Statistical Modeling of the Determinants Driving the Electricity Demand in Jordan

IF 3.3 Q3 ENERGY & FUELS
Mohammad Awad Momani;Lina Alhmoud
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Abstract

The paper introduces a statistical model that connects the electrical demand in Jordan with several determinants that have a direct impact on the electrical consumption and load profile during the study period from 2007 to 2020. The period was selected as it is characterized by several global events that directly impacted Jordan’s economy and energy sustainability in Jordan, such as the Arab spring protests, the civil war in Syria, and the global financial crises. Many determinants that are used in the regression analysis imply the ambient temperature, day of the week, population, gross domestic product (GDP), oil price, and technological factors related to renewable energy projects. Results show that temperature and population positively impact the demand, whereas GPD, population, oil prices, and renewable energy negatively impact the electricity demand. The results obtained from backcasting regression analysis for the hourly 4745 data set covering 13 years period reveals reasonable error metrics with MAE, MAPE, and RMSE values of 134, 6.3% and 2.76%, respectively. The government must encourage investments to exploit and explore the massive potential of available energy resources such as oil, natural gas, oil shale, and uranium to resolve the problems related to the high global oil prices and high dependency on imported energy. Also, it is required to enable the transition from fossil fuels to renewable energy through financial incentives and tax exemption to encourage investments in clean energy, rebuild a new traffic system showing the volatile electricity prices, which are still unknown and finally remove obstacles and facilitate the ongoing projects, reaching a state of stakeholder buy-in engaging with the projects.
约旦电力需求决定因素的统计建模
本文介绍了一个统计模型,该模型将约旦的电力需求与2007年至2020年研究期间对电力消耗和负荷概况有直接影响的几个决定因素联系起来。之所以选择这一时期,是因为它的特点是几个直接影响约旦经济和约旦能源可持续性的全球事件,如阿拉伯之春抗议活动、叙利亚内战和全球金融危机。回归分析中使用的许多决定因素包括环境温度、一周中的哪一天、人口、国内生产总值(GDP)、油价和与可再生能源项目相关的技术因素。结果表明,气温和人口对电力需求有正向影响,而gdp、人口、油价和可再生能源对电力需求有负向影响。对历时13年的4745小时数据进行回归分析,得出了合理的误差指标,MAE、MAPE和RMSE分别为134、6.3%和2.76%。政府应该鼓励投资,开发石油、天然气、油页岩、铀等能源资源的巨大潜力,以解决国际油价高企和能源进口依赖度高的问题。此外,需要通过财政激励和免税来实现从化石燃料向可再生能源的过渡,以鼓励对清洁能源的投资,重建一个新的交通系统,显示波动的电价,这仍然是未知的,最终消除障碍,促进正在进行的项目,达到利益相关者参与项目的状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
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