An agent based approach for the development of EV fleet Charging Strategies in Smart Cities

M. Mureddu, Antonio Scala, A. Chessa, G. Caldarelli, M. Musio, A. Damiano
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引用次数: 10

Abstract

In the present paper an agent based approach, addressed to simulate the behaviour of a Plug-in Electric Vehicles (PEV) fleet into a Smart City, is presented. Considering the traffic data-set available from mobility plans, a spatial and time model, representing the evolution of travel patterns, can be developed considering each vehicle as an agent. The following statistical analysis in space and time of the agent behaviours is used to plan the PEV charging infrastructure of municipalities. The proposed planning methodology has been tested on an European city in order to evaluate the effectiveness of the proposed procedure. Such charging infrastructure, defined according to the mobility needs, has been tested and used to evaluate the customer satisfaction of PEV users in term of charging demand. The proposed charging system has been implemented to estimate the average daily energy profiles for charging the smart city PEV fleet during a typical workday. This has been finally used as one day ahead energy reference profile to develop a market-oriented EV charging strategies. The performance of the proposed smart charging strategies has been finally simulated and compared.
基于智能体的智慧城市电动汽车充电策略研究
本文提出了一种基于智能体的方法来模拟插电式电动汽车(PEV)车队进入智慧城市的行为。考虑到从出行计划中获得的交通数据集,可以建立一个以每辆车为agent的代表出行模式演变的时空模型。通过对代理行为的时空统计分析,对城市电动汽车充电基础设施进行规划。拟议的规划方法已在一个欧洲城市进行了测试,以评估拟议程序的有效性。根据出行需求定义的充电基础设施已经过测试,并用于评估PEV用户在充电需求方面的客户满意度。拟议的充电系统已经实施,以估计智能城市PEV车队在典型工作日充电的平均每日能源概况。这最终被用作一天前能源参考配置文件,以制定面向市场的电动汽车充电策略。最后对所提出的智能充电策略的性能进行了仿真和比较。
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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