Estimating charging demand by modelling EV drivers' parking patterns and habits

IF 0.7 Q4 TRANSPORTATION
Piero Macaluso
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引用次数: 0

Abstract

The diffusion of battery electric vehicles (BEVs) requires a proper charging infrastructure to supply users the chance to charge their vehicles according to energy, time, and space needs. Thus, city planners and stakeholders need decision support tools to estimate the impacts of potential charging activities and compare alternative scenarios. The paper proposes a modelling approach to represent parking activities in urban areas and obtain key indicators of the electric energy required. The agent-based model reproduces the dynamics of user parking and assesses the impacts on the electricity grid during the day. Since the focus is on parking activities, no detailed data on vehicle trips are required to apply the standard demand modelling approach, which would require Origin-Destination matrices to simulate traffic flows on the road network. Preliminary results concerning the city of Turin are presented for simulated scenarios to identify zones where charging demand can be critical and peak events in electric power over the day. The model is designed to be scalable for all European cities because, as the case study shows, it uses available data. The results obtained can be used for the design of charging infrastructure (power and type) by zones.
通过模拟电动汽车司机的停车模式和习惯来估计充电需求
纯电动汽车(bev)的普及需要适当的充电基础设施,为用户提供根据能源、时间和空间需求为车辆充电的机会。因此,城市规划者和利益相关者需要决策支持工具来评估潜在收费活动的影响,并比较替代方案。本文提出了一种建模方法来表示城市地区的停车活动,并获得所需电能的关键指标。基于智能体的模型再现了用户停车的动态,并评估了白天对电网的影响。由于重点是停车活动,因此不需要车辆行程的详细数据来应用标准需求建模方法,这将需要起点-目的地矩阵来模拟道路网络上的交通流量。提出了关于都灵市的模拟场景的初步结果,以确定一天中充电需求可能是关键和峰值事件的区域。该模型被设计为可扩展到所有欧洲城市,因为正如案例研究所示,它使用了可用的数据。所得结果可用于分区充电基础设施(功率和类型)的设计。
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
2.30
自引率
0.00%
发文量
19
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