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首页> 外文期刊>European transactions on electrical power engineering >Stochastic investigation for solid-state transformer integration in distributed energy resources integrated active distribution network
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Stochastic investigation for solid-state transformer integration in distributed energy resources integrated active distribution network

机译:分布式能源集成集成有源分配网络的固态变压器集成随机调查

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摘要

This paper aims to advance the recently progressing research on solid-state transformers (SST) and examines the impact of uncertainty on load demand and distributed generation (DG) units while integrating SST into an active distribution network (ADN) in the presence of battery backed solar photovoltaic (BBSPV) and wind generation. The uncertainty related to solar irradiance, wind speeds, and load demands is modeled through kernel density estimation (KDE), generalized extreme value (GEV) distribution, and Gaussian distribution summed with the maximum likelihood estimation (MLE) approach respectively. The K-medoid clustering procedure is utilized to group the load demand into multiple load levels, which helps in the intelligent scheduling of charging and discharging of battery energy storage systems (BESS). The distribution network planning process manages two conflicting criterion functions of real power loss (RPL) reduction and sum of square deviations of the expected voltage values, which are optimized utilizing the non-dominated sorting genetic algorithm (NSGA-II). The probabilistic power flow uses the direct load flow procedure utilizing bus injection to branch current (BIBC) matrix along with the forward sweep method to investigate each run of Monte Carlo simulation (MCS). Multiple case studies have been conducted on the IEEE 33 bus radial distribution network (RDN). The outcomes demonstrate the potential benefits of RPL reduction and voltage profile improvement (VPI) with increasing penetration levels of SST.
机译:本文旨在提高最近对固态变压器(SST)的进展研究,并检查不确定性对负载需求和分布发电(DG)单位的影响,同时将SST集成到电池支持的主动分配网络(ADN)中太阳能光伏(BBSPV)和风发电。与太阳辐照度,风速和负载需求相关的不确定性是通过内核密度估计(KDE),广义极值(GEV)分布和高斯分布分别与最大似然估计(MLE)接近的高斯分布进行建模。 K-MEDOID聚类程序用于将负载需求分组到多重负载水平,这有助于电池能量存储系统(BESS)的充电和放电的智能调度。分发网络规划过程管理实际功率丢失(RPL)的两个冲突标准功能,以及预期电压值的平方偏差和的总和,其利用非主导的分类遗传算法(NSGA-II)进行优化。概率性功率流量使用使用总线喷射到分支电流(BIBC)矩阵的直接负载流程以及前进的扫描方法来研究每个蒙特卡罗模拟(MCS)。已经在IEEE 33总线径向分配网络(RDN)上进行了多种案例研究。结果证明了RPL减少和电压型材改善(VPI)的潜在益处,随着SST的渗透水平。

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