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Daily Power Load Curves Analysis Based on Grey Wolf Optimization Clustering Algorithm

机译:基于灰狼优化聚类算法的日常功率负载曲线分析

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When the fuzzy C-means clustering algorithm (FCM) is applied to solve the problem of daily load curve clustering analysis, its performance is usually affected by selection of the initial clustering center and the sample similarity is often characterized directly by distance of each samples, which causes clustering easy to fall into local optimum. In this paper, the daily load characteristic value index is used to deal with the data dimension reduction of the daily load curve and a fuzzy C-means clustering algorithm optimized by grey wolf optimizer (GWO-FCM) is proposed. GWO-FCM uses GWO to optimize the initial clustering center for FCM, which combines the global search capability of GWO and the local search capability of FCM The results shows that the proposed method can perform daily load curve clustering analysis effectively and obtain good robustness.
机译:当应用模糊C-Means聚类算法(FCM)来解决日常负载曲线聚类分析的问题时,其性能通常受初始聚类中心的选择影响,并且样本相似度通常通过每个样品的距离直接表征,这导致聚类容易落入本地最佳。在本文中,使用日常载荷特性值索引来处理日常载荷曲线的数据尺寸降低,并提出了由灰狼优化器(GWO-FCM)优化的模糊C-Means聚类算法。 GWO-FCM使用GWO来优化FCM的初始聚类中心,它将GWO的全球搜索能力与FCM的本地搜索能力相结合,结果表明,该方法可以有效地执行日常负载曲线聚类分析并获得良好的鲁棒性。

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