基于移动平均滤波和VMD的混合储能功率分配

Mengzhao Zhang, Chunlin Guo, Teng Fang, Wenkai Li
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引用次数: 3

摘要

风力发电厂的原始功率必须通过储能系统进行稳定,以达到国家并网标准。如果储能装置产生的功率与其自身的物理特性不匹配,就会出现过充、过放甚至器件损坏等严重后果。本文采用移动平均滤波法结合粒子群优化算法确定并网目标功率,可以提高并网平滑度,降低储能单元总能量负担和最大瞬时功率值。然后用变分模态分解(VMD)分配功率镇静任务。本文在设置了能反映上述指标的适应度函数后,利用粒子群优化算法确定滤波窗长、VMD分解数值模式、惩罚因子和边界频率的最优组合。结合风电并网标准和储能装置健康充放电循环的先验知识,限制各参数的取值范围,加快收敛速度。仿真结果表明,该方法可以最大限度地提高并网的平稳性,并且可以合理地分配储能设备间的功率均衡任务。储能装置的充放电负荷非常均衡,容量需求低。实验证明了该方法的合理性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid energy storage power allocation based on moving average filtering and VMD
The original power of wind power plant must be stabilized by energy storage system to meet the national standard of grid connection. If the power generated by the energy storage device does not match its own physical characteristics, there will be serious consequences such as overcharge, over-discharge and even device damage. In this paper, the moving average filtering method combined with particle swarm optimization algorithm is adopted to determine the grid-connected target power, which can increase the grid-connected smoothness and reduce the total energy burden and maximum instantaneous power value of the energy storage unit. Power calming tasks were then assigned with Variational Mode Decomposition (VMD). In this paper, after setting the fitness function that can reflect the above indexes, the optimal combination of filtering window length, VMD decomposition numerical mode, penalty factor and boundary frequency is determined by particle swarm optimization algorithm. Combined with the prior knowledge of wind power grid connection standard and healthy charging and discharging cycle of energy storage device, the range of each parameter is limited to accelerate the convergence speed. Simulation results show that the smoothness of grid-connection can be improved as much as possible and the distribution of power leveling tasks between energy storage devices is reasonable. The charge and discharge burden of the energy storage device is very balanced and the capacity demand is low. It is proved that the proposed method is reasonable and effective.
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