Shaker H K, Keshta H E, Mosa Magdi A, Ali A A
Faculty of Engineering, Helwan University, Helwan, Egypt.
Faculty of Engineering at Shoubra, Benha University, Banha, Egypt.
Sci Rep. 2024 Oct 17;14(1):24359. doi: 10.1038/s41598-024-72952-5.
This study focuses on improving power system grid performance and efficiency through the integration of distributed energy resources (DERs). The study proposes an artificial intelligence (AI) based effective approach for economic dispatch and load management for three linked microgrids (MGs) that operate in both grid-connected and autonomous modes. A day-ahead scheduling method is suggested to calculate the optimal set points for various energy sources in MGs considering various system constraints for safe operation. In addition, a load management approach that shifts the controllable loads from one interval to another is applied to reduce the operating cost of MG. To handle the optimization challenges of energy scheduling and load shifting such complexity and non-linearity, an advanced meta-heuristic method known as the one-to-one based optimizer (OOBO) is used. Overall, the paper proposes a viable and efficient methodology for economical distribution in linked microgrids, which takes advantage of renewable energy resources and incorporates scheduling optimization via the OOBO algorithm. The proposed energy management strategy enhances the system performance, increases energy efficiency, and reduces the daily operational cost by 1.6% for grid connected mode and by 0.47% for islanded operation mode.
本研究聚焦于通过整合分布式能源资源(DER)来提高电力系统电网的性能和效率。该研究针对三个以并网和自主模式运行的互联微电网(MG),提出了一种基于人工智能(AI)的经济调度和负荷管理有效方法。建议采用一种日前调度方法,在考虑各种系统安全运行约束的情况下,计算微电网中各种能源的最优设定点。此外,应用一种将可控负荷从一个时段转移到另一个时段的负荷管理方法,以降低微电网的运行成本。为应对能源调度和负荷转移等复杂和非线性的优化挑战,使用了一种称为一对一优化器(OOBO)的先进元启发式方法。总体而言,本文提出了一种适用于互联微电网经济配电的可行且高效的方法,该方法利用可再生能源资源,并通过OOBO算法纳入调度优化。所提出的能源管理策略提高了系统性能,提升了能源效率,并网模式下每日运营成本降低了1.6%,孤岛运行模式下降低了0.47%。