European Green Deal Implications on Country Level Energy Consumption

A. Jaržemskis, Ilona Jaržemskienė
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引用次数: 1

Abstract

Abstract Research background: The European Green deal set by the European Commission has launched new business models in sustainable development. Major contributions are expected in the road transport sector; as far as conventional internal combustion creates significant input in Green House Gas emission inventories. Each EU member state has an obligation to reduce GhG emission by accelerating Electric Vehicle development. In order to foster growth of EVs, there is the need of significant investment into charging infrastructures. The article propose the model of forecasting of investment based on the forecast of the growth of the amount of electric vehicles and their demand on energy. The model includes the behaviouristic approach based on the total cost of ownership model as well as calculations of efficient usage of EV charging points. The model takes into account all types of vehicles including personal and commercial, freight and passenger. Purpose: The aim of this article is to present a complex model for forecasting the required investments based on the fore-cast of the increase in the number of electric vehicles and their demand on energy and investments. Research methodology: The general algorithm of forecasting consists of several consecutive phases: (1) Forecasting the number of electric vehicles, (2) Forecasting the energy needed for electric vehicles, based on the forecast (1) and the predicted usage level of these vehicles. (3) Forecasting the charging station number with the expected technical capacities and characteristics of these charging stations based on the forecasts (1) and (2). (4) Forecasting the need to upgrade the low-voltage grid based on the forecast (3). (5) Calculating the total investment needed based on the results of the forecasts (3) and (4). The main limitations of the study are related to the statistics available for modelling and human behaviour uncertainty, especially in the evaluation impact of measures to foster use of electric vehicles. Results: The findings of the Lithuanian case analysis, which is expressed in three scenarios, focuses on two trends. The most promising scenario projects 319,470 electric vehicles by 2030 which will demand for 1.09 TWh of electricity, representing 8.4–9.9 percent of the total energy consumption in the country. It requires EUR 230, million in the low-voltage grid and EUR 209, million in the charging stations. Novelty: The scientific problem is that the current approach on the forecasting of electric vehicles is too abstract, forecast models cannot be transferred from country to country. This article proposes a model of forecasting investments based on the forecast of the increase in the number of electric vehicles and their demand on energy. The model includes the behaviouristic approach based on the total cost of ownership model as well as calculations of efficient usage of EV charging points. The model takes into account all types of vehicles including personal and commercial, freight and passenger. The article has proven that statistics-based forecasting gives very different results compared to the objective function and to the evaluation of the effects of measures. This has not been compared in previous studies.
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欧洲绿色协议对国家能源消费的影响
研究背景:欧盟委员会制定的欧洲绿色协议启动了可持续发展的新商业模式。预计公路运输部门将作出重大贡献;就传统的内燃而言,在温室气体排放清单中创造了重要的投入。每个欧盟成员国都有义务通过加速电动汽车的发展来减少温室气体排放。为了促进电动汽车的增长,需要对充电基础设施进行大量投资。本文在对电动汽车保有量增长和能源需求预测的基础上,提出了投资预测模型。该模型包括基于总拥有成本模型的行为主义方法以及电动汽车充电点的有效使用计算。该模型考虑了所有类型的车辆,包括个人和商业,货运和客运。目的:本文的目的是提出一个复杂的模型来预测所需的投资,基于电动汽车数量的增加及其对能源和投资的需求的预测。研究方法:一般的预测算法包括几个连续的阶段:(1)预测电动汽车的数量,(2)预测电动汽车所需的能量,基于预测(1)和预测这些汽车的使用水平。(3)根据预测结果(1)和(2)预测充电站数量和充电站的预期技术能力和特征。(4)根据预测结果(3)预测低压电网的升级需求。(5)根据预测结果(3)和(4)计算所需的总投资。本研究的主要局限性与建模可用的统计数据和人类行为的不确定性有关。特别是在评价影响措施,以促进使用电动汽车。结果:立陶宛案例分析的结果以三种情景表达,重点关注两种趋势。最有希望的情景是,到2030年,电动汽车将达到319,470辆,需求1.09太瓦时的电力,占该国总能源消耗的8.4 - 9.9%。它需要2.3亿欧元用于低压电网,2.09亿欧元用于充电站。新颖性:科学问题是目前电动汽车的预测方法过于抽象,预测模型无法在各国之间转移。本文提出了一个基于电动汽车数量增长和能源需求预测的投资预测模型。该模型包括基于总拥有成本模型的行为主义方法以及电动汽车充电点的有效使用计算。该模型考虑了所有类型的车辆,包括个人和商业,货运和客运。本文证明了基于统计的预测结果与目标函数和对措施效果的评价有很大的不同。这在以前的研究中没有比较过。
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