
[4] H. Yang, W. Zhou, L. Lu, and Z. Fang, "Optimal sizing method for stand-alone
hybrid solar–wind system with LPSP technology by using genetic algorithm,"
Solar energy, vol. 82, pp. 354-367, 2008.
[5] D. Xu, L. Kang, and B. Cao, "The elitist non-dominated sorting GA for multiobjective optimization of standalone hybrid wind/PV power systems," J Appl
Sci, vol. 6, pp. 2000-5, 2006.
[6] R. Rajkumar, V. Ramachandaramurthy, B. Yong, and D. Chia, "Technoeconomical optimization of hybrid pv/wind/battery system using NeuroFuzzy," Energy, vol. 36, pp. 5148-5153, 2011.
[7] H. Borhanazad, S. Mekhilef, V. G. Ganapathy, M. Modiri-Delshad, and A.
Mirtaheri, "Optimization of micro-grid system using MOPSO," Renewable
Energy, vol. 71, pp. 295-306, 2014.
[8] Huang, Y. et al. (2024). 'Multi-objective particle swarm optimization for
optimal scheduling of household microgrids.' Frontiers in Energy Research,
11(1354869).
[9] Coccato, S. (2025). 'A Review of Battery Energy Storage Optimization in the
Built Environment.' Batteries, 11(5), 179.
[10] Khezri, R. (2022). 'Optimal planning of solar photovoltaic and battery storage
systems for grid-connected residential sector: Review, challenges and new
perspectives.' Renewable and Sustainable Energy Reviews, 153, 110339.
[11] Iturralde Carrera, L. A. et al. (2025). 'Advances and Optimization Trends in
Photovoltaic Systems: A Systematic Review.' Energies, 18(9), 225.
[12] Hadj Slama, A. et al. (2025). 'Metaheuristic Optimization of Hybrid Renewable
Energy Systems (HRES).' Symmetry, 17(9), 1412.
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