使用公共数据的电动汽车充电站可再生能源和充电器的最佳方案

Jieun Ihm, Sejin Chun, Herie Park
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摘要

随着电动汽车普及率的提高,有必要研究利用可再生能源发电的电动汽车充电站。本文利用向公众提供的当地气候和负荷数据,提出了基于可再生能源的电动汽车充电站的可再生能源资源和充电器的最优规模和混合方案。为此,介绍了一种利用当地特征和相关公共数据获得最佳方案的方法。以韩国大邱为例,运用HOMER软件进行经济分析。最后,给出了发电设施和充电器的最优规模和混合方案。这项研究将有助于扩大生态友好型综合充电站和基础设施。
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Optimal Scenarios of Renewables and Chargers for an Electric Vehicle Charging Station using Public Data
As the penetration rate of electric vehicles (EVs) is increasing, it becomes necessary to investigate a renewable energy-based EV charging stations generating electric power from renewable energy resources. This paper proposes optimal sizing and mix scenarios of renewable energy resources and electric chargers for a renewable energy-based EV charging station using local climate and load data provided for the public. For this purpose, a methodology to obtain optimal scenarios using local characteristics and related public data is introduced. As a case study, Daegu in Korea is selected, and the economic analysis is conducted with the help of HOMER software. Finally, optimal sizing and mix scenarios of power generation facilities and electric chargers are demonstrated. This study will help expand the eco-friendly complex charging stations and infrastructure.
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