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New approach for the probabilistic power flow of distribution systems based on data clustering

机译:基于数据聚类的配电系统概率潮流的新方法

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摘要

The growing popularity of renewable-based generations along with loads fluctuation and network topology variation has exposed distribution systems to high uncertainties, causing difficulties in operating and planning decisions. In addition, the correlation among various uncertain variables has introduced more complexity to this problem. The probabilistic assessment of power systems with various uncertain variables and with any correlation between them can be efficiently handled by Monte-Carlo simulation (MCS) method, but the calculation burden in this method is heavy and thus it is not appropriate in online applications. Keeping the accuracy of the results, data clustering techniques can be efficiently substituted for this method with much less calculation time and burden. In this study, two methods based on data clustering which can consider the correlation between different variables in a straightforward manner are presented for the probabilistic power flow of distribution systems. In order to demonstrate the efficiency of the proposed methods, IEEE 37 node test feeder and IEEE 123 node test feeder were selected as the case study. The results obtained by the proposed methods were compared with those of the MCS method in terms of accuracy and calculation time.
机译:可再生能源发电一代的日益普及,以及负荷波动和网络拓扑变化,使配电系统面临很大的不确定性,给运营和规划决策带来了困难。另外,各种不确定变量之间的相关性已经给这个问题带来了更多的复杂性。具有各种不确定变量并且它们之间具有任何相关性的电力系统的概率评估可以通过蒙特卡洛模拟(MCS)方法有效地处理,但是这种方法的计算负担很重,因此不适合在线应用。保持结果的准确性,数据聚类技术可以有效地替代此方法,而计算时间和负担却少得多。在这项研究中,针对配电系统的概率潮流,提出了两种基于数据聚类的方法,可以直接考虑不同变量之间的相关性。为了证明所提方法的有效性,选择了IEEE 37节点测试馈线和IEEE 123节点测试馈线作为案例研究。将所提方法获得的结果与MCS方法的结果在准确性和计算时间方面进行了比较。

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