优化农村电气化规划的地理信息系统辅助程序:埃塞俄比亚 Naeder 案例研究

IF 4.4 2区 工程技术 Q2 ENERGY & FUELS
Aleksandar Dimovski, Zahra Pezham, Mohammad Ahmadi, Lorenzo Maria Filippo Albertini, Darlain Irenee Edeme, Marco Merlo
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引用次数: 0

摘要

尽管全球电气化率已达到 91%,但仍有约 7.3 亿人无法获得可靠且负担得起的电力,这是自 2013 年 COVID-19 危机以来的首次倒退。在此背景下,本文旨在通过基于开源数据和机器学习算法的创新模型,确定全面的电气化战略,从而减少通常需要耗费大量时间和资源来收集数据的实地活动,进而确定电气化战略。本文提出的新型开源工具 VANIA(非洲村落分析)可确定人类住区的位置及其社会经济特征,然后通过应用基于 MTF(多层框架)调查的机器学习技术和自下而上的随机负荷曲线生成模型,估算每个社区的能源需求和每小时需求曲线。该方法旨在处理社区能源需求与其社会人口参数之间复杂的非线性关系。然后,将社区的需求概况作为输入,利用地理信息系统辅助程序优化所调查地区的电气化战略,提出成本最低的电气化解决方案。最终的电气化计划侧重于长期解决方案,使每个社区都能接入国家电网或由离网系统供电,从而实现长期增长。最后,为了演示该方法并展示其操作能力,该方法被用于埃塞俄比亚提格雷州纳德尔省的电气化规划,该省的特点是主要缺乏电气化且能源需求较低。建议的解决方案主张为 50 个社区的约 11,560 户家庭提供具有成本效益的电气化服务。考虑到综合经济参数和 110 欧元/兆瓦时的感知电力成本,50 个社区中有 39 个与国家电网相连,这表明人们更倾向于电网延伸。最后,对能源成本的敏感性分析表明,无论该值为多少,都有 3 个社区应采用微电网实现电气化,而当该值高于 130 欧元/兆瓦时,微电网开始成为更有利可图的选择,而当该值为 145 欧元/兆瓦时,从经济角度来看,扩展电网是不合理的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GIS-facilitated procedure for optimal rural electrification planning: A case study in Naeder, Ethiopia

Although the global electrification rate has reached 91 %, roughly 730 million people still live without reliable and affordable access to electricity, experiencing the first regression since 2013, following the COVID-19 crisis. In this context, this paper aims to define a comprehensive electrification strategy through an innovative model based on open-source data and machine learning algorithms, able to reduce the time and resource-consuming on-field campaign that is generally needed for gathering data, and subsequently define the electrification strategy. Following the location of human settlements and their socio-economic characterizations carried out by a novel open-source tool proposed within this paper named VANIA (Village ANalytics in Africa), the energy demand and hourly demand profile of each community are estimated through the application of machine learning techniques based on MTF (Multi-Tier Framework) surveys and a stochastic bottom-up model for load profile generation. The approach is designed to manage the complex nonlinear relationship between the energy needs of a community and its socio-demographic parameters. Then, taking the communities' demand profile as input, a GIS-facilitated procedure is utilized to optimize the electrification strategy for the territory under investigation, proposing the least-cost electrification solution. The final electrification plan focuses on long-term solutions enabling growth over time in which each community can be either connected to the national grid or supplied by an off-grid system. Ultimately, to demonstrate the approach and showcase its operational capabilities, the methodology is utilized for the electrification planning of the Naeder province in Tigray, Ethiopia, characterized by a predominantly lacking electrification status and low energy demand. The suggested solution advocates for the cost-efficient electrification of approximately 11,560 households clustered in 50 communities. Considering consolidated economic parameters and a perceived cost of electricity of 110 €/MWh showed a preference toward grid extension, with 39 out of 50 communities connected to the national grid. Finally, sensitivity analysis on the cost of energy showed that regardless of the value, 3 communities should be electrified with a microgrid, whereas for values upward of 130 €/MWh the microgrid starts becoming the more lucrative option, and at 145 €/MWh an extension is not economically justified.

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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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