Artificial Intelligence Models in Power Generation for Energy Consumption Prediction
Conference paper
Tan, L. Y., Kwan, C. S. C., Ajibade, S-S. M. and Ramly, A. 2024. Artificial Intelligence Models in Power Generation for Energy Consumption Prediction. 2024 International Conference on Emerging Trends in Networks and Computer Communications (ETNCC). IEEE. https://doi.org/10.1109/ETNCC63262.2024.10767519
Authors | Tan, L. Y., Kwan, C. S. C., Ajibade, S-S. M. and Ramly, A. |
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Type | Conference paper |
Abstract | The incorporation of artificial intelligence (AI) into power-related applications signifies a new and unexplored domain in machine learning for predicting power generation. This novel method utilizes prediction models, often used in different fields, to predict energy-related patterns, providing a unique and specialized viewpoint. The synergy of academicians, AI experts, and industry professionals in the energy sector has resulted in the creation of customized AI models to optimize operational efficiency. By customizing various AI models to suit the distinct attributes of energy scenarios and datasets, these models are positioned to transform energy management methods. This study examines the utilization of AI models to enhance energy efficiency in power generation in Malaysia. The project seeks to predict future power consumption in various sectors, analyze growth rates, and identify sectors with investment potential by developing a Linear Regression model. In addition, a thorough power plan is developed using the estimated energy usage. A comparative analysis is performed to determine the most appropriate model for this particular scenario, which will improve decision-making in the energy sector. The results of this study present promising opportunities for further investigation. By broadening the study's focus to encompass a broader array of AI models and their assessment of performance, it is possible to gain useful insights for predicting power generation. Furthermore, the integration of real-time data streams and the inclusion of feedback loops in the AI models could improve their ability to adapt and increase their accuracy as time progresses. |
Year | 2024 |
Conference | 2024 International Conference on Emerging Trends in Networks and Computer Communications (ETNCC) |
Publisher | IEEE |
Accepted author manuscript | License File Access Level Anyone |
Publication dates | |
Online | 04 Dec 2024 |
Publication process dates | |
Deposited | 24 Mar 2025 |
Book title | 2024 International Conference on Emerging Trends in Networks and Computer Communications (ETNCC): PROCEEDINGS OF ETNCC’24 |
ISBN | 979-8-3503-5326-6 |
979-8-3503-5327-3 | |
Digital Object Identifier (DOI) | https://doi.org/10.1109/ETNCC63262.2024.10767519 |
Web address (URL) of conference proceedings | https://ieeexplore.ieee.org/xpl/conhome/10767431/proceeding |
Copyright holder | © 2024 IEEE |
https://repository.uel.ac.uk/item/8z3q1
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