Energy losses estimation by polynomial fitting and k-means clustering
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Published:2019
Issue:3
Volume:32
Page:403-416
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ISSN:0353-3670
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Container-title:Facta universitatis - series: Electronics and Energetics
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language:en
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Short-container-title:FACTA U EE
Author:
Sladojevic Lazar1,
Janjic Aleksandar1ORCID
Affiliation:
1. University of Niš, Faculty of Electronic Engineering, Niš, Serbia
Abstract
This paper represents an approach for the estimation and forecast of losses
in a distribution power grid from data which are normally collected by the
grid operator. The proposed approach utilizes the least squares optimization
method in order to calculate the coefficients needed for estimation of
losses. Besides optimization, a machine learning technique is introduced for
clustering of coefficients into several seasons. The amount of data used in
calculations is very large due to the fact that electrical energy injected
in distribution grid is measured every fifteen minutes. Therefore, this
approach is classified as the big data analysis. The used data sets are
available in the Serbian distribution grid operator?s report for the year
2017. Obtained results are fairly accurate and can be used for losses
classification as well as future losses estimation.
Funder
Ministry of Education, Science and Technological Development of the Republic of Serbia
Publisher
National Library of Serbia