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Application of Fuzzy Clustering to Determine Electricity Consumers' Load Profiles

机译:模糊聚类在确定电力消费者负载型材的应用

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In a regulated environment, load profiles have been employed to provide information for forecasting, system planning and demand side planning. However, in the deregulated environment, consumers can purchase electricity from any provider regardless of size and location. As a result, load profiles have become more significant. The determination of customer load profile may facilitate utility companies with better marketing strategies and improved efficiency in operating the current facilities. This paper examined the capability of fuzzy clustering to determine consumers load profiles on the basis of their electricity behaviour. Two techniques in fuzzy clustering namely, fuzzy relation and fuzzy c-means (FCM) were employed in this work. The load data used in this work are from actual measurements from different feeders derived from a distribution network. Cluster validity indices will be used to determine the optimum clusters. The performance of each algorithm will be evaluated by employing adequacy indices i.e. mean index adequacy (MIA) and clustering dispersion indicator (CDI).
机译:在受监管的环境中,已采用负载简档来提供预测,系统规划和需求方规划信息。然而,在解除管制的环境中,无论大小和位置如何,消费者都可以从任何提供者购买电力。结果,负载型材变得更加重要。客户负载轮廓的确定可以促进公用事业公司,具有更好的营销策略和提高运营当前设施的效率。本文研究了模糊聚类的能力,以基于其电力行为确定消费者负载概况。在这项工作中采用了模糊聚类中的两种技术,模糊关系和模糊C-means(FCM)。本工作中使用的负载数据来自来自分配网络的不同馈线的实际测量。群集有效性指数将用于确定最佳群集。将通过采用充分缩小指数来评估每种算法的性能,即平均指数充足(MIA)和聚类分散指示符(CDI)。

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