考虑气象和负荷数据不确定性的离网混合可再生能源系统优化设计

IF 8.1 2区 工程技术 Q1 CHEMISTRY, PHYSICAL
Florent Struyven , Mathieu Sellier , Myeongsub Kim , Rosalinda Inguanta , Farkad A. Lattieff , Philippe Mandin
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引用次数: 0

摘要

本研究为离网混合可再生能源系统(HRES)的电力和饮用水的优化设计提供了方法上的贡献。除了模拟太阳能光伏和风力发电与电池和氢气储存相结合的系统的运行之外,这项工作还侧重于一个关键但经常被忽视的问题:与气象和消费输入数据相关的不确定性。在Julia中实现了一个多目标优化模型,用于确定最小化能源和水成本同时最大化可再生能源份额的系统配置。分析表明,输入数据的选择对系统设计结果有重要影响。提出了一种方法来识别最有利和最不利的输入数据集。在可再生能源生产不足以满足需求的时期,引入了一种新的短缺指标来量化能源短缺。这一指标通过将成本和规模变化与储存要求联系起来,可以解释成本和规模变化的根本原因。该方法使用2018年至2023年的气象和消费数据应用于法国莫尔特伦岛。结果突出了系统设计对输入变异性的强敏感性,并为不确定性下的鲁棒分析和规划提供了框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accounting for meteorological and load data uncertainty in the optimal design of off-grid hybrid renewable energy systems
This study presents a methodological contribution to the optimal design of an off-grid hybrid renewable energy systems (HRES) producing both electricity and drinking water. Beyond simulating the operation of a system combining solar photovoltaic and wind generation with battery and hydrogen storage , the work focuses on a critical yet often overlooked issue: the uncertainty associated with meteorological and consumption input data. A multi-objective optimization model, implemented in Julia, is used to determine system configurations that minimize the cost of energy and water while maximizing the share of renewable energy. The analysis demonstrates that the selection of input data has a significant influence on system design results. A methodology is proposed to identify the most favorable and most unfavorable input datasets. A novel shortage indicator is introduced to quantify energy deficits during periods when renewable production is insufficient to meet demand. This indicator enables interpretation of the underlying causes of cost and sizing variations, by linking them to storage requirements. The methodology is applied to the island of Molène (France) using meteorological and consumption data from 2018 to 2023. The results highlight the strong sensitivity of system design to input variability, and provide a framework for robust analysis and planning under uncertainty.
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来源期刊
International Journal of Hydrogen Energy
International Journal of Hydrogen Energy 工程技术-环境科学
CiteScore
13.50
自引率
25.00%
发文量
3502
审稿时长
60 days
期刊介绍: The objective of the International Journal of Hydrogen Energy is to facilitate the exchange of new ideas, technological advancements, and research findings in the field of Hydrogen Energy among scientists and engineers worldwide. This journal showcases original research, both analytical and experimental, covering various aspects of Hydrogen Energy. These include production, storage, transmission, utilization, enabling technologies, environmental impact, economic considerations, and global perspectives on hydrogen and its carriers such as NH3, CH4, alcohols, etc. The utilization aspect encompasses various methods such as thermochemical (combustion), photochemical, electrochemical (fuel cells), and nuclear conversion of hydrogen, hydrogen isotopes, and hydrogen carriers into thermal, mechanical, and electrical energies. The applications of these energies can be found in transportation (including aerospace), industrial, commercial, and residential sectors.
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