Determination of representative load curve based on Fuzzy K-Means

Power Engineering and Optimization Conference(2010)

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摘要
With the large amount of information (large number of daily load curves) for one consumer or one group of consumers, the classification and building the representative load curve (RLC) are necessary. The RLC can be built in the set of similar load curves by clustering analysis. This paper presents a Fuzzy clustering technique to determine RLC on the basis of their electricity behavior. Fuzzy K-Means (FKM) is utilized in this work. The load data used in this work are from actual measurements from different feeders derived from a distribution network. Global criterion method and Bellman-Zadeh's maximization principle will be used to compromise the Cluster validity indexes and determine the optimal cluster number. Determining the suitable weighting exponent m is also introduced in this paper.
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关键词
demand side management,fuzzy set theory,power distribution economics,bellman-zadeh maximization principle,cluster validity indexes,distribution network,electricity behavior,fuzzy clustering technique,fuzzy k-means,global criterion method,representative load curve,bellman-zadeh's maximization principle,cluster analysis,clustering algorithms,power engineering,optimization,indexes,fuzzy clustering,gaussian distribution
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