面向直流微电网的电动汽车充电站柔性控制方法

M. Senapati, Khaled Al Jaafaari, K. Al Hosani, Utkal Ranjan Muduli
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引用次数: 2

摘要

光伏和风能的间歇性分布式能源对面向直流微网的电动汽车充电站的供电质量产生了负面影响,产生了许多控制问题。通过合理协调各能源和存储设备的运行,实现直流微电网直流链路电压的自动平衡和监测。本文利用状态空间传递函数工具对直流微电网各子系统(即风能、光伏系统、蓄电池、燃料电池和电解槽)的变换器控制器参数进行了设计,以解决系统复杂性和处理可再生能源的间歇性。采用萤火虫算法与粒子群优化(FA-PSO)相结合的方法设计直流微电网控制器,以减小/缓解直流电压波动。评估了所提出的控制策略在太阳日照、风速和负载扰动变化下的承受能力。对于直流微电网控制器的设计,通过硬件实现对TS-fuzzy、灰狼优化(GWO)和自适应神经模糊推理系统辅助粒子群优化(anfiss - pso)控制器进行了比较和验证。结果表明,所提出的FA - PSO控制器在性能上优于其他控制策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flexible Control Approach for DC Microgrid Oriented Electric Vehicle Charging Station
Photovoltaic (PV) and wind-based intermittent dis-tributed energy resources have a negative impact on the quality of the power supply of the DC microgrid-oriented electric vehicle charging station, resulting in numerous control issues. The DC link voltage of the DC microgrid can be automatically balanced and monitored by properly coordinating the operation of each energy source and storage device. In this paper, the converter controller parameters of the individual subsystems of the DC microgrid (i.e., wind, PV system, battery, fuel cell, and electrolyzer) are designed using the state-space transfer function tool to solve system complexity and handle the intermittent nature of renewable energy. Firefly algorithm combined with particle swarm optimization (FA-PSO) is used to design the DC microgrid controller to reduce/mitigate DC voltage fluctuations. The ability of the proposed control strategy to withstand changes in solar in-solation, wind speed, and load perturbation is evaluated. For the DC microgrid controller design, TS-fuzzy, gray wolf optimization (GWO), and an adaptive neuro-fuzzy inference system assisted by particle swarm optimization (ANFIS-PSO) controllers are all compared and validated through hardware implementation. The results show that the proposed FA - PSO controller outperforms the other control strategies in terms of performance.
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