Parallel Evolutionary Biclustering of Short-term Electric Energy Consumption

D. Pinto-Roa, H. Medina, Federico Román, M. García-Torres, F. Divina, Francisco Gómez-Vela, Félix Morales, Gustavo Velázquez, Federico Daumas, José L. Vázquez-Noguera, Carlos Sauer Ayala, P. E. Gardel-Sotomayor
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引用次数: 2

Abstract

The discovery and description of patterns in electric energy consumption time series is fundamental for timely management of the system. A bicluster describes a subset of observation points in a time period in which a consumption pattern occurs as abrupt changes or instabilities homogeneously. Nevertheless, the pattern detection complexity increases with the number of observation points and samples of the study period. In this context, current bi-clustering techniques may not detect significant patterns given the increased search space. This study develops a parallel evolutionary computation scheme to find biclusters in electric energy. Numerical simulations show the benefits of the proposed approach, discovering significantly more electricity consumption patterns compared to a state-of-the-art non-parallel competitive algorithm.
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短期电能消耗的并行进化双聚类
电能消耗时间序列模式的发现和描述是系统及时管理的基础。双聚类描述了一个时间段内的观察点子集,在这个时间段内,消费模式均匀地发生突变或不稳定。然而,模式检测的复杂度随着观察点和研究周期样本的增加而增加。在这种情况下,鉴于搜索空间的增加,当前的双聚类技术可能无法检测到重要模式。本文提出了一种并行进化计算方法来寻找电能中的双簇。数值模拟显示了所提出方法的优点,与最先进的非并行竞争算法相比,发现了更多的电力消耗模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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