Research on Residual Power Reconfiguration of Hybrid Energy Storage System Based on Microgrid

Liu Haitao, Ma Bingtai, Hao Sipeng, Zhang Kuangyi, Huang Cheng, Lu Heng
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Abstract

In the photovoltaic hybrid energy storage microgrid system, in order to reduce the unreasonable value of decomposition mode number (K) and secondary penalty factor (a) in VMD affect the accuracy of system reconstruction power. A new intelligent algorithm called sooty tern optimization algorithm(STOA) is proposed for the K and a optimization analysis. The parameters of VMD are optimized by STOA to obtain the [K, a] optimal combination quickly and stably, and then the result is applied in VMD to decompose the residual power of microgrid system. So as to improve the coincidence degree between the reconstructed power and the original residual power signal and can allocate the residual power to hybrid energy storage system reasonably, which will be beneficial to optimize the initial power allocation and capacity allocation of hybrid energy storage. This paper analyzes the algorithm and compares it with the results of particle swarm optimization and gray wolf algorithm to verify the effectiveness and superiority of the method.
基于微电网的混合储能系统剩余功率重构研究
在光伏混合储能微网系统中,为了减少VMD中分解模式数(K)和二次惩罚因子(a)的不合理值影响系统重构功率的准确性。提出了一种新的智能算法——烟头优化算法(STOA),并对其进行了优化分析。利用STOA方法对VMD参数进行优化,快速稳定地得到[K, a]最优组合,并将结果应用于VMD中分解微网系统剩余功率。从而提高重构功率与原始剩余功率信号的契合度,将剩余功率合理分配给混合储能系统,有利于优化混合储能的初始功率分配和容量分配。本文对该算法进行了分析,并与粒子群算法和灰狼算法的结果进行了比较,验证了该算法的有效性和优越性。
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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