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引用次数: 0
摘要
微电网的形成体现了配电系统中分布式发电机组的合理并入和有组织的控制。与传统的多微网并网能源管理方式不同,本文提出了在负荷峰值后形成临时集群,由集群内的分布式发电机组对部分峰值进行供电的思路。为了实现这一点,使用k-means算法将负载组成多个簇,并在这些簇中标记可能的dg。多目标优化技术,非支配排序遗传算法- ii (NSGA-II)被用于确定集群内定义的dg的可行共享权衡。为了从权衡解中进行决策,采用了基于模糊的方法。本文的工作以小时为单位,用MATLAB在OpenDSS中进行了一整天的仿真,并观察到系统的改进。
Multiple Objective Modelling by Forming Dynamic Clusters of Peak Loads and Distributed Generations for Energy Management in Grid Connected Mode
Implementation of microgrid formation reflects proper incorporation and organized control of distributed generations in distribution system. Unlike the conventional ways of energy management by multiple microgrid in Grid connected mode, this paper proposed an idea by forming temporary clusters following the loads when they are at their peak and supplying some of the peaks by Distributed generators (DGs) installed with the loads inside the clusters. For implementing this, k-means algorithm is used to make a number of clusters consist of loads and within those clusters probable DGs are marked. Multiple objective optimization technique, Nondominated Sorting Genetic Algorithm-II (NSGA-II) has been used to determine the trade-off of feasible sharing by DGs, defined within the clusters. For decision making from the trade-off solutions a fuzzy based method have been used. The work in this paper has been done in hourly basis for a whole day by running simulations in OpenDSS from MATLAB and also system improvements has been observed.