LAPSE:2023.8490
Published Article

LAPSE:2023.8490
Hybrid DC−AC Microgrid Energy Management System Using an Artificial Gorilla Troops Optimizer Optimized Neural Network
February 24, 2023
Abstract
In this research, we introduce an artificial gorilla troop optimizer for use in artificial neural networks that manage energy consumption in DC−AC hybrid distribution networks. It is being proposed to implement an energy management system that takes into account distributed generation, load demand, and battery-charge level. Using the profile data, an artificial neural network was trained on the charging and discharging characteristics of an energy storage system under a variety of distribution-network power situations. As an added bonus, the percentage of mistakes was maintained far below 10%. An artificial neural network is used in the proposed energy management system, and it has been taught to operate in the best possible manner by using an optimizer inspired by gorillas called artificial gorilla troops. The artificial gorilla troops optimizer optimize the weights and bias of the neural network based on the power of the distributed generator, the power of the grid, and the reference direct axis current to obtain most suitable energy management system. In order to simulate and evaluate the proposed energy management system, small-scale hybrid DC/AC microgrids have been created and tested. When compared to other systems in the literature, the artificial gorilla troops optimizer enhanced neural network energy management system has been shown to deliver 99.55% efficiency, making it the clear winner.
In this research, we introduce an artificial gorilla troop optimizer for use in artificial neural networks that manage energy consumption in DC−AC hybrid distribution networks. It is being proposed to implement an energy management system that takes into account distributed generation, load demand, and battery-charge level. Using the profile data, an artificial neural network was trained on the charging and discharging characteristics of an energy storage system under a variety of distribution-network power situations. As an added bonus, the percentage of mistakes was maintained far below 10%. An artificial neural network is used in the proposed energy management system, and it has been taught to operate in the best possible manner by using an optimizer inspired by gorillas called artificial gorilla troops. The artificial gorilla troops optimizer optimize the weights and bias of the neural network based on the power of the distributed generator, the power of the grid, and the reference direct axis current to obtain most suitable energy management system. In order to simulate and evaluate the proposed energy management system, small-scale hybrid DC/AC microgrids have been created and tested. When compared to other systems in the literature, the artificial gorilla troops optimizer enhanced neural network energy management system has been shown to deliver 99.55% efficiency, making it the clear winner.
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Keywords
artificial gorilla troops optimizer, battery storage system, energy management system, hybrid system, neural network, PV system, wind energy system
Suggested Citation
Murugan S, Jaishankar M, Premkumar K. Hybrid DC−AC Microgrid Energy Management System Using an Artificial Gorilla Troops Optimizer Optimized Neural Network. (2023). LAPSE:2023.8490
Author Affiliations
Murugan S: Department of Electronics and Communication Engineering, Saveetha School of Engineering, Chennai 602105, India
Jaishankar M: Department of Electronics and Communication Engineering, Saveetha School of Engineering, Chennai 602105, India
Premkumar K: Department of Electrical and Electronics Engineering, Rajalakshmi Engineering College, Chennai 602105, India
Jaishankar M: Department of Electronics and Communication Engineering, Saveetha School of Engineering, Chennai 602105, India
Premkumar K: Department of Electrical and Electronics Engineering, Rajalakshmi Engineering College, Chennai 602105, India
Journal Name
Energies
Volume
15
Issue
21
First Page
8187
Year
2022
Publication Date
2022-11-02
ISSN
1996-1073
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Original Submission
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PII: en15218187, Publication Type: Journal Article
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LAPSE:2023.8490
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https://doi.org/10.3390/en15218187
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