考虑驾驶行为和车辆性能的电动汽车智能充电负荷分布仿真

Nattavit Piamvilai, S. Sirisumrannukul
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摘要

从内燃机汽车(ICE)转向电动汽车(ev)对全球变暖和排放具有积极影响。然而,电动汽车的兴起可能会产生间歇性的高充电需求。因此,电动汽车的普及影响了电力系统的拥堵和电力需求的快速变化。本研究旨在开发一种基于蒙特卡罗仿真的算法,以模拟电动汽车的驾驶和充电行为,并根据调查和研究报告的数据估计充电功率需求。此外,提出了基于前一次充电持续时间和充电状态的智能充电控制算法,即直接充电控制。研究结果显示,在某个感兴趣的区域,电动汽车采用的一定百分比的负荷分布预测,以及开发的智能调度算法能够减轻充电拥堵期间极高需求的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Load Profile Simulations for Smart Charging of Electric Vehicles Considering Driving Behavior and Vehicle Performance
Shifting from internal combustion vehicles (ICE) to electric vehicles (EVs) has a positive effect on global warming and emissions. However, the rise of EVs can create intermittent, high charging demands. For this reason, the penetration of EVs affects the power system in terms of congestion and rapid changes in power demand. This study aims to develop a Monte Carlo simulation-based algorithm to simulate the driving and charging behavior of EVs for estimating charging power demand based on the data from surveys and research reports. In addition, smart charging control algorithms, also known as direct charging control, are proposed based on previous charging duration and state of charge. The study results show load profile forecasting for some certain percentages of EV adoption in an area of interest and the ability of the developed smart scheduling algorithms to mitigate the impact of extremely high demand during charging congestion periods.
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