Submitted:
06 February 2026
Posted:
10 February 2026
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Abstract

Keywords:
1. Introduction
1.1. Problem Statement
1.2. Literature Review
1.3. Novelty
1.4. Key Contributions

1.5. Organization
2. Methodology
2.1. System Description
2.2. Hybrid PSO–Neural EMS Architecture
2.3. Design of PSO-NN EMS
2.4. Neural Networking Training
| S.No | Parameter | Value |
|---|---|---|
| 1 | No.of inputs | 12 |
| 2 | No. of outputs | 2 |
| 3 | NN type | FFBP |
| 4 | NN Size | 12-64-32-2 |
| 5 | Hyparameter tuning | Keras Tuner |
| 6 | Activation function | Sigmoid and ReLU |
| 7 | Optimizer | ADAM |
| 8 | Learning rate | 0.01 |
| 9 | No.of epochs | 150 |
3. Results
| S.No | Parameter | Value |
|---|---|---|
| PV Array | ||
| 1 | Open circuit voltage | 76.6 V |
| 2 | Short circuit current | 35 A |
| 3 | MPP Voltage | 60.4 V |
| 4 | MPP current | 32.24 A |
| Battery Parameters | ||
| 5 | Battery type | Li-ion |
| 6 | Nominal voltage | 12 V |
| 7 | Rated capacity | 42 Ah |
| 8 | Initial SoC | 50 % |
| Super Capacitor | ||
| 9 | Rated capacitence | 58 F |
| 10 | Rated Voltage | 16 V |
| 11 | DC series resistance | 0.089 |
3.1. Hardware Implementation
| S.No | Parameter | Value |
|---|---|---|
| PV Emulator | ||
| 1 | Rating | 1kW |
| 2 | Open Circuit Voltage | 50V |
| 3 | Short Circuit Current | 20A |
| Battery | ||
| 4 | Nominal Voltage | 38 V |
| 5 | Capacity | 15Ah |
| 6 | Discharge Current | 20A (peak) 15A (cont) |
| 7 | Charge Current | 6A |
| 8 | Balancing | Smart & Passive |
| 9 | Operating Temp | 20 -45 degC |
| Super Capacitor | ||
| 10 | Nominal Voltage | 48 V |
| 11 | Capacitance | 165 F |
| 12 | Capacity | 53 Wh |
4. Conclusions
Author Contributions
Conflicts of Interest
Abbreviations
| DCMG | DC Microgrid |
| EMS | Energy Management System |
| PSO | Particle Swarm Optimization |
| NN | Neural Networks |
| SC | Super Capacitor |
| BESS | Battery Energy Storage System |
| HESS | Hybrid Energy Storage System |
| SoC | State of Charge |
| MPC | Model Predictive Control |
| DER | Distributed Energy Resources |
| PEC | Power Electronic Converters |
| CC | Constant Current |
References
- Khushoo, M.; Sharma, A.; Kaur, G. DC microgrid-A short review on control strategies. Materials Today: Proceedings 2022, 71, 362–369.
- Shabbir, G.; Hasan, A.; Yaqoob Javed, M.; Shahid, K.; Mussenbrock, T. Review of DC Microgrid Design, Optimization, and Control for the Resilient and Efficient Renewable Energy Integration. Energies 2025, 18, 6364.
- Dhar, R.K.; Merabet, A.; Al-Durra, A.; Ghias, A.M. Power balance modes and dynamic grid power flow in solar PV and battery storage experimental DC-link microgrid. Ieee Access 2020, 8, 219847–219858.
- Vivas, F.; Segura, F.; Andújar, J.; Calderón, A.; Isorna, F. Battery-based storage systems in high voltage-DC bus microgrids. A real-time charging algorithm to improve the microgrid performance. Journal of Energy Storage 2022, 48, 103935.
- Khan, K.A.; Khalid, M. Improving the transient response of hybrid energy storage system for voltage stability in DC microgrids using an autonomous control strategy. IEEE Access 2021, 9, 10460–10472.
- Aghmadi, A.; Ali, O.; Mohammed, O.A. Stability Enhancement of DC Microgrid Operation Involving Hybrid Energy Storage and Pulsed Loads. IEEE Transactions on Consumer Electronics 2025.
- Adhikari, S.; Lei, Z.; Peng, W.; Tang, Y. A battery/supercapacitor hybrid energy storage system for DC microgrids. In Proceedings of the 2016 IEEE 8th International Power Electronics and Motion Control Conference (IPEMC-ECCE Asia). IEEE, 2016, pp. 1747–1753.
- Grisales-Noreña, L.F.; Montoya, O.D.; Ramos-Paja, C.A. An energy management system for optimal operation of BSS in DC distributed generation environments based on a parallel PSO algorithm. Journal of Energy Storage 2020, 29, 101488.
- Wu, T.; Ye, F.; Su, Y.; Wang, Y.; Riffat, S. Coordinated control strategy of DC microgrid with hybrid energy storage system to smooth power output fluctuation. International Journal of Low-Carbon Technologies 2020, 15, 46–54.
- Ferahtia, S.; Djerioui, A.; Rezk, H.; Chouder, A.; Houari, A.; Machmoum, M. Adaptive droop based control strategy for DC microgrid including multiple batteries energy storage systems. Journal of Energy Storage 2022, 48, 103983.
- Zhang, W.; Chen, J.; Riaz, S.; Zheng, N.; Li, L. Research on Distributed Cooperative Control Strategy of Microgrid Hybrid Energy Storage Based on Adaptive Event Triggering. CMES-Computer Modeling in Engineering & Sciences 2022, 132.
- Gbadega, P.A.; Sun, Y. A hybrid constrained Particle Swarm Optimization-Model Predictive Control (CPSO-MPC) algorithm for storage energy management optimization problem in micro-grid. Energy Reports 2022, 8, 692–708.
- Vedulla, L.K.; Mishra, M.K. PSO based power sharing scheme for an islanded DC microgrid system. In Proceedings of the IECON 2017-43rd Annual Conference of the IEEE Industrial Electronics Society. IEEE, 2017, pp. 392–397.
- Tianqi, L.; Guochen, Y.; Jing, G.; Fang, L.; Xueyan, P. Research on control strategy of storage and DC hybrid energy storage based on new energy microgrid. In Proceedings of the 2022 IEEE 2nd International Conference on Data Science and Computer Application (ICDSCA). IEEE, 2022, pp. 328–333.
- Hu, Q.; Xie, S.; Zhang, J. Data-based power management control for battery supercapacitor hybrid energy storage system in solar DC-microgrid. Scientific Reports 2024, 14, 26164.
- Ali, N.; Shen, X.; Armghan, H. A hybrid approach involving data driven forecasting and super twisting control action for low-carbon microgrids. Applied Energy 2025, 398, 126429.
- Anu, A.; Arunkumar, C.; Hari Kumar, R.; Annie, B.; Shihabudheen, K.; Dileep, G.; et al. Adaptive particle swarm optimization based controller design for stability enhancement of standalone DC microgrid. Journal of Energy Storage 2024, 98, 113012.
- Lukic, S.M.; Cao, J.; Bansal, R.C.; Rodriguez, F.; Emadi, A. Energy storage systems for automotive applications. IEEE Transactions on industrial electronics 2008, 55, 2258–2267.
- Bahloul, M.; Khadem, S.K. Impact of power sharing method on battery life extension in HESS for grid ancillary services. IEEE Transactions on Energy Conversion 2018, 34, 1317–1327.
- Khaligh, A.; Li, Z. Battery, ultracapacitor, fuel cell, and hybrid energy storage systems for electric, hybrid electric, fuel cell, and plug-in hybrid electric vehicles: State of the art. IEEE transactions on Vehicular Technology 2010, 59, 2806–2814.
- Banka, S.; Kumar, D.V.A. Energy Optimization of HESS Integrated DCMG: PSO Based Approach. In Proceedings of the 2025 Third International Conference on Cyber Physical Systems, Power Electronics and Electric Vehicles (ICPEEV), 2025, pp. 1–6. [CrossRef]












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