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Published in: The Journal of Supercomputing 5/2024

03-11-2023

Electricity consumption modeling by a chaotic convolutional radial basis function network

Authors: Donaldo Garcia, José de Jesús Rubio, Humberto Sossa, Jaime Pacheco, Guadalupe Juliana Gutierrez, Carlos Aguilar-Ibañez

Published in: The Journal of Supercomputing | Issue 5/2024

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Abstract

Electricity is an essential energy resource in the industrial, commercial and housing sector, having a very important role in the development of societies. Urbanization and industrialization implies a great demand of energy for developing economies. In the search to be able to know how much electrical energy is consumed, a modeling of the electrical energy demand is carried out. However, the inherent intricacy and nonlinear nature of electricity consumption patterns present a significant obstacle to achieve precise modeling. In this article, a chaos theory approach is carried out to analyze the behavior of the system and to obtain properties of its dynamic system. A network consisting of a convolutional part, a hidden part and an output part is proposed. Convolutional operations are employed for dimensionality reduction in transformed data sets by reconstruction of the phase space. A radial basis function neural is used in the hidden part. The dynamic analysis approach using chaos theory, and the proposed neural network is compared with the radial basis function neural network for the modeling of electrical energy consumption.

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Metadata
Title
Electricity consumption modeling by a chaotic convolutional radial basis function network
Authors
Donaldo Garcia
José de Jesús Rubio
Humberto Sossa
Jaime Pacheco
Guadalupe Juliana Gutierrez
Carlos Aguilar-Ibañez
Publication date
03-11-2023
Publisher
Springer US
Published in
The Journal of Supercomputing / Issue 5/2024
Print ISSN: 0920-8542
Electronic ISSN: 1573-0484
DOI
https://doi.org/10.1007/s11227-023-05733-y

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