基于双层规划问题的电动汽车充放电策略:旧金山案例研究

M. B. Tookanlou, M. Marzband, J. Kyyrä, A. Al Sumaiti, K. Al Hosani
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引用次数: 5

摘要

随着电动汽车(EV)市场份额的不断增加,需要确定合适的电动汽车电池充放电策略,以保证参与电动汽车电池充放电的所有代理(包括电动汽车充电站(evcs)和电动汽车车主(evo))的回报。在这项研究中,制定了一项经济和技术战略。其重点是通过evcs确定所有代理之间交易的最优日前电价,从而使evcs和evo的回报同时得到满足,从而找到合适的evcs。最优充放电决策和最优日前电价是由水平规划问题(BLPP)确定的。外层对应evcs的优化问题,内层属于evo。采用Salp群优化算法求解BLPP问题。在确定电动汽车的最小行驶距离和电动汽车提供的最优日前电价的基础上,分析了电动汽车和电动汽车在充放电期间的回报。为了仿真目的,以美国旧金山为例,对建模结果进行了可视化和验证。旧金山安装了6个电动汽车充电站,可在24小时内为247辆电动汽车充电/放电。仿真结果表明,与未考虑该策略相比,采用该策略的电动汽车总成本降低了17.8%,电动汽车总收益增加了18.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Charging/Discharging strategy for electric vehicles based on bi-level programming problem: San Francisco case study
The increasing market share of electric cles (EVs) leads to determine a proper strategy for charging/discharging EV batteries such that rewards of all agents including EV charging stations (EVCSs) and EV owners (EVOs) that participate in charging/discharging EV batteries are anteed. In this study, an economical and technical strategy developed. It focuses on finding proper EVCSs by EVOs determining optimal day-ahead electricity prices traded between all agents such that the rewards of EVCSs and EVOs are met multaneously. This optimal charging/discharging decision making and optimal day-ahead electricity prices are determined by level programming problem (BLPP). The outer level corresponds to the optimization problem of EVCSs and the inner level belongs to EVOs. Salp swarm optimization (SSO) algorithm is utilized to solve BLPP. Based on determination of minimum distance travelled by EVOs and optimal day-ahead electricity prices offered by EVCSs, the rewards of EVCSs and EVOs are analysed during charging/discharging period. For simulation purposes, case study based on San Francisco in US is presented to visualize and validate the modelling results. Six EVCSs are installed in Francisco for charging/discharging 247 EVs during 24 hours of typical day. Simulation results show that under implementing proposed charging/discharging strategy, the total cost of EVOs decreases by 17.8% and total revenue of EVCSs increases 18.2%, in comparison with not considering the proposed strategy.
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