Ahn Yongjun, Yeo Hwasoo
Department of Civil and Environmental Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon, Republic of Korea.
PLoS One. 2015 Nov 17;10(11):e0141307. doi: 10.1371/journal.pone.0141307. eCollection 2015.
The charging infrastructure location problem is becoming more significant due to the extensive adoption of electric vehicles. Efficient charging station planning can solve deeply rooted problems, such as driving-range anxiety and the stagnation of new electric vehicle consumers. In the initial stage of introducing electric vehicles, the allocation of charging stations is difficult to determine due to the uncertainty of candidate sites and unidentified charging demands, which are determined by diverse variables. This paper introduces the Estimating the Required Density of EV Charging (ERDEC) stations model, which is an analytical approach to estimating the optimal density of charging stations for certain urban areas, which are subsequently aggregated to city level planning. The optimal charging station's density is derived to minimize the total cost. A numerical study is conducted to obtain the correlations among the various parameters in the proposed model, such as regional parameters, technological parameters and coefficient factors. To investigate the effect of technological advances, the corresponding changes in the optimal density and total cost are also examined by various combinations of technological parameters. Daejeon city in South Korea is selected for the case study to examine the applicability of the model to real-world problems. With real taxi trajectory data, the optimal density map of charging stations is generated. These results can provide the optimal number of chargers for driving without driving-range anxiety. In the initial planning phase of installing charging infrastructure, the proposed model can be applied to a relatively extensive area to encourage the usage of electric vehicles, especially areas that lack information, such as exact candidate sites for charging stations and other data related with electric vehicles. The methods and results of this paper can serve as a planning guideline to facilitate the extensive adoption of electric vehicles.
由于电动汽车的广泛应用,充电基础设施选址问题变得愈发重要。高效的充电站规划能够解决一些根深蒂固的问题,比如续航焦虑以及新电动汽车消费者增长停滞的问题。在电动汽车引入的初期,由于候选站点的不确定性以及由多种变量决定的不明充电需求,充电站的布局难以确定。本文介绍了电动汽车充电所需密度估算(ERDEC)站模型,这是一种用于估算特定城市区域充电站最优密度的分析方法,随后将这些密度汇总到城市层面的规划中。通过推导得出最优充电站密度,以使总成本最小化。进行了一项数值研究,以获取所提模型中各种参数之间的相关性,如区域参数、技术参数和系数因子。为研究技术进步的影响,还通过技术参数的各种组合来考察最优密度和总成本的相应变化。选取韩国大田市进行案例研究,以检验该模型对实际问题的适用性。利用真实的出租车轨迹数据,生成了充电站的最优密度图。这些结果能够提供无续航焦虑驾驶所需的最优充电桩数量。在安装充电基础设施的初始规划阶段,所提模型可应用于相对广泛的区域,以鼓励电动汽车的使用,特别是在缺乏信息的地区,如充电站的确切候选站点以及与电动汽车相关的其他数据。本文的方法和结果可作为一项规划指南,以促进电动汽车的广泛应用。