Advanced Energy Management System for Renewable Based Microgrids Using Optimization and Intelligent Control Techniques
Keywords:
AI-driven EMS, microgrids, renewable energy integration, load balancing, machine learningAbstract
An advanced Energy Management System (EMS) for renewable-based microgrids is presented using optimization techniques integrated with Artificial Neural Networks (ANN). The proposed system aims to efficiently coordinate distributed energy resources such as photovoltaic (PV) systems, wind turbines, battery energy storage systems (BESS), and grid interaction to ensure reliable and economical operation. ANN is employed for accurate load and generation forecasting, while optimization algorithms are used to minimize operational cost, power losses, and emissions under varying environmental and load conditions. The intelligent control strategy dynamically manages energy flow, maintains power balance, and enhances system stability. Simulation results demonstrate improved efficiency, reduced dependency on the main grid, and enhanced power quality compared to conventional EMS approaches. The proposed methodology offers a scalable and robust solution for modern smart microgrids with high renewable penetration.
References
Ozcan, O. F., Kilic, H., & Ozguven, O. F. (2026). Intelligent optimized load shedding under renewable and load uncertainties in fuel cell-integrated islanded microgrids. International Journal of Hydrogen Energy, 214, 153845.
Renjin, Liyunhe, Gongshenggao, & Biantao. (2026). A hybrid fuzzy logic-based energy management strategy for grid-connected photovoltaic microgrids with energy storage optimization. COMPUTERS & ELECTRICAL ENGINEERING, 131.
Jiang, Y. (2026). Enhancing microgrid profitability: ISSA-based optimization of thermal and renewable energy management with CHP considerations. International Journal of Electrical Power & Energy Systems, 174, 111423.
Mahiba, C., Shanmugarathinam, G., Joseph, A., Gayathri, T., & Raja, S. P. (2026). Energy Efficient Federated Edge Reinforcement Optimization for Blockchain-IoT-Enabled Cyber-Physical Control of Renewable Microgrids. Sustainable Computing: Informatics and Systems, 101330.
Irfan, M., Tahir, T., Deilami, S., Huang, S., & Veettil, B. P. (2026). Novel control-based design optimization of smart energy distribution and Management in Vehicle-to-Grid Integrated Microgrid. Applied Energy, 402, 127047.
Gbadega, P. A., Sun, Y., & Balogun, O. A. (2025). Enhanced multi-area automatic generation control in renewable energy-based microgrids using an IPFC-SMES system and COA-optimized FOPID controller. Energy Reports, 13, 6479-6513.
Cheng, Z., Ji, R., Tao, H., Abdalla, A. N., Tang, X., & Li, S. (2026). Robust multi-time-scale scheduling of microgrids with renewable energy interpretation and bidirectionally controlled electric vehicles using adaptive Harris hawks optimization. Unconventional Resources, 100305. 8.
Yang, Y., Xu, J., Ibrahim, A. W., Al-Shamma’a, A. A., Farh, H. M. H., & Hadjaissa, A. (2025). An intelligent control strategy and power management for a microgrid electrical vehicle application based on a hybrid PV/PEMFC/battery renewable energy system. Renewable Energy, 125144.
Manojkumar, R., Reddy, C. K., Yuvaraj, T., Bajaj, M., & Blazek, V. (2025). Optimized rule-based energy management for AC/DC hybrid microgrids using price-based demand response. e-PrimeAdvances in Electrical Engineering, Electronics and Energy, 14, 101132.
Limouni, T., Yaagoubi, R., Bouziane, K., Guissi, K., & Baali, E. H. (2025). A comprehensive review of microgrid control methods: Focus on AI, optimization, and predictive techniques. Computers and Electrical Engineering, 125, 110442.
Chothani, N., Upadhyay, P., Patel, D., Chan, C. K., Naik, N., Singh, S., & Dixit, S. (2026). Improving Microgrid Reliability and Performance by Implementing Novel Optimizing Strategies for Renewable Energy and Storage Devices. Energy Nexus, 100671.
El Qouarti, O., Nasser, T., Essadki, A., & Akarne, Y. (2025). AC/DC hybrid microgrid energy management optimization as a decisive factor towards De-Carbonization and rational integration of electrical self-generating units using three-objective grey wolf optimization algorithm-power to X and renewable energies solutions. International Journal of Hydrogen Energy, 138, 1116-1130.
Liu, T., Zou, C., Wang, H., Yang, J., Chi, H., Zhang, H., ... & Xiao, Y. (2026). Intelligent optimization of a PV/T–ORC coupled microgrid: towards reliable, high tenacity and cost-efficient energy systems. Energy Conversion and Management, 347, 120575.
Azakaf, K., El Magri, A., Lajouad, R., & El Myasse, I. (2026). Hybrid energy storage systems in microgrids: A comprehensive review of integration strategies, stability impacts, and optimization approaches. Journal of Energy Storage, 151, 120338.
Mishra, R. (2024). Raspberry Pi Performance analysis across its Operating System in LED Control Operation. International Journal of Advanced Research and Multidisciplinary Trends (IJARMT), 1(2), 01-11.
Mishra, R. (2025). IOT and DSP (combination of hardcore Virtex-5 FPGA and soft core DSP processor) OFDM System PAPR Reduction Using Artificial Intelligence Algorithm. International Journal of Advanced Research and Multidisciplinary Trends (IJARMT), 2(1), 135-149.
Mishra, R., & Sharma, A. (2026). Enhanced Trajectory Tracking of a 6-DOF Robotic Manipulator Using GA–PID and ANN–PID Controllers. International Journal of Research & Technology, 14(2), 53-70.
Downloads
How to Cite
Issue
Section
License
Copyright (c) 2026 International Journal of Engineering Science & Humanities

This work is licensed under a Creative Commons Attribution 4.0 International License.


