Systematic literature review of urban charging infrastructure planning over time

Niklas Hildebrand, Sebastian Kummer
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Abstract

The transition from Internal Combustion Engine (ICE) vehicles to Electric Vehicles (EVs) is imperative to achieve the goal of reducing transport-related greenhouse gas emissions by 90 % in 2050. As urbanization intensifies, vehicle miles in urban environments increase and cities already consume 75 % of global energy, there is a pressing need for efficient charging infrastructure (CI) placement tailored to urban environments. Accordingly, this paper conducts a systematic literature review to outline prevailing research and derive requirements for a future CI model adaptable to urban environments. Analysis of N = 57 studies underscores the necessity for agent-based demand models to capture the intricate behaviors of EV drivers, which are currently underrepresented due to their data-heavy nature (n = 28 flow-based; n = 18 node-based). Furthermore, with a projected surge of 800 % in CI installations in Europe by 2030, strategic placement according to demand and urban-specific requirements is paramount. Still, multi-periodicity considerations are largely absent in current literature (n = 50). Geometric segmentation is presented as a solution to mitigate partial coverage issues. Ultimately, agent-based models, coupled with geometric segmentation, emerge as pivotal requirements for future CI models in urban environments, facilitating the transition to EVs, aligning with emission reduction targets, ensuring resource efficiency, and fostering urban sustainability.

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关于城市充电基础设施规划的系统文献回顾
要实现在 2050 年将与交通相关的温室气体排放量减少 90% 的目标,就必须从内燃机汽车(ICE)过渡到电动汽车(EV)。随着城市化进程的加剧,城市环境中的车辆行驶里程不断增加,而城市已经消耗了全球 75% 的能源,因此迫切需要为城市环境量身定制高效的充电基础设施 (CI)。因此,本文进行了系统的文献综述,概述了当前的研究,并得出了对未来适应城市环境的 CI 模型的要求。对 N = 57 项研究的分析强调了基于代理的需求模型捕捉电动汽车驾驶者复杂行为的必要性,由于其数据繁重的性质(n = 28 项基于流量;n = 18 项基于节点),目前这些模型的代表性不足。此外,预计到 2030 年,欧洲的 CI 安装量将激增 800%,因此根据需求和城市特定要求进行战略布局至关重要。不过,目前的文献(n = 50)中基本上没有考虑多周期性。几何分割是缓解部分覆盖问题的一种解决方案。最终,基于代理的模型与几何分割相结合,成为城市环境中未来 CI 模型的关键要求,有助于向电动汽车过渡,与减排目标保持一致,确保资源效率,促进城市的可持续发展。
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