基于Agent的大学环境下电动汽车行为建模

S. K. Jaslin, M. A. U. S. Navaratne, J. B. Ekanayake
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引用次数: 0

摘要

随着电动汽车数量的增加,充电基础设施的战略规划变得至关重要。在家和工作中停车时间最长。住宅占电动汽车充电时间的75%,而工作场所占14%。近年来,电动汽车与间歇性能源的结合引起了相当大的关注。它有几个优点,包括显著绿化整个电动汽车使用周期,并通过降低电网的直接峰值需求来实现财务可行性。本研究描述了大学校园电动汽车充电站模型的基于代理的基础设施。它使我们能够从太阳能光伏、外部电池和电网代理获得尽可能好的能源供应。构建并模拟了三种充电场景(非受控、车辆到电网(V2G)和电网到车辆(G2V)),具有不同百分比的电动汽车相似性。G2V场景中包括慢速充电,以提高电动汽车充电模式中的光伏效益。仿真结果表明,工作场所基础设施中的慢速充电增加了电动汽车充电的光伏效益,同时减少了对电网的依赖。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agent-based modelling of electric vehicle behaviour in a university environment
As the number of electric vehicles (EVs) increases, the strategic planning of charging infrastructure becomes a crucial matter. Vehicle parking time takes the longest at home and work. The residential is responsible for 75% of EV charging time, while the workplace is for 14%. The combination of EVs with intermittent energy sources has attracted considerable attention in recent years. It has several advantages, including significantly greening the entire EV usage cycle and attaining financial viability by lowering the direct peak demand on the grid. This study has described the agent-based infrastructure of the EV charging station model on university premises. It lets us obtain the best possible energy supply from solar PV, external batteries, and grid agents. Three charging scenarios (uncontrolled, vehicle-to-grid (V2G), and grid-to-vehicle (G2V)) are constructed and simulated with varying percentages of EV resemblance. Slow charging is included in the G2V scenario to improve the PV benefits in the EV charging model. The simulation result shows that slow charging in the workplace infrastructure increases the PV benefits of EV charging while reducing grid dependency.
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