An Intelligent Data-Driven Approach for Electrical Energy Load Management Using Machine Learning Algorithms

Akhtar, Shamim and Muhamad Zahim, Sujod and Rizvi, Syed Sajjad Hussain (2022) An Intelligent Data-Driven Approach for Electrical Energy Load Management Using Machine Learning Algorithms. Energies, 15 (15). ISSN 1996-1073. (Published)

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Abstract

Data-driven electrical energy efficiency management is the emerging trend in electrical energy forecasting and management. This fusion of data science, artificial intelligence, and electrical energy management has turned out to be the most precise and robust energy management solution. The Smart Energy Informatics Lab (SEIL) of the Indian Institute of Technology (IIT) conducted an experimental study in 2019 to collect massive data on university campus energy consumption. The comprehensive comparative study preparatory to the recommendation of the best candidate out of 24 machine learning algorithms on the SEIL dataset is presented in this work. In this research work, an exhaustive parametric and empirical comparative study is conducted on the SEIL dataset for the recommendation of the optimal machine learning algorithm. The simulation results established the findings that Bagged Trees, Fine Trees, and Medium Trees are, respectively, the best-, second-best-, and third-best-performing algorithms in terms of efficacy. On the contrary, a reverse ranking is observed in terms of efficiency. This is grounded in the fact that Bagged Trees is most effective algorithm for the said application and Medium Trees is the most efficient one. Likewise, Fine Trees has the optimum tradeoff between efficacy and efficiency.

Item Type: Article
Additional Information: Indexed by Scopus
Uncontrolled Keywords: Artificial intelligence; Data driven energy efficiency management; Energy forecasting; Machine learning; SEIL dataset
Subjects: Q Science > QA Mathematics > QA76 Computer software
T Technology > TK Electrical engineering. Electronics Nuclear engineering
Faculty/Division: Institute of Postgraduate Studies
College of Engineering
Depositing User: Miss Amelia Binti Hasan
Date Deposited: 08 Sep 2023 03:59
Last Modified: 08 Sep 2023 03:59
URI: http://umpir.ump.edu.my/id/eprint/38591
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