考虑最小功率损耗的电动汽车最优充电调度

H. Mohamad, N. Razali, K. Shah, N. A. Salim, K. Naidu
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引用次数: 0

摘要

随着人们对环境污染、二氧化碳排放和对化石燃料能源依赖的日益关注,电动汽车因其清洁可靠的能源供应而受到全世界的高度关注。然而,电动汽车的随机充电会降低电力系统的效率,影响其总体稳定性。本文提出了一种基于萤火虫算法的电动汽车优化协调充电方法,以实现最小的功率损失。该算法考虑了系统最大负荷需求和电压分布范围等约束条件,并在IEEE 33总线径向配电网上进行了测试。对基本负荷、不协调充电和协调充电进行了比较。通过改变充电速率来进一步分析协调充电计划,并观察其对测试网络的影响。采用进化规划方法实现了充电协调调度,并与萤火虫算法的收敛性能进行了比较。结果表明,该算法在一定的约束条件下,使功率损耗最小,达到了优化的目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Charging Scheduling of Electric Vehicle Considering Minimum Power Loss using Firefly Algorithm
With growing concerns about environmental pollution, carbon dioxide emissions, and reliance on fossil fuels energy, electric vehicles have received great attention due to clean and reliable energy supply worldwide. However, random charging of electric vehicles may lower the power system efficiency and affects its total stability. This paper presents an optimal coordinated charging of electric vehicles to achieve minimum power loss using a computational technique i.e., the Firefly Algorithm. The proposed algorithm considered some constraints such as the system’s maximum load demand and voltage profile range and is tested on the IEEE 33-bus radial distribution network. The results are compared between the base load, uncoordinated and coordinated charging. The coordinated charging scheduling is further analyzed by varying the charging rate and observe its impact on the test network. The coordinated charging scheduling is also carried out using Evolutionary Programming and the convergence performance is compared to the proposed Firefly Algorithm. Results obtained show that the proposed algorithm achieves the optimization purpose by minimizing the power loss under a set of constraints.
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