Techno-economic optimization of hybrid renewable energy system for islands application

IF 3.3 2区 社会学 Q2 ENVIRONMENTAL SCIENCES Sustainable Futures Pub Date : 2024-08-22 DOI:10.1016/j.sftr.2024.100281
Mohammad Toudefallah , Panagiotis Stathopoulos
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Abstract

This study evaluates the effects of time resolution on the optimization results of a renewable energy system for an off-grid island. The assessment uses a multi-objective genetic algorithm (MOGA) applied to Tilos Island in Greece. Three objective functions—levelized cost of electricity (LCOE), renewable ratio (RR), and profit—are considered across four distinct scenarios with six variables representing the number of renewable technologies. These cases are implemented using three time resolutions: minute-by-minute, 15-minute, and hourly. A significant difference in results is observed based on the time resolution used. With hourly data optimization, 100 % renewable energy coverage is achievable at Tilos’ current diesel generator cost (0.46 $/kWh). However, using minute-by-minute data, renewable energy coverage ranges from 85.87 % to 95.64 %, depending on the scenario. The primary reason for this discrepancy is the volatile nature of demand and power generation on Tilos Island. The analysis further indicates that the differences between minute-by-minute and hourly optimization diminish as the volatility of the input data to the algorithm decreases.

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岛屿应用混合可再生能源系统的技术经济优化
本研究评估了时间分辨率对离网岛屿可再生能源系统优化结果的影响。评估采用多目标遗传算法 (MOGA),应用于希腊的蒂洛斯岛。在四个不同的方案中考虑了三个目标函数--平准化电力成本 (LCOE)、可再生比例 (RR) 和利润,其中六个变量代表了可再生技术的数量。这些情况通过三种时间分辨率来实现:每分钟、15 分钟和每小时。根据所使用的时间分辨率,可以观察到结果存在明显差异。通过每小时数据优化,以 Tilos 目前的柴油发电机成本(0.46 美元/千瓦时)计算,可再生能源覆盖率可达到 100%。然而,使用逐分钟数据时,可再生能源覆盖率从 85.87 % 到 95.64 % 不等,视情况而定。造成这种差异的主要原因是蒂洛斯岛的需求和发电量不稳定。分析进一步表明,随着算法输入数据波动的减小,逐分钟优化和逐小时优化之间的差异也会减小。
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来源期刊
Sustainable Futures
Sustainable Futures Social Sciences-Sociology and Political Science
CiteScore
9.30
自引率
1.80%
发文量
34
审稿时长
71 days
期刊介绍: Sustainable Futures: is a journal focused on the intersection of sustainability, environment and technology from various disciplines in social sciences, and their larger implications for corporation, government, education institutions, regions and society both at present and in the future. It provides an advanced platform for studies related to sustainability and sustainable development in society, economics, environment, and culture. The scope of the journal is broad and encourages interdisciplinary research, as well as welcoming theoretical and practical research from all methodological approaches.
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