APPLICATION OF DECOMPOSITION METHODS IN SHORT-TERM FORECASTING OF OVERALL ELECTRIC LOAD OF ENERGY SYSTEM
Article_9 PDF (Українська)

Keywords

short-term forecasting
electric load
decomposition
Hilbert-Huang method

How to Cite

Блінов, І. В., and В. . Сичова. “APPLICATION OF DECOMPOSITION METHODS IN SHORT-TERM FORECASTING OF OVERALL ELECTRIC LOAD OF ENERGY SYSTEM”. Proceedings of the Institute of Electrodynamics of the National Academy of Sciences of Ukraine, no. 59, Sept. 2021, p. 068, doi:10.15407/publishing2021.59.068.

Abstract

Based on the performed researches the method of decomposition of graphs of total electric loading of power system with application of a method of Hilbert-Huang is improved. This approach allows obtaining a homogeneous basic component of electrical load and temperature component, which has a close correlation with air temperature, which improves the accuracy of short-term forecasting. The results of testing the developed mathematical model are given. Ref. 9, fig. 1, table.

https://doi.org/10.15407/publishing2021.59.068
Article_9 PDF (Українська)

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This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

Copyright (c) 2021 I.V. Blinov, V.V. Sychova

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