Repeated clustering to improve the discrimination of typical daily load profile

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Abstract

The customer load profile clustering method is used to make the TDLP (Typical Daily Load Profile) to estimate the quarter hourly load profile of non-AMR (Automatic Meter Reading) customers. This study examines how the repeated clustering method improves the ability to discriminate among the TDLPs of each cluster. The k-means algorithm is a well-known clustering technology in data mining. Repeated clustering groups the cluster into sub-clusters with the k-means algorithm and chooses the sub-cluster that has the maximum average error and repeats clustering until the final cluster count is satisfied.

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APA

Kim, Y. I., Ko, J. M., Song, J. J., & Choi, H. (2012). Repeated clustering to improve the discrimination of typical daily load profile. Journal of Electrical Engineering and Technology, 7(3), 281–287. https://doi.org/10.5370/JEET.2012.7.3.281

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