Application of adaptive ensemble neural network method for short-term load forecasting electrical engineering complex of regional electric grid

Authors

DOI:

https://doi.org/10.25206/1813-8225-2021-175-39-45

Keywords:

regional electric grid, forecasting electricity consumption, artificial neural network, learning algorithm, convolution networks, recurrent neural networks

Abstract

The article is devoted to the problem of improving the accuracy of short-term load forecasting of electrical engineering complex of regional electric grid with the use deep machine learning tools. The effectiveness of the application of the adaptive learning algorithm for deep neural networks for short-term load forecasting of this electrical complex has been investigated. The issues of application of convolutional and recurrent neural networks for short-term load forecasting are considered. A comparative analysis of the accuracy of the short-term load forecasting of electrical engineering complex of regional electric grid obtained using the ensemble neural network method and single neural networks are produced.

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Author Biography

Николай Александрович Серебряков, Polzunov Altai State Technical University, Barnaul, Russia

старший преподаватель кафедры «Электроснабжение промышленных предприятий».

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Abstract views: 8

Published

2021-03-05

How to Cite

[1]
Серебряков, Н.А. 2021. Application of adaptive ensemble neural network method for short-term load forecasting electrical engineering complex of regional electric grid. Omsk Scientific Bulletin. 1(175) (Mar. 2021), 39–45. DOI:https://doi.org/10.25206/1813-8225-2021-175-39-45.

Issue

Section

Electrical Engineering