Charging management of electric vehicles with the presence of renewable resources

IF 4.2 Q2 ENERGY & FUELS Renewable Energy Focus Pub Date : 2024-01-11 DOI:10.1016/j.ref.2023.100536
Morteza Azimi Nasab , Wedad Khamis Al-Shibli , Mohammad Zand , Behzad Ehsan-maleki , Sanjeevikumar Padmanaban
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Abstract

Considering the increasing use of electric vehicles, the establishment of charging stations to exchange power between the grid and electric devices, and the integration of charging stations with solar power generation sources, the optimal use of electric vehicle charging stations in the power system. The purpose of cost reduction in the presence of the intelligent environment is a challenge that must be investigated so that this platform is suitable for predicting the behaviour of vehicles and, as a result, optimizing their presence in the power network. This research presents a relatively complete radial distribution network development planning model in two scenarios. In the first scenario, the effects of electric vehicles are not considered, and only the effects of distributed production (renewable and dispatchable) are considered. Studies have been done on a sample 54-bus network, a common system in most Distribution expansion planning (DEP) articles for distribution networks. In addition, the real data of American highways have been used to create raw input data. Also, due to the distance limit, the information on vehicles under 100 miles has been received as electric vehicle information. The clustering method and Capiola multivariate probability distribution functions have created suitable vehicle scenarios during different planning years. Capiola’s method increases the accuracy of vehicle load forecasting according to a predetermined growth rate. The DEP problem in this research is modeled as an optimization problem based on scenario, dynamic, and in 5 one-year time frames (5-year time horizon and one-year accuracy). The results indicate that, in the presence of electric vehicles and distributed production sources, the technical characteristics of the network are improved.

Similarly, the use of DGs, in addition to reducing the cost of equipment, has reduced undistributed energy in the system. But 10,000 vehicles, which have been applied to the network as an uncontrolled load, have caused an increase in undistributed energy. The cost of equipment required for the network development is almost as much as 5%.

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存在可再生资源的电动汽车充电管理
考虑到电动汽车的使用越来越多,建立充电站在电网和电动设备之间交换电力,以及充电站与太阳能发电资源的整合,在电力系统中优化使用电动汽车充电站。在智能环境下降低成本是一个必须研究的挑战,以便该平台适合预测车辆的行为,从而优化车辆在电力网络中的存在。本研究在两种情况下提出了一个相对完整的径向配电网络发展规划模型。在第一种情况下,不考虑电动汽车的影响,只考虑分布式生产(可再生和可调度)的影响。研究以 54 路公交车网络为样本,这是大多数配电网扩展规划(DEP)文章中的常见系统。此外,还使用了美国高速公路的真实数据来创建原始输入数据。此外,由于距离限制,100 英里以下的车辆信息已作为电动汽车信息接收。聚类方法和卡皮奥拉多变量概率分布函数创建了不同规划年的合适车辆方案。卡皮奥拉方法根据预定增长率提高了车辆负荷预测的准确性。本研究中的 DEP 问题被模拟为一个基于情景、动态和 5 个一年时间框架(5 年时间跨度和 1 年精度)的优化问题。结果表明,在有电动汽车和分布式生产源的情况下,网络的技术特性得到了改善。同样,使用 DG 除了降低设备成本外,还减少了系统中未分布的能量。但是,10,000 辆汽车作为不受控的负荷进入电网,导致了未分配能源的增加。网络发展所需的设备成本几乎高达 5%。
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来源期刊
Renewable Energy Focus
Renewable Energy Focus Renewable Energy, Sustainability and the Environment
CiteScore
7.10
自引率
8.30%
发文量
0
审稿时长
48 days
期刊最新文献
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