Load profiles of residential off-grid solar systems on the Navajo Nation

IF 4.4 2区 工程技术 Q2 ENERGY & FUELS Energy for Sustainable Development Pub Date : 2024-11-02 DOI:10.1016/j.esd.2024.101572
Henry Louie , Scott O'Shea , Stanley Atcitty , Derrick Terry , Darrick Lee , Peter Romine
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Abstract

Standalone off-grid electrical systems, no matter where they are deployed or for what user class, are designed based upon the load they are expected to serve. State-of-the-art computerized off-grid system design tools require the user to specify the expected load profile, that is, how the power consumption changes throughout the day. Often, this is at an hourly resolution, and some characterization of the distribution of power around the average values may be required. Specifying realistic and reasonable load profiles is a barrier to the appropriate design of standalone systems. This research extends previous studies on daily energy consumption of residential solar-powered off-grid systems on the Navajo Nation to provide hourly load profiles, statistical characteristics, and probabilistic models. The data analyzed come from 90 homes over a two-year period. K-means clustering is used to identify prototypical normalized load profiles when the data are grouped by year, season, weekday, and weekend. Eight parametric probability density functions are fit to the grouped data at an hourly resolution. Their fit to the data is evaluated using the Cramér-von Mises (CvM) statistic. The results show that the load profiles tend to be night-peaking and that Log Normal and Gumbel distributions can reasonably model variation in the data. The load profiles and probabilistic models can be used in off-grid design software and to synthesize load profiles for design and future research.
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纳瓦霍部落住宅离网太阳能系统的负载概况
独立离网电力系统,无论部署在何处,也无论面向哪类用户,都要根据其预期服务的负荷进行设计。最先进的计算机化离网系统设计工具要求用户指定预期的负荷曲线,即全天的耗电量变化情况。通常情况下,这是以小时为单位的,而且可能需要对平均值附近的功率分布进行一些描述。指定现实而合理的负载曲线是适当设计独立系统的一个障碍。本研究扩展了之前关于纳瓦霍部落住宅太阳能离网系统每日能耗的研究,提供了每小时负荷曲线、统计特征和概率模型。所分析的数据来自 90 个家庭,时间跨度为两年。当数据按年份、季节、工作日和周末分组时,使用 K 均值聚类来识别原型归一化负荷曲线。八个参数概率密度函数以小时为单位拟合分组数据。使用 Cramér-von Mises(CvM)统计量评估了这些函数与数据的拟合程度。结果表明,负荷曲线趋向于夜间分布,对数正态分布和 Gumbel 分布可以合理地模拟数据的变化。负荷曲线和概率模型可用于离网设计软件,并为设计和未来研究综合负荷曲线。
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来源期刊
Energy for Sustainable Development
Energy for Sustainable Development ENERGY & FUELS-ENERGY & FUELS
CiteScore
8.10
自引率
9.10%
发文量
187
审稿时长
6-12 weeks
期刊介绍: Published on behalf of the International Energy Initiative, Energy for Sustainable Development is the journal for decision makers, managers, consultants, policy makers, planners and researchers in both government and non-government organizations. It publishes original research and reviews about energy in developing countries, sustainable development, energy resources, technologies, policies and interactions.
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