Hoummadi Mohammed Amine, Bossoufi Badre, Karim Mohammed, Althobaiti Ahmed, Alghamdi Thamer A H, Alenezi Mohammed
LIMAS Laboratory, Faculty of Sciences Dhar El Mahraz, Sidi Mohammed Ben Abdellah University, Fez, 30003, Morocco.
Department of Electrical Engineering, College of Engineering, Taif University, P.O. Box 11099, Taif City, 21974, Saudi Arabia.
Sci Rep. 2025 Apr 12;15(1):12599. doi: 10.1038/s41598-025-96145-w.
The present study examines AI techniques to reduce the cost and CO emissions for designing and controlling microgrid at minimum cost and providing a power supply to a residential complex of 100 units. Three AI techniques, Genetic Algorithm (GA), Artificial Bee Colony (ABC), and Ant Colony Optimization (ACO), are employed to optimize the optimal composition of energy sources based on solar energy and wind energy, battery storage, and load profiles. GA, from natural selection, is constantly seeking the best configuration. ABC models honeybee foraging behavior to achieve efficient exploration, and ACO models ant colony decision-making to achieve optimal energy configuration. These AI models maximize the use of renewable energy, reduce wastage, and improve microgrid resilience and responsiveness to supply and demand fluctuations. Experiments demonstrate the revolutionary potential of AI to control microgrids. The optimization achieves the lowest electricity cost of 0.037 USD/kWh, a reduction by 67% from Fez's reference cost (0.115 USD/kWh) and guarantees a supply of power. These results illustrate the ability of AI to power cheap and clean energy systems.
本研究探讨了人工智能技术,旨在以最低成本设计和控制微电网,降低成本和碳排放,并为一个拥有100套单元的住宅小区供电。采用了三种人工智能技术,即遗传算法(GA)、人工蜂群算法(ABC)和蚁群优化算法(ACO),来优化基于太阳能、风能、电池储能和负荷曲线的能源最优组成。遗传算法源于自然选择,不断寻找最佳配置。人工蜂群算法模拟蜜蜂觅食行为以实现高效探索,蚁群优化算法模拟蚁群决策以实现最优能源配置。这些人工智能模型最大限度地利用可再生能源,减少浪费,并提高微电网对供需波动的弹性和响应能力。实验证明了人工智能在控制微电网方面的巨大潜力。优化后实现了最低电费成本0.037美元/千瓦时,比菲斯的参考成本(0.115美元/千瓦时)降低了67%,并保证了电力供应。这些结果说明了人工智能为廉价清洁能源系统供电的能力。