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Zakaria Belboul, B. Toual, A. Kouzou, Abderrahman Bensalem
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引用次数: 3

摘要

随着技术的发展,使用小型和离网混合可再生能源系统(所谓的自主微电网)为住宅单位提供能源变得更加经济、可靠,并对其环境价值做出反应。本研究提出了一种基于多目标蚱蜢优化算法(MOGOA)的新方法来确定混合可再生能源(HRES)集成到自治微电网的最佳规模。它由光伏系统(PV)、风力发电机(WT)、蓄电池组、柴油发电机(DG)和逆变器组成。该项目旨在满足阿尔及利亚杰尔法市5个住宅单元的能源需求。将电力损失概率(LPSP)和能源成本(COE)定义为目标函数,以可再生因子(RF)为约束。建议方法的目标是确定三个设计变量:光伏发电的标称功率、风力涡轮机的数量和自主天数。从而使可靠性最大化,并使COE最小化。利用MATLAB软件对混合微电网系统进行了编程和仿真。利用所提出的方法的优化结果为HMG系统提供了一系列设计方案,这将有助于设计师选择最佳的HMG系统配置。此外,选择适当尺寸的HMG系统组件对于确保以最少的能量和最高的可靠性满足所有负载需求至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Sizing of Hybrid PV/Wind/Battery/Diesel Microgrid System Using A Multi-objective Grasshopper optimization Algorithm: A Case Study in Djelfa City Algeria
Supplying the residential units with energy using small-scale and off-grid hybrid renewable energy systems (the so-called autonomous microgrid) with technological developments becomes more economical, reliable, and responsive to their environmental values. This study presents the application of a novel method based on a Multi-objective Grasshopper optimization Algorithm (MOGOA) to determine the optimal sizing of hybrid renewable energy sources (HRES) integrated into an autonomous microgrid. It composes of a photovoltaic system (PV), wind turbine generator (WT), battery bank, diesel generator (DG), and inverter. It aims to satisfy the energy demand of five residential units proposed in Djelfa city in Algeria. The loss of power supply probability (LPSP) and the cost of energy (COE) are defined as objective functions and the renewable factor (RF) as constrain. The objective of the suggested approach is to determine three design variables: the nominal power of photovoltaic, the number of wind turbines, and the number of autonomy days. Such that the reliability is maximized and the COE is minimized. The MATLAB software is used to program and simulate the hybrid microgrid (HMG) system. The optimization results utilizing the proposed approach provided a collection of design solutions for the HMG system, which will aid designers in selecting the best HMG system configuration. Furthermore, selecting appropriately sized HMG system components is critical to ensuring that all load needs are satisfied with the least amount of energy and the highest level of reliability.
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