Energy Management Strategy and Capacity Planning of an Autonomous Microgrid: A Comparative Study of Metaheuristic Optimization Searching Techniques

Abba Lawan Bukar, Chee Wei Tan, K. Y. Lau, C. L. Toh, R. Ayop, Ahmed Tijjani Dahiru
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Abstract

Electricity generation using renewable energy-based microgrid (REM) is a prerequisite to achieve one of the cardinal objectives of sustainable development goals. Nonetheless, the optimum design and sizing of the REM is challenging. This is because the REM needs to supply the fluctuating demand considering the sporadic behaviour of the renewable energy sources (RES). This paper, therefore, proposes a nature-inspired metaheuristic optimization searching technique (MOST) to optimize the components of an autonomous microgrid integrating a diesel generator ${\left(D_{\text{GEN}}\right)}$, battery bank, photovoltaic and wind turbine. In this regard, a cycle-charging energy management scheme (CEMS) control is proposed and implemented using a rule-based algorithm. The proposed CEMS provide a power delivery sequence for the different components of the microgrid. Subsequently, the CEMS is optimized using the metaheuristic optimization searching techniques (MOSTs). To benchmark, the paper compares the success of six different MOSTs. The simulation is performed for the climatic conditions of Yobe State, in northern Nigeria using MATLAB software. The comparative results show that the grasshopper optimization algorithm is found to yield a better result because it gives the least fitness function relative to other studied MOSTs. Remarkably, it outperforms the grey wolf optimizer, the ant lion optimizer, and the particle swarm optimization by ~ 3.0 percent, ~ 5.8 percent, and ~ 3.6 percent (equivalent to a cost savings of $8332.38, $4219.87, and $5144.64 from the target microgrid project). Results also indicate that the proposed CEMS adopted for the microgrid control strategy has led to the implementation of a clean and affordable energy system, as it's significantly minimized CO2 (by 92.3%), fuel consumption (by 92.4%), compared fossil fuel-based ${D_{\text{GEN}}}$.
自主微电网的能量管理策略与容量规划:元启发式优化搜索技术的比较研究
利用基于可再生能源的微电网发电是实现可持续发展目标的先决条件之一。然而,REM的最佳设计和尺寸是具有挑战性的。这是因为考虑到可再生能源(RES)的零星行为,REM需要提供波动的需求。因此,本文提出了一种受自然启发的元启发式优化搜索技术(MOST),以优化由柴油发电机${\left(D_{\text{GEN}}\right)}$、电池组、光伏和风力涡轮机组成的自主微电网的组件。为此,提出了一种循环充电能量管理方案(CEMS),并采用基于规则的算法实现。所提出的CEMS为微电网的不同组成部分提供了一个电力输送顺序。随后,利用元启发式优化搜索技术(MOSTs)对CEMS进行优化。作为基准,本文比较了六种不同的most的成功。利用MATLAB软件对尼日利亚北部约贝州的气候条件进行了模拟。对比结果表明,相对于其他已研究的最优算法,蚱蜢优化算法给出的适应度函数最小,从而获得了更好的结果。值得注意的是,它比灰狼优化器、蚂蚁狮子优化器和粒子群优化器分别高出3.0%、5.8%和3.6%(相当于从目标微电网项目中节省了8332.38美元、4219.87美元和5144.64美元)。结果还表明,与基于化石燃料的${D_{\text{GEN}} $相比,用于微电网控制策略的拟议CEMS导致了清洁和负担得起的能源系统的实施,因为它显着减少了二氧化碳(减少92.3%),燃料消耗(减少92.4%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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