Economic Optimization of Hybrid Energy Storage Capacity for Wind Power Based on Coordinated SGMD and PSO
Abstract
:1. Introduction
2. Energy Storage Configuration Strategy Considering Peak-Shaving Effectiveness
2.1. Peak-Shaving Power Curve of Hybrid Energy Storage System
2.2. Empirical Mode Decomposition Algorithm
2.3. Symplectic Geometry Mode Decomposition Algorithm
2.4. Particle Swarm Optimization
3. Peak Regulation Control and Economic Optimization Strategy for Hybrid Energy Storage Systems
3.1. Hybrid Energy Storage System Configuration
3.2. Construction of an Optimization Model for Hybrid Energy Storage System Configuration
4. Results
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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) | 10-Min Maximum Active Power Variation/MW | 1-Min Maximum Active Power Variation/MW |
---|---|---|
Storage Type | Discharge Duration | Main Advantages | Power Cost (CNY/kW) | Energy Cost (CNY/kWh) | Operation and Maintenance Cost (CNY/kWh) |
---|---|---|---|---|---|
Flywheel Energy Storage | Seconds to Minutes | Fast response, long service life, excellent stability, and high power density. | 3000–6000 | 3000–8000 | 0.008 |
Pumped Hydro Storage | 4–10 h | Large storage capacity, long service life, and rapid load response, but significantly constrained by geographical conditions. | 5200–6480 | 200–1200 | 0.006 |
Liquefied Compressed Air Energy Storage | Minutes–28 h | High energy density, relatively fast response, long service life, and low-cost storage using atmospheric pressure in liquefied tanks. | 1500–3000 | 400–1000 | 0.033 |
Lithium-Ion Battery | 1–4 h | Fast charging and discharging capability and high energy density but a relatively limited service life. | 2000–4000 | 1000–2500 | 0.010 |
Lead–Acid Battery Energy Storage | 6–10 h | Short service life, but offers the advantage of low costs. | 800–1500 | 600–1000 | 0.020 |
Superconducting Magnetic Energy Storage | Virtually unlimited | Fast response time and high operational efficiency. | 4000–8000 | 2000–4000 | 0.006 |
Energy Storage Configuration | EMD-Based Scheme | SGMD-Based Scheme |
---|---|---|
FESS Power (MW) | 12.17 | 6.70 |
FESS Capacity (MWh) | 8.94 | 0.61 |
LAES Power (MW) | 2.23 | 9.99 |
LAES Capacity (MWh) | 10.69 | 10.00 |
Total Configuration Cost (CNY·104) | 12,371.85 | 9172.17 |
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Qi, K.; Meng, K.; Meng, X.; Zhao, F.; Lü, Y. Economic Optimization of Hybrid Energy Storage Capacity for Wind Power Based on Coordinated SGMD and PSO. Energies 2025, 18, 2417. https://doi.org/10.3390/en18102417
Qi K, Meng K, Meng X, Zhao F, Lü Y. Economic Optimization of Hybrid Energy Storage Capacity for Wind Power Based on Coordinated SGMD and PSO. Energies. 2025; 18(10):2417. https://doi.org/10.3390/en18102417
Chicago/Turabian StyleQi, Kai, Keqilao Meng, Xiangdong Meng, Fengwei Zhao, and Yuefei Lü. 2025. "Economic Optimization of Hybrid Energy Storage Capacity for Wind Power Based on Coordinated SGMD and PSO" Energies 18, no. 10: 2417. https://doi.org/10.3390/en18102417
APA StyleQi, K., Meng, K., Meng, X., Zhao, F., & Lü, Y. (2025). Economic Optimization of Hybrid Energy Storage Capacity for Wind Power Based on Coordinated SGMD and PSO. Energies, 18(10), 2417. https://doi.org/10.3390/en18102417