Optimization of grid connected bidirectional V2G charger based on multi-objective algorithm

M. Aryanezhad
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引用次数: 13

Abstract

This paper presents a novel multi-objective approach to grid connected plug-in hybrid electric vehicle (PHEV) that uses for peak load levelling and load variance minimization. Meanwhile, this optimization technique sizes the capacitor of DC-link to provide sufficient reactive power compensation. This optimization technique is based on fuzzy-decision-making predictive control (FDMPPC) strategy which can be able to provide of peak load levelling and capacitor sizing of battery charger of PHEV, simultaneously. The proposed method is applied to the IEEE 123 test feeder, using time series analysis over a diurnal, 24-hour, simulation period. The optimization results show that the power load curve is effectively driven to follow the target loading and the grid voltage is successfully regulated.
基于多目标算法的并网双向V2G充电器优化
针对插电式混合动力汽车(PHEV),提出了一种用于峰值负荷均衡和负荷方差最小化的多目标方法。同时,该优化技术减小了直流链路电容的尺寸,以提供足够的无功补偿。该优化技术基于模糊决策预测控制(FDMPPC)策略,能够同时提供插电式混合动力汽车电池充电器的峰值负荷调节和电容尺寸。提出的方法应用于IEEE 123测试馈线,使用时间序列分析超过一天,24小时,模拟周期。优化结果表明,有效地驱动了电力负荷曲线跟随目标负荷,成功地调节了电网电压。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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