Department of Computer Science in Jamoum, Umm Al-Qura University, Makkah 25371, Saudi Arabia.
Electrical Engineering Department, Assiut University, Assiut 71516, Egypt.
Sensors (Basel). 2022 Mar 21;22(6):2408. doi: 10.3390/s22062408.
In on-grid microgrids, electric vehicles (EVs) have to be efficiently scheduled for cost-effective electricity consumption and network operation. The stochastic nature of the involved parameters along with their large number and correlations make such scheduling a challenging task. This paper aims at identifying pertinent innovative solutions for reducing the relevant total costs of the on-grid EVs within hybrid microgrids. To optimally scale the EVs, a heuristic greedy approach is considered. Unlike most existing scheduling methodologies in the literature, the proposed greedy scheduler is model-free, training-free, and yet efficient. The proposed approach considers different factors such as the electricity price, on-grid EVs state of arrival and departure, and the total revenue to meet the load demands. The greedy-based approach behaves satisfactorily in terms of fulfilling its objective for the hybrid microgrid system, which is established of photovoltaic, wind turbine, and a local utility grid. Meanwhile, the on-grid EVs are being utilized as an energy storage exchange location. A real time hardware-in-the-loop experimentation is comprehensively conducted to maximize the earned profit. Through different uncertainty scenarios, the ability of the proposed greedy approach to obtain a global optimal solution is assessed. A data simulator was developed for the purposes of generating evaluation datasets, which captures uncertainties in the behaviors of the system's parameters. The greedy-based strategy is considered applicable, scalable, and efficient in terms of total operating expenditures. Furthermore, as EVs penetration became more versatile, total expenses decreased significantly. Using simulated data of an effective operational duration of 500 years, the proposed approach succeeded in cutting down the energy consumption costs by about 50-85%, beating existing state-of-the-arts results. The proposed approach is proved to be tolerant to the large amounts of uncertainties that are involved in the system's operational data.
在并网微电网中,必须有效地调度电动汽车 (EV) 以实现具有成本效益的电力消耗和网络运行。所涉及参数的随机性以及它们的大量存在和相关性使得这种调度成为一项具有挑战性的任务。本文旨在确定减少混合微电网中并网电动汽车相关总成本的创新解决方案。为了优化电动汽车的规模,采用启发式贪婪方法。与文献中的大多数现有调度方法不同,所提出的贪婪调度器是无模型、无训练的,但效率很高。所提出的方法考虑了不同的因素,例如电价、并网电动汽车的到达和离开状态以及总收益以满足负荷需求。基于贪婪的方法在满足混合微电网系统目标方面表现令人满意,该系统由光伏、风力涡轮机和当地电网组成。同时,并网电动汽车被用作能量存储交换位置。进行了全面的实时硬件在环实验以最大化获得的利润。通过不同的不确定性场景,评估了所提出的贪婪方法获得全局最优解的能力。为了生成评估数据集,开发了一个数据模拟器,该数据集捕获了系统参数行为中的不确定性。所提出的基于贪婪的策略在总运营支出方面被认为是适用的、可扩展的和高效的。此外,随着电动汽车渗透率变得更加多样化,总费用显著降低。使用 500 年有效运行时间的模拟数据,所提出的方法成功地将能源消耗成本降低了约 50-85%,优于现有的最先进的结果。所提出的方法被证明对系统运行数据中涉及的大量不确定性具有耐受性。