公共充电站的合适选址:变电站容量评估的模糊 TOPSIS MCDA 框架

Energies Pub Date : 2024-07-13 DOI:10.3390/en17143452
W. E. Chumbi, Roger Martínez-Minga, S. Zambrano-Asanza, Jˆonatas B. Leite, J. F. Franco
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摘要

在公共政策的推动下,电动汽车(EV)的数量在汽车市场持续增长,因为它们有助于全球交通领域的去碳化。然而,提高电动汽车采用率的主要挑战是充电基础设施。因此,公共电动汽车充电站的选址应非常谨慎,以最大限度地提高电动汽车的使用率,并解决人们对续航里程的焦虑。由于电动汽车充电的电力需求会带来新的负荷形状,因此必须解决充电站选址与长期电网规划之间的相互关系。选择最合适的地点涉及相互冲突的标准,需要应用多重标准分析。因此,本研究采用了基于地理信息系统的多标准决策分析(MCDA)方法来解决充电站选址问题,其中考虑到了人口统计标准和能源密度,并制定了电动汽车增长模型。包括模糊 TOPSIS 在内的几种方法被用于验证合适地点的选择。在该评估中,通过高电动汽车渗透率情景评估了电动汽车充电站对变电站容量的影响。所提出的方法应用于厄瓜多尔昆卡市。结果表明,MCDA 能够有效评估充电站对配电系统的影响,确保在变电站容量储备的情况下系统的正常运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Suitable Site Selection of Public Charging Stations: A Fuzzy TOPSIS MCDA Framework on Capacity Substation Assessment
The number of electric vehicles (EVs) continues to increase in the automobile market, driven by public policies since they contribute to the global decarbonization of the transportation sector. Still, the main challenge to increasing EV adoption is charging infrastructure. Therefore, the site selection of public EV charging stations should be made very carefully to maximize EV usage and address the population’s range anxiety. Since electricity demand for charging EVs introduces new load shapes, the interrelationship between the location of charging stations and long-term electrical grid planning must be addressed. The selection of the most suitable site involves conflicting criteria, requiring the application of multi-criteria analysis. Thus, a geographic information system-based Multicriteria Decision Analysis (MCDA) approach is applied in this work to address the charging station site selection, where the demographic criteria and energy density are taken into account to formulate an EV increase model. Several methods, including Fuzzy TOPSIS, are applied to validate the selection of suitable sites. In this evaluation, the impact of the EV charging station on the substation capacity is assessed through a high EV penetration scenario. The proposed method is applied in Cuenca, Ecuador. Results show the effectiveness of MCDA in assessing the impact of charging stations on power distribution systems ensuring suitable system operation under substation capacity reserves.
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