基于SAGA-FCM算法的电力数据聚类分析方法

Zhou Yang, Xiqiao Lin, Wenqian Jiang, Gang Li
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引用次数: 7

摘要

电力数据分析的关键技术是聚类方法,但由于数据量的不断增加,传统的聚类方法已经失去了敏捷性和质量。为此,本文提出了一种电数据挖掘结构:首先将高维数据降维为低维数据,然后利用聚类方法将降维结果分类为典型的使用行为。传统的聚类方法由于收敛速度慢、精度低,无法处理大规模的数据集。为了提高数据处理效果,本文提出了SAGA-FCM算法,该算法是模拟退火算法、通用算法和FCM (Fuzzy C Mean)算法的结合。通过两个算例验证了该算法的有效性,并将其与传统算法的效率进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An electricity data cluster analysis method based on SAGA-FCM algorithm
The key technology to analyzing electricity data is cluster methods, of which the traditional way has already lost its agility and quality due to the increasing data volume. To this end, this paper presented an electricity data mining structure: first the higher dimensional data should be reduced to lower ones, second the reduced-dimensional results should be classified into typical usage behavior using cluster methods. Conventional cluster methods cannot deal with large-scale data sets for its slow convergence and low accuracy. This paper proposed SAGA-FCM algorithm to improve the data processing results, which is a combination of Simulated Annealing, Generic algorithm and FCM (Fuzzy C Mean) algorithm. Two examples have been made to verify the algorithm: one is to prove its availability and the other is to compare its efficiency to conventional algorithm.
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